Study on Parking Adaptability in Urban Complexes on Top of Subways Based on Shared Parking Spaces

Author:

Feng Yuqin1,Wang Fu2,Chen Xinyu2,Zhang Xiaona2

Affiliation:

1. Yazhou Bay Innovation Research Institute, Hainan Tropical Ocean University, Sanya 572022, China

2. School of Civil Engineering and Architecture, Wuhan Institute of Technology, Wuhan 430074, China

Abstract

Urban complexes on top of subways as a function of intensive building groups, including residential, office, business, and other types nature of land use where parking time differences are obvious, can implement shared parking spaces, thereby reducing the index of parking allotment. Currently, the parking space allocation index for complexes is only a simple superposition of different land uses, resulting in an over-allocation of parking allotments, leading to a waste of land resources and a low utilization rate of parking allotments. Considering the factor of shared parking spaces, this paper conducted an in-depth analysis of the parking adaptability of urban complexes on top of subways and selected five urban complexes on top of subway stations in Wuhan to conduct a parking survey to analyze the parking demand characteristics. This study also investigated the parking behavior of parkers and analyzed the characteristics of parking behavior in urban complexes on top of subways as well as the current parking demand prediction methods and models, establishing a parking demand prediction model based on shared parking spaces and conducting an adaptability analysis. Finally, using five urban complexes in Wuhan as examples, the number of parking spaces demanded by urban complexes on top of subways in 2025 was predicted, and Wuhan Golden Harvest Fashion Plaza was used as an example to verify the feasibility and implementation ability of the theoretical and applied research in this paper.

Funder

Research Initiation Programme for Introduced Talents at University Level

Publisher

MDPI AG

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