A GIS-BASED GREEN INFRASTRUCTURE SUITABILTY ANALYSIS …
Transcript of A GIS-BASED GREEN INFRASTRUCTURE SUITABILTY ANALYSIS …
A GIS-BASED GREEN INFRASTRUCTURE SUITABILTY ANALYSIS FOR STORMWATER MANAGEMENT IN GAINESVILLE, FLORIDA
By
YUXIAO LI
A THESIS PRESENTED TO THE GRADUATE SCHOOL
OF THE UNIVERSITY OF FLORIDA IN PARTIAL FULFILLMENT OF THE REQUIREMENTS FOR THE DEGREE OF MASTER OF URBAN OF REGIONAL PLANNING
UNIVERSITY OF FLORIDA
2015
© 2015 Yuxiao Li
To my family and friends
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ACKNOWLEDGMENTS
First, I want to extend my sincere gratitude to my family and all my friends. Most
significantly, my parents gave me great encouragement to reach the goal to study
abroad. It would not be possible for me to come to University of Florida to finish this
master’s degree without their spiritual and economic support. Also, I would like to thank
my friends who provided pleasures and help during the time studying in University of
Florida.
Second, I am deeply indebted to my thesis committee. It would be impossible for
me to finish this thesis without their help. Dr. Frank, chair of my committee, helped me
go through the hardest part of initiating this thesis topic, and provided the right direction
guidance during my study with patience. Dr. Alakshendra, one of the committee
members, offered valuable suggestions to better accomplish the thesis. Professor
Latimer, one of the committee members, helped me solve the GIS technical problems
during the study.
Third, I would like to thank “Edit24-7”. Its effective and accurate work helped me
solving grammar problems and correcting typographical errors which occurred during
the writing process.
Last but not the least, my gratitude also extends to the Department of Urban and
Regional Planning in University of Florida. You gave me a precious chance to study
abroad to expand my horizon, and granted me unforgettable, joyful and valuable
experience here.
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TABLE OF CONTENTS page
LIST OF TABLES ............................................................................................................ 7
LIST OF FIGURES .......................................................................................................... 8
ABSTRACT ..................................................................................................................... 9
CHAPTER
1 INTRODUCTION .................................................................................................... 10
Overview ................................................................................................................. 10
Study Area .............................................................................................................. 10
Objective ................................................................................................................. 11
Organization ........................................................................................................... 11
2 LITERATURE REVIEW .......................................................................................... 13
Green Infrastructure ................................................................................................ 13
Benefits of Green Infrastructure .............................................................................. 14
Stormwater Management ........................................................................................ 16
Geographic Information System ............................................................................. 17
Land Use Suitability Analysis .................................................................................. 17
Multi-Criteria Decision-Making (MCDM) Method ..................................................... 18
Analytical Hierarchy Process .................................................................................. 19
Cases...................................................................................................................... 19
Green Infrastructure Planning for Improved Stormwater Management in Central New York, 2012 ............................................................................... 19
Walworth Run Green Infrastructure Feasibility Study ....................................... 21
GIS Suitability Model: Berlin, Maryland ............................................................ 24
Replicable GIS Suitability Model for Stormwater Management and the Urban Heat Island Effect in Dallas, Texas ..................................................... 25
Green Infrastructure Feasibility Scan for Bridgeport and New Haven, Connecticut ................................................................................................... 27
A GIS Suitability Analysis of the Potential for Rooftop Agriculture in New York City........................................................................................................ 28
3 METHODOLOGY.................................................................................................... 29
Definition of Study Area .......................................................................................... 29
Definition of Green Infrastructure ............................................................................ 29
Criteria Selection and Ranking ............................................................................... 29
Analytic Hierarchy Process ..................................................................................... 34
4 PROCESS .............................................................................................................. 37
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Data Collection and Ranking .................................................................................. 37
Data Processing ..................................................................................................... 38
Criteria Weighing .................................................................................................... 39
Weighted Sum ........................................................................................................ 40
5 RESULTS ............................................................................................................... 45
6 DISCUSSION ......................................................................................................... 53
7 CONCLUSION ........................................................................................................ 56
APPENDIX
A DATA PROCESS .................................................................................................... 57
B RECLASSIFICATION TABLES ............................................................................... 59
LIST OF REFERENCES ............................................................................................... 70
BIOGRAPHICAL SKETCH ............................................................................................ 73
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LIST OF TABLES
Table page 2-1 Green Infrastructure Benefit ............................................................................... 15
2-2 Development Process of Suitability Analysis ...................................................... 18
2-3 Suitability Ranking Matrix for Rooftop Agriculture in New York City ................... 28
3-1 Green Infrastructure Practice Maximum Slope ................................................... 31
4-1 Suitability Criteria and Ranks.............................................................................. 41
4-2 Pairwise Comparison Matrix ............................................................................... 42
4-3 Normalized pairwise comparison matrix ............................................................. 43
4-4 Criterion Weights ................................................................................................ 44
4-5 Consistency Test Result ..................................................................................... 44
B-1 Soil Type Reclassification ................................................................................... 59
B-2 Slope Reclassification ........................................................................................ 63
B-3 Imperviousness Reclassification ......................................................................... 64
B-4 Land Ownership Reclassification ........................................................................ 68
B-5 Land Use Type Reclassification ......................................................................... 69
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LIST OF FIGURES
Figure page 1-1 Flowchart of the Whole Research ....................................................................... 12
5-1 Reclassified Soil Map ......................................................................................... 47
5-2 Reclassified Slope Map ...................................................................................... 48
5-3 Reclassified Land Ownership Map ..................................................................... 49
5-4 Reclassified Land Use Map ................................................................................ 50
5-5 Reclassified Imperviousness Map ...................................................................... 51
5-6 Green Infrastructure Suitability Map in Gainesville ............................................. 52
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Abstract of Thesis Presented to the Graduate School of the University of Florida in Partial Fulfillment of the
Requirements for the Degree of Master of Urban and Regional Planning
A GIS-BASED GREEN INFRASTRUCTURE SUITABILTY ANALYSIS FOR STORMWATER MANAGEMENT IN GAINESVILLE, FLORIDA
By
Yuxiao Li
December 2015
Chair: Kathryn Frank Major: Urban and Regional Planning
Stormwater runoff is one of the biggest challenges to water pollution control for
the reason that this pollution source causes water quality decreases in the U.S. Interest
is now growing in green infrastructure which refers to stormwater management system
mimicking nature by soaking up and storing water. It involves innovative strategies for
addressing the stormwater management problem. Decision-making processes about
green infrastructure implementation can be guided by a green infrastructure suitability
analysis. ArcGIS tools can provide the necessary planning platform for visualization,
modeling, analysis, and collaboration. Analytical hierarchy process provides a strong
evidence for the weight of each criterion in decision making process. So this research is
aiming at developing an appropriate methodology by adapting analytical hierarchy
process for green infrastructure suitability analysis in Gainesville, and creating a
visualized green infrastructure suitability map, integrated with ArcGIS technology, to
highlight areas most suitable for green infrastructures to facilitate green infrastructure
implementation for stormwater management.
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CHAPTER 1 INTRODUCTION
Overview
Stormwater runoff is one of the biggest challenges to water pollution control
because this pollution source is the main cause of water quality decreases in the U.S.
Interest is now growing in the small scaled green infrastructure which refers to
stormwater manage system to play a same role as nature by soaking up and storing
water. Green infrastructure involves innovative strategies for addressing the stormwater
management problem. Decision-making processes could be guided by a green
infrastructure suitability analysis, which is a tool for finding the most suitable areas for
implementing green infrastructures on the basis of selected criteria. This research on
green infrastructure suitability, in order to solve stormwater management problems, is
integrated with ArcGIS technology, combines two technical requirements (soil type and
percentage slope) and three non-technical requirements (imperviousness, land use type
and land ownership) and adapts analytical hierarchy process which is seldom used in
this field to decide weights of each criterion in order to map green infrastructure
suitability in Gainesville. Figure 1-1 shows the flowchart of the whole research.
Study Area
The study area is the city of Gainesville, the seat of Alachua County, Florida.
Gainesville is the largest city in the county, with an area of 48.2 square miles (City-data,
2015). Florida’s annual rainfall is 53.58 inches, which is 14.4 inches above the national
average (weatherDB, n.d.)
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Objective
The objective of this research is to develop an appropriate methodology for green
infrastructure suitability analysis in Gainesville, and to create a visualized green
infrastructure suitability map, integrated with ArcGIS technology, to highlight areas most
suitable for green infrastructures to facilitate green infrastructure implementation for
stormwater management.
Organization
The first chapter outlines the purposes of the study. The second reviews the
literature on the topic. The third explains the methodology used. The fourth details the
entire research process. The fifth shows the maps and the results of the research. The
sixth discusses the research and its results. The seventh and final chapter draws the
conclusions of the work.
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Figure 1-1. Flowchart of the Whole Research
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CHAPTER 2 LITERATURE REVIEW
Green Infrastructure
There has recently been growing discussion of green infrastructure, especially in
land conservation and development (Benedict & McMahon, 2002). Green infrastructure
is a relatively new term in the urban planning dictionary (Rouse & Bunster-Ossa, 2013).
It has been defined differently, with fine distinctions, by different authors and
organizations. Benedict and McMahon (2012) defined it as “a strategically planned and
managed network of wilderness, parks, greenways, conservation easements, and
working lands with conservation value that supports native species, maintains natural
ecological processes, sustains air and water resources, and contributes to the health
and quality of life for America’s communities and people”. A comprehensive definition
that includes most of these aspects comes from the Conservation Fund, which
describes a green infrastructure as a network instead of a single unit: “Green
infrastructure is our nation’s natural life support system—an interconnected network of
waterways, wetlands, woodlands, wildlife habitats, and other natural areas; greenways,
parks and other conservation lands; working farms, ranches and forests; and wilderness
and other open spaces that support native species, maintain natural ecological
processes, sustain air and water resources and contribute to the health and quality of
life for America’s communities and people” (Benedict & McMahon, 2002). Mell (2010)
examined four definitions of green infrastructure and stated in summary that “access,
spatial variance, multi-functionality, natural and human benefits, biodiversity,
sustainability and connectivity” are the elements that constitute green infrastructure. The
definitions he looked at included almost everything from the large scale, such as
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vegetation hubs and corridors, to the small scale, such as rain gardens and permeable
pavements. The Environmental Protection Agency (EPA) defines the water quality and
stormwater runoff aspects of green infrastructure. It also classifies green infrastructures
by scale. At the city or county level, a green infrastructure is defined as a patchwork of
natural areas that provides better habitats, air, and water quality, and reduces flood
hazard (EPA, 2014). At the site or neighborhood level, it involves stormwater
management, because a green infrastructure can serve almost the same function as
nature in soaking up and storing water (EPA, 2014). Because past researchers have
used definitions related to their specific research focuses (Mell, 2010) and, in this
research I will use the small scale green infrastructure definition from EPA to further the
study.
Benefits of Green Infrastructure
Green infrastructure benefits human beings and the surrounding areas in several
ways. Kloss (2008) summarized the benefits of green infrastructure for stormwater
management: it can significantly improve water quality by reducing runoff and pollutants
and thus lowering the total contaminants in the receiving water body. Green
infrastructure also mitigates the urban heat island effect, improves air quality, saves
energy, improves the climate, and beautifies communities (Kloss, 2008). A report from
the EPA concluded on the basis of 17 low-impact development (LID) studies that LID
techniques can lower stormwater management costs and enhance environmental
conditions (EPA, 2007). Detwiler (2012) summarized the overall benefits of green
infrastructure in “Growing Green: How Green Infrastructure Can Improve Community
Livability and Public Health” in order to provide resources to help the public and
decision makers understand them. Green infrastructure reduces pollutant runoff into
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streams and lowers the chance of illnesses being spread through drinking water. A
comprehensive and concise summary was published by EPA (2010) in “Green
Infrastructure Case Studies: Municipal Policies for Managing Stormwater with Green
Infrastructure,” which found three kinds of benefit: environmental, economic, and social.
The summary is showed in Table 2-1.
Table 2-1. Green Infrastructure Benefit (EPA, 2010)
Environmental Economic Social
Benefit
Increase carbon sequestration
Improve air quality
Additional recreational space
Efficient land use Improve human
health Flood protection Drinking water
source protection
Replenish groundwater
Improve watershed health
Protect or restore wildlife habitat
Reduce sewer overflow events
Restore impaired waters
Meet regulatory requirements for receiving waters
Reduce hard infrastructure construction costs
Maintain aging infrastructure
Increase land values
Encourage economic development
Reduce energy consumption and costs
Increase life cycle cost savings
Establish urban greenways Provide pedestrian and
bicycle access Create attractive
streetscapes and rooftops that enhance livability and urban green space
Educate the public about their role in stormwater management
Urban heat island mitigation
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Stormwater Management
Stormwater is a widely used term not only in scientific documents but in
regulatory reports. It is one of the starting points of this thesis. Stormwater has been
treated as the primary contributor to water quality impairment, but federal regulations
have been passed in the last 20 years to address this problem (National Research
Council, 2009). Stormwater runoff is defined by the National Research Council (2009)
as “the water associated with a rain or snow storm that can be measured in a
downstream river, stream, ditch, gutter, or pipe shortly after the precipitation has
reached the ground”.
Between a third and a half of the transformation of the earth’s land surface is due
not simply to the growth of the human population but to human activities (Vitousek,
Mooney, Lubchenco, & Melillo, 1997). Land coverage and drainage systems not only
affect stormwater flow, they influence the quantity of baseflow between storms
(Randolph, 2004). The urbanization process has led to increments in the peak
discharge by limiting water infiltration into the ground and thus increasing the flow rate
during the runoff accumulation period (Randolph, 2004). Stormwater is creating
management problems for cities in U.S. and transforming urban water systems, which
can be regarded as a reason for putting an end to pollution (Kloss, 2008). According to
the National Water-Quality Assessment (NAWQA) program from the U.S. Geological
Survey (USGS), the total phosphorus concentration in 70 percent of urban steams
exceeds the EPA’s goals for nuisance plant growth control; higher concentrations of
insecticides occur in urban steams than in agricultural areas; and fecal coliform bacteria
in urban streams exceed the standard limits for safe water recreation (USGS, 2008). In
recent years, because of the objective expansion and improvement of planning
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methods, stormwater management has been changing tremendously (Randolph, 2004).
Of particular note is low-impact stormwater management, which involves controlling and
treating onsite or decentralized runoff more effectively, advocating or encouraging LID
designs and integrated stormwater controls, and restoring natural channels through
bioengineering and infiltration (Randolph, 2004).
Geographic Information System
A geographic information system (GIS) has been defined as “a set of tools for the
input, storage and retrieval, manipulation and analysis, and output of spatial data”
(Malczewski, 1999). The National Geographic Society (2011) defines GIS as “a
computer system for capturing, storing, checking, and displaying data related to
positions on Earth’s surface”. GIS can provide strong visual displays of analysis results
at multiple scales, and it is an excellent technology for researchers or planners to gain a
thorough understanding of their problems and to better solve them by incorporating with
data with specific attributes (Berger, 2013).
Land Use Suitability Analysis
Land use suitability analysis is an identification tool for locating the most suitable
land for future use (Collins, Steiner, & Rushman, 2001). Collins, Steiner, and Rushman
(2001) introduced the land-use suitability analysis and discussed its development in
terms of both methodology and technology in the U.S. Table 2-2 shows the
development process of suitability analysis. GIS-based land use suitability analysis,
according to Malczewski (2004), is differentiated into three main approach groups,
which are similar to the last three stages in the table above: computer-assisted overlay
mapping, multi-criteria evaluation methods, and AI (soft computing or geo-computation)
methods.
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Table 2-2. Development Process of Suitability Analysis (Malczewski, 2004)
Stage 1 Stage 2 Stage 3 Stage 4 Stage 5
Name Hand-drawn map
Literature advancement
Computer- assisted map overlay
Spatial data and multi-criteria evaluation redefinition
Replicating knowledge
Details Overlay hand-drawn map manually.
Draw map on transparent papers with the same scale and control features.
Apply computer technology in land-use suitability analysis.
1. Boolean logic-handling indiscriminant spatial boundary with GIS.
2. Decision makers’ preference incorporation with land-use allocation.
Artificial intelligence integration for model applications and GIS-based land use allocations.
Multi-Criteria Decision-Making (MCDM) Method
The multi-criteria decision method (or multi-criteria decision analysis) is used to
make decisions incorporating the decision makers’ explicit preferences, represented by
goals, constraints, weights, and similar parameters (Al-Shalabi, Mansor, Ahmed, &
Shiriff, 2006). Multi-criteria decision making, which is a part of the methodology of this
thesis, when integrated with GIS, is far more effective than the traditional map-overlay
method for land-use suitability analysis (Carver, 1991). The method has been used this
way by researchers in many different places. GIS-based MCDM is the process of
combining and transforming spatial elements, which are the input data, into final
decisions as output data (Malczewski, 2004). Spatial MCDM, according to Malczewski
(2004), needs to consider two significant elements. The first is the capability for GIS-
data acquisition, storage, recovery, manipulation and analysis. The second is the
capability for combining the data and the decision makers’ preferences, which are to be
unified in dimensional value form to produce decisions (Malczewski, 2004).
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Analytical Hierarchy Process
One of the main problems in the MCDM process is setting the weights of the
different criteria according to their importance. The AHP method can solve this problem,
according to Banai-Kashani (1989), because it can detect and correct errors in
judgements of factor importance during site suitability analysis. AHP has been used in
many suitability analysis studies. As an MCDM approach, AHP is used widely in
agricultural land-use suitability analysis (Akıncı, Özalp, & Turgut, 2013). Al-Shalabi,
Mansor, Ahmed, and Shiriff (2006) did a housing-site suitability analysis using the AHP
methodology. Duc (2006) did a land-use suitability analysis for coffee using GIS and
AHP in the Ha district. Kumar and Shaikh (2013) used this technique in combination
with GIS to process a site-suitability assessment for Mussoorie municipal area
development. This thesis will adopt AHP as part of its methodology for dealing with the
criterion-weighing problem.
Cases
Several cities have analyzed green infrastructure suitability or feasibility. They
undertook their studies with different goals, used different data, chose criteria from
different aspects, and accomplished the analysis with different methods. This thesis was
inspired by them, especially in the criterion selection part.
Green Infrastructure Planning for Improved Stormwater Management in Central New York, 2012 (Central New York Regional Planning & Development Board, 2012)
New York City carried out its suitability analysis mainly to test the viability of 18
stormwater practices. This study also graphically illustrated some of the factors that
affect the decision to consider or disregard specific stormwater practices in specific
areas. Six geographic factors were selected for the NYC GI-suitability analysis. These
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were hydrologic soil group, land use, slope, proximity to roads, presence or proximity of
wetlands, and floodplains. The suitability value for each factor ranged from 0 (least
suitable) to 5 (most suitable). It should be noted that although the analyses were made
using the same geographic factors, the ranking method varied according to specific
designs.
The NYC study classified soil into four hydrologic groups in accordance with
USDA Natural Resources Conservation Service data. These were: very permeable
sandy or sandy loam soils, loams or soils with a high percentage of silt, loams with high
percentages of both sand and clay, and nearly impermeable clays or clay loams. This
analysis rated soil as the most important factor by giving it a weight of 0.3 out of 1.
Green infrastructure suitability is affected by the area’s land use character. This
factor was broken into two components: the type of development, and the perception of
the practice by the public in the context of the current land use. For example, certain
practices (e.g., stormwater wetlands, infiltration, trenches, and sandy filters) are
considered less suitable in residential areas because residents are thought to dislike
their appearances or the effects they might have, such as providing breeding areas for
mosquitoes. Residential areas were thus rated low. On the other hand, commercial
areas were rated high for pervious pavements and bio-retentions because of their vast
parking areas. This analysis gave a weight of 0.25 out of 1 to land-use type.
Slope is a core consideration for the majority of kinds of green infrastructure. This
analysis defined slopes of 1–5% and 2–10% as high suitability because some practices
can be implemented correctly and function better on flatter ground. Areas with slopes
exceeding 15% receive scores of 0. Slope was weighted at 0.2 out of 1 in this analysis.
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Proximity to roads was taken into account because roads provide easier access
for inspecting and maintaining large-scale green infrastructures. Smaller-scale practices
(rain gardens, rain barrels, and stormwater plants) do not have the same requirements
for heavy on-site maintenance equipment, however. So different practices were
analyzed on different scales. This factor was weighted at 0.1 out of 1.
Some green infrastructures should not be implemented in wetlands or hydric soil
areas, so this factor needed to be taken into consideration in the analysis. For practices
relying on infiltration for runoff reduction or water quality improvement, such as pervious
pavement and bio-retention, wetlands have a low suitability. However, they have a high
suitability for practices like stormwater wetlands that rely on the surrounding water. It
was weighted at 0.1 out of 1.
Most green infrastructures are not ideally located in floodplains. These practices
(such as permeable pavement, bio-retention, and swales), will be given suitability
scores in the 1 to 4 range. The presence of floodplain is not very important, however,
since green infrastructure practices are meant to deal with small volumes rather than
the 100-year storms that the floodplain designation is based on. So this factor was
weighted at only 0.05 out of 1 (Central New York Regional Planning & Development
Board, 2012).
Walworth Run Green Infrastructure Feasibility Study (Northeast Ohio Regional Sewer District, 2011)
This study is different from the one above. It was influenced by a local greenway
plan intended to revitalize the Walworth Run stream corridor in the Stockyards
neighborhood, and its emphasis is on the stream that carries the Walworth Run sewer
out to the Cuyahoga River, CSO 080. It was aimed at educating the neighborhood on
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the benefits of green infrastructure to the surroundings and illustrating how this analysis
helped with the enhancement process. A unique feature of this feasibility study is the
defining of subsheds. The district set numerous goals for reducing combined sewer
overflow (CSO) volume, and the sewershed sub-division process made for more
effective evaluation. A subshed is defined as a catchment aggregation based on natural
divisions. The study area was divided into 42 subsheds ranging in size from 30 to 150
acres. Six criteria were selected and analyzed by subshed. The analysis process
involved assessing each subshed’s characteristics for each criterion, and then ranking
all the criteria, from 1 (low) to 3 (high), according to the condition of each subshed. After
that, different multipliers were applied to each criterion to calculate the final feasibility.
Redevelopment coordination (*5). This factor was included in the analysis
because the district had to complete 42 million dollars in green infrastructure projects
within eight years and needed to incorporate them with its existing projects to stimulate
economic development. Thus 3 points were given to individual projects constructed
within 5 years; 2 points to projects constructed in 5 to 10 years, and 1 point to projects
requiring longer than that. After the scores were calculated for each subshed, a score of
0–4 points was regarded as low feasibility, 4–6 points as medium feasibility, and 7–12
points as high feasibility.
Vacant and landbank properties (*5). Green infrastructures can mitigate the
negative effects of vacant land and improve the quality of life for the residents of the
neighborhoods in Cleveland. Vacant land and landbank property are also thought to
benefit neighborhoods by increasing land value. The larger the vacant area is, the more
flexible it Is for large-scale green infrastructure implementation. Hence, vacant
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properties that were larger than 2 acres received 3 points. Those between three-
quarters of an acre and 2 acres received 2 points, and smaller areas received 1 point.
After computing the points in each subshed, the district categorized the result as
follows: 0–4 points meant low suitability, 4–9 meant medium suitability, and 10–19
points meant high suitability.
Public lands adjacent to vacant and landbank properties (*2). The district
judged that identifying a partner whose mission was consistent with the district’s own
concentration on clean water would be helpful to green infrastructure implementation.
The potential partners included school properties, parks, and non-profit properties. After
establishing the partner layer by putting all the elements together, the District overlaid
the partner layer with the vacant or landbank property map to determine the feasibility
for these criteria. Subshed-owning partnerships adjacent to the vacant or landbank
property offered a high feasibility. Subshed-possessing partnerships within 500 feet of
the property were medium feasibility. The rest were low feasibility.
Impervious areas (*3). An effective way of reducing CSO volume is to prevent
stormwater from reaching the combined sewer systems by having a large number of
impervious areas connected to the sewer system. By tallying the parking lots and large
building areas in each subshed, the district was able to reclassify the impervious area
as follows: subsheds with less than 5% impervious area were low suitability; subsheds
with 5–10% impervious area were medium suitability; and those with more were high
suitability.
Minorities and poverty (*1). Green infrastructures can provide an overall
socioeconomic improvement to a community. In this case, the 33% minority-population-
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rate map and the 13% poverty-rate map were overlaid. Subsheds with both of these
characteristics were viewed as high feasibility. Subsheds with just one of the two
categories were deemed medium feasibility. Those with neither were regarded as low
feasibility.
Soils (*1). The urbanization process in Cleveland caused soil displacement,
which affected the sites’ capacity for water infiltration. Because the urban condition was
complex and the site specifics were unknown, the district classified soil into only two
types: subsheds where historic soil maps showed a sandy condition were high
feasibility, and subsheds where the maps showed potential soil restrictions were low
feasibility.
GIS Suitability Model: Berlin, Maryland (Marney, 2012)
This analysis was done in a thesis to determine green infrastructure suitability on
the basis of GIS data to deal with stormwater in Berlin. My research will use the same
definition of green infrastructure, which is a system mimicking natural processes. This
research also sorted green infrastructures into rain gardens, filter strips, bio-swale,
permeable pavement, and bio-retention ponds. It then analyzed the city’s
implementation requirements and selected slope, soil type, proximity to structures, land
ownership, depth to ground water, and land use. The criteria selection process was
based mainly on New York City’s green infrastructure suitability analysis. The rank
values were 1 (low) through 3 (high). Slopes of 2–4.9% were ranked high, slopes of 5–
8% medium, and slopes of 0–1.9% low. The soil type factor was ranked the same way
as in New York. Land use was categorized as commercial, industrial, or residential,
which were deemed to have high, medium, and low suitability respectively. These three
factors were also taken from New York’s analysis. Proximity to structures was included
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in order to avoid damage to structure foundations. A distance of more than 15 feet to
the nearest structure meant high suitability, with a score of 3. Distances of 10 to 14.9
feet and of 9.9 feet or less were regarded as medium and low suitability, respectively.
Land ownership was considered, according to Marney (2012), because it influences the
implementation process. Private landowners are likely to create obstacles to green
infrastructure implementation. Private land was thus given a low-suitability score of 1.
Public land, on the other hand, was given a 3. Depth to ground water, a unique criterion
here, was considered according to the requirements of the particular tools (Marney,
2012). A depth of more than 5 feet meant high suitability and a score of 3. Depths of 2
to 4.9 feet and of 1.9 feet or less get scores of 2 and 0 respectively.
Replicable GIS Suitability Model for Stormwater Management and the Urban Heat Island Effect in Dallas, Texas (Buchholz, 2013)
The aim of this study, also a graduate student thesis, was to promote green
infrastructure and LID implementations for the stormwater management and urban heat
island problems by adopting a replicable GIS suitability model. The study selected five
criteria for determining suitability. Each criterion was given a score from 1 (low
suitability) to 3 (high suitability).
The minority-and-poverty status criterion was taken from the Walworth Run study
due to the similar demographic situation: Dallas has a large middle-class Latino
population. Areas with more than 40% poverty and more than 64.9% minority
populations were defined as highly suitable and given a score of 3. Areas with only one
of those characteristics were given a 2, areas with neither were defined as low suitability
and given a 1.
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Soil was also included in this study. In fact, soil and slope were analyzed
together because the data contained them together. Eighty types of soil were sorted into
three main groups. The ranking method accorded largely with that of the Berlin study
and the EPA’s urban soil suitability evaluation for green infrastructure. Sandy soil and
sandy-loamy soil were given a score of 3, representing high suitability. Loamy soil was
given a 2, and clay a 1, representing low suitability. Soil with a slope of 0–1% or of more
than 8% was given a 1.
Land surface temperature was used to indicate hot spots, areas that would
benefit from green infrastructure. This factor was taken into consideration mainly on the
grounds that green infrastructure can mitigate the urban island heat effect. The hot spot
identification process involved classifying raster values of temperature with a 0.5
standard deviation. Top stand deviation areas were regarded as having high suitability
and the rest as low suitability.
Land cover was selected for its effect on land surface temperature. The more
impervious an area was, the more it would benefit from green infrastructures. Areas
were sorted into three groups on the basis of this criterion. Fifty to 100% impervious
developed land cover indicated high suitability and received a score of 3; 0–49%
impervious developed land cover meant medium suitability and a score of 2; natural and
agricultural land cover meant low suitability and a score of 1.
Tree canopy data was used to better understand the recent environmental
conditions in Dallas. Areas with less tree canopy could benefit more from green
infrastructure. An area with a 0% tree canopy received a score of 3 (high suitability),
with a 1–80% canopy, a 2 (medium), and with an 81–100% canopy, a 1 (low).
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This analysis used two models. One was used to give each criterion the same
weight (0.2). The second was used to give the minority and poverty and land
temperature criteria more weight (0.25), and the tree canopy criterion less (0.1), with the
rest the same. The second model appeared to be more selective in identifying high-
suitability areas for green infrastructures, and naturally this was adopted for the result of
the analysis.
Green Infrastructure Feasibility Scan for Bridgeport and New Haven, Connecticut (City of New Haven, 2012)
Bridgeport and New Haven conducted a feasibility study in order to evaluate
opportunities for green infrastructure incorporation. The main purpose of the study was
to function as a basis for future planning and design. It differed from the studies
discussed above in that it merely enumerated factors that might influence green
infrastructure site selection without ranking or weighing them. They were still useful in
the criteria selection for the present study.
Publicly owned areas were considered better sites for green infrastructure
implementation because they allowed for reduction not only in the cost but in the
complexity of the whole process, including planning, constructing, and maintenance.
Furthermore, green infrastructures implemented on public land could better serve as
educational tools. Green infrastructures implemented in CSO areas could also play a
better role in source control. Area presence was also considered as a factor. Sites with
better visibility could both display the efforts of the city to improve water quality and
function as evidence of how well they performed and how they benefitted the city. As
with the Walworth Run study, incorporation with existing developments was included
because of the importance of reducing expenditures on the more expensive types of
28
green infrastructure implementation. The final criterion was the difficulty in each area of
making modifications for source control. Areas where little modification was needed to
gain the benefits of green infrastructure were considered highly suitable for green
infrastructure implementation.
A GIS Suitability Analysis of the Potential for Rooftop Agriculture in New York City (Berger, 2013)
This research led me to exclude green roofs, green walls, and similar systems
from my study. It used a completely different method from the other studies. The main
reason is that this kind of design tool is not implemented on the ground; it is adapted on
or in the building. The methodology was basically a building selection process. The first
step was determining the area of interest by selecting for buildings of 10 floors or fewer
occupying more than 10,000 square feet, completed before 1968, and located in
commercial and manufacturing zones. The area of interest was refined as Brooklyn.
The only ranking criteria were the area of each building and the year it was built. Table
2-3 shows how the buildings were ranked. A score of 3 to 6 represents one specific kind
of green roof. 1 and 2 indicate a low potential for green roofs.
Table 2-3. Suitability Ranking Matrix for Rooftop Agriculture in New York City
Suitability ranking
matrix
Prior to 1968
(Intensive)
After 1968
(extensive)
Small scale
0–5000 sq.ft. 2 1
Medium scale
5000–40000 sq.ft. 5 3
Large scale
More than 40,000 sq.ft. 4 6
29
CHAPTER 3 METHODOLOGY
Definition of Study Area
The study area of this thesis will be the city of Gainesville in Alachua County,
Florida. Gainesville is the largest city in the county, with an area of 48.2 square miles
(City-data, 2015). The estimate population in 2014 is 128460. The elevation of
Gainesville is 121 feet. Florida’s annual rainfall is 53.58 inches, which is 14.4 inches
above the national average (WeatherDB, n.d.). Over the last 30 years, Gainesville
averaged 47.33 inches annually, which is 8.16 inches above the national average.
Rainfall was heaviest in the summer, with 19.58 inches.
Definition of Green Infrastructure
Green infrastructure has been defined differently throughout the literature. At the
city or county level, it generally means the patchwork of natural areas that provide
habitat, flood protection, clean air, and clean water. At the neighborhood or site level, it
involves stormwater management systems that mimic nature by soaking up and storing
water (EPA, 2014). In this thesis, a small-scale definition of green infrastructure will be
used. It will include these categories: bio-swales, tree cover, rain gardens, permeable
pavements, bio-retention ponds, and other, similar designs. Green roofs and green
walls will be excluded because the methodology of the green roof suitability analysis
study discussed in the literature review was different from the others.
Criteria Selection and Ranking
Criteria selection is an important part of this research. The criteria selection
principle is mainly based on past suitability analyses. Three main considerations
determined the factors used here: technical requirements, non-technical factors, and
30
data availability. Suitability is divided into 3 group: high suitability, medium suitability and
low suitability. This study will use score of 3, 2 and 1 to indicate high suitability, medium
suitability and low suitability respectively.
Among the technical requirements, soil and slope were both selected as in
several past studies. Soil type has been used in suitability analyses in many cities. Soil
is made up of different components, and different soil types have different particle sizes.
Green infrastructure tests should concentrate not only on the soil’s capacity for
stormwater runoff retention and infiltration, but on its support for natural vegetation
(EPA, 2011). This is how I have ranked this criterion.
Sandy soil has the ability to keep its structure and does not create serious
drainage or compaction problems. It is less likely to have high levels of soluble
contaminants, and it responds well to organic additions. Green infrastructures function
well on sandy soils for stormwater infiltration work (EPA, 2011). Sandy soils will thus be
given a high score of 3. Loamy soils are blends of sand, clay, and silt that show each
property evenly. They are the best soils for producing high yields from food crops. Their
drainage and infiltration properties depend on the relative proportions of their
component materials. Drainage works well for maintaining the ideal soil moisture levels
for plant growth in uncompacted loamy soils (EPA, 2011). Loamy soils will be given a
score of 2. Clayey soil’s particle size is small and flat. Because of that, its capacity for
absorbing water is good. Water erosion on clayey soil is often severe, however, and
clayey soils are not typically well drained. Natural phenomena and human activity can
easily compact clayey soil. Aeration and soil amendment are generally needed to
31
establish vegetation on clayey soil (EPA, 2011). Therefore, clayey soil will be given a
low score of 1. Water will receive a score of 0.
Slope is considered not only because it appears in the past studies but because
it affects the functioning of green infrastructures. Table 3-1 contains several green
infrastructure practices and the maximum slope for each as recommended by various
sources (EPA, 2014). Several green infrastructures are limited to slopes of less than
6%, so slopes of 0–6% will be given a high score of 3. Slopes of 6–10% will be given a
2, and those of 10% or more will be given a low score of 1.
Table 3-1. Green Infrastructure Practice Maximum Slope (EPA, 2014)
Green infrastructure practice
Maximum Slope Reference
Bioretention/Vegetated swale/Planter box
6% CWP, 2009: Penn. SW BMP Manual (BMP 6.4.5/BMP 6.4.8)
Dry well 6% CWP, 2009: Penn. SW BMP Manual (BMP 6.4.6)
Grass Channel with check dams (vegetated swale)
5% CWP, 2009: CED Engineering website
6% CWP, 2009: Penn. SW BMP Manual (BMP 6.4.8)
Diversion/Infiltration berm (terracing)
25% CWP, 2009: Penn. SW BMP Manual (BMP 6.4.10)
Infiltration trench 5% CWP, 2009: Penn. SW BMP Manual (BMP 6.4.4)
Permeable pavement 5% Fassman and Blackbourn, 2010; CWP, 2009; Muench et al. 2011: Penn. SW BMP Manual(BMP 6.4.1)
Vegetated filter strip 6% CWP, 2009 8% Penn. SW BMP Manual
(BMP 6.4.9) 33% Navickis-Brasch, 2011
Non-technical factors are imperviousness, land ownership, and land use. Land
cover (imperviousness) was selected by both Walworth Run and Dallas to analyze
suitability. Data on intact impervious surfaces can make the model more precise
32
(Marney, 2012). Some of the impervious areas are connected directly to the sewer
systems, so that stormwater falling on the impervious areas will flow directly into the
sewers (Northeast Ohio Regional Sewer District, 2011). Thus the more impervious the
land is, the more area is needed to implement green infrastructures. Both of the other
studies selected land cover (imperviousness) as a parameter; however, they used
different methods to rank it. Walworth Run defined imperviousness by subshed, which is
catchment aggregation based on divisions created by land use, neighborhoods, and
roadways (Northeast Ohio Regional Sewer District, 2011). Walworth Run calculated
imperviousness from the percentage of the land in each subshed covered by parking
lots and large buildings (Northeast Ohio Regional Sewer District, 2011). Dallas, on the
other hand, simply based its study on the 2006 National Land Cover (NLCD) dataset,
which gives the imperviousness of the land directly. Dallas categorized land into four
kinds of imperviousness: water; 0–20% impervious land cover or natural/agricultural
land cover; 20–49% impervious land cover; and 50%—100 impervious land cover
(Buchholz, 2013). Taking only parking lots and large buildings into consideration yields
less accurate results than the Nation Land Cover dataset. In this thesis, I will use the
same method as Dallas for categorizing and ranking imperviousness. Green
infrastructures benefit impervious areas more (Buchholz, 2013). Developed land that is
50–100% impervious has high suitability and will get a score of 3; 20–49% impervious
land will get a 2; and natural land cover and 0–20% impervious developed land has low
suitability and will get a score of 1. Water will be scored 0 because of the impossibility of
implementation. The difference in this ranking method is the treatment of 0–20%
33
impervious developed land. These lands are mostly vegetation in the form of lawn
grasses. It is more appropriate to rank them as low in suitability.
Land ownership was selected as a parameter because of social factors in Berlin
and in Bridgeport and New Haven. Berlin considered the divergence between public
and private interests. Land owned by the public can be easily fitted with green
infrastructures; private land, however, can be difficult to adapt depending on the owner’s
preferences (Marney, 2012). Private land can thus create obstacles to the green
infrastructure implementation process. In Bridgeport and New Haven, ownership was
also considered for educational purposes. Green infrastructure projects provide
opportunities to stakeholders to understand green infrastructure and its implementation
issues in the real world (City of New Haven, 2012), and in public areas they allow the
public to see what green infrastructures look like and how they work (City of New
Haven, 2012). Professional staff can also benefit from green infrastructures in public
areas by gaining real world experiences during the design, implementation, and
maintenance processes (City of New Haven, 2012). In addition, a key objective of
Alachua County’s updated comprehensive plan was to improve ways of managing
conflicts between developmental, agricultural, and environmental uses (Alachua County
Growth Management Department, 2011). This indicates that land management is a
problem in Alachua County. For example, private land can create barriers to green
infrastructure implementation. Consequently, community-level, rather than individual-
level implementation of green infrastructure can help local governments achieve their
environmental, sustainability, and adaptation goals (Foster, Lowe, & Winkelman, 2011).
34
Thus public land has high suitability and receives a score of 3; private land has low
suitability and a score of 1.
Land use was chosen as a factor for social reasons. New York City and Berlin
selected it as a criterion because residents often dislike the appearance of green
infrastructures. Also, even though the biological and chemical processes of some green
infrastructures can take up some nutrients, such as phosphorus, from stormwater, the
depression areas that become inundated with plants can cause mosquito breeding
problems (Rector, Duckworth, & Obropta, 2012), which residents dislike. Bio-retention
and pervious pavements can work well in commercial areas because of their
widespread parking lots. In Gainesville in particular, where University of Florida is
located, high suitability should give to school areas, which are classified as institutional
lands, because green infrastructures can be used as educational resources for the
students there. Their educational value can be better realized when they are located
near schools. Another major area of institutional land in Gainesville is the airport.
Implementing green infrastructure on airport land can be a very sustainable method of
stormwater management. Thus residential areas will be given a low score of 1, while
commercial and institutional areas will be given a high score of 3. Other kinds of land
will be given a score of 2.
Analytic Hierarchy Process
The analytic hierarchy process (AHP) is a way of deriving relative scales from
judgment or from data from a standard scale and determining how to perform the
subsequent arithmetic on these scales to avoid unnecessary number crunching. Past
researches about green infrastructure suitability analysis have seldom used this method
to determine weights for criteria. Also, some of the researches claims that criteria
35
weighting is one of their shortages of using empirical way. This research adapts analytic
hierarchy process method which provides a strong evidence to determine weights for
criteria.
For a suitability analysis, it is necessary to give a score to each criterion. For this
purpose, Saaty's nine-point weighing scale was applied in a pairwise comparison
matrix. To develop a pairwise comparison matrix, different criteria are required to create
a ratio matrix. The pairwise comparisons are then taken as input and relative weights
are produced as output. The weights on specific criteria can be calculated after the
formation of the pairwise comparison matrix. The first step is finding the sum value in
each column in the matrix. The second step is normalization, which uses the column
total to divide every element in the matrix. The last step is to compute the average of
each row in the normalized matrix. This average will be the weight of the corresponding
criterion. People do not innately use logic consistently every time (Saaty, 1994), so after
the weight of each criterion has been computed, the consistency ratio (CR) should also
be measured to eliminate bias. A reasonable value for this is a CR of less than 0.1. A
greater value indicates that the weights are inconsistent. In this case the pairwise
comparison matrix should be revised and reconsidered (Kumar & Shaikh, 2012). The
CR can be calculated by the formula
CR = CI/RI (3-1)
in which CI is the consistency index. CI can be computed, under the condition that λ is
greater than or equals to n, by the formula
CI = (λ-n)/(n-1). (3-2)
36
Here, λ is the eigenvalue of the matrix and n is the criterion number in the research. RI
is the random index, which for this research, where the number of criteria is 5, RI equals
1.12 (Saaty, 2000).
37
CHAPTER 4 PROCESS
Data Collection and Ranking
Determining the criteria, which are soil type, slope, imperviousness, land
ownership, and land use, is the first step. The next step is to collect the relevant data.
For soil type, I used the soil data from the Natural Resources Conservation
Service (NRCS). This is collected through the National Cooperative Soil Survey, and it
contains the most detailed soil geographic data. The geodataset type is shapefile and
the geodataset feature is polygon, with attributes on each unit of land. The most useful
information for this research was the map unit attribute, which is named “MUNAME” in
the attribute table. It contains the information on the soil characteristics of each unit.
The slope data could not be gathered directly. However, ArcMap has a tool
called slope that can be used accomplish this step by incorporating digital elevation
model data. Florida’s statewide 5-meter digital elevation model (DEM) was used to
collect data. This is not the only reason I selected this dataset, however. To keep
process consistent, all the raster data and processes were set with a 5-meter cell size.
The DEM dataset just fit the consistency objective.
Imperviousness data comes from “NLCD 2006 Land Cover (2011 Edition,
amended 2014)”. The NLCD (National Land Cover Database) products are created as
part of a cooperative project conducted by the Multi-Resolution Land Characteristics
(MRLC) Consortium. The dataset consists of raster data presented in a remote-sensing
image mode. The attribute table does not show the attribute information directly, but
only the number information. However, the metadata explains what each number
38
means. Detailed information is in the appendix. The ranking process is based on what
the dataset contains and how it represents the information.
Land ownership data was obtained from “ALACHUA COUNTY FLORIDA
PARCEL DATA – 2010.” The purpose of the data is “to serve as base information for
use in GIS systems for a variety of planning and analytical purposes.” It consists of
vector data with attributes on each unit (parcel). The geodataset type is shapefile and
the geodataset feature is polygon. The public land code is listed in the attribute table for
each parcel. I use this information to distinguish public and private land.
Land-use data was acquired from “FDOT DISTRICT 2 – GENERALIZED
FUTURE LAND USE.” This contains information on both future land use and current
land use of each unit, represented by a vector type. The ranking process is based on
what the data can offer to further the research.
The collected data also included information on the study area boundaries. The
study area is Gainesville, in Alachua County, so I used the “CITY LIMITS – DERIVED
FROM FLORIDA PARCEL DATA – 2011” data set, which contains all the city limits in
Florida. This dataset will be used as a limitation tool for the research.
The main reason for the ranking process is given in the methodology section
above. Table 4-1 below summarizes how each criterion was ranked.
Data Processing
The first step of the process was to isolate Gainesville’s city limits in the Florida
city limits dataset. The collected data did not cover Gainesville alone; some of them
covered the whole county or state. Because the study area is Gainesville, the data for
each criterion were masked using the isolated Gainesville city limit layer. To keep the
research consistent, the raster data processing cell size was 5 meters, the processing
39
mask was Gainesville city limits, and the processing extent was also Gainesville city
limits. Another significant measure to ensure the consistency of the process was that all
the raster data that were transformed from vector data were extracted using
Gainesville’s boundaries instead of being clipped before the transformation process.
The data processing steps are shown in detail in the appendix. The maps appear in the
Results section.
Criteria Weighing
AHP has been used in many decision-making projects and suitability analyses. I
adopt it for my green infrastructure suitability analysis, which according to my literature
review is a unique usage.
The main directive guiding the final weighing of the criteria is that technical
requirements are to weigh more than non-technical requirements. The AHP used this
guideline to conduct the pairwise comparison process. Table 4-2 shows the pairwise
comparison matrix, and Table 4-3 presents the normalized pairwise comparison matrix.
These two table contribute to the result of Table 4-4 which indicates criterion weights of
this research. The results of its computation result are represented by the following
formula:
GI suitability = (0.320 * soil) + (0.310 * slope) + (0.177 * imperviousness) + (0.107 * land
ownership) + (0.086 * land use). (4-1)
Table 4-5 proves the consistency of the research. The CI was calculated to be
0.035681, which is less than 0.1, and λ to be 5.142726 which is more than the number
of criteria. That means that the weights for the criteria are consistent and that the result
can, theoretically, be used.
40
Weighted Sum
Following the AHP weighting process, a suitability map was generated using the
weight sum tool in ArcGIS by giving each criterion the value generated for it by AHP.
41
Table 4-1. Suitability Criteria and Ranks
Rank
High Suitability Medium Suitability Low suitability None
Criteria
Soil type Sandy soil Loamy soil Clayey soil /
Percent slope 1-6% 6-12% 12-18% 18% above
Imperviousness 0-100%
impervious
developed
land
20- 49% impervious
developed land
Natural Land
Cover& 0-
20%
impervious
developed
land
Water
Land ownership Public / Private /
Land use type Commercial
, institutional
and open
space
Other Residential
and
conservation
/
42
Table 4-2. Pairwise Comparison Matrix
Soil Slope Imperviousness Land ownership Land Use
Soil 1 1 2 3 4
Slope 1 1 3 2 3
Imperviousness 1/2 1/3 1 2 3
Land ownership 1/3 1/2 1/2 1 1
Land use 1/4 1/3 1/3 1 1
43
Table 4-3. Normalized pairwise comparison matrix
Soil Slope Imperviousness Land
ownership
Land Use
Soil 0.3243243 0.315789 0.292682927 0.333333333 0.333333
Slope 0.3243243 0.315789 0.43902439 0.222222222 0.25
Imperviousness 0.1621622 0.105263 0.146341463 0.222222222 0.25
Land ownership 0.1081081 0.157895 0.073170732 0.111111111 0.083333
Land use 0.0810811 0.105263 0.048780488 0.111111111 0.083333
44
Table 4-4. Criterion Weights
Criterion weight
Soil 0.320
Slope 0.310
Imperviousness 0.177
Land ownership 0.107
Land use 0.086
Table 4-5. Consistency Test Result
Lambda CI
5.142726 0.035681
45
CHAPTER 5 RESULTS
The first five maps show the reclassified criteria and the suitability for each. The
suitability is represented in each cell by the color from the legend on each map.
According to the maps showed below, soil condition in Gainesville is generally
good which can be seen in Figure 5-1. There is only a small percentage of lands with a
low suitability for green infrastructure. Also, the majority of the slope condition of green
infrastructure suitability is fine. The areas with low suitability are mainly water areas
which are excluded from the research. Figure 5-2 displays the percent slope suitability
information. Suitability of land ownership map (Figure 5-3) shows that Gainesville
Renewable Energy Center, University of Florida, Gainesville Regional Airport, Gum
Root Park, Split Rock Conservation area, Bivens Arm Nature Park and other areas with
a color of purple are more suitable for green infrastructures. Figure 5-4 is the land use
suitability map. It indicates that Gainesville Gainesville Renewable Energy Center,
University of Florida, Gainesville Regional Airport, Gum Root Park, Oaks Mall, Split
Rock Conservation area, Bivens Arm Nature Park, car agencies beside NE 39th street
and Main Street, schools in Gainesville and other land with a color of purple are with
high suitability for green infrastructures. Imperviousness map is showed in Figure 5-5. It
delivers the information that Butler plaza, parts of University of Florida, areas around the
intersection of SW Depot Avenue and S Main Street, University of Florida Eastside
Campus, and area around Alley Gatorz Bowling Center beside NE state Rd 24, car
agencies beside NE 39th Street and Main Street, area around the intersection of NW
13th Street and NW 23rd Avenue, area around the intersection of NW 13th Street and
NW 53rd Avenue, part of the Gainesville Regional Airport, part of the Gainesville
46
Renewable Energy Center, Oaks Mall, and other areas representing an orange color
are high suitability areas.
The final map, Figure 5-6, which integrates all five criteria, shows overall green
infrastructure suitability in Gainesville. The suitability is represented by the colors given
in the legend, ranging from blue (low) through yellow (medium) to red (high). The map
can be used as a first step reference or resource for decision makers selecting
implementation sites for green infrastructure. The result shows several potential areas
that are most suitable for green infrastructure implementation. These areas are
Gainesville Renewable Energy Center, Alachua County Corrections Library, Alachua
County Jail, Grace Market Place, car agencies beside NE 39th street and Main Street,
area around Tacachale Center, part of Depot park, 913 SE 5th Street, southern part of
University of Florida, US Post Office on 34th street, Myra Terwilliger Elementary School,
C. W. Norton Elementary School and other areas showing with a red color.
47
Figure 5-1. Reclassified Soil Map
48
Figure 5-2. Reclassified Slope Map
49
Figure 5-3. Reclassified Land Ownership Map
50
Figure 5-4. Reclassified Land Use Map
51
Figure 5-5. Reclassified Imperviousness Map
52
Figure 5-6. Green Infrastructure Suitability Map in Gainesville
53
CHAPTER 6 DISCUSSION
The results of this analysis can be regarded only as a first-step indicator for
decision makers and planners. The areas identified as high suitability are mostly parking
lots. Parking lots are among the most important land cover types for stormwater
management, which shows the model’s feasibility, but this is not the whole story.
A second important point is site specialty. This derives mainly from the fact that
the University of Florida is located within the study area. When a large university is
located in a city, demographic information is different from what it would be in another
city of the same scale. This is one reason I did not consider the minority-and-poverty
factor that was adopted in Walworth Run and Dallas. Poverty data, in which is derived
from demographic data, cannot be used because the large number of students who
would be counted as “low-income” would disturb the results. Another reason for the
importance of site specialty is that most of the soil and slope conditions here are
acceptable for green infrastructure implementation. This fact created ambiguity
throughout the research. However, the two criteria work better at other sites whose soil
and slope condition vary.
A third point is the accuracy of the slope data. These data, as I said, were
generated using the slope tool with the Florida DEM data. When the model was
generated, water areas were all reclassified with a score of –1. The slope generation
process was affected by this reclassification. Normally, water area edges should not be
flat; there should be a slope from the edge of the water area down to the bottom of the
water. Although this did affect the accuracy of the slope data, water areas were
excluded from this research because of the limitations of green infrastructure, as
54
defined here, and the impossibility of implementation. In other words, although the data
are inaccurate in places, this does not hurt the accuracy of the final result.
The fourth matter is criteria selection. A suitability analysis should begin with a
definite goal. In this research, I started by looking at the benefits of green infrastructure
for stormwater management. However, the green infrastructure has considerable
benefits beyond this. The suitability analysis performed in Dallas considered both
stormwater management and the urban heat island effect. In future research, criteria
relating to other goals can be added to further guarantee suitability to green
infrastructures. Criteria selection can also be made on the basis of economic
considerations, such as cost–benefit analyses of specific green infrastructures.
The fifth one is the criteria ranking method. This study uses 1, 2 and 3 to indicate
low, medium and high suitability respectively. It is mainly referred to the study in Dallas
and Town of Berlin. The score of 1, 2 and 3 may affect the accuracy of the result as
some of the attributes in one criteria are given a same score which may be slight
different in suitability. For example, in land use type commercial land and institutional
land are reclassified as high suitability area. However, commercial land may present
higher suitability than institutional land, or green infrastructure functions better in
institutional land than in commercial land. Once there are evidences showing these
differences in suitability for green infrastructure, it can be more accurate to use a larger
scale to distinguish suitability. Further study can be done to detail the differences of
these attribute in each criteria and to differentiate them by using larger scaled numbers.
The sixth one is about the replicability of this study. The method the study is only
referable but not replicable in other place. First, the characteristic of criteria selected
55
must not be the same as what it is in Gainesville. Second, other criteria can be
considered to ameliorate a study based on the goal of a study or the particularity of a
study area.
The final element that should be taken into consideration is the weight given to
each criterion. The core characteristic of a suitability analysis is that it is in fact a
qualitative study represented in a quantitative format. My literature review indicates that
previous studies of green infrastructure suitability, especially in their weighting
processes, did not have statistical support and were conducted empirically. I adopted
AHP in this research, which can alleviate the shortage of weight support for each
criterion. However, the pairwise comparison process in AHP still contains a
transformation step from qualitative to quantitative that lacks solid support. The
comparison result ranging from 1 to 9 can only reduce the error generated by the
transformation but not eliminate it entirely.
56
CHAPTER 7 CONCLUSION
Stormwater management is currently a challenging problem. The implementation
of green infrastructure is one of the most effective ways to conquer this problem. A
green infrastructure suitability analysis can aid in the implementation process. By
considering not only past green infrastructure suitability studies but also research on
land use suitability analyses, and by integrating the data with ArcGIS technology and
the analytical hierarchy process method to provide a solid evidence for criterion weights
and by taking five elements (soil, slope, imperviousness, land ownership, and land use)
into account as suitability determinants, this research has successfully developed a
methodology and mapped out the green infrastructure suitability of the Gainesville area.
57
APPENDIX A DATA PROCESS
Define Study area
1. Add “par_citylm_2011” to the map 2. Select Gainesville city by using select by attribute 3. Export the selected data
The exported Gainesville city will be the study area for this research. All the
analyses are within this area, and the map is named as “Gainesville city limit”
Generate slope percent map
1. Add “FLORIDA DIGITAL ELEVATION MODEL (DEM) MOSAIC - 5-METER CELL SIZE - ELEVATION UNITS METERS” data to the map
2. Use “extract” tool under “surface” in “spatial analyst tools” toolbox to generate Gainesville DEM by setting the mask as “Gainesville city limit”
3. Use “slope” tool under to generate Gainesville slope percent map
Generate soil map
1. Add “SOIL SURVEY GEOGRAPHIC (SSURGO) DATABASE FOR FLORIDA - JUNE 2012” data to the map
2. Convert the vector data to raster by using “feature to raster” under “conversion tools” toolbox and keep “MUNAME” field during the process for future reclassification
3. Use extract” tool under “surface” in “spatial analyst tools” toolbox to generate soil raster map in Gainesville
Generate land ownership map
1. Add “FLORIDA PARCEL DATA - 2012” data to the map
2. Convert the vector data to raster by using “feature to raster” under “conversion tools” toolbox and keep “PUBLICLND” field during the process for future reclassification
3. Use extract” tool under “surface” in “spatial analyst tools” toolbox to generate parcel data in Gainesville
Generate imperviousness map
58
1. Add “NLCD 2011 Land Cover (2011 Edition, amended 2014) - National Geospatial Data Asset (NGDA) Land Use Land Cover” to the map
2. Use “extract” tool under “surface” in “spatial analyst tools” toolbox to generate Gainesville imperviousness map by setting the mask as “Gainesville city limit”
Generate land use map
1. Add “FDOT DISTRICT 2 - GENERALIZED FUTURE LAND USE” data to the map
2. Convert the vector data to raster by using “feature to raster” under “conversion tools” toolbox keep “Descript” field during the process for future analysis
3. Use extract” tool under “surface” in “spatial analyst tools” toolbox to generate land use raster data in Gainesville
59
APPENDIX B RECLASSIFICATION TABLES
Table B-1. Soil Type Reclassification
VALUE COUNT MUNAME New Value
1 96488 MYAKKA SAND 3
2 79875 POMONA SAND, DEPRESSIONAL 3
3 27248 SPARR FINE SAND 3
4 891117 POMONA SAND 3
5 25912 PLUMMER FINE SAND 3
6 63714 POMPANO SAND 3
7 636418 WAUCHULA SAND 3
8 281184 MONTEOCHA LOAMY SAND 2
9 33867 CHIPLEY SAND 3
10 163528 PELHAM SAND 3
11 643017 MILLHOPPER SAND, 0 TO 5 PERCENT SLOPES 3
12 142855 TAVARES SAND, 0 TO 5 PERCENT SLOPES 3
13 151276 SURRENCY SAND 3
14 1672 MASCOTTE, WESCONNETT, AND SURRENCY
SOILS, FLOODED
2
15 92142 NEWNAN SAND 3
16 5280 POTTSBURG SAND 3
17 53793 MULAT SAND 3
18 14278 LOCHLOOSA FINE SAND, 0 TO 2 PERCENT
SLOPES
3
60
Table B-1. Continued
VALUE COUNT MUNAME New Value
19 7904 PLACID SAND, DEPRESSIONAL 3
20 532204 WAUCHULA-URBAN LAND COMPLEX 2
21 1974 KENDRICK SAND, 5 TO 8 PERCENT SLOPES 3
22 2377 SHENKS MUCK 1
23 80990 SAMSULA MUCK 1
24 132727 KANAPAHA SAND, 0 TO 5 PERCENT SLOPES 3
25 43785 FLORIDANA SAND, DEPRESSIONAL 3
26 93791 WATER 0
27 42925 BLICHTON SAND, 5 TO 8 PERCENT SLOPES 3
28 20107 RIVIERA SAND 3
29 148685 ARREDONDO FINE SAND, 0 TO 5 PERCENT
SLOPES
3
30 21989 PITS AND DUMPS 0
31 13076 APOPKA SAND, 0 TO 5 PERCENT SLOPES 3
32 149197 BLICHTON SAND, 2 TO 5 PERCENT SLOPES 3
33 646323 MILLHOPPER-URBAN LAND COMPLEX, 0 TO 5
PERCENT SLOPES
2
34 37299 MILLHOPPER SAND, 5 TO 8 PERCENT SLOPES 3
35 317397 ARREDONDO-URBAN LAND COMPLEX, 0 TO 5
PERCENT SLOPES
2
61
Table B-1. Continued
VALUE COUNT MUNAME New Value
36 51825 PELHAM, PLUMMER, AND MASCOTTE SOILS,
OCCASIONALLY FLOODED
2
37 14319 ARENTS, 0 TO 5 PERCENT SLOPES 2
38 17547 CANDLER FINE SAND, 0 TO 5 PERCENT
SLOPES
3
39 5499 ZOLFO SAND 3
40 163272 URBAN LAND 2
41 17279 LOCHLOOSA FINE SAND, 5 TO 8 PERCENT
SLOPES
3
42 105465 BLICHTON-URBAN LAND COMPLEX, 0 TO 5
PERCENT SLOPES
2
43 141033 URBAN LAND-MILLHOPPER COMPLEX 2
44 61808 LOCHLOOSA FINE SAND, 2 TO 5 PERCENT
SLOPES
2
45 46773 BIVANS SAND, 2 TO 5 PERCENT SLOPES 2
46 5223 FORT MEADE FINE SAND, 0 TO 5 PERCENT
SLOPES
3
47 33458 BONNEAU FINE SAND, 2 TO 5 PERCENT
SLOPES
3
48 11122 BIVANS SAND, 5 TO 8 PERCENT SLOPES 3
49 30037 KENDRICK SAND, 2 TO 5 PERCENT SLOPES 3
62
Table B-1. Continued
VALUE COUNT MUNAME New Value
50 15834 GAINESVILLE SAND, 0 TO 5 PERCENT SLOPES 3
51 2895 PICKNEY SAND, FREQUENTLY FLOODED 3
52 2089 OCILLA, ALAPAHA, AND MANDARIN SOILS,
OCCASIONALLY FLOODED
2
53 3900 STARKE SAND, FREQUENTLY FLOODED 3
54 557 PEDRO FINE SAND, 0 TO 5 PERCENT SLOPES 3
55 8123 NORFOLK LOAMY FINE SAND, 2 TO 5
PERCENT SLOPES
2
56 4755 ARREDONDO FINE SAND, 5 TO 8 PERCENT
SLOPES
2
57 28881 LAKE SAND, 0 TO 5 PERCENT SLOPES 3
58 970 MICANOPY LOAMY FINE SAND, 2 TO 5
PERCENT SLOPES
2
59 942 NORFOLK LOAMY FINE SAND, 5 TO 8
PERCENT SLOPES
2
60 3366 JONESVILLE-CADILLAC-BONNEAU COMPLEX,
0 TO 5 PERCENT SLOPES
2
61 1202 BLICHTON SAND, 0 TO 2 PERCENT SLOPES 3
63
Table B-2. Slope Reclassification
Old Value New Value
0-6 3
6-12 2
12-18 1
18-617.358459 0
64
Table B-3. Imperviousness Reclassification
Value Definition New Value
11 Open Water - All areas of open water, generally with less
than 25% cover or vegetation or soil
0
21 Developed, Open Space - Includes areas with a mixture of
some constructed materials, but mostly vegetation in the
form of lawn grasses. Impervious surfaces account for less
than 20 percent of total cover. These areas most commonly
include large-lot single-family housing units, parks, golf
courses, and vegetation planted in developed settings for
recreation, erosion control, or aesthetic purposes.
1
22 Developed, Low Intensity -Includes areas with a mixture of
constructed materials and vegetation. Impervious surfaces
account for 20-49 percent of total cover. These areas most
commonly include single-family housing units.
2
24 Developed, High Intensity - Includes highly developed areas
where people reside or work in high numbers. Examples
include apartment complexes, row houses and
commercial/industrial. Impervious surfaces account for 80 to
100 percent of the total cover.
3
65
Table B-3. Continued
Value Definition New Value
31 Barren Land (Rock/Sand/Clay) - Barren areas of bedrock,
desert pavement, scarps, talus, slides, volcanic material,
glacial debris, sand dunes, strip mines, gravel pits and other
accumulations of earthen material. Generally, vegetation
accounts for less than 15% of total cover.
1
41 Deciduous Forest - Areas dominated by trees generally
greater than 5 meters tall, and greater than 20% of total
vegetation cover. More than 75 percent of the tree species
shed foliage simultaneously in response to seasonal change.
1
42 Evergreen Forest - Areas dominated by trees generally
greater than 5 meters tall, and greater than 20% of total
vegetation cover. More than 75 percent of the tree species
maintain their leaves all year. Canopy is never without green
foliage.
1
43 Mixed Forest - Areas dominated by trees generally greater
than 5 meters tall, and greater than 20% of total vegetation
cover. Neither deciduous nor evergreen species are greater
than 75 percent of total tree cover.
1
66
Table B-3. Continued
Value Definition New Value
52 Shrub/Scrub - Areas dominated by shrubs; less than 5
meters tall with shrub canopy typically greater than 20% of
total vegetation. This class includes true shrubs, young trees
in an early successional stage or trees stunted from
environmental conditions.
1
71 Grassland/Herbaceous - Areas dominated by grammanoid
or herbaceous vegetation, generally greater than 80% of
total vegetation. These areas are not subject to intensive
management such as tilling, but can be utilized for grazing.
1
81 Pasture/Hay - Areas of grasses, legumes, or grass-legume
mixtures planted for livestock grazing or the production of
seed or hay crops, typically on a perennial cycle.
Pasture/hay vegetation accounts for greater than 20 percent
of total vegetation.
1
82 Cultivated Crops - Areas used for the production of annual
crops, such as corn, soybeans, vegetables, tobacco, and
cotton, and also perennial woody crops such as orchards
and vineyards. Crop vegetation accounts for greater than 20
percent of total vegetation. This class also includes all land
being actively tilled.
1
67
Table B-3. Continued
Value Definition New Value
90 Woody Wetlands - Areas where forest or shrub land
vegetation accounts for greater than 20 percent of vegetative
cover and the soil or substrate is periodically saturated with
or covered with water.
1
95 Emergent Herbaceous Wetlands - Areas where perennial
herbaceous vegetation accounts for greater than 80 percent
of vegetative cover and the soil or substrate is periodically
saturated with or covered with water.
1
68
Table B-4. Land Ownership Reclassification
VALUE COUNT PUBLICLND New Value
1 4261084 1
2 846783 M 3
3 223480 D 3
4 172508 C 3
5 304638 S 3
6 26342 F 3
69
Table B-5. Land Use Type Reclassification
VALUE COUNT DESCRIPT New Value
1 1107338 AGRICULTURAL 2
2 1046153 INSTITUTIONAL 3
3 468155 INDUSTRIAL 2
4 1754622 MEDIUM DENSITY RESIDENTIAL 1
5 204253 COMMERCIAL 3
6 477154 CONSERVATION 1
7 1574 UNKNOWN 2
8 50878 MIXED USE 2
9 576148 HIGH DENSITY RESIDENTIAL 1
10 446 LOW DENSITY RESIDENTIAL 1
11 86822 RECREATION / OPEN SPACE 3
70
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73
BIOGRAPHICAL SKETCH
Yuxiao Li was born in Xiaogan, China in 1990. He graduated from Southwest
Forestry University in July 2012 with a bachelor’s degree in resources environment
urban rural planning and management. During the 4 years undergraduate study, he had
strong interests in not only planning but also studying abroad. Pursuing the graduate
study in University of Florida, he participated in the International Urbanism Workshop
“Open space System: A Methodology for sustainable Cities”. Also, he worked as an
intern in St. Johns River Water Management District (SJRWMD) to georeference the old
maps.