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Hybrid Adaptive Predictive Control for a Dynamic Pickup and Delivery Problem

机译:动态取货和配送问题的混合自适应预测控制

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This paper presents a hybrid adaptive predictive control approach that includes future information in realtime routing decisions in the context of a dynamic pickup and delivery problem (DPDP). We recognize in this research that when the problem is dynamic, an additional stochastic effect has to be considered within the analytical expression of the objective function for vehicle scheduling and routing, which is the extra cost associated with potential rerouting arising from unknown requests in the future. The major contributions of this paper are: first, the development of a formal adaptive predictive control framework to model the DPDP, and second, the development and coding of an ad hoc particle swarm optimization (PSO) algorithm to efficiently solve it. Predictive state-space formulations are written on the relevant variables (vehicle load and departure time at stops) for the DPDP. Next, an objective function is stated to solve the real-time system when predicting one and two steps ahead in time. A problem-specific PSO algorithm is proposed and coded according to the dynamic formulation. Then, the PSO method is used to validate this approach through a simulated numerical example.
机译:本文提出了一种混合自适应预测控制方法,该方法在动态取货和发货问题(DPDP)的情况下,将未来信息包括在实时路由决策中。我们在这项研究中认识到,当问题是动态的时,必须在车辆调度和路线选择的目标函数的分析表达式内考虑其他随机效应,这是与将来因未知请求而引起的潜在路线变更相关的额外成本。本文的主要贡献是:首先,开发了用于模型化DPDP的形式化自适应预测控制框架,其次,开发并编码了可有效求解的特设粒子群优化(PSO)算法。状态空间的预测公式写在DPDP的相关变量(车辆负载和停靠点的出发时间)上。接下来,当提前预测一个和两个步骤时,提出了一个目标函数来解决实时系统。提出了一种针对特定问题的PSO算法,并根据动态公式对其进行了编码。然后,通过模拟数值示例,使用PSO方法验证该方法。

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