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Space Exploration and Region Elimination Global Optimization Algorithms for Multidisciplinary Design Optimization.

机译:用于多学科设计优化的空间探索和区域消除全局优化算法。

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摘要

In modem day engineering, the designer has become more and more dependent on computer simulation. Oftentimes, computational cost and convergence accuracy accompany these simulations to reach global solutions for engineering design problems causes traditional optimization techniques to perform poorly. To overcome these issues nontraditional optimization algorithms based region elimination and space exploration are introduced. Approximation models, which are also known as metamodels or surrogate models, are used to explore and give more information about the design space that needs to be explored. Usually the approximation models are constructed in the promising regions where global solutions are expected to exist. The approximation models imitate the original expensive function, black-box function, and contribute towards getting comparably acceptable solutions with fewer resources and at low computation cost.;The research presented in this dissertation focuses on introducing new optimization algorithms based on metamodeling techniques that alleviate the burden of the computation cost associated with complex engineering design problems. Three new global optimization algorithms were introduced in this dissertation, Approximated Unimodal Region Elimination (AUMRE), Space Exploration and Unimodal Region Elimination (SEUMRE), and Mixed Surrogate Space Exploration (MSSE) for computation intensive and black-box engineering design optimization problems. In these algorithms, the design space was divided into many subspaces and the search was focused on the most promising regions to reach global solutions with the resources available and with less computation cost.;Metamodeling techniques such as Response Surface Method (RSM), Radial Basis Function (RBF), and Kriging (KRG) are introduced and used in this work. RSM has been used because of its advantages such as being easy to construct, understand and implement. Also due to its smoothing capability, it allows quick convergence of noisy functions in the optimization. RBF has the advantage of smoothing data and interpolating them. KRG metamodels can provide accurate predictions of highly nonlinear or irregular behaviours. These features in metamodeling techniques have contributed largely towards obtaining comparably accurate global solutions besides reducing the computation cost and resources.;Many multi-objective optimization algorithms, specifically those used for engineering problems and applications involve expensive fitness evaluations. In this dissertation, a new multi-objective global optimization algorithm for black-box functions is also introduced and tested on benchmark test problems and real life engineering applications.;The primary contributions of this dissertation are associated with the development of new methods for exploring the design space for large scale computer simulations. Primarily, the proposed design space exploration procedure uses a hierarchical partitioning method to help mitigate the curse of dimensionality often associated with the analysis of large scale systems.;Finally, the new proposed global optimization algorithms were tested using benchmark global optimization test problems to reveal their pros and cons. A comparison with other well known and recently introduced global optimization algorithms were carried out to highlight the proposed methods' advantages and strength points. In addition, a number of practical examples of global optimization in industrial designs were used and optimized to further test these new algorithms. These practical examples include the design optimization of automotive Magnetorheological Brake Design and the design optimization of two-mode hybrid powertrains for new hybrid vehicles. It is shown that the proposed optimization algorithms based on metamodeling techniques comparably provide global solutions with the added benefits of fewer function calls and the ability to efficiently visualize the design space.
机译:在现代工程中,设计人员越来越依赖于计算机仿真。通常,这些仿真伴随着计算成本和收敛精度,从而无法获得针对工程设计问题的全局解决方案,从而导致传统的优化技术性能不佳。为了克服这些问题,引入了基于非传统优化算法的区域消除和空间探索。近似模型(也称为元模型或代理模型)用于探索并提供有关需要探索的设计空间的更多信息。通常,近似模型是在有望存在全球解决方案的有希望的地区构建的。逼近模型模仿了原始的昂贵函数,黑盒函数,并有助于以更少的资源和较低的计算成本获得可比较的解决方案。本论文的研究重点是介绍基于元建模技术的新优化算法,该算法可减轻与复杂的工程设计问题相关的计算成本负担。本文针对计算密集型和黑盒工程设计优化问题,引入了三种新的全局优化算法:近似单峰区域消除(AUMRE),空间探索和单峰区域消除(SEUMRE)以及混合代理空间探索(MSSE)。在这些算法中,设计空间被划分为许多子空间,搜索集中在最有希望的区域上,以利用可用资源并以较少的计算成本获得全局解决方案。元建模技术,例如响应面法(RSM),径向基函数(RBF)和克里格(KRG)被介绍并在这项工作中使用。使用RSM是因为它具有易于构建,理解和实施的优点。同样由于其平滑能力,它可以在优化中快速收敛噪声函数。 RBF具有使数据平滑和内插的优势。 KRG元模型可以提供高度非线性或不规则行为的准确预测。元建模技术中的这些功能除了降低了计算成本和资源外,还为获得相对准确的全局解决方案做出了很大贡献。许多多目标优化算法,特别是用于工程问题和应用的算法,涉及昂贵的适应性评估。本文还介绍了一种新的针对黑盒函数的多目标全局优化算法,并在基准测试问题和实际工程应用中对其进行了测试。;本论文的主要贡献与新方法的开发有关。大型计算机仿真的设计空间。首先,提出的设计空间探索程序使用分层划分方法来帮助减轻通常与大型系统分析相关的维数诅咒。最后,使用基准全局优化测试问题对新提出的全局优化算法进行了测试,以揭示它们的问题。利弊。与其他众所周知的和最近引入的全局优化算法进行了比较,以突出提出的方法的优点和优点。此外,还使用并优化了工业设计中全局优化的许多实际示例,以进一步测试这些新算法。这些实际示例包括汽车磁流变制动器设计的设计优化和新型混合动力汽车的双模式混合动力总成的设计优化。结果表明,所提出的基于元建模技术的优化算法可为全局解决方案提供可比的功能,其优点是更少的函数调用和有效地可视化设计空间的能力。

著录项

  • 作者

    Younis, Adel Ayad Hassouna.;

  • 作者单位

    University of Victoria (Canada).;

  • 授予单位 University of Victoria (Canada).;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 221 p.
  • 总页数 221
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:36:50

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