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Reliability Analysis Method based on Support Vector Machines Classification and Adaptive Sampling Strategy

机译:基于支持向量机分类和自适应采样策略的可靠性分析方法

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For probabilistic design problems with implicit limit state functions encountered in practical application, it is difficult to perform reliability analysis due to the expensive computational cost. In this paper, a new reliability analysis method which applies support vector machine classification (SVM-C) and adaptive sampling strategy is proposed to improve the efficiency. The SVM-C constructs a model defining the boundary of failure regions which classifies samples as safe or failed using SVM-C, then this model is used to replace the true limit state function, thus reducing the computational cost. The adaptive sampling strategy is applied to select samples along the constraint boundaries. It can also improves the efficiency of the proposed method. In the end, a probability analysis example is presented to prove the feasible and efficient of the proposed method.
机译:对于在实际应用中遇到的隐式限制状态功能的概率设计问题,由于昂贵的计算成本,难以执行可靠性分析。本文提出了一种新的可靠性分析方法,用于应用支持向量机分类(SVM-C)和自适应采样策略,以提高效率。 SVM-C构造一个模型,该模型定义故障区域的边界,该模型将样本分类为安全或失败的使用SVM-C,然后该模型用于替换真限状态功能,从而降低计算成本。自适应采样策略应用于沿着约束边界选择样本。它还可以提高所提出的方法的效率。最后,提出了概率分析示例以证明所提出的方法的可行性和有效性。

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