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Multiobjective evolutionary algorithm with risk minimization applied to a fleet mix problem

机译:风险最小化的多目标进化算法应用于车队混合问题

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We apply the non-dominated sorting genetic algorithm-II (NSGA-II) to a multi-objective fleet-mix problem for risk mitigation. The Stochastic Fleet Estimation (SaFE) model, a Monte Carlo-based model, is used to determine average annual requirements which a fleet must meet. We search for Pareto-optimal combinations of platform-to-task assignments that can be used to complete SaFE generated scenarios. Solutions are evaluated using three objectives, with a goal of minimizing fleet cost, total task duration, and the risk that a solution will not be able to accomplish future scenarios. Optimization over all three objectives allowed for exploration of configurations which were low cost and low risk, a region not explored by prior experiments without the risk objective.
机译:我们将非支配排序遗传算法-II(NSGA-II)应用于多目标车队混合问题,以降低风险。随机车队估计(SaFE)模型是基于蒙特卡洛的模型,用于确定车队必须满足的平均年度需求。我们搜索平台到任务分配的帕累托最优组合,这些组合可用于完成SaFE生成的方案。使用三个目标评估解决方案,目标是最大程度地减少机队成本,总任务持续时间以及解决方案无法完成未来方案的风险。通过对所有三个目标的优化,可以探索低成本和低风险的配置,这是以前的没有风险目标的实验所无法探索的区域。

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