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Multi-objective vehicle rebalancing for ridehailing system using a reinforcement learning approach

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摘要 The problem of designing a rebalancing algorithm for a large-scale ridehailing system with asymmetric(unbalanced)demand is considered here.We pose the rebalancing problem within a semi Markov decision problem(SMDP)framework with closed queues of vehicles serving stationary,but asymmetric demand,over a large city with multiple stations(representing neighborhoods).We assume that the passengers queue up at every station until they are matched with a vehicle.The goal of the SMDP is to minimize a convex combination of the waiting time of the passengers and the total empty vehicle miles traveled.The resulting SMDP appears to be difficult to solve yielding closed-form expression for the optimal rebalancing strategy.Consequently,we use a deep reinforcement learning algorithm to determine the approximately optimal solution to the SMDP.We show through extensive Monte Carlo simulations that the trained policy outperforms other well-known state-dependent rebalancing strategies.
出处 《Journal of Management Science and Engineering》 2022年第2期346-364,共19页 管理科学学报(英文版)
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