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Optimizing the Hyperparameters of a Mixed Integer Linear Programming Solver to Speed up Electric Vehicle Charging Control

机译:优化混合整数线性规划求解器的超参数以加快电动汽车的充电控制

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Optimization of charging profiles for controlled charging of electric vehicles is commonly done via mixed integer linear programming. The runtime of the optimization can represent an issue for the practical use. However, by tuning the parameter setting of the employed solver, it is possible to speed up the optimization process. The present work evaluates two popular hyperparameter tuning tools - irace (iterated racing) and SMAC (sequential model-based algorithm configuration) for the optimization of parameters of the SCIP (Solving Constraint Integer Programs) solver with the objective to speed up the solving process for four common variants of the electric vehicle charging scheduling problem. Based on the results, the most important solver parameters are identified. It is shown that by tuning a very limited number of parameters, speed-ups of 60% and more can be achieved.
机译:通常通过混合整数线性编程来完成用于电动车辆的受控充电的充电曲线的优化。优化的运行时间可能代表实际使用中的一个问题。但是,通过调整所使用求解器的参数设置,可以加快优化过程。本工作评估了两个流行的超参数调整工具-irace(迭代竞赛)和SMAC(基于顺序模型的算法配置),用于优化SCIP(求解约束整数程序)求解器的参数,目的是加快求解速度。电动汽车充电调度问题的四个常见变体。根据结果​​,确定最重要的求解器参数。结果表明,通过调整数量非常有限的参数,可以达到60%甚至更高的加速比。

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