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SENSITIVITY ANALYSIS IN MULTI-OBJECTIVE EVOLUTIONARY DESIGN

机译:多目标进化设计中的灵敏度分析

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摘要

In real world engineering design problems we have to search for solutions that simultaneously optimize a wide range of different criteria. Furthermore, the optimal solutions also have to be robust. Therefore, this chapter describes a method where a multi-objective genetic algorithm is combined with response surface methods in order to assess the robustness of a set of identified optimal solutions. The multi-objective genetic algorithm is used in order to optimize two different concepts of hydraulic actuation systems. The different concepts have been modeled in a simulation environment to which the optimization strategy has been coupled. The outcome from the optimization is a set of Pareto optimal solutions that elucidate the tradeoff between the energy consumption and the control error for each actuation system. Based on these Pareto fronts, promising regions could be identified for each concept. In these regions sensitivity analyses are performed with the help of response surface methods. It can then be determined how different design parameters affect the system for different optimal solutions.
机译:在现实世界中的工程设计问题中,我们必须寻找能够同时优化各种不同标准的解决方案。此外,最佳解决方案还必须具有鲁棒性。因此,本章描述了一种方法,其中将多目标遗传算法与响应面方法相结合,以评估一组已确定的最优解的鲁棒性。为了优化液压执行系统的两个不同概念,使用了多目标遗传算法。不同的概念已经在模拟环境中进行了建模,优化策略已经耦合到该环境中。优化的结果是一组帕累托最优解决方案,阐明了每个执行系统的能耗和控制误差之间的权衡。基于这些帕累托阵线,可以为每个概念确定有希望的区域。在这些区域中,借助响应面方法进行灵敏度分析。然后可以确定不同的设计参数对于不同的最佳解决方案如何影响系统。

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