Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

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A model-based approach towards A model-based approach towards assessing landscape restoration assessing landscape restoration activities in Watershed 263, activities in Watershed 263, Baltimore, MD Baltimore, MD Brian Voigt Brian Voigt University of Vermont - Spatial Analysis Lab University of Vermont - Spatial Analysis Lab [email protected] [email protected]

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A model-based approach towards assessing landscape restoration activities in Watershed 263, Baltimore, MD. Brian Voigt University of Vermont - Spatial Analysis Lab [email protected]. Current Research - UrbanSim. Modeling urban development patterns in Chittenden County, VT using UrbanSim - PowerPoint PPT Presentation

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Page 1: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

A model-based approach towards A model-based approach towards assessing landscape restoration assessing landscape restoration

activities in Watershed 263, Baltimore, activities in Watershed 263, Baltimore, MDMD

Brian VoigtBrian Voigt

University of Vermont - Spatial Analysis LabUniversity of Vermont - Spatial Analysis [email protected]@uvm.edu

Page 2: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Current Research - UrbanSim

• Modeling urban development patterns in Chittenden County, VT using UrbanSim– simulate future land use and associated environmental

impacts under baseline conditions and alternative scenarios

• Quantifying effect(s) of future urban development patterns have on:– water quality, habitat fragmentation, aesthetics, auto-

dependency, energy consumption, etc.

• Intended to facilitate discourse not predict policy adoption or exact development locations

Page 3: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Project Collaborators

• Austin Troy, University of Vermont

• Morgan Grove, USFS

• Guy Hager & George Friday, Parks and People Foundation

• Bill Stack, Department of Public Works

• Others– Watershed council, community residents,

BES collaborators

Page 4: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Research Questions

• How do we design a simulation modeling framework to facilitate learning about future landscape trajectories based on human interventions and watershed restoration activities?

• How will social and environmental conditions within Watershed 263 change as the City of Baltimore and the Parks and People Foundation strive to meet the urban forestry initiative goals?

Page 5: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Project Goals

• Use a participatory modeling approach to explore relationships among socio-economic and biophysical system characteristics of a complex natural – human urban system

• Help residents and resource managers to consider the effects of human interventions associated with varying levels of green infrastructure investment

• Facilitate a learning process about the natural, biological and socio-economic components of the watershed and their collective interactions that define the current state and potential trajectories of watershed evolution

Page 6: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

The Simile Modeling Environment

• Dynamic, spatially explicit, interactions & feedback

• Stocks, flows & parameters• Visual modeling

environment• Sub-models can be used

independently or grouped with other system components

• Use equation editor to formalize variable relationships and sub-model interactions

Page 7: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

WS263 Model Framework• Suite of sub-models that

interact with one another• Partition landscape into set of

grid cells and define initial condition based on biophysical and socio-economic parameters

• Agent-based approach representing household level decision-making (e.g. relocation, rent v own, etc.)

• Scenario-based analysis to improve our understanding of the system and accommodate variations in data interpretation and relative effects of system components

Page 8: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Data Sources• Demographics

– US Census: Public-Use Microdata Samples (5% sample), Summary File data tables (SF1 & SF3)

– BNIA: neighborhood indicators• Biophysical

– BES: land cover, topography, water quality, air quality• Socio-economic

– BNIA: employment and population control totals, forecasts– BES: employment sites, real estate transaction data, current

land use / land use history, household surveys, PRISM classification

• Infrastructure– Sewer system, road network, transit

• Landscape interventions– PPF & DPW: list of completed, proposed, anticipated projects

Page 9: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Proposed Model Components: 1

• Land use: probability of transition from one type to another• Land cover: changes with interventions, aging vegetation,

infrastructure addition / removal; relationship to water quality and other ecosystem services

• Land price: defined by a hedonic model at the cell level• Employment: allocate employment at the cell level based on

externally derived control totals using a gravity model • Residential location choice: internal and external; agents

(households) synthesized from US Census, PUMS, and household survey data with a focus on tenure, length of residency, employment and income; includes QOL attributes

Page 10: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Proposed Model Components: 2

• Intervention: location choice; probability of success; exogenous inputs define number and type of projects; multiple sub-models for different types of interventions

• Landscape metrics – land use mix, proximity to amenities / disamentities, fragmentation, residential and employment densities; updated annually, these metrics will be used as variables in the other model components; statistical analysis and existing literature will estimate relationships between metrics and system components

• Mechanism to integrate external models (e.g. UFORE, etc.)

Page 11: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Model Output

• Preliminary list of indicators– land value, canopy cover, habitat fragmentation,

residential relocation and vacancy rates, QOL, green infrastructure density and water quality

– refine list of indicators based on further collaboration with PPF and watershed council representatives

• Data visualization– results depicted graphically as maps, overlaid with

major streets and cultural landmarks, by joining the output to polygons bounded at alternative geographic scales (e.g., block group, neighborhood, etc.)

– convey findings and engage stakeholder discussions

Page 12: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Expected Products

• Fully documented model– Detail assumptions, limitations, and future improvements– Transferable to other urban sites– Sub-models can be “recycled” for other applications

• Scenario analysis capability– Foster discussion among stakeholders– Useful for evaluating our knowledge of system

components and understanding of system interactions

• Algorithms for computing indicators

Page 13: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Next Steps

• Explore relationships among diverse collection of data from multiple sources

• Define base year condition• Create synthetic population at the household level• Conceptual model development (early 2007)• Work with project collaborators to identify

appropriate indicators and techniques for conveying information / results to diverse stakeholder groups

Page 14: Brian Voigt University of Vermont - Spatial Analysis Lab brian.voigt@uvm

Questions?Questions?