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Reliability-based design optimization using adaptive surrogate model and importance sampling-based modified SORA method

机译:基于可靠性的设计优化使用自适应替代模型和基于重要的样品改进的SORA方法

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摘要

Reliability-based design optimization (RBDO) has been an important research field with the increasing demand for product reliability in practical applications. This paper presents a new RBDO method combining adaptive surrogate model and Importance Sampling-based Modified Sequential Optimization and Reliability Assessment (IS-based modified SORA) method, which aims to reduce the number of calls to the expensive objective function and constraint functions in RBDO. The proposed method consists of three key stages. First, the samples are sequentially selected to construct Kriging models with high classification accuracy for each constraint function. Second, the samples are obtained by Markov Chain Monte Carlo in the safety domain of design space. Then, another Kriging model for the objective function is sequentially constructed by adding suitable samples to update the Design of Experiment (DoE) of the objective function. Third, the expensive objective and constraint functions of the original optimization problem are replaced by the surrogate models. Then, the IS-based modified SORA method is performed to decouple reliability optimization problem into a series of deterministic optimization problems that are solved by a Genetic Algorithm. Several examples are adopted to verify the proposed method. The optimization results show that the proposed method can reduce the number of calls to the original objective function and constraint functions without loss of precision compared to the alternative methods, which illustrates the efficiency and accuracy of the proposed method.
机译:基于可靠性的设计优化(RBDO)一直是一个重要的研究领域,在实际应用中对产品可靠性的需求日益增加。本文提出了一种新的RBDO方法,结合适应性代理模型和基于重要的基于样本的修改的顺序优化和可靠性评估(基于基于修改SORA)方法的方法,旨在减少RBDO中昂贵的客观函数和约束函数的呼叫次数。所提出的方法包括三个关键阶段。首先,顺序地选择样本以构建具有高分类精度的Kriging模型,用于每个约束函数。其次,样品由Markov Chain Monte Carlo获得设计空间的安全领域。然后,通过添加合适的样品来顺序地构建用于更新目标函数的实验(DOE)的设计来顺序地构建另一个用于目标函数的Kriging模型。第三,原始优化问题的昂贵目标和约束函数被代理模型所取代。然后,执行基于基于的修改SORA方法,以将可靠性优化问题解耦为一系列通过遗传算法解决的确定性优化问题。采用了几个例子来验证所提出的方法。优化结果表明,与替代方法相比,所提出的方法可以减少对原始目标函数和约束函数的呼叫的次数,而不会损失精度,这表示所提出的方法的效率和准确性。

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