An Algorithm for Multi-Objective Efficient Parametric Optimization

Jonathan M. Weaver-Rosen, R. Malak
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Abstract

Parametric optimization is the process of solving an optimization problem as a function of currently unknown or changing variables known as parameters. Parametric optimization methods have been shown to benefit engineering design and optimal morphing applications through its specialized problem formulation and specialized algorithms. Despite its benefits to engineering design, existing parametric optimization algorithms (similar to many optimization algorithms) can be inefficient when design analyses are expensive. Since many engineering design problems involve some level of expensive analysis, a more efficient parametric optimization algorithm is needed. Therefore, the multi-objective efficient parametric optimization (MO-EPO) algorithm is developed to allow for the efficient optimization of problems with multiple parameters and objectives. This technique relies on the new parametric hypervolume indicator (pHVI) which measures the space dominated by a given set of data involving both objectives and parameters. The novel MO-EPO algorithm is demonstrated on a number of analytical benchmarking problems with various numbers of objectives and parameters. In each case, MO-EPO is shown to find solutions that are as good as or better than those found from the existing P3GA (i.e., equal or greater pHVI value) when the number of design evaluations is limited.
一种多目标高效参数优化算法
参数优化是将当前未知或变化的变量(称为参数)作为函数来解决优化问题的过程。参数优化方法通过其专门的问题表述和专门的算法,已被证明有利于工程设计和最优变形应用。尽管它对工程设计有好处,但当设计分析昂贵时,现有的参数优化算法(类似于许多优化算法)可能效率低下。由于许多工程设计问题涉及一定程度的昂贵分析,因此需要一种更有效的参数优化算法。为此,提出了多目标高效参数优化(MO-EPO)算法,以实现多参数多目标问题的高效优化。该技术依赖于新的参数化超容积指示器(pHVI),它测量由一组给定数据(包括目标和参数)主导的空间。在具有不同数量的目标和参数的分析基准问题上证明了新的MO-EPO算法。在每种情况下,MO-EPO都能在设计评估数量有限的情况下找到与现有P3GA相同或更好的解决方案(即等于或更高的pHVI值)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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