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Inter-GEN: A hybrid approach to engineering design optimization.

机译:Inter-GEN:工程设计优化的混合方法。

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摘要

A large portion of engineering design optimization involves the time-consuming process to iteratively running simulation codes to predict the performance of a design. Engineers attempt to modify design parameters to find the best design that satisfies design requirements. Although many automated design optimization techniques have been developed, no single technique has emerged to efficiently search the typically high-dimensional and highly nonlinear parameter spaces for the best design.;An optimization approach based on the interdigitation of three optimization technologies is presented. The approach, called Inter-GEN, is an interdigitation of genetic algorithms, expert systems, and numerical optimization. Inter-GEN uses a control strategy to couple and switch among optimization technologies to get the greatest optimization improvement in as few runs of the simulation code as possible. There are two search phases in the Inter-GEN approach: knowledge-directed and knowledge-supplementation. Knowledge-directed search uses expert system technology tightly coupled with numerical optimization techniques to exploit the engineer's knowledge of the physics of the parameter space. The expert system specifics regions of the parameter space within which numerical optimization can focus. When the knowledge-directed search phase no longer provides improvement, a knowledge-supplementation search phase is entered. The knowledge-supplementation search phase supplements the engineer's incomplete knowledge of the parameter space by coupling genetic algorithms and numerical optimization to explore and exploit the parameter space efficiently. The genetic algorithm identifies various "hills" within the parameter space and provides a non-gradient-based method of avoiding constraint boundaries and local optima. Numerical optimization enhances the genetic algorithm's ability to exploit unimodal regions of the parameter space (i.e., it focuses on getting the best "local" solution).;Inter-GEN has been implemented and tested using a single control strategy on a diverse set of eleven test cases: six engineering problems which have proven difficult to numerical optimization techniques, four 3-dimensional problems whose surface is completely specified, and the preliminary design of a GE 10-stage aircraft engine turbine. The test results show Inter-GEN to be a more efficient and more robust optimization approach than either numerical optimization or genetic algorithms used in isolation.
机译:工程设计优化的很大一部分涉及耗时的过程,以迭代方式运行仿真代码以预测设计的性能。工程师试图修改设计参数,以找到满足设计要求的最佳设计。尽管已经开发了许多自动化设计优化技术,但是还没有一种技术可以有效地搜索典型的高维和高度非线性参数空间以获得最佳设计。;提出了一种基于三种优化技术的交叉指代的优化方法。这种称为Inter-GEN的方法是遗传算法,专家系统和数值优化的相互交叉。 Inter-GEN使用控制策略在优化技术之间进行耦合和切换,以在尽可能少的仿真代码运行中获得最大的优化改进。跨代方法中有两个搜索阶段:知识导向的和知识补充的。以知识为导向的搜索使用紧密结合数值优化技术的专家系统技术来利用工程师对参数空间物理学的知识。专家系统会指定参数空间的区域,数值优化可以集中在该区域内。当知识导向的搜索阶段不再提供改进时,将进入知识补充搜索阶段。知识补充搜索阶段通过结合遗传算法和数值优化来有效地探索和利用参数空间,从而补充了工程师对参数空间的不完整知识。遗传算法识别参数空间内的各种“坡度”,并提供一种避免约束边界和局部最优的基于非梯度的方法。数值优化增强了遗传算法利用参数空间单峰区域的能力(即,它专注于获得最佳的“局部”解决方案)。;Inter-GEN已使用单一控制策略在11个不同的集合上进行了实现和测试测试用例:六个工程问题,这些问题已证明是数值优化技术难以实现的;四个表面完全指定的3维问题;以及GE 10级飞机发动机涡轮的初步设计。测试结果表明,Inter-GEN是一种比数值优化或隔离中使用的遗传算法更有效,更强大的优化方法。

著录项

  • 作者

    Powell, David John.;

  • 作者单位

    Rensselaer Polytechnic Institute.;

  • 授予单位 Rensselaer Polytechnic Institute.;
  • 学科 Applied Mechanics.;Engineering Mechanical.;Engineering General.
  • 学位 Ph.D.
  • 年度 1990
  • 页码 183 p.
  • 总页数 183
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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