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Hybrid Predictive Control for the Vehicle Dynamic Routing Problem based on Evolutionary Multiobjective Optimization (EMO)

机译:基于进化多目标优化的车辆动态路由问题混合预测控制(EMO)

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In this paper, a hybrid adaptive predictive control approach (HAPC) to solve a dynamic pickup and delivery problem (DPDP) is presented based on a dynamic objective function that includes two dimensions: user and operator costs. Because these two costs are opposite components, the problem was formulated and solved by using an Evolutionary Multiobjective Optimization (EMO) technique. The idea is to minimize both, user and operator costs. At every instant, the use of genetic algorithms is proposed to find the optimal Pareto front associated with the DPDP, whose Pareto Optimal set is a set of solutions of the problem. Since only one solution has to be applied to the system every time a new request appears, several criteria will be utilized in order to properly use the information provided by the dynamic optimal Pareto front. Illustrative experiments through simulation of the process are presented to show the potential benefits of the new approach. Thus, by using EMO, the trade off between the two conflicting objectives will become clear for the dispatcher when making dynamic routing decisions.
机译:在本文中,基于包括两个维度的动态目标函数来呈现用于解决动态拾取和交付问题(DPDP)的混合自适应预测控制方法(HAPC)(DPDP):用户和操作员成本。因为这两个成本是相反的组件,所以通过使用进化多目标优化(EMO)技术来配制和解决问题。该想法是最大限度地减少用户和操作员成本。在每个瞬间,建议使用遗传算法以找到与DPDP相关的最佳帕累托前线,其Pareto最佳集是问题的一组解决方案。由于每次出现新请求时只能将一个解决方案应用于系统,因此将利用若干标准,以便正确使用动态最佳Paroto前部提供的信息。通过模拟该过程的说明实验表明了新方法的潜在益处。因此,通过使用EMO,在进行动态路由决策时,调度员将在调度员之间的折衷将变得清晰。

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