首页> 外文会议>ASME Annual Dynamic Systems and Control Division Conference >MINIMIZING CO_2 EMISSIONS AND DOLLAR COSTS FOR PLUG-IN HYBRID ELECTRIC VEHICLES USING MULTI OBJECTIVE DYNAMIC PROGRAMMING
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MINIMIZING CO_2 EMISSIONS AND DOLLAR COSTS FOR PLUG-IN HYBRID ELECTRIC VEHICLES USING MULTI OBJECTIVE DYNAMIC PROGRAMMING

机译:使用多目标动态规划最小化插件混合动力电动车辆的CO_2排放和美元成本

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This paper presents a computationally efficient Multi-Objective Dynamic Programming (MODP) algorithm. The algorithm is applied to obtain the optimal supervisory control for PHEVs to minimize two objectives - total CO_2 emissions and operational dollar costs to an individual PHEV owner. The algorithm integrates the concept of crowding distance from the Multi-Objective Evolutionary Algorithms (MOEA) literature. This distance metric is used to refine the optimal Pareto front at every time step for each state discretization. The refinement of the Pareto front significantly reduces the computational time and memory required for MODP, making it feasible. At the same time, the results show that the refinement retains optimality and produces a Pareto front with a good spread ranging from one extremal point to the other. The results also reveal interesting insights for the tradeoffs that can be achieved in minimizing the CO_2 emissions and cost objectives for the underlying grid mix and driving conditions assumed.
机译:本文介绍了计算上有效的多目标动态编程(MODP)算法。应用算法以获得PHEV的最佳监控,以最大限度地减少两个目标 - 总CO_2排放和运营美元成本对单个PHEV所有者。该算法将拥挤距离的概念与多目标进化算法(MOEA)文献集成。该距离度量用于为每个状态离散化的每次步骤中的每次步骤中的最佳Paroto正面。帕累托前部的改进显着降低了ModP所需的计算时间和内存,使其可行。同时,结果表明,细化保留了最优性并产生帕累托前部,良好的差距从一个极值到另一个极值。结果还揭示了对更新的权衡有趣的见解,这可以在最大限度地降低CO_2排放和潜在的网格混合和驾驶条件的成本目标方面实现。

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