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Rare-event probability estimation with adaptive support vector regression surrogates

机译:自适应支持向量回归的稀有事件概率估计

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摘要

Assessing rare event probabilities still suffers from its computational cost despite some available methods widely accepted by researchers and engineers. For low to moderately high dimensional problems and under the assumption of a smooth limit-state function, adaptive strategies based on surrogate models represent interesting alternative solutions. This paper presents such an adaptive method based on support vector machine surrogates used in regression. The key idea is to iteratively construct surrogates which quickly explore the safe domain and focus on the limit-state surface in its final stage. Highly accurate surrogates are constructed at each iteration by minimizing an estimation of the leave one-out error with the cross-entropy method. Additional training points are generated with the Metropolis-Hastings algorithm modified by Au and Beck and a local kernel regression is made over a subset of the known data. The efficiency of the method is tested on examples featuring various challenges: a highly curved limit-state surface at a single most probable failure point, a smooth high dimensional limit-state surface and a parallel system. (C) 2016 Elsevier Ltd. All rights reserved.
机译:尽管有一些可供研究人员和工程师广泛接受的可用方法,但是评估稀有事件概率仍然受到其计算成本的困扰。对于低到中等高维的问题,并在光滑极限状态函数的假设下,基于替代模型的自适应策略表示有趣的替代解决方案。本文提出了一种基于支持向量机替代的自适应方法。关键思想是迭代构造可快速探索安全域并在最终阶段集中于极限状态表面的代理。通过使用交叉熵方法最小化离开一次误差的估计,可以在每次迭代时构建高精度的替代物。使用由Au和Beck修改的Metropolis-Hastings算法生成其他训练点,并对已知数据的子集进行局部核回归。在具有各种挑战的示例上测试了该方法的效率:在单个最可能的故障点处的高度弯曲的极限状态表面,平滑的高维极限状态表面和平行系统。 (C)2016 Elsevier Ltd.保留所有权利。

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