基于快速马尔可夫链仿真的支持向量机响应面方法

Yuan Xiukai, L. Zhenzhou, Lu Yuanbo
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引用次数: 4

摘要

针对工程可靠性分析与设计中经常遇到的隐式极限状态函数问题,提出了基于快速马尔可夫链仿真的支持向量机响应面法。该方法利用马尔可夫链在极限状态函数的重要区域生成样本,利用支持向量机构造响应面。由于马尔可夫链可以自适应地模拟重要区域的样本,并且使用候选状态而非马尔可夫状态作为支持向量机的训练样本,因此所提出的方法可以很好地逼近设计点周围区域的极限状态方程,并且可以充分利用马尔可夫链模拟提供的信息。此外,采用迭代策略提高了失效概率的收敛速度。此外,该方法采用支持向量机回归方法构建响应面,可自动应用结构风险最小化(SRM)归纳原理逼近极限状态方程,从而可以高精度地逼近失效概率。最后通过数值算例和工程算例的应用表明,该方法具有较好的计算效率和精度。
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Support Vector Machine response surface method based on fast Markov chain simulation
The Support Vector Machine (SVM) response surface method (RSM) is proposed on fast Markov chain simulation for the problem with implicit limit state function usually encountered in engineering reliability analysis and design. In the proposed method, Markov chain is used to generate the samples in the important region of the limit state function, and the SVM is employed to construct the response surface by use of these samples. Since Markov chain can adaptively simulate the samples in the important region, and the candidate state but not Markov state is used as the training samples for SVM, the proposed method can well approximate the limit state equation in the zone surrounding the design point, and can make full use of information provided by Markov chain simulation. In addition, the iterative strategy is adopted to improve the convergence speed of the failure probability. Moreover, the proposed method uses the SVM regression method to construct the response surface, which can automatically apply the Structural Risk Minimization (SRM) inductive principle in approximating the limit state equation, thus it can approximate the failure probability with high accuracy. Finally applications in a numerical example and an engineering example indicate that the proposed method owns good performance in calculating efficiency and accuracy.
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