Modeling Urban Environmental Risks Under Future Climate Change Part I: WRF...
Transcript of Modeling Urban Environmental Risks Under Future Climate Change Part I: WRF...
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Modeling Urban Environmental Risks Under Future Climate Change Part I: WRF-Urban model capabilities
• Fei Chen • Senior Scientist• Research Applications Laboratory• National Center for Atmospheric
Research• Boulder, Colorado, USA Lecturer’s Photo
Outline• Part-I: WRF-Urban model capabilities
• Introduction to urban environmental risks associated with climate change
• WRF-Urban modeling capabilities • Part-II: WRF-Urban applications
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Increasingly urbanized global population• 2007: >50% population; 2050: ~67% (UN, 2012)• 1975: only 5 mega cities (>10 million); 2015: 23 mega cities.
• Climate change and sea‐level rise
• Indoor and outdoor air quality• Human thermal stress• Water and energy sustainability • Atmospheric transport of accidental or intentional releases of toxic material
• Extreme weather events, flood
Examples of urban environmental risks
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IPCC AR5 (2014): Future risks and impacts caused by a changing climate
Adaptation to reduce risk
Urban effect on weather and climate: unintentional modification of the atmosphere by humans
• Urban heat islandsThermal Stress
• Greenhouse gas (CO2) emission• Air pollution on radiation
Climate Change• Boundary layer structures. Local
and regional atmosphere circulations
• Precipitation Floods
Topics discussed by Jamie Voogt and Janet Barlow
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Factors influencing urban environmental risk
Population Change
City Growth
Urban Physical Effects
on Local Climate and Weather
Regional and Global Climate Change
and Extreme Weather
But the risk also depends on
Population Change
City Growth
Urban Physical Effects
on Local Climate and Weather
Global
Climate Change
Societal Factors
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Modeling requirements for urban environmental-risk prediction and mitigation
• Global and regional atmospheric modeling (established)
• Building-scale, outdoor and indoor atmospheric modeling (new)
• “Coupled” human-response modeling (new)
Message ‐ Risk prediction and mitigation must include physical modeling AND human‐response modeling
Modeling the human response to urban environmental risks
• For example, vulnerability to extreme urban heat differs spatially by ecology, socio-economic status and cultural context.
• Needs – Understanding local adaptive capacity (e.g., social networks, social capital, community resiliency, utilization of available resources) is critical toward reducing risk.
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The physical modeling system:A spectrum of coupled scales
Global Scales
Continental Scales
Regional Scales
Local ScalesLong Island
Urban Scales
Current technology for operational weather and climate prediction
Challenge in representing multi-scale urban microclimate
Mesoscale modelsLong Island
Urban Scale models (CFD, LES)
Building energy models Indoor-outdoor exchange
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Weather Research and Forecasting (WRF) ModelWidely used “community model” for both research and operational forecasting• Academic scientists • Forecast teams at operational
weather centers• Applications communities (e.g.
Regional Climate, Air Quality, Agriculture, Hydrology, Utilities)
North Atlantic and North American Regional Climate Changes
Registered Users 1/1/12
American universities,Govt. labs, Private sector 5951
Foreign users 12432--------18383
Countries represented: 137
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Urban Modeling for Weather Research and Forecast (WRF) Model
• We can bridge the gap between traditional mesoscale (~ 10 km) and fine-scale urban transport and dispersion modeling (~ 10 m)
• WRF running with 1-4 km grid spacing• Availability of new data at urban scales, urban canopy
models• Land data assimilation techniques • Techniques to couple mesoscale and CFD (LES) models.
• Hence, the WRF model is able to deal with regional climate, fine-scale weather forecast, and urban scales.
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International collaborative effort:Developing WRF-Urban modeling capability
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More than 100 groups in 25 countries have used the WRF‐Urban modeling system.
Integrated WRF-Urban Cross-scale Modeling Framework
Improved Input
Fine‐scale urban land‐use and building characteristics
Urbanized high‐resolution land data assimilation system
(u‐HRLDAS)
Fine‐scale atmospheric analysis
(FDDA)
WRF Modeling System
Urban modeling componentsAdvanced Applications
Noah land surface model
Urban canopy models
Indoor‐outdoor exchange
Urban T&D models (CFD, LES)
Chemistry (WRF‐Chem)
Hydrology (WRF‐Hydro)
Human‐response modeling
Urban extreme weather and climate
Public health and risk assessment
City flood and water management
Adaptation and mitigation
Emergency response
Chen et al., 2010, Intl. J. Climatology
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What urban effects do we model in WRF?
HeatTurbulenceMomentum
Drag Wake diffusion
Radiation
Surface energy balance: QN+ QF= QH + QE + DQS+ DQA
boundary layer and radiation parameterizations
Fluxes of momentum, latent heat, and sensible heat; radiometric temperature
The Noah Land Model
Coupling the Noah land surface model (LSM) to urban canopy models (UCM)
Natural surface
Urban canopy models: Man‐made surfaceCoupled through ‘urban fraction’
Chen et al., 2010, Intl. J. Climatology
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Urban Modeling in WRF-Noah:Three parameterization schemes
1. Bulk parameterization• Increased roughness length: from 0.5 m to 0.8 m
• turbulence generated by rough elements • Reduced surface albedo: from 0.18 to 0.15
– radiation trapping• Increased volumetric heat capacity and thermal
conductivity: 3.0106 J m-3 K-1 and 3.24 W m-1 K-1• heat storage in buildings
• Reduced evaporation: vegetation fraction was reduced to 0.05; reduced available urban soil water capacity.
• Available since WRF V2.0sf_surface_physics = 2 (Noah), sf_urban_physics = 0
Reference: Liu et al., 2006: Journal of Applied Meteorology and Climatology
2. Single-layer Urban Canopy Model (SLUCM) • 2-D urban geometry • Street canyons • Shadowing from buildings and
reflection of radiation• Multi-layer roof, wall and road
models• Available since WRF V2.2
sf_surface_physics = 2 (Noah) sf_urban_physics = 1
• References:• Kusaka et al., Bound.-Layer Meteor., 2001• Miao et al., J. Appl. Meteor. Climatol., 2009
Urban Modeling in WRF-Noah:Three parameterization schemes
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3. Multi-layer Urban Canopy Model: Building Effect Parameterization (BEP) scheme• Direct interactions with WRF PBL schemes at multiple vertical
layers • Calculate effects of buildings on momentum and heat fluxes • Modify WRF TKE scheme and turbulent length scales
• Available since WRF3. 1sf_surface_physics = 2 (Noah) sf_urban_physics = 2
• works with BouLac and MYJ PBL only
Reference: Martilli et al., 2002, Boundary Layer Meteorology.
Urban Modeling in WRF-Noah:Three parameterization schemes
Salamanca and Martilli (2009, Theoreti. Appli. Climatol.)
Building Energy Model (BEM):Represent indoor-outdoor exchange
• Improve the estimate of the anthropogenic fluxes. • Estimate energy consumption related to meteorology (air conditioning and
heating).
• Available since WRF3. 2sf_surface_physics = 2 (Noah), sf_urban_physics = 3
• works with BEP and BouLac and MYJ PBL only
Air conditioning (cooling)
Air conditioning (heating)
Heat conductionthrough walls
ventilation
Solar radiationthroughwindows
Indoor heatsources(occupants, equipments)
BEP
BEM
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Challenge: from Real World to UCM
Urban canopy model (UCM) parameter space
Specification of UCM parameters in WRF
Two methods
• Using a look‐up table as function of urban land use types
• Directly ingest 2‐D spatial distributions of UCM parameters
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Parameters High density ResidentialCommercial /
IndustryLow density Residential
SLUM20
building height [ m ] 10 7.5 5Standard Deviation of roof height [ m ] 4 3 1
Anthropogenic heat [ W m{-2} ] 90 50 20
road width [ m ] 10 9.4 8.3Fraction of the urban landscape which does not
have natural vegetation. [ Fraction ] 0.95 0.9 0.5
Thermal conductivity of roof [ J m{-1} s{-1} K{-1} ] 0.67 0.67 0.67
Surface albedo of ground (road) [ fraction ] 0.2 0.2 0.2Lower boundary temperature for building wall
temperature [ K ] 293 293 293
…… …… …… ……
BEP3
BUILDING HEIGHTS:
Roughness length for momentum over roof [ m ] 0.01 0.01 0.01
STREET PARAMETERS …… …… ……
BEM13
Coefficient of performance of the A/C systems 3.5 3.5 3.5Thermal efficiency of heat exchanger 0.75 0.75 0.75
Target Temperature of the A/C systems[ K ] 297 298 298Peak number of occupants per unit floor area
[ person/m^2 ] 0.02 0.01 0.01
Peak heat generated by equipment [ W/m^2 ] 36 20 16…… …… …… ……
Specification of UCM parameters in WRF:Using urban parameter table (URBPARM.tbl)
Depicting global urbanization using remote-sensing dataRed: urban areas in the Pearl River Delta, China
1993 USGS data2001 MODIS data
Data from HK urban planning office
MODIS land‐use and land‐cover has been released in WRF 3.1 since April 2009.
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Urban Model Input: detailed regional urban land-use
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NLCD 30-m Landsat land-cover for Houston
National Urban Database and Access Portal Tool (NUDAPT), led by Jason Ching
Ching et al., 2009, Bull. American Meteorol. Soc.
Example of NUDAPT gridded urban canon parameters for Houston, Texas: Plan area density (PAD), frontal area density of the buildings (FAD).
Specification of UCM parameters in WRF Methode2: Directly ingest 2-D spatial distributions of UCM parameters
Released in WRF v3.5, April 2013.How to use the data? http://www.ral.ucar.edu/research/land/technology/urban.php
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WUDAPT: Facilitating advanced urban canopy modeling for
weather, climate, air quality and environmental analyses
Led by Jason ChingWUDPAT workshop this weekend
Sources of Anthropogenic Heating (Country scale)
Source: www.eia.doe.gov. U.S. Data.
Residential21%
Commercial17%
Transport27%
Metabolism1%
Manufacturing/Industry34%
Courtesy of David Sailor, Portland State University
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Anthropogenic heating (AH) for Beijingderived using approach of Sailor and Lu (2004)
0800 LST Winter0800 LST Summer
AH critical for capturing spatial variance of land surface temperature
MODIS Observations
WRF‐Urban simulations
Miao et al., 2008, J. Appl. Meteor. Climatol.
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WRF-Urban: Coupling mesoscale WRF with building-scale models (EULAG LES)
Mesoscale modeling system:WRF‐Noah/UCM forecast model
Urban T&D modeling system:EULAG LES/CFD model
WRF provides initial and lateral boundary conditions for EULAG in two modes• Isolated sounding data mode – short term, quasi steady conditions, small scale urban domain• Unsteady (temporal‐based coupling) mode – linear interpolation of the WRF data in time and space→ Building geometry flow features resolved explicitly with immersed boundary (IB) approach
Coupler:
MCEL Library
Upscale data transfer:
Downscale data transfer
Wyszogrodzki, Miao, and Chen, 2012, Atmospheric Research
Synchronize models for a practical means with Model Coupling Environmental Library (MCEL)
Downscale filter : ‐ extract data and bound it to specific area‐ change coordinates and grid structure
MCEL ‐ COBRA Client/Server
• Computationally efficient system • Allows components to operate independently • Provide continuous data transfer • Improves transfer timing• Send, receive and store native WRF/EULAG grids In
Netcdf format for further processing
FILTERS: resolve problems of the data incompatibility due to different models numeric (WRF Arakawa C‐grid, EULAG A‐grid) and vertical coordinates
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5 two‐way nested domains, grid spacing and grid sizes:
• D1: 40.5km ( 90* 90*38)• D2: 13.5km (100*100*38)• D3: 4.5km (100*100*38)• D4: 1.5km (100*100*38)• D5: 0.5km (100*100*38)
Multiscale WRF-Urban resolved urban flows
EULAG LES domain
EULAG simulated transport and diffusion of SF6 gas tracer concentrationsDispersion footprint for IOP6 9:00 am
Joint Urban 2003 experiment
IOP6 IOP8Release
typeStart
(CDT)Release Amount
Start (CDT)
Release amount
Plume (30 min) 0900 3.0 g/s 2300 3.1 g/sPlume (30 min) 1100 3.2 g/s 0100 3.0 g/sPlume (30 min) 1300 3.0 g/s 0300 3.0 g/s
Puff 1500 0.498 kg 0500 0.500 kgPuff 1520 0.499 kg 0520 0.500 kgPuff 1540 0.510 kg 0540 0.300 kgpuff 1600 0.500 kg 0600 0.305 kg
Wyszogrodzki, Miao, and Chen, 2012, Atmospheric Research
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How to solve interactions between steady flow and unsteady flow in coupling mesoscale models with microscale models?
WRF/CFD-Urban Quasi-steady coupling
WRF domains 0.5-km domain
CFD-Urban domain8.4x7.4x1 km
The quasi-steady mode first computes the steady state, equilibrium flow fields using 15-min WRF output as boundary conditions. The unsteady, contaminant transport evolution equation is then solved using the quasi-steady velocity and turbulence field by linearly interpolating the steady state velocity and turbulence fields.
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steady-flow coupling Quasi steady-flow coupling
Quasi steady-flow coupling improves urban T&D predictions
Problems in Urban Hydrologic Modeling
SLUCM underestimate city latent heat fluxes, a common problem in urban parameterization schemes (Grimmond et al., 2011)
Annual average of heat fluxes for July 2009‐2010:Dashed: observations from Beijing 320‐m tower (from 140‐m height),
Solid: SLUCM simulated
Red: sensible heat fluxGreen: latent heat flux
model
Obs
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Urban hydrological processes in Single‐layer Urban Canopy Model
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Urban irrigation Oasis effect Anthropogenic
latent heat Evaporation over
engineered surfaces
Improving WRF‐Urban hydrological processes
Miao and Chen, 2014: China Earth Sciences
SLUCM significantly improve city evaporation simulation (right panel) by considering the above urban hydrological processes.
model
Obs
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Improve WRF-Urban Hydrologic ModelingPhoenix summer (JJA) Vancouver spring (MAM)
Green: latent heat fluxesRed: sensible heatBlue: storage heat
Yang et al. (2014, Boundary Layer Meteorology)
Dots: observationSolid: old modelDashed: new model
Cool Roofs
Green Roofs
Assess mitigation and adaptation strategies in urbanized areas.
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• Oasis Effect: Considering enhanced potential evapotranspiration of sparse vegetation in urban area due to the lack of obstacles to both radiation and wind.
• To activate this option: Oasis (in URBPARM.TBL) > 1.0 • Irrigation Option (IRI_SCHEME): represent irrigation practice in urban
areas. When activated, irrigation is scheduled for 9 to 10 pm every day from May to September. During this period, moisture of the top two soil layers of the urban vegetation and green roofs is set to field capacity (i.e., transpiration is not limited by water availability).
• 1: for activation; 0: for deactivation. • Anthropogenic latent heat (ALH): add urban anthropogenic latent heat
to a diurnal profile to the latent heat flux term. • Related variables in URBPARM.TBL): are ALH, ALHOPTION,
ALHSEASON, ALHDIUPRF. • Set ALHOPTION to 1 and 0 for turning on and off the option.
New Options for Single Layer Urban Canopy Model in WRFV3.7 (2015)
• Evaporation over impervious surface (IMP_SCHEME): evaporation over engineered surfaces during and shortly after rainfall events.
• Related variables in URBPARM.TBL are IMP_SCHEME, PORIMP, DENGIMP.
• IMP_SCHEME = 1: use the original parameterization in WRF; =2 : the new scheme.
• Multi‐layer green roof (GROPTION): Enable modeling of multi‐layer green roof system on buildings in urban area.
• Related variables in URBPARM.TBL): GROPTION, FGR, DZGR. • GROPTION = 1 , using green roof modeling
= 0 , No green roof, using default vegetation and soil type of green roof is grassland and loam, respectively.
New Options for Single Layer Urban Canopy Model in WRFV3.7 (2015)
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New mosaic/tiling approach in WRF‐Noah released in WRF V3.6 (2014)
Li et al. 2014: Development and evaluation of a mosaic approach in the WRF‐Noah framework, JGR.
WRF‐Noah WRF‐Noah‐mosaic (N=4)
Urban 100%
dx= 1km
dy= 1km
Drylandcropland25%
Deciduous broadleaf forest22%
Low density urban40%
Others13%
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Latent heat fluxes
A clear‐day case: surface fluxes at Cub hill (Towson, MD) simulated by WRF‐Urban with Mosaic approach
Ground heat fluxes
Obs
Old
New
Li et al. 2014: Development and evaluation of a mosaic approach in the WRF‐Noah framework, JGR.
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Evaluations of the WRF-Urban Model
Houston: Diurnal cycle of wind profile (TexAQS‐2000)
Hong Kong: 10‐day surface wind
Beijing, Taipei, and Tokyo: surface weather, precipitation
Salt Lake City: Diurnal wind direction (URBAN‐2000)
Miao and Chen, 2008: Atm. Res. Lin et al., 2008: Atm. Environ.Jiang et al. 2008: J Geophys. Res.Miao et al., 2009: J. Appli. Meteorol. Climatol.Zhang et al., 2009: J Geophys. Res.Tewari et al., 2010: Atm. Res.
Oklahoma City: 2‐m temperature (JU‐2003)
Wang et al. , 2009, Adv. Atmos. Sci., Loridan et al., 2010, Q. J. Roy. Meteorol. Soc., Miao et al., 2011, J Appl. Meteorol. Climatol.,Chen et al., 2011. J Geophys. Res.Salanmanca et al., 2011, J. Appl. Meteor. Climatol.,Kusaka et al., 2012, . J Met Soc Japan.Wyszogrodzki et al., 2012, Atm. Res.,
Challenge (reflections)
• WRF-Urban provides new modeling capabilities to represent city-atmosphere interactions
• No model is perfect (WRF-Urban is no exception)
• No city is exactly the same• Form, morphology, anthropogenic heating
• Need to improve specification of urban parameters and to evaluate model performance
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WRF-Urban web site at NCAR/RALhttps://www.ral.ucar.edu/solutions/products/urban-canopy-model
Thank you!Fei ChenResearch Applications laboratory National Center for Atmospheric ResearchP.O. Box 3000, Boulder, CO 80307, USATel: 303-497-8454Email: [email protected]
• Website: • http://www.rap.ucar.edu/research/land/• Research ID on Web of
Science: http://www.researcherid.com/rid/B-1747-2009