Dynamic Ride-Hailing with Electric Vehicles

Nicholas D. Kullman, Martin Cousineau, J. Goodson, J. Mendoza
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引用次数: 40

Abstract

We consider the problem of an operator controlling a fleet of electric vehicles for use in a ride-hailing service. The operator, seeking to maximize profit, must assign vehicles to requests as they arise as well as recharge and reposition vehicles in anticipation of future requests. To solve this problem, we employ deep reinforcement learning, developing policies whose decision making uses [Formula: see text]-value approximations learned by deep neural networks. We compare these policies against a reoptimization-based policy and against dual bounds on the value of an optimal policy, including the value of an optimal policy with perfect information, which we establish using a Benders-based decomposition. We assess performance on instances derived from real data for the island of Manhattan in New York City. We find that, across instances of varying size, our best policy trained with deep reinforcement learning outperforms the reoptimization approach. We also provide evidence that this policy may be effectively scaled and deployed on larger instances without retraining.
电动汽车的动态叫车服务
我们考虑一个运营商的问题,控制一个车队的电动车辆用于乘车服务。为了实现利润最大化,运营商必须根据需求分配车辆,并根据未来的需求对车辆进行充电和重新定位。为了解决这个问题,我们采用深度强化学习,开发决策使用深度神经网络学习的[公式:见文本]值近似的策略。我们将这些策略与基于再优化的策略和最优策略值的对偶界进行比较,包括我们使用基于benders的分解建立的具有完美信息的最优策略的值。我们对来自纽约市曼哈顿岛真实数据的实例进行性能评估。我们发现,在不同大小的实例中,我们用深度强化学习训练的最佳策略优于再优化方法。我们还提供了证据,证明该策略可以有效地扩展和部署在更大的实例上,而无需重新培训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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