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首页> 外文期刊>IEEE transactions on automation science and engineering >Receding Horizon Control for Station Inventory Management in a Bike-Sharing System
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Receding Horizon Control for Station Inventory Management in a Bike-Sharing System

机译:在自行车分享系统中解雇地平线控制的地平控制

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摘要

A docking bike-sharing system (BSS) is modeled as a network representing the underlying transportation network. Mobile agents (replenishment trucks) traverse the network making routing decisions and deciding how and when to replenish station inventories so as to prevent imbalances due to users' one-way rides as well as time-varying demand. This load balancing process entails selecting both optimal routes for the agents and the number of bikes to load/unload at a station with an objective of minimizing a user dissatisfaction metric. First, we establish a time-dependent replenishment fill-to level policy for each station based on the demand rates and station capacities. Next, we focus on developing a receding horizon controller (RHC) to find optimal routes. The controller proceeds in an event-driven manner to determine after each event the optimal routes for a fleet of agents over a finite planning horizon, with the control applied over a shorter action horizon. The proposed controller is applied to a simulated BSS with station and demand parameters taken from the public data sets of Bluebikes, the BSS in Boston, MA, USA, and a cost-benefit analysis is performed on agent shift hours. In order to demonstrate the robustness of the RHC, sensitivity analysis is also performed on the arc travel times and the demand processes. Note to Practitioners-This paper is motivated by the load balancing problem faced by BSS with finite-capacity docking stations and time-varying demand; stations become empty or full as their popularity as an origin or destination varies over the course of a day. The proposed RHC creates dynamic cooperative routes for a fleet of load balancing trucks to move bikes between stations by considering the current inventory, demand rates, and proximity of all stations and trucks. The strength of this controller is that it achieves optimality over a specified planning horizon and reacts quickly to random inventory changes which update the planning horizon on a rolling basis. Thus, the optimal routes found for a planning horizon are updated at the next decision point, i.e., an intersection. This event-driven RHC decreases the complexity of finding optimal routes so that it may be used in real time. Insights obtained from the application of this approach to the Boston BSS are that extending the length of the receding horizon provides marginal benefits beyond a certain value and that the controller is robust with respect to the stochastic behavior of the user demand and the truck travel time processes. The approach is amenable to extensions that can include incentivizing users so as to enhance load balancing beyond external truck-based interventions.
机译:对接自行车共享系统(BSS)被建模为代表底层运输网络的网络。移动代理(补货卡车)遍历网络进行路由决策,决定如何以及何时补充站库存,以防止由于用户单向游乐设施以及时变的需求而导致的不平衡。此负载平衡过程需要选择代理的最佳路由以及在站上加载/卸载的自行车数量,其目的是最小化用户不满度量。首先,我们基于需求速率和站容量建立每个站的时间依赖补充补充填充级别策略。接下来,我们专注于开发后退地平线控制器(RHC)以找到最佳路线。控制器以事件驱动的方式进行以在每次事件之后确定在有限的规划地平线上的每个事件的最佳路线,控制在较短的动作地平线上施加。所提出的控制器应用于带站的模拟BSS,并从BlueBikes的公共数据集,波士顿,MA,USA中的BSS中获取的需求参数,以及在代理换档时间上进行成本效益分析。为了展示RHC的稳健性,还对电弧行驶时间和需求过程进行敏感性分析。从业者的注意事项 - 本文采用了BSS面临的负载平衡问题,具有有限容量对接站和时变的需求;当原产地或目的地在一天的过程中变化时,车站变空或充实。该建议的RHC通过考虑所有站点和卡车的当前库存,需求和附近,为负载平衡卡车的舰队创造了动态协作路线,以在车站之间移动自行车。该控制器的强度是它在指定的规划地平线上实现了最优性,并使随机库存变化迅速作出更新,以便在滚动的基础上更新规划地平线。因此,在下一个决策点,即交叉点处更新为计划地平线的最佳路线。该事件驱动的RHC降低了找到最佳路由的复杂性,以便它可以实时使用。从应用这种方法到波士顿BSS的应用中获得的见解是,延长后退地平线的长度提供超出一定值的边缘益处,并且控制器对用户需求的随机行为和卡车行驶时间过程具有鲁棒性。该方法适用于可以包括激励用户的扩展,以便增强超出外部卡车的干预措施的负载平衡。

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