Spatiotemporal Characteristics of Bike-Sharing Usage around Rail Transit Stations: Evidence from Beijing, China
Abstract
:1. Introduction
2. Data
2.1. Bike-Sharing Usage Records
2.2. Passenger Flow
2.3. Built Environment
3. Methodology
3.1. Analysis of multicollinearity
3.2. Analysis of Spatial Heterogeneity
3.3. Ggeographic Weighted Regression
4. Results Analysis and Discussion
4.1. Model specification
4.2. Model Evaluation
4.3. The Effect of Independent Variables on Bike-Sharing Usage
4.3.1. The Effect of Passenger Flow on Bike-Sharing Usage
4.3.2. The Effect of Land Use on Bike-Sharing Usage
4.3.3. The Effect of Bus Lines on Bike-Sharing Usage
4.3.4. The Effect of Road-Network Characteristics on Bike-Sharing Usage
5. Conclusions
- The bike-sharing usage around rail transit stations is mainly affected by the passenger flow into and out of stations, land use, bus lines, and road-network characteristics. We built a GWR model to capture the spatiotemporal characteristics of the bike-sharing usage around rail transit stations considering the passenger flow and built environment variables;
- From the time perspective, the characteristics of the bike-sharing usage around rail transit stations during the morning and evening peak hours show clear differences. The bike-sharing usage during the morning peak is affected by the passenger flow into the station, working land area, collinear bus lines, and number of road intersections. The bike-sharing usage during evening peak is affected by the passenger flow out of the station, residential land area, connecting bus line, and motor-vehicle lane density;
- From the spatial perspective, the bike-sharing usage around rail transit stations has obvious partition characteristics. The bike-sharing usage around rail transit stations near the north fourth ring road of Beijing, is heavily affected by the passenger flow. In the north and south of Beijing, bike-sharing usage is mainly affected by working land area and residential land area. In the Chaoyang district, the bike-sharing usage is more sensitive to connecting bus lines and collinear bus lines. The effect of the number of road intersections is mainly reflected in the northern suburbs, and the effect of the motor-vehicle lane density is mainly reflected in the central and western regions of Beijing.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Company Identity | Number of Records | Ratio (%) |
---|---|---|
Ofo | 900,419 | 39.62 |
Mobike | 1,363,944 | 60.02 |
99bicycle | 1458 | 0.06 |
Wisdom-Enjoyed Cycling | 6669 | 0.29 |
Total | 2,272,490 | 1.00 |
Variables | Definition | Min | Max | Mean | Standard Deviation | Data Sources |
---|---|---|---|---|---|---|
Child population density | Population density of ages 0–19 (thousands per km2) | 2.85 | 43.76 | 15.25 | 9.13 | The sixth national census from 2010. |
Youth population density | Population density of ages 20–39 (thousands per km2) | 7.04 | 190.90 | 53.14 | 36.98 | |
Middle-aged population density | Population density of ages 40–59 (thousands per km2) | 6.40 | 91.32 | 30.90 | 15.77 | |
Aging population density | Population density of ages >=60 (thousands per km2) | 1.42 | 34.17 | 12.85 | 6.81 | |
Residential land area | Residential land area (km2) | 0 | 0.31 | 0.080 | 0.056 | The second survey of land and resources from 2010. |
Working land area | Business and office land area (km2) | 0 | 0.25 | 0.070 | 0.046 | |
Recreational land area | Entertainment land area (km2) | 0 | 0.11 | 0.010 | 0.02 | |
Connecting bus line | Number of feeder buses | 0 | 81.00 | 20.37 | 14.10 | Baidu map. |
Collinear bus line | Number of joint buses with one or more same stations | 0 | 65.00 | 14.51 | 12.26 | |
Non-motorized lane density | Line density of walking lanes (km per km2) | 0.19 | 3.84 | 1.32 | 0.52 | Open street map and government public data. |
Motor-vehicle lane density | Line density of motor-vehicle roads (km per km2) | 0.16 | 2.91 | 0.93 | 0.41 | |
Number of road intersections | Number of motor road intersections | 0 | 248.00 | 88.80 | 47.90 | |
Number of vehicle parking spaces | Number of car parking spaces | 0 | 400.00 | 11.72 | 36.29 | |
Number of shared bike racks | Number of shared bike racks | 0 | 524.00 | 69.09 | 91.38 |
Child Population Density | Youth Population Density | Middle-Aged Population Density | Aging Population Density | Residential Land Area | Working Land Area | Recreational Land Area | Connecting Bus Line | Collinear Bus Line | Non-Motorized Lane Density | Motor-Vehicle Lane Density | Number of Road Intersections | Number of Vehicle Parking Spaces | Number of Shared Bike Racks | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Child population density | 1 | 0.960 ** | 0.896 ** | 0.722 ** | −0.154 * | −0.072 | −0.132 * | −0.073 | −0.075 | −0.046 | −0.211 ** | −0.083 | −0.126 | 0.036 |
Youth population density | 1 | 0.889 ** | 0.695 ** | −0.156 * | −0.094 | −0.128 | −0.065 | −0.075 | −0.022 | −0.219 ** | −0.066 | −0.116 | −0.021 | |
Middle-aged population density | 1 | 0.832 ** | −0.037 | −0.101 | −0.119 | −0.065 | −0.064 | −0.043 | −0.179 ** | −0.068 | −0.143 * | 0.040 | ||
Aging population density | 1 | 0.045 | 0.024 | −0.005 | 0.088 | 0.057 | 0.089 | 0.052 | 0.165 * | −0.097 | −0.056 | |||
Residential land area | 1 | 0.172 ** | −0.080 | 0.102 | 0.133 * | 0.362 ** | 0.131 * | 0.268 ** | −0.057 | 0.281 ** | ||||
Working land area | 1 | 0.045 | 0.230 ** | 0.191 ** | 0.213 ** | 0.228 ** | 0.330 ** | −0.068 | 0.023 | |||||
Recreational land area | 1 | 0.095 | 0.094 | −0.026 | −0.013 | 0.079 | −0.061 | −0.025 | ||||||
Connecting bus line | 1 | 0.527 ** | 0.291 ** | 0.540 ** | 0.406 ** | 0.139 * | 0.284 ** | |||||||
Collinear bus line | 1 | 0.292 ** | 0.419 ** | 0.352 ** | 0.170 ** | 0.343 ** | ||||||||
Non-motorized lane density | 1 | 0.532 ** | 0.775 ** | 0.349 ** | 0.229 ** | |||||||||
Motor-vehicle lane density | 1 | 0.565 ** | 0.254 ** | 0.153 * | ||||||||||
Number of road intersections | 1 | 0.277 ** | 0.126 | |||||||||||
Number of vehicle parking spaces | 1 | −0.005 | ||||||||||||
Number of shared bike racks | 1 |
Variables | Moran’s I | Z-Score | Pattern Moran’s I Test |
---|---|---|---|
Child population density | 0.593 ** | 21.21 | Clustered |
Youth population density | 0.559 ** | 20.10 | Clustered |
Middle-aged population density | 0.529 ** | 18.96 | Clustered |
Aging population density | 0.446 ** | 15.91 | Clustered |
Residential land area | 0.442 ** | 15.88 | Clustered |
Working land area | 0.311 ** | 11.18 | Clustered |
Recreational land area | 0.250 ** | 9.23 | Clustered |
Connecting bus line | 0.225 ** | 8.16 | Clustered |
Collinear bus line | 0.407 ** | 14.61 | Clustered |
Non-motorized lane density | 0.221 ** | 8.03 | Clustered |
Motor-vehicle lane density | 0.401 ** | 14.40 | Clustered |
Number of road intersections | 0.390 ** | 13.93 | Clustered |
Number of vehicle parking spaces | 0.031 | 1.52 | Random |
Number of shared bike racks | 0.038 | 1.56 | Random |
Type | Variables |
---|---|
Independent variable | Passenger flow in and out of rail transit stations |
Working land area | |
Residential land area | |
Connecting bus lines | |
Collinear bus lines | |
Motor-vehicle lane density | |
Number of road intersections | |
Dependent variable | Bike-sharing usage records in a 500 m range around rail transit stations |
Period | The Maximum of the Condition Number | |
---|---|---|
Station as O Point | Station as D Point | |
8:00~9:00 | 16.3 | 26.0 |
12:00~13:00 | 23.2 | 25.0 |
18:00~19:00 | 25.6 | 25.3 |
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Wang, Z.; Cheng, L.; Li, Y.; Li, Z. Spatiotemporal Characteristics of Bike-Sharing Usage around Rail Transit Stations: Evidence from Beijing, China. Sustainability 2020, 12, 1299. https://doi.org/10.3390/su12041299
Wang Z, Cheng L, Li Y, Li Z. Spatiotemporal Characteristics of Bike-Sharing Usage around Rail Transit Stations: Evidence from Beijing, China. Sustainability. 2020; 12(4):1299. https://doi.org/10.3390/su12041299
Chicago/Turabian StyleWang, Zijia, Lei Cheng, Yongxing Li, and Zhiqiang Li. 2020. "Spatiotemporal Characteristics of Bike-Sharing Usage around Rail Transit Stations: Evidence from Beijing, China" Sustainability 12, no. 4: 1299. https://doi.org/10.3390/su12041299
APA StyleWang, Z., Cheng, L., Li, Y., & Li, Z. (2020). Spatiotemporal Characteristics of Bike-Sharing Usage around Rail Transit Stations: Evidence from Beijing, China. Sustainability, 12(4), 1299. https://doi.org/10.3390/su12041299