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On utility of inductive learning in multiobjective robust design

机译:归纳学习在多目标鲁棒设计中的应用

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摘要

Most engineering design problems involve optimizing a number of often conflicting performance measures in the presence of multiple constraints. Traditional vector optimization techniques approach these problems by generating a set of Pareto-optimal solutions, where any specific objective can be further improved only at the cost of degrading one or more other objectives. The solutions obtained in this manner, however, are only single points within the space of all possible Pareto-optimal solutions and generally do not indicate to designers how small deviations from predicted design parameters settings affect the performance of the product or the process under study.
机译:大多数工程设计问题都涉及在存在多个约束的情况下优化许多通常相互冲突的性能指标。传统的矢量优化技术通过生成一组Pareto最优解来解决这些问题,其中仅以降低一个或多个其他目标为代价,即可进一步改善任何特定目标。但是,以这种方式获得的解仅是所有可能的Pareto最优解空间内的单个点,并且通常不会向设计人员指示与预测设计参数设置的微小偏差如何影响产品或所研究过程的性能。

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