Data-driven optimization for rebalancing shared electric scooters
Journal article, 2024

Shared electric scooters have become a popular and flexible transportation mode in recent years. However, managing these systems, especially the rebalancing of scooters, poses significant challenges due to the unpredictable nature of user demand. To tackle this issue, we developed a stochastic optimization model (M0) aimed at minimizing transportation costs and penalties associated with unmet demand. To solve this model, we initially introduced a mean-value optimization model (M1), which uses average historical values for user demand. Subsequently, to capture the variability and uncertainty more accurately, we proposed a data-driven optimization model (M2) that uses the empirical distribution of historical data. Through computational experiments, we assessed both models’ performance. The results consistently showed that M2 outperformed M1, effectively managing stochastic demand across various scenarios. Additionally, sensitivity analyses confirmed the adaptability of M2. Our findings offer practical insights for improving the efficiency of shared electric scooter systems under uncertain demand conditions.

rebalancing problem

data-driven optimization

uncertain user demand

shared electric scooters

Author

Yanxia Guan

Hong Kong Polytechnic University

Xuecheng Tian

Hong Kong Polytechnic University

Sheng Jin

Zhejiang University

Kun Gao

Geology and Geotechnics

Wen Yi

Hong Kong Polytechnic University

Yong Jin

Hong Kong Polytechnic University

Xiaosong Hu

Chongqing University

Shuaian Wang

Hong Kong Polytechnic University

Electronic Research Archive

26881594 (eISSN)

Vol. 32 9 5377-5391

Subject Categories

Transport Systems and Logistics

Energy Systems

DOI

10.3934/ERA.2024249

More information

Latest update

10/29/2024