Abstract

Public transit, especially urban rail systems, plays a vital role in shaping commuting patterns. Compared with census data and survey data, large-scale and real-time big data can track the impacts of urban policy implementations at finer spatial and temporal scales. Therefore, this study proposed a multi-level analytical framework using transit smartcard data to examine urban commuting dynamics in response to rail transit upgrades. The study area was Shenzhen, one of the most highly urbanized and densely populated cities in China, which provides the opportunity to examine the effects of rail transit upgrades on commuting patterns in a rapidly developing urban context. Changes in commuting patterns were examined at three levels: city, region, and individual. At the city level, we considered the average commuting time, commuting speed, and commuting distance across the whole city. At the region level, we analyzed changes in the job accessibility of residential zones. Finally, this study evaluated the potential effects of rail transit upgrades on the jobs-housing relationship at the individual level. Difference-in-difference models were used for causal inference between rail transit upgrades and commuting patterns. In the very short term, the opening of new rail transit lines resulted in no significant changes in overall commuting patterns across the whole city; however, two effects of rail transit upgrades on commuting patterns were identified. First, rail transit upgrades enhanced regional connectivity between residential zones and employment centers, thus improving job accessibility. Second, rail transit improvement increased the commuting distances of individuals and contributed to the separation of workplaces and residences. This study provides meaningful insights into the effects of rail transit upgrades on commuting patterns.

Highlights

  • Public transit systems play significant roles in urban development and in shaping commuting behaviors [1, 2]

  • In the very short term after the opening of new metro lines, no considerable changes are observed in average commuting distance and time across the whole city. Does it mean that the opening of new rail transit lines has no impact on urban commuting patterns? If not, how and to what extent rail transit upgrades contribute to commuting dynamics? To answer this question, we further examine the potential effects of rail transit upgrades on the commuting patterns at the region level

  • Why does the overall commuting time remain stable while new rail transit lines reduce the commuting time in the treatment zones? Why does the overall commuting distance have no obvious change while new rail transit lines increase individual commuting distances? The overall commuting dynamics are the outcomes of various influencing factors, the impact of rail transit cannot be intuitively reflected in the overall commuting patterns

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Summary

Introduction

Public transit systems play significant roles in urban development and in shaping commuting behaviors [1, 2]. The coefficient of the average treatment effect is negative and significant at the 0.01 or 0.001 level; this indicates that rail transit upgrades can reduce commuting time from residential zones to employment centers and thereby increase job accessibility. According to the theory of urban spatial equilibrium based on the trade-off between accessibility and cost of space, reduced travel costs and rising demand to live close to new transit stations are expected to increase housing costs in the beneficiary areas [34, 35] To illustrate these effects, we applied a DID model to the average housing unit prices of residential zones before and after rail transit upgrades derived from a real estate rental and sales service platform in China, Anjuke (https://shenzhen.anjuke.com/). Rail transit expansion increases population density in the suburbs and commuting distances of relocated individuals

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