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A dynamic surrogate-assisted evolutionary algorithm framework for expensive structural optimization

机译:一种动态替代辅助进化算法,用于昂贵的结构优化

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摘要

In the expensive structural optimization, the data-driven surrogate model has been proven to be an effective alternative to physical simulation (or experiment). However, the static surrogate-assisted evolutionary algorithm (SAEA) often becomes powerless and inefficient when dealing with different types of expensive optimization problems. Therefore, how to select high-reliability surrogates to assist an evolutionary algorithm (EA) has always been a challenging task. This study aimed to dynamically provide an optimal surrogate for EA by developing a brand-new SAEA framework. Firstly, an adaptive surrogate model (ASM) selection technology was proposed. In ASM, according to different integration criteria from the strategy pool, elite meta-models were recombined into multiple ensemble surrogates in each iteration. Afterward, a promising model was adaptively picked out from the model pool based on the minimum root of mean square error (RMSE). Secondly, we investigated a novel ASM-based EA framework, namely ASMEA, where the reliability of all models was updated in real-time by generating new samples online. Thirdly, to verify the performance of the ASMEA framework, two instantiation algorithms are widely compared with several state-of-the-art algorithms on a commonly used benchmark test set. Finally, a real-world antenna structural optimization problem was solved by the proposed algorithms. The results demonstrate that the proposed framework is able to provide a high-reliability surrogate to assist EA in solving expensive optimization problems.
机译:在昂贵的结构优化中,已被证明数据驱动的代理模型是物理仿真(或实验)的有效替代方案。然而,在处理不同类型的昂贵优化问题时,静态替代辅助进化算法(SAEA)通常变得无能为力,低效。因此,如何选择高可靠性代理以协助进化算法(EA)一直是一个具有挑战性的任务。本研究旨在通过开发一个全新的SAEA框架动态为EA提供最佳代理。首先,提出了一种自适应替代模型(ASM)选择技术。在ASM中,根据策略池的不同集成标准,Elite Meta模型在每次迭代中重新组合成多个集合代理。之后,基于均线误差(RMSE)的最小根部,从模型池自适应地从模型池中自适应地挑出有希望的模型。其次,我们调查了一种基于新的ASM的EA框架,即ASMEA,其中所有型号的可靠性都是通过在线生成新样本的实时更新。第三,为了验证ASMEA框架的性能,将两个实例化算法与常用的基准测试集上的若干现有算法相比广泛。最后,通过所提出的算法解决了真实的天线结构优化问题。结果表明,所提出的框架能够提供高可靠性代理,以帮助EA解决昂贵的优化问题。

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