Multimodal Trip Generation Model to Assess Travel Impacts of Urban Developments in the District of Columbia

Author:

Westrom Ryan1,Dock Stephanie1,Henson Jamie1,Watten Mackenzie2,Bakhru Anjuli2,Ridgway Matthew2,Ziebarth Jennifer2,Prabhakar Ranjani2,Ferdous Nazneen3,Kilim Giri R.3,Paradkar Raj3

Affiliation:

1. District Department of Transportation, 55 M Street, SE, Suite 400, Washington, D.C. 20003

2. Fehr & Peers DC, 1003 K Street, NW, Suite 209, Washington, D.C. 20001

3. CH2M, 2411 Dulles Corner Park, Suite 500, Herndon, VA 20171

Abstract

The research effort described in this paper aims to develop a state-of-the-practice methodology for estimating urban trip generation from mixed-use developments. The District Department of Transportation’s initiative focused on ( a) developing and testing a data collection methodology, ( b) collecting local data to complement the ITE’s national data in trip rate estimation, and ( c) developing a model–tool that incorporates contextual factors identified as affecting overall trip rate as well as trip rate by mode. The final model accurately predicts total person trips and mode choice. The full set of models achieves better statistical performance in relation to average model error and goodness of fit than either ITE rates alone or other existing research. The model includes sensitivity to local environment and on-site components. The model advances site-level trip generation research in two major ways: first, it calculates total person trips independent of mode choice; second, it calculates mode choice with sensitivity to the amount of parking provided on site—a major finding in the connection between parking provision and travel behavior at a local-site level. The methodology allows agencies to improve their assessment of expected trips from proposed buildings and therefore the level of impact a planned building may have on the transportation system.

Publisher

SAGE Publications

Subject

Mechanical Engineering,Civil and Structural Engineering

Reference8 articles.

1. Contextual Influences on Trip Generation

2. CerveroR., AdkinsA., and SullivanC. Are TODs Over-Parked? University of California Transportation Center, Berkeley, July 2009.

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