Spatio-Temporal Usage Patterns of Dockless Bike-Sharing Service Linking to a Metro Station: A Case Study in Shanghai, China
Abstract
:1. Introduction
2. Methodology
2.1. Data Source
2.2. A Visualization Tool
2.3. Probability Modeling
2.4. Agglomerative Hierarchical Clustering
Algorithm 1 Agglomerative Hierarchical Clustering Algorithm |
Input: the original dataset ; cluster distance measurement function ; number of clusters . Output: Cluster partition results. Process: for j = 1, 2, …, n do end for for i = 1, 2, …, n do for j = i+1, 2, …, n do ; end for end for Sets the number of current clusters: . while do Find the two closest clusters and ; Combine and : ; for do Renumber cluster to end for Delete row and column of the distance matrix ; for do ; end for end while |
3. Results and Discussion
3.1. Usage Patterns of DLBS in Different Days of a Week
3.2. Usage Patterns of DLBS Near Stations in Different Area
4. Conclusions
- (i)
- The usage patterns of shared bikes at weekends and workdays are different. The usage of shared bikes presents an obvious ‘morning peak’ and ‘evening peak’ at workdays. On Saturday, however, there is only one peak at around 9:00 a.m. The demand for shared bikes shows two peaks on Sunday, but different from workdays. The peak in the afternoon of Sunday is significantly higher than that in the morning.
- (ii)
- Type II (Fréchet distribution) of GEV distribution performs best in fitting travel distance. The average travel distance of weekends is longer than that of workdays.
- (iii)
- The agglomerative hierarchical clustering method was used to find the different usage patterns of DLBS linking to metro stations. Two distinct clusters with different usage patterns can be gained. The usage patterns of DLBS near stations in the suburbs and the urban areas are different. The results indicate that the land use characteristics around the metro station are important factors affecting the usage pattern of DLBS. Although the stations located in the suburbs, they have similar usage patterns with those in the urban areas because of the same land use characteristics.
- (iv)
- The average travel distance of DLBS related to metro stations in areas of high population density is shorter than that of the areas with low population density.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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ID | Name | ID | Name | ID | Name |
---|---|---|---|---|---|
1 | Caolu | 13 | Xiaonanmen | 25 | Qibao |
2 | Minlei Ro. | 14 | Lujiabang Ro. | 26 | Zhongchun Ro. |
3 | Gutang Ro. | 15 | Madang Ro. | 27 | Jiuting |
4 | Jinhai Ro. | 16 | Dapuqiao | 28 | Sijing |
5 | Jinji Ro. | 17 | Jiashan Ro. | 29 | Sheshan |
6 | Jinqiao | 18 | Zhaojiabang Ro. | 30 | Dongjing |
7 | Tai’erzhuang Ro. | 19 | Xujiahui | 31 | Songjiang University Town |
8 | Lantian Ro. | 20 | Yishan Ro. | 32 | Songjiang Xincheng |
9 | Fangdian Ro. | 21 | Guilin Ro. | 33 | Songjiang Sports Center |
10 | Middle Yanggao Ro. | 22 | Caohejing Hi-Tech Park | 34 | Zuibaichi Park |
11 | Century Avenue | 23 | Hechuan Ro. | 35 | Songjiang South Railway Statioon |
12 | Shangcheng Ro. | 24 | Xingzhong Ro. |
Bike ID | Start Time | Start Longitude | Start Latitude | Return Time | Return Longitude | Return Latitude | Service Time/s |
---|---|---|---|---|---|---|---|
169·B4 | 2018/08/26 07:45:01 | 121.398772532346 | 31.2595986596458 | 2018/08/26 07:57:48 | 121.386097072529 | 31.2508800507453 | 767 |
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Yan, Q.; Gao, K.; Sun, L.; Shao, M. Spatio-Temporal Usage Patterns of Dockless Bike-Sharing Service Linking to a Metro Station: A Case Study in Shanghai, China. Sustainability 2020, 12, 851. https://doi.org/10.3390/su12030851
Yan Q, Gao K, Sun L, Shao M. Spatio-Temporal Usage Patterns of Dockless Bike-Sharing Service Linking to a Metro Station: A Case Study in Shanghai, China. Sustainability. 2020; 12(3):851. https://doi.org/10.3390/su12030851
Chicago/Turabian StyleYan, Qiang, Kun Gao, Lijun Sun, and Minhua Shao. 2020. "Spatio-Temporal Usage Patterns of Dockless Bike-Sharing Service Linking to a Metro Station: A Case Study in Shanghai, China" Sustainability 12, no. 3: 851. https://doi.org/10.3390/su12030851
APA StyleYan, Q., Gao, K., Sun, L., & Shao, M. (2020). Spatio-Temporal Usage Patterns of Dockless Bike-Sharing Service Linking to a Metro Station: A Case Study in Shanghai, China. Sustainability, 12(3), 851. https://doi.org/10.3390/su12030851