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A constrained, globalized, and bounded Nelder-Mead method for engineering optimization

机译:用于工程优化的约束,全局有界Nelder-Mead方法

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One of the fundamental difficulties in engineering design is the multiplicity of local solutions. This has triggered much effort in the development of global search algorithms. Globality, however, often has a prohibitively high numerical cost for real problems. A fixed cost local search, which sequentially becomes global, is developed in this work. Globalization is achieved by probabilistic restarts. A spacial probability of starting a local search is built based on past searches. An improved Nelder-Mead algorithm is the local optimizer. It accounts for variable bounds and nonlinear inequality constraints. It is additionally made more robust by reinitializing degenerated simplexes. The resulting method, called the Globalized Bounded Nelder-Mead (GBNM) algorithm, is particularly adapted to tackling multimodal, discontinuous, constrained optimization problems, for which it is uncertain that a global optimization can be afforded. Numerical experiments are given on two analytical test functions and two composite laminate design problems. The GBNM method compares favorably with an evolutionary algorithm, both in terms of numerical cost and accuracy.
机译:工程设计中的基本困难之一是本地解决方案的多样性。这引发了全球搜索算法开发的巨大努力。但是,对于实际问题,全局性通常会带来过高的数字成本。在这项工作中,开发了一种固定成本的本地搜索,该搜索逐渐成为全球性的搜索。全球化是通过概率重启来实现的。根据过去的搜索来建立开始本地搜索的空间概率。改进的Nelder-Mead算法是局部优化器。它考虑了变量边界和非线性不等式约束。此外,通过重新初始化退化的单纯形,它变得更加健壮。所得的方法称为全局有界Nelder-Mead(GBNM)算法,特别适合处理多峰,不连续,受约束的优化问题,无法确定是否可以进行全局优化。针对两个分析测试功能和两个复合材料层压板设计问题进行了数值实验。在数值成本和准确性方面,GBNM方法都优于进化算法。

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