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Probability and interval hybrid reliability analysis based on adaptive local approximation of projection outlines using support vector machine

机译:基于支持向量机的投影轮廓自适应局部逼近的概率与区间混合可靠性分析。

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This paper investigates structural reliability analysis with both random and interval variables, which is defined as a three-classification problem and handled by support vector machine (SVM). First, it is determined that projection outlines on the limit-state surface are crucial for describing separating hyperplanes of the three-classification problem. Compared with the whole limit-state surface, the region of projection outlines are much smaller. It will be beneficial to reduce the number of update points and the computational cost if SVM update concentrates on refining the approximate projection outlines. An adaptive local approximation method is developed to realize that the initial built SVM model is sequentially updated by adding new training samples located around the projection outlines. Using this method, the separating hyperplanes can be accurately and efficiently approximated by SVM. Finally, a new method is proposed to evaluate the failure probability interval based on Monte Carlo simulation and the refined SVM.
机译:本文研究了具有随机变量和区间变量的结构可靠性分析,该变量被定义为三个分类问题,并由支持向量机(SVM)处理。首先,确定极限状态表面上的投影轮廓对于描述三分类问题的分离超平面至关重要。与整个极限状态表面相比,投影轮廓的区域要小得多。如果SVM更新专注于细化近似投影轮廓,则减少更新点的数量和计算成本将是有益的。开发了一种自适应局部逼近方法,以实现通过添加位于投影轮廓周围的新训练样本来依次更新初始构建的SVM模型。使用此方法,可以通过SVM准确有效地近似分离的超平面。最后,提出了一种基于蒙特卡洛模拟和改进的支持向量机的失效概率区间评估方法。

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