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Multi-level Hybridized Optimization Methods Coupling Local Search Deterministic and Global Search Evolutionary Algorithms

机译:多级杂交优化方法耦合本地搜索确定性和全局搜索进化算法

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摘要

Efficient optimization methods coupling a stochastic evolutionary algorithm with a gradient based deterministic method are presented in this paper. Two kinds of hybridization are compared: one is a stochastic/deterministic alternate algorithm, the other is a stochastic/deterministic embedded algorithm. In the alternating algorithm, stochastic and deterministic optimizers are performed alternately as follows: some individuals are selected from the previous population, and sent to the deterministic algorithms for further optimization, then the improved individuals are inserted into the above population to form a new one for the stochastic algorithm. In the embedded hybridized algorithm, stochastic and deterministic optimization software are run in parallel and independently, the coupling between them is that the deterministic optimizer operates on a randomly selected individual (or the best individual) from the non evaluated population of the stochastic algorithm, then its outcome (new individual) is re-injected into the evaluated population. Moreover, a multilevel approximation (e.g. variable fidelity modeling, analysis and hierarchical approximated parameterization) is introduced in the algorithm, via a low fidelity modeling and rough parameterization to perform a search on large population at lower level, and a high fidelity modeling with detailed parameterization used at higher level. After a theoretical validation of the methods on mathematical test cases, the hybridized methods are successfully applied to the aerodynamic shape optimization of a fore-body of an hypersonic air breathing vehicle, providing both a significant acceleration in terms of parallel HPC performance and improved quality of the design.
机译:本文介绍了高效优化方法耦合具有梯度的确定性方法的随机进化算法。比较两种杂交:一个是一种随机/确定性替代算法,另一个是随机/确定性嵌入算法。在交替算法中,随机和确定性优化器交替地执行如下:一些个体选自以前的群体,并发送到确定性算法以进一步优化,然后将改进的个体插入上述人口中以形成新的群体以形成新的人群以形成新的人群以形成新的人群以形成新的人群以形成新的人群随机算法。在嵌入式杂交算法中,随机和确定性优化软件并行且独立地运行,它们之间的耦合是确定性优化器在来自随机算法的非评估群体的随机选择的单独(或最佳个体)上操作其结果(新个人)重新注入评估的人口。此外,通过低保真建模和粗略参数化在算法中引入了多级近似(例如,可变保真性建模,分析和分析和分级近似参数化),以在较低级别下对大型群体进行搜索,以及具有详细参数化的高保真建模在较高级别使用。在对数学测试用例的方法进行理论验证之后,将杂交的方法成功应用于超声波空气呼吸车前体的空气动力学优化,在平行HPC性能方面提供了显着的加速度和提高的质量该设计。

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    Tang Z.; Hu X.; Periaux J.;

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    Nanjing Univ Aeronaut & Astronaut NUAA Coll Aerosp Engn Nanjing 210016 Peoples R China;

    Nanjing Univ Aeronaut & Astronaut NUAA Coll Aerosp Engn Nanjing 210016 Peoples R China;

    Univ Politecn Cataluna Int Ctr Numer Methods Engn CIMNE Barcelona Spain|Univ Jyvaskyla Fac Informat Technol Jyvaskyla Finland;

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