Abstract

The emerging ride-sourcing service has become an important element of urban mobility. A challenging question underlying the provision of such service is how and to what extent the built environment affects origin-destination (OD) travel flows. This paper employs the geographically weighted regression (GWR) model to analyze the OD-based ride-sourcing travel flow. It makes a comparison with the existing ordinary least square (OLS) model and spatial autocorrelation model (SAM). We have collected ride-sourcing order data in Hangzhou, China, to provide an accurate source for acquiring ride-sourcing travel flow. We investigate the effects of the residential area, points of interest (POIs), and transit stations on ride-sourcing travel flow among traffic analysis zones (TAZs). The results show the following: (a) GWR has better goodness-of-fit than SAM and OLS. (b) Residential area, enterprise, and bus stations have positive correlations with ride-sourcing OD flows, but education and subway stations have negative correlations. We have further investigated the issue and found that it is not a causal relationship between the bus station and OD flow, due to collinearity between the two variables. The bus station builds on locations with high demand, but its capacity is not large enough to reduce the ride-sourcing flow to a low level, which results in a positive coefficient. (c) Based on the estimated coefficients, the prediction of ride-sourcing flows is feasible, supporting the impact analysis for urban land use and transportation planning. This paper contributes to understanding OD-based ride-sourcing travel flow distributions and provides a framework of long-term OD flow prediction for urban land use and transportation planning.

Highlights

  • Academic Editor: Zhi Chun Li e emerging ride-sourcing service has become an important element of urban mobility

  • We investigate the effects of the residential area, points of interest (POIs), and transit stations on ride-sourcing travel flow among traffic analysis zones (TAZs). e results show the following: (a) geographically weighted regression (GWR) has better goodness-of-fit than spatial autocorrelation model (SAM) and ordinary least square (OLS). (b) Residential area, enterprise, and bus stations have positive correlations with ride-sourcing OD flows, but education and subway stations have negative correlations

  • We have further investigated the issue and found that it is not a causal relationship between the bus station and OD flow, due to collinearity between the two variables. e bus station builds on locations with high demand, but its capacity is not large enough to reduce the ride-sourcing flow to a low level, which results in a positive coefficient. (c) Based on the estimated coefficients, the prediction of ride-sourcing flows is feasible, supporting the impact analysis for urban land use and transportation planning. is paper contributes to understanding OD-based ride-sourcing travel flow distributions and provides a framework of long-term OD flow prediction for urban land use and transportation planning

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Summary

Research Article

Understanding City-Wide Ride-Sourcing Travel Flow: A Geographically Weighted Regression Approach. Is paper employs the geographically weighted regression (GWR) model to analyze the OD-based ride-sourcing travel flow. It makes a comparison with the existing ordinary least square (OLS) model and spatial autocorrelation model (SAM). Is paper contributes to understanding OD-based ride-sourcing travel flow distributions and provides a framework of long-term OD flow prediction for urban land use and transportation planning. E OD flow pattern reflects the distribution of travel demand and reveals the human mobility pattern It helps plan traveling routes [1, 2], discover commuting regularity [3], and analyze land use properties [4]. By 2020, Uber offered ride-sourcing services for more than 900 cities in 70 countries [11]. e number of rides served by Lyft has already reached one billion in the region of the US, Toronto, and Canada by September 2018 [12]

Journal of Advanced Transportation
Hourly orders
Number of observations
Tourist spots
Results
STD coefficient
PM peak
Full Text
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