Study on Urban Rail Transit Passenger Flow Analysis and Economic Improvement Strategy
DOI: https://doi.org/10.62517/jse.202411310
Author(s)
Jiaojun Yi1,*, Botian Ling2, Lingfeng Fu2
Affiliation(s)
1Guangzhou College of Commerce, Guangzhou, Guangdong, China
2China Academy of Urban Planning and Design, Beijing, China
* Corresponding author
Abstract
This study takes the analysis of traffic passenger flow from the perspective of commuting as the research object, and selects Suzhou rail transit as a thematic research case. Based on the analysis of the "Annual Commuter Monitoring Report of China's Major Cities 2022" and the research of Suzhou rail transit, the following conclusions are drawn: First, rail construction should take the service of commuter passenger flow as the core, emphasize the fit between line direction and commuting demand, so as to improve economy. Second, Improving the leading role of rail transit and the efficiency of the whole process is the key, and attention should be paid to the improvement of the transportation mode structure and the efficiency of "door-to-door" service. Third, rail transit should guide urban development, pay attention to function matching, in particular, attention should be paid to the balance between employment and housing of rail lines and guaranteed housing for youth, so as to promote the economic development and community stability of the city. Finally, the paper puts forward some measures to improve rail commuter coverage, including the establishment of an interactive monitoring platform between rail construction and urban development, so as to support the improvement of rail commuter coverage.
Keywords
Commuting Perspective; Rail Transit; Efficiency Improvement; Urban Development; Transit-Oriented-Development
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