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Dynamic pricing and fleet management for electric autonomous mobility on demand systems

机译:需求系统电动自主移动动态定价与舰队管理

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The proliferation of ride sharing systems is a major drive in the advancement of autonomous and electric vehicle technologies. This paper considers the joint routing, battery charging, and pricing problem faced by a profit-maximizing transportation service provider that operates a fleet of autonomous electric vehicles. We first establish the static planning problem by considering time-invariant system parameters and determine the optimal static policy. While the static policy provides stability of customer queues waiting for rides even if consider the system dynamics, we see that it is inefficient to utilize a static policy as it can lead to long wait times for customers and low profits. To accommodate for the stochastic nature of trip demands, renewable energy availability, and electricity prices and to further optimally manage the autonomous fleet given the need to generate integer allocations, a real-time policy is required. The optimal real-time policy that executes actions based on full state information of the system is the solution of a complex dynamic program. However, we argue that it is intractable to exactly solve for the optimal policy using exact dynamic programming methods and therefore apply deep reinforcement learning to develop a near-optimal control policy. The two case studies we conducted in Manhattan and San Francisco demonstrate the efficacy of our real-time policy in terms of network stability and profits, while keeping the queue lengths up to 200 times less than the static policy.
机译:骑行分享系统的扩散是自主和电动汽车技术进步的主要推动力。本文考虑了一款经营自动电动汽车队伍的利润最大化运输服务提供商面临的联合路由,电池充电和定价问题。我们首先考虑时间不变的系统参数并确定最佳静态策略来建立静态规划问题。虽然静态策略提供了客户队列的稳定性,但即使考虑系统动态,我们也看到利用静态策略效率低效,因为它可以导致客户提供漫长的客户和低利润。为了适应旅行需求的随机性,可再生能源可用性和电价以及进一步最佳地管理自主船队,鉴于需要产生整数分配,需要实时策略。基于系统的完整状态信息执行操作的最佳实时策略是复杂动态程序的解决方案。但是,我们认为,使用精确的动态规划方法可以难以解决最佳政策,因此应用深度加强学习以开发近最优控制政策。我们在曼哈顿和旧金山进行的两种案例研究展示了我们在网络稳定和利润方面的实时政策的效果,同时将队列长度保持高达200倍,而不是静态策略。

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