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2007 MWCOG Household Travel Survey

Washington Region Complexity. Multi state, multi jurisdictionalDifferent modal optionsCommuter Bus (multiple providers)Commuter Rail (multiple providers)Subway (Metro)Local Bus (multiple providers)HOV lanes - sluggingBicycle paths and lanes. Washington Region Complexity (cont'd). Special

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2007 MWCOG Household Travel Survey

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    1. 2007 MWCOG Household Travel Survey Clara Reschovsky Metropolitan Washington Council of Governments January 13, 2009

    2. Washington Region Complexity Multi state, multi jurisdictional Different modal options Commuter Bus (multiple providers) Commuter Rail (multiple providers) Subway (Metro) Local Bus (multiple providers) HOV lanes - slugging Bicycle paths and lanes Park n’ Ride Lots provide access to CR or CB or metro or local bus or slugging or some combinationPark n’ Ride Lots provide access to CR or CB or metro or local bus or slugging or some combination

    3. Washington Region Complexity (cont’d) Special accommodations for challenges Trained interviewers on local area geography Geocoded trip ends in house Offered $50 incentive to attract non-traditional households Minorities, households in poverty, cell phone-only households

    4. Working with Baltimore Baltimore Metropolitan Council joined beginning in Quarter 2 Win-win for both agencies resulting in fuller dataset that is completely integrated Have continued to work with BMC during the editing process

    5. Geocoding Done during the survey New for both MPO and for contractor Allowed for local knowledge to be applied Moved to Navteq Database (very helpful) Results: 97% of trip ends geocoded to x,y coordinates Projection issues (should have discussed upfront)Projection issues (should have discussed upfront)

    6. Geocoding Technology Anybody can geocode, but not always well! ArcMap allows for a reasonable autocoder Overall about 75% autocoded Manual coder is tedious but functional Online map services have come a long way Mapquest has a solid tight algorithm, but requires state/city or zip GoogleMaps is looser – good when provided info is thin Mapquest has excellent router from point a to point b. (new) Google maps has added in Public Transit stations, routing is there but needs to be taken with a grain of salt. Considerable better than just 6 months ago.Mapquest has excellent router from point a to point b. (new) Google maps has added in Public Transit stations, routing is there but needs to be taken with a grain of salt. Considerable better than just 6 months ago.

    8. Post Survey Activities Contractor runs edit checks on data Contractor QCs geocoding MWCOG runs additional edit checks (adding local knowledge) Determine if any households will need to be dropped for insufficient data

    9. Basic Edit Checks Verify Persons with no trips are reasonable Verify Persons outside Region for full travel day are truly outside Region Verify Trip +Activity Time = Full 24 hours (for trip makers who spent some or all of their day in region)

    10. Basic Edit Checks (cont’d) Geocoded remaining missing trip ends About 3% of 132,000 trip ends Used other household members or other destinations to determine locations where necessary Conduct analysis of Quick Stops (gas vs. other) Recode trip purpose of some ‘Quick Stops’ Some quick stops were over half an hourSome quick stops were over half an hour

    11. Commuter Rail/Bus Analysis Standardize Rail Station Names Verify Rail Trips start & end at stations Recode trips to Metro/Local Bus as necessary Add missing Mode of Access/Egress segments

    12. Metrorail Trip Analysis Standardize Metrorail Station Names Verify Metro Trips start & end at stations Recode trips to Commuter Rail or Local Bus as necessary Add missing Mode of Access/Egress segments Used Metro’s Trip Planner to aid in decision making for trip tours missing segments

    14. Local Bus (only) Trips Analysis Verify Trips are Bus Only Add missing Mode of Access/Egress segments Switch to MetroRail trips as necessary

    15. Carpool/Auto Passenger Analysis Verify each passenger has a driver Consistency check with other household members

    16. Trip Linking & Survey Weighting Verify estimated modal shares and person trip totals with other data sources (eg. Metrorail and Metrobus surveys, ACS Commuting Data) Time/Distance/Speed checks by mode Check trip length frequency distribution by trip purpose

    17. Some Lessons Learned Schedule sufficient time for developing survey materials and scripts for CATI system Pretest is helpful for checking methodology and trying strategies Schedule time to analyze pretest results before moving into main survey We had a tight time frame leading into main survey that could have used a couple extra months.We had a tight time frame leading into main survey that could have used a couple extra months.

    18. Some Lessons Learned (cont’d) Incentive is useful Industry question – How much money should be offered to be effective without spending more than necessary? Geocoding in house allowed us to keep closer control on how it was going during the survey – rather than after the fact $50 worked in DC, but is that right amount elsewhere? $100 in the pretest was too much. Interviewers preffered Incentive HHs because they opted in to the survey and had the incentive as reason to give fuller info easier. $50 worked in DC, but is that right amount elsewhere? $100 in the pretest was too much. Interviewers preffered Incentive HHs because they opted in to the survey and had the incentive as reason to give fuller info easier.

    19. Next Steps Finish processing data Fully analyze results Produce reports

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