Decoding the Spatial Heterogeneity of Bike-Sharing Impacts: Machine Learning Model of Meteorology, Epidemic, and Urban FactorsSource: Journal of Urban Planning and Development:;2025:;Volume ( 151 ):;issue: 002::page 04025009-1Author:Jiawei Yao
,
Yixin Jian
,
Yanting Shen
,
Wen Wen
,
Chenyu Huang
,
Jinyu Wang
,
Jiayan Fu
,
Zhongqi Yu
,
Yecheng Zhang
DOI: 10.1061/JUPDDM.UPENG-5192Publisher: American Society of Civil Engineers
Abstract: Previous studies on the factors affecting bike-sharing travel (BST) have not considered spatial differences, leading to insufficient understanding of the complex impacts of variables in different geographical locations. This study aims to reveal the differential spatial impacts of meteorological conditions, epidemics, and urban spatial variables on BST. Firstly, New York was selected as the study area, and the period from 2020 to 2021 was chosen for the study. Secondly, a high-precision urban information data set, including meteorological, epidemic, and urban spatial variables, was constructed using weighted Thiessen polygons as the segmentation method. Finally, machine learning was conducted, and the XGBoost ensemble learning algorithm, which yielded the best training results, was chosen for interpretable analysis. This examined the nonlinear correlations and spatial benefits of each variable with BST. The results show that (1) the impact of average temperature on shared bicycle travel is most significant among all factors, accounting for 26.15% of the total impact; (2) there is significant spatial heterogeneity in the influence of factors, and office closeness is negatively correlated with BST, contributing positively in the west and negatively in the east; (3) the southern part of Manhattan is significantly affected by meteorological (∣SHAP value∣ = 484.18) and urban spatial sector (∣SHAP value∣ = 122.65), while the central part of Manhattan is most significantly influenced by epidemic variables (∣SHAP value∣ = 469.27). In summary, this study takes New York as an example to analyze the nonlinear effects and spatial benefits of meteorology, epidemics, and urban space on shared bicycle travel. Based on this, more targeted and effective urban traffic intervention strategies are provided for different regions of the city. This study provides valuable insights into how different factors influence bike-sharing travel in New York City, offering practical implications for urban planners and policymakers. Firstly, we found that temperature has the most significant impact on bike-sharing, highlighting the necessity for climate-conscious dynamic urban planning. Secondly, our research reveals that the effects of meteorological, epidemic, and urban space factors vary greatly across different regions. The study identifies that the areas most sensitive to these factors are in Midtown and Lower Manhattan, which should be prioritized for interventions. Additionally, southern Manhattan is significantly affected by meteorology and urban space factors, while central Manhattan is more influenced by the number of confirmed COVID-19 cases. This underscores the importance of targeted policies. In southern Manhattan, measures such as improving the microclimate through street shading and increasing the accessibility of public and commercial spaces can encourage bike-sharing. Conversely, in central Manhattan, monitoring epidemic trends and managing the number of cases is crucial. By considering the spatial differences in factors affecting bike-sharing travel, cities can develop more effective, region-specific transportation strategies, ultimately enhancing urban resilience and reducing the impact of epidemics.
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| contributor author | Jiawei Yao | |
| contributor author | Yixin Jian | |
| contributor author | Yanting Shen | |
| contributor author | Wen Wen | |
| contributor author | Chenyu Huang | |
| contributor author | Jinyu Wang | |
| contributor author | Jiayan Fu | |
| contributor author | Zhongqi Yu | |
| contributor author | Yecheng Zhang | |
| date accessioned | 2025-08-17T22:23:51Z | |
| date available | 2025-08-17T22:23:51Z | |
| date copyright | 6/1/2025 12:00:00 AM | |
| date issued | 2025 | |
| identifier other | JUPDDM.UPENG-5192.pdf | |
| identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4306880 | |
| description abstract | Previous studies on the factors affecting bike-sharing travel (BST) have not considered spatial differences, leading to insufficient understanding of the complex impacts of variables in different geographical locations. This study aims to reveal the differential spatial impacts of meteorological conditions, epidemics, and urban spatial variables on BST. Firstly, New York was selected as the study area, and the period from 2020 to 2021 was chosen for the study. Secondly, a high-precision urban information data set, including meteorological, epidemic, and urban spatial variables, was constructed using weighted Thiessen polygons as the segmentation method. Finally, machine learning was conducted, and the XGBoost ensemble learning algorithm, which yielded the best training results, was chosen for interpretable analysis. This examined the nonlinear correlations and spatial benefits of each variable with BST. The results show that (1) the impact of average temperature on shared bicycle travel is most significant among all factors, accounting for 26.15% of the total impact; (2) there is significant spatial heterogeneity in the influence of factors, and office closeness is negatively correlated with BST, contributing positively in the west and negatively in the east; (3) the southern part of Manhattan is significantly affected by meteorological (∣SHAP value∣ = 484.18) and urban spatial sector (∣SHAP value∣ = 122.65), while the central part of Manhattan is most significantly influenced by epidemic variables (∣SHAP value∣ = 469.27). In summary, this study takes New York as an example to analyze the nonlinear effects and spatial benefits of meteorology, epidemics, and urban space on shared bicycle travel. Based on this, more targeted and effective urban traffic intervention strategies are provided for different regions of the city. This study provides valuable insights into how different factors influence bike-sharing travel in New York City, offering practical implications for urban planners and policymakers. Firstly, we found that temperature has the most significant impact on bike-sharing, highlighting the necessity for climate-conscious dynamic urban planning. Secondly, our research reveals that the effects of meteorological, epidemic, and urban space factors vary greatly across different regions. The study identifies that the areas most sensitive to these factors are in Midtown and Lower Manhattan, which should be prioritized for interventions. Additionally, southern Manhattan is significantly affected by meteorology and urban space factors, while central Manhattan is more influenced by the number of confirmed COVID-19 cases. This underscores the importance of targeted policies. In southern Manhattan, measures such as improving the microclimate through street shading and increasing the accessibility of public and commercial spaces can encourage bike-sharing. Conversely, in central Manhattan, monitoring epidemic trends and managing the number of cases is crucial. By considering the spatial differences in factors affecting bike-sharing travel, cities can develop more effective, region-specific transportation strategies, ultimately enhancing urban resilience and reducing the impact of epidemics. | |
| publisher | American Society of Civil Engineers | |
| title | Decoding the Spatial Heterogeneity of Bike-Sharing Impacts: Machine Learning Model of Meteorology, Epidemic, and Urban Factors | |
| type | Journal Article | |
| journal volume | 151 | |
| journal issue | 2 | |
| journal title | Journal of Urban Planning and Development | |
| identifier doi | 10.1061/JUPDDM.UPENG-5192 | |
| journal fristpage | 04025009-1 | |
| journal lastpage | 04025009-15 | |
| page | 15 | |
| tree | Journal of Urban Planning and Development:;2025:;Volume ( 151 ):;issue: 002 | |
| contenttype | Fulltext |