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Robust optimization and sensitivity analysis with multi-objective genetic algorithms: Single- and multi-disciplinary applications.

机译:多目标遗传算法的稳健优化和灵敏度分析:单学科和多学科应用。

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摘要

Uncertainty is inevitable in engineering design optimization and can significantly degrade the performance of an optimized design solution and/or even change feasibility by making a feasible solution infeasible. The problem with uncertainty can be exacerbated in multi-disciplinary optimization whereby the models for several disciplines are coupled and the propagation of uncertainty has to be accounted for within and across disciplines. It is important to determine which ranges of parameter uncertainty are most important or how to best allocate investments to partially or fully reduce uncertainty under a limited budget. To address these issues, this dissertation concentrates on a new robust optimization approach and a new sensitivity analysis approach for multi-objective and multi-disciplinary design optimization problems that have parameters with interval uncertainty.; The dissertation presents models and approaches under four research thrusts. In the first thrust, an approach is presented to obtain robustly optimal solutions which are as best as possible, in a multi-objective sense, and at the same time their sensitivity of objective and/or constraint functions is within an acceptable range. In the second thrust, the robust optimization approach in the first thrust is extended to design optimization problems which are decomposed into multiple subproblems, each with multiple objectives and constraints. In the third thrust, a new approach for multi-objective sensitivity analysis and uncertainty reduction is presented. And in the final research thrust, a metamodel embedded Multi-Objective Genetic Algorithm (MOGA) for solution of design optimization problems is presented.; Numerous numerical and engineering examples are used to explore and demonstrate the applicability and performance of the robust optimization, sensitivity analysis and MOGA techniques developed in this dissertation. It is shown that the obtained robust optimal solutions for the test examples are conservative compared to their corresponding optimal solutions in the deterministic case. For the sensitivity analysis, it is demonstrated that the proposed method identifies parameters whose uncertainty reduction or elimination produces the largest payoffs for any given investment. Finally, it is shown that the new MOGA requires a significantly fewer number of simulation calls, when used to solve multi-objective design optimization problems, compared to previously developed MOGA methods while obtaining comparable solutions.
机译:工程设计优化中的不确定性是不可避免的,并且通过使可行的解决方案变得不可行,不确定性会大大降低优化设计解决方案的性能,甚至改变可行性。在多学科优化中,不确定性的问题可能会加剧,因为这需要耦合多个学科的模型,并且必须考虑学科内部和学科之间不确定性的传播。重要的是要确定参数不确定性的范围最重要,或者如何最好地分配投资以部分或完全减少有限预算下的不确定性。为解决这些问题,本文着重针对具有不确定性参数的多目标,多学科设计优化问题,提出了一种新的鲁棒优化方法和新的灵敏度分析方法。本文提出了四个研究方向的模型和方法。在第一个推论中,提出了一种方法,以获得在多目标意义上尽可能最佳的鲁棒最优解,同时它们对目标函数和/或约束函数的敏感性在可接受的范围内。在第二推力中,第一推力中的鲁棒优化方法扩展到设计优化问题,这些问题被分解为多个子问题,每个子问题都有多个目标和约束。在第三个推论中,提出了一种用于多目标灵敏度分析和减少不确定性的新方法。在最后的研究重点中,提出了一种用于解决设计优化问题的元模型嵌入式多目标遗传算法(MOGA)。大量的数值和工程实例被用来探索和证明本文所开发的鲁棒优化,灵敏度分析和MOGA技术的适用性和性能。结果表明,在确定性情况下,与测试例相比,所获得的鲁棒最优解是保守的。对于敏感性分析,证明了所提出的方法可以识别出不确定性降低或消除的参数,这些参数对于任何给定的投资都能产生最大的收益。最后,结果表明,与以前开发的MOGA方法相比,当用于解决多目标设计优化问题时,新的MOGA所需的仿真调用数量大大减少,同时可获得可比的解决方案。

著录项

  • 作者

    Li, Mian.;

  • 作者单位

    University of Maryland, College Park.$bMechanical Engineering.;

  • 授予单位 University of Maryland, College Park.$bMechanical Engineering.;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 213 p.
  • 总页数 213
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;
  • 关键词

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