Affiliation:
1. DIBRIS, University of Genova, Italy
Abstract
Nowadays, micro-mobility sharing systems have become extremely popular. Such systems consist in fleets of dockless electric vehicles which are deployed in cities, and used by citizens to move in a more ecological and flexible way. Unfortunately, one of the issues related to such technologies is its intrinsic load imbalance, since users can pick up and drop off the electric vehicles where they prefer. In this paper we present ESB-DQN, a multi-agent system for E-Scooter Balancing (ESB) based on Deep Reinforcement Learning where agents are implemented as Deep Q-Networks (DQN). ESB-DQN offers suggestions to pick or return e-scooters in order to make the fleet usage and sharing as balanced as possible, still ensuring that the original plans of the user undergo only minor changes. The main contributions of this paper include a careful analysis of the state of the art, an innovative customer-oriented rebalancing strategy, the integration of state-of-the-art libraries for deep Reinforcement Learning into the existing ODySSEUS simulator of mobility sharing systems, and preliminary but promising experiments that suggest that our approach is worth further exploration.
Reference25 articles.
1. Exploring the adoption of moped scooter-sharing systems in spanish urban areas;Aguilera-García;Cities,2020
2. Austin shared micro-mobility open data, 2019.
3. Electric scooter sharing and bike sharing user behaviour and characteristics;Bieliński;Sustainability,2020
4. Bui A. , Slowik P. and Lutsey N. , Evaluating electric vehicle market growth across U.S. cities. In The International Council on Clean Transportation, 2021.
5. Carrese S. , D’Andreagiovanni F. , Giacchetti T. , Nardin A. and Zamberlan L. , A beautiful fleet: Optimal repositioning in e-scooter sharing systems for urban decorum, Transportation Research Procedia 52 (2020), 581–588. 23rd EUROWorking Group on Transportation Meeting, EWGT 2020, 16-18 September 2020, Paphos, Cyprus.
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献