A New User-Based Incentive Strategy for Improving Bike Sharing Systems’ Performance
Abstract
:1. Introduction
- Implementing and comparing existing spatial outlier detection algorithms for detecting outlier stations and testing them against three different scenarios. More specifically, we implemented the iterative r algorithm, the iterative z algorithm, the Median algorithm, the Z-score algorithm, the Moran scatterplot, and the Modified Moran scatterplot. These algorithms are compared in terms of their ability to enhance the BSS status.
- Developing a new user-based incentive method to enhance the BSS performance. The proposed method improves the resource availability of the BSS by adapting the departure and arrival stations of the users’ to the BSS state.
- Assessing the effectiveness of the new strategy using a real dataset issued from a well-known BSS called Velib.
2. Related Work
3. Study Area and Problem Definition
4. Rebalancing the Velib System
- Let A be the departure station of a journey, and B the arrival station of the journey. When a user chooses a station to rent or park a bike, the BSS application offers the user an incentive to relocate to other stations. When using the application, the user must specify if he is about to rent or park a bike, and the distance d that he is willing to walk to rent/park the bike m. This distance will be used to determine the neighbors of the original station chosen by the user.
- Then, the application checks whether the original station (A or B) is currently an isolated station. This is done by using a spatial outlier algorithm. Then, the application will propose to pay an incentive for the user if he accepts to modify his original station.
- The modification of the original station is carried out as follows: If the original station is A, the station will be substituted by the busiest station in the surrounding of A determined based on the d value, if and only if A is an isolated station. If the original station is B, the station will be substituted by the emptiest station in the surrounding of B determined according to the d value, if and only if B is an isolated station.
5. Experiments and Results
- Number of unbalanced (problematic) stations: This is the number of stations having a filling rate <10% or >90%, and thus, need to be balanced.
- Number of isolated stations: This describes the number of spatial outliers stations at a given time t .
- Mean cumulative duration of station invalidity: This represents the amount of time during which the stations have no available bikes to rent or docks to use. The shorter the duration, the lower the probability of not meeting users’ needs.
- When there is no rebalancing strategy applied, we operate the BSS without any modification of the journeys.
- When the static rebalancing strategy is applied, the user gives his source and destination stations, respectively called A and B. Then, an alternative journey will be proposed for the user in which the new departure station is the busiest station around A and the new arrival station is the emptiest station around B [5]. With this strategy, A and B are always modified regardless of their states and the states of their neighbors.
- When the rebalancing strategy based on the rush hours is used, the same static rebalancing method described previously will be applied, but only during rush hours [6].
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Data Source | Velib Bike Sharing System |
Time | 1 day |
Number of Stations | 1397 |
Stations Information | ID, latitude, longitude, capacity |
Number of Journeys | 121,709 |
Number of Available Bikes and Docks | 40,051 |
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El Sibai, R.; Challita, K.; Bou Abdo, J.; Demerjian, J. A New User-Based Incentive Strategy for Improving Bike Sharing Systems’ Performance. Sustainability 2021, 13, 2780. https://doi.org/10.3390/su13052780
El Sibai R, Challita K, Bou Abdo J, Demerjian J. A New User-Based Incentive Strategy for Improving Bike Sharing Systems’ Performance. Sustainability. 2021; 13(5):2780. https://doi.org/10.3390/su13052780
Chicago/Turabian StyleEl Sibai, Rayane, Khalil Challita, Jacques Bou Abdo, and Jacques Demerjian. 2021. "A New User-Based Incentive Strategy for Improving Bike Sharing Systems’ Performance" Sustainability 13, no. 5: 2780. https://doi.org/10.3390/su13052780
APA StyleEl Sibai, R., Challita, K., Bou Abdo, J., & Demerjian, J. (2021). A New User-Based Incentive Strategy for Improving Bike Sharing Systems’ Performance. Sustainability, 13(5), 2780. https://doi.org/10.3390/su13052780