Data-driven Distributionally Robust Optimization For Vehicle Balancing of Mobility-on-Demand Systems

Author:

Miao Fei1,He Sihong1,Pepin Lynn1,Han Shuo2,Hendawi Abdeltawab3,Khalefa Mohamed E4,Stankovic John A.5,Pappas George6

Affiliation:

1. University of Connecticut

2. University of Illinois at Chicago

3. University of Rhode Island

4. Alexandria University

5. University of Virginia

6. University of Pennsylvania

Abstract

With the transformation to smarter cities and the development of technologies, a large amount of data is collected from sensors in real time. Services provided by ride-sharing systems such as taxis, mobility-on-demand autonomous vehicles, and bike sharing systems are popular. This paradigm provides opportunities for improving transportation systems’ performance by allocating ride-sharing vehicles toward predicted demand proactively. However, how to deal with uncertainties in the predicted demand probability distribution for improving the average system performance is still a challenging and unsolved task. Considering this problem, in this work, we develop a data-driven distributionally robust vehicle balancing method to minimize the worst-case expected cost. We design efficient algorithms for constructing uncertainty sets of demand probability distributions for different prediction methods and leverage a quad-tree dynamic region partition method for better capturing the dynamic spatial-temporal properties of the uncertain demand. We then derive an equivalent computationally tractable form for numerically solving the distributionally robust problem. We evaluate the performance of the data-driven vehicle balancing algorithm under different demand prediction and region partition methods based on four years of taxi trip data for New York City (NYC). We show that the average total idle driving distance is reduced by 30% with the distributionally robust vehicle balancing method using quad-tree dynamic region partitions, compared with vehicle balancing methods based on static region partitions without considering demand uncertainties. This is about a 60-million-mile or a 8-million-dollar cost reduction annually in NYC.

Funder

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Control and Optimization,Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

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2. A Systematic Survey of Control Techniques and Applications in Connected and Automated Vehicles;IEEE Internet of Things Journal;2023-12-15

3. A Robust and Constrained Multi-Agent Reinforcement Learning Electric Vehicle Rebalancing Method in AMoD Systems;2023 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS);2023-10-01

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