A Data Fusion Approach for Mobility Hub Impact Assessment and Location Selection: Integrating Hub Usage Data into a Large-Scale Mode Choice Model

24 Pages Posted: 1 Apr 2025

See all articles by Xiyuan Ren

Xiyuan Ren

affiliation not provided to SSRN

Joseph Y.J. Chow

New York University (NYU) - New York University

Abstract

As cities grapple with traffic congestion and service inequities, mobility hubs offer a scalable solution to align increasing travel demand with sustainability goals. However, evaluating their impacts remains challenging due to the lack of behavioral models that integrate large-scale travel patterns with real-world hub usage. This study presents a novel data fusion approach that incorporates observed mobility hub usage into a mode choice model estimated with synthetic trip data. We identify trips potentially affected by mobility hubs and construct a multimodal sub-choice set, then calibrate hub-specific parameters using on-site survey data and ground truth trip counts. The enhanced model is used to evaluate mobility hub impacts on potential demand, mode shift, reduced vehicle miles traveled (VMT), and increased consumer surplus (CS). We apply this method to a case study in Capital District, NY, using data from a survey conducted by the Capital District Transportation Authority (CDTA) and a mode choice model estimated using Replica Inc.’s synthetic data. The two implemented hubs—located near UAlbany Downtown Campus and in Downtown Cohoes—are projected to generate 8.83 and 6.17 multimodal trips per day, reduce annual VMT by 20.37 and 13.16 thousand miles, and increase daily CS by $4,000 and $1,742, respectively. An evaluation of potential hub candidates in the Albany-Schenectady-Troy metropolitan area with the estimated models demonstrates that hubs located along intercity corridors and at urban peripheries, supporting park-and-ride (P+R) patterns, yield the most significant behavioral impacts.

Keywords: mobility hub, multimodal choice, impact assessment, facility location, Capital District, NY

Suggested Citation

Ren, Xiyuan and Chow, Joseph Y.J., A Data Fusion Approach for Mobility Hub Impact Assessment and Location Selection: Integrating Hub Usage Data into a Large-Scale Mode Choice Model. Available at SSRN: https://ssrn.com/abstract=5200375 or http://dx.doi.org/10.2139/ssrn.5200375

Xiyuan Ren (Contact Author)

affiliation not provided to SSRN

Joseph Y.J. Chow

New York University (NYU) - New York University ( email )

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