The Influence of Public Transportation Stops on Bike-Sharing Destination Trips: Spatial Analysis of Budapest City
Abstract
:1. Introduction
2. Methods
2.1. Grids
2.2. Models
2.2.1. Ordinary Least Square (OLS) Model
2.2.2. Geographically Weighted Regression (GWR) Model
- (1)
- (2)
- The accessibility of public transportation stops when cycling by applying the buffer zone levels: 125, 200, and 300 m from the bike docks to find how accessible the public transportation stops are with an acceptable walking distance from a bike dock to a public transport stop location. These values above are chosen as the findings of Shu et al. [22] as 70% of people find the acceptable walking distance is within 100 m, with an average value of 124 m. Böcker et al. [37] stated that bike-sharing ridership is higher if the destination bike dock is within a 200 m range of metro/rail stations, while Yang et al. [38] used a buffer radius of 300 m.
3. Results and Discussion
3.1. Research Area
3.2. Data
3.3. Analysis of the Models
3.4. Coverage and Proximity Analysis
3.5. Priority Analysis for Future Interventions
- (1)
- Calculate the number of bus stops and tram/rail stops in each zone that are not within 125 m proximity of bike docks.
- (2)
- From the equation of ordinary least squares, we multiply each bus stop by 1, and tram/rail stop by 2.32 (the division of coefficients of tram/rail stops over bus stops).
- (3)
- Summarize the score of stops in each zone.
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Predicting Variable | Coefficient | p-Value |
---|---|---|
Intercept | −24.2258 | 0.3259 |
Bus Stops | 13.1293 | 0.00043 |
Tram and Rail Stops | 30.5213 | 0.00016 |
R-squared = 0.77, AIC = 701.15 |
Accessibility Distance | Bus Stops | Tram Stops |
---|---|---|
125 m | 23.2% | 35.7% |
200 m | 33.0% | 46.9% |
300 m | 42.6% | 53.4% |
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Jaber, A.; Abu Baker, L.; Csonka, B. The Influence of Public Transportation Stops on Bike-Sharing Destination Trips: Spatial Analysis of Budapest City. Future Transp. 2022, 2, 688-697. https://doi.org/10.3390/futuretransp2030038
Jaber A, Abu Baker L, Csonka B. The Influence of Public Transportation Stops on Bike-Sharing Destination Trips: Spatial Analysis of Budapest City. Future Transportation. 2022; 2(3):688-697. https://doi.org/10.3390/futuretransp2030038
Chicago/Turabian StyleJaber, Ahmed, Laila Abu Baker, and Bálint Csonka. 2022. "The Influence of Public Transportation Stops on Bike-Sharing Destination Trips: Spatial Analysis of Budapest City" Future Transportation 2, no. 3: 688-697. https://doi.org/10.3390/futuretransp2030038
APA StyleJaber, A., Abu Baker, L., & Csonka, B. (2022). The Influence of Public Transportation Stops on Bike-Sharing Destination Trips: Spatial Analysis of Budapest City. Future Transportation, 2(3), 688-697. https://doi.org/10.3390/futuretransp2030038