890 likes | 1.2k Views
Modeling and Data at the Puget Sound Regional Council: (For a Few Dollars More…). COG/MPO Mini-Conference SANDAG Friday, July 29th, 2005 Kevin Murphy kmurphy@psrc.org Jeff Frkonja jfrkonja@psrc.org Mark Simonson msimonson@psrc.org. Who We Are. Membership
E N D
Modeling and Data at the Puget Sound Regional Council:(For a Few Dollars More…) COG/MPO Mini-Conference SANDAG Friday, July 29th, 2005 Kevin Murphy kmurphy@psrc.org Jeff Frkonja jfrkonja@psrc.org Mark Simonson msimonson@psrc.org
Who We Are • Membership • King, Kitsap, Pierce and Snohomish Counties • 70 cities • 4 Ports • Tribes • State agencies • 7 Transit agencies • Associate members • Over 3.4 million residents • An estimated 1.9 million jobs
Challenges of Growth • In 1950: • 1,200,000 People • 500,000 Jobs • In 2000: • 3,300,000 People • 1,900,000 Jobs • By 2040: • 5,000,000 People • 3,000,000 Jobs
What We Do • Key Responsibilities • Long range growth, economic and transportation planning • Transportation funding • Economic development coordination • Regional data • Forum for regional issues
Organization • FY 2006-07 Budget: • $6.6 Million DSA • ($20.2 Million Agency) • 17.3 DSA FTE • (51.0 FTE Agency)
Data Systems And Analysis Products • Current and Historical Data • Census tabulations • Covered Employment • Annual Pop & HH Estimates • Forecasts (regional & sub-regional) • Modeling (travel demand, air quality) • GIS (analysis & mapping) • Transportation Data Collection • Surveys • Counts • Transportation Finance Data & Forecasts
Some Questions We Get Asked • Impacts on the regional economy from: • Traffic congestion • Transportation revenue increases (taxes, fees, tolls, etc.) • Return on particular transportation investments • Aging population impacts • What types of questions do you get asked?
Regional (STEP) & Small Area Forecasts Regional Forecasts (Pop, Emp, HH) 4 County Region • Two-Step, Top-Down Process • STEP (Synchronized Translator of Econometric Projections • EMPAL (Employment Allocation Model) • DRAM (Disaggregate Residential Allocation Model) 219 Forecast Analysis Zones Individual Counties
PSRC Model Organization Regional Forecast Model -STEP- -PSEF- Land Use Sketch Planning Tool -Index- Land Use Model -DRAM/EMPAL- -UrbanSim- Transportation Tax Base / Revenue Model Travel Demand Model -EMME/2 current- -EMME/2 improved- Air Quality Model (Emmissions) -Mobile 6-
How the Models Work - STEP • Economic base theory • Pre-1983, sectors were either export (basic) or local (non-basic) • Revised to recognize aspect of both in each sector • Exogenous US forecasts as input • Historically purchased from vendor • Econometric model equations forecast 116 endogenous variables • Boeing, Microsoft variables projected independently
How the Models Work - STEP Blocks Productivity Spending Wage Rates & CPI Demand for Labor Force OUTPUT Core forecast block INCOME Ind. employment, national wage rates Reg CPI EMPLOYMENT Productivity & output = employment POPULATION Lagged link to employment growth
Switching from STEP to New Model (PSEF -?) • RFP in 2004: Replacing STEP (NAICS data time series disruptions) • Meet our MPO, RTPO, Interlocal Agreement Obligations • NAICS-friendly • Support both old and new land use models • Long-range forecast ability out 30 years • Transparency, ease of use and maintenance for staff
How the Models Work - PSEF • No Output Block • Mixed Regression and ARIMA Model • NAICS Sectoring Plan • Quarterly Trend and Forecast Data • Annual Forecasts at County-Level • Will be used as a waypoint for Small Area Forecasts • E-views replaces Fortran
Input Data - PSEF • Long-range US forecasts (Global Insight) • Regional trend data (1970-current) • Census, BEA, Washington State ESD (BLS) • Just Wage & Salary Employment • Total Employment will need to be a post-processing task
Lessons Learned: Regional Forecasts • Watching for secondary variable output / consistency • Ave HH Size • Recent Trends vs Long Range Trends • US Exogenous Forecasts • Productivity, GDP Growth • Member Jurisdiction Involvement
Questions of Others • Linking regional forecasts with: • traffic congestion / travel model forecasts • transportation revenue policy (taxes, fees, tolls, etc.) • Recognizing aging population • Lower Ave HH Size, different trip generation rates?
How the Models Work – DRAM and EMPAL EMPAL DRAM Base Year Employment Current Yr Employment Base Year Pop & HH Current Yr Pop & HH Base Year Land Use Current Yr Land Use Initial Travel Impedances From PSRC Travel Demand Model
Total Population Household population Group Quarters population Total Households Percent Multi-Family, Single Family Income quartiles Total Jobs By Sector Manufacturing WTCU (Wholesale, Transportation, Communications, Utilities) Retail FIRES (Finance, Insurance, Real Estate, Services) Government and Education DRAM/EMPAL Land Use Forecast Data
Current Land Use Forecast Geography • 219 Forecast Analysis Zones (FAZs) • Built from 2000 Census Tracts
Building Consensus for Models & Forecasts • No longer adopt forecasts • Boards approval needed for RFPs and contracts • Include non-PSRC staff on RFP, interview teams for consultants • TACs for model and forecast work • Extensive review & outreach through Regional Technical Forum monthly meetings • UrbanSim example • Multiple workshops to cover issues involved in implementing new model
Survey Results from 2001 Study – Important Aspects of Land Use Model • Analyze Effects of Land Use on Transportation • Analyze Multimodal Assignments • Promote Common Use of Data • Manage Data Needs • Analyze All Modes of Travel • Analyze Effects of Land Use Policies • Support Visualization Techniques • Analyze Effects of Transportation Pricing Policies • Analyze Effects of Growth Management Policies • Analyze Effects of Transportation on Land Use
Land Use Model Changes • Changing Demands: GMA and more complex analysis questions: • More “what if” questions • Model policies and land use impacts – Better interaction between transportation and land use • More flexible reporting geography • Our DRAM/EMPAL Limitations: • Zonal geography • No implicit land use plan inputs • Direction from PSRC Boards during Destination 2030 Update = Improve land use modeling ability • RFQ issued in 2002 • Entered into interagency agreement and annual contracts with UW Center for Urban Simulation and Policy Analysis (CUSPA – Dr. Paul Waddell) = The UrbanSim Model
UrbanSim Overview http://www.urbansim.org/ • Modeling “Actors” instead of zones • Notable Advantages • Potential new output (built SQFT, land value) • Direct modeling of land use plans, development constraints such as wetlands, floodplains, etc. • Geographic flexibility • Very Data Hungry • Assessor’s files, Census, Employment Data (Key Input), Land Use plans, Environmental constraints • Modeled Unit = 150 Meter Grid cell (5.5 Acres) • Roughly 790,000 in region (versus 219 FAZs)
Existing EMPAL Detail: Total Jobs By Sector Manufacturing WTCU (Wholesale, Transportation, Communications, Utilities) Retail FIRES (Finance, Insurance, Real Estate, Services) Government and Education UrbanSim Detail: One Record per Job Changes in Land Use Forecasts: Employment
Existing DRAM Detail: Total Population Household population Group Quarters population Total Households Percent Multi-Family, Single Family Income quartiles UrbanSim Detail: One Record for each Household Changes in Land Use Forecasts: Residential
NEW INPUTS: Implicit to Model compared to DRAM/EMPAL Assessor’s Files Land Use Designations Environmental Areas Land and Building Assessed Value Changes in Land Use Forecasts: Land Use Data
New Land Use Categories: PLUs and DevType IDs • Planned Land Use (PLU) = Comprehensive Plan designations in UrbanSim • Development Type IDs = “Built” attributes of each grid cell, based on • Housing Units • Non-Residential Square Feet • Environmental Overlays
UrbanSim Data: Plan Types (Comprehensive Land Use Plans) • Model Comp Plan Designations Implicitly • Four-County Aggregate Classifications • Part of Model Specification (Can’t add on the fly) • One of two parts of the “Constraint” Process
UrbanSim: Development Type IDs (Built Land Use) • Or, Overall Land Use Mix of each Grid cell • Measures of units/square feet of built environment • Part of Model Specification (Can’t add on the fly) • One of two parts of the “Constraint” Process
Data Acquisition and Pre-Processing: Current LU (Development Type)
Changing the PLU Categories • Triple Balancing Act • Detail in comp plans • Job categories • Development Type IDs • Assign each (660) comp plan code to PLU • Started with 20+, wound up with 19 final PLU codes • More detail in Residential, Commercial, Industrial, Mixed Use, and Government/Tribal/Military
Mixed Use in Comp Plan 2-5 du/ac, Office, Comm Bus Multiple Zoning Classes Comp Plan vs Zoning Example R4 R5
Comp Plan Descriptions & Consistency • Light Yellow = Single Family High Density Residential… • Was in 12+ DU / Acre 6 DU /Acre 3-5 DU /Acre
Example: Development Constraints Table Example: RES-Light (1-4 DU/Acre)
Lessons Learned: Land Use Models • Involve local staff in data assembly issues and forecast results review • Plan for the update and maintenance • Staff retention • CUSPA automated a lot of data processing applications • Underestimated time spent on data cleaning • Allow time for 2-3 loops, data assembly, model testing • Hard to gauge the “correct altitude” to fly at for dat cleaning • IE Employment data to parcels • Other uses of base year data • Reviewer concerns vs impacts on the model