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Confidence-based adaptive extreme response surface for time-variant reliability analysis under random excitation

机译:基于置信度的自适应极端响应面用于随机激励下时变可靠性分析

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Time-variant reliability analysis aims at revealing the time evolution of the reliability of an engineered system under time-dependent uncertainties that are best described by random processes. In practice, it is still a grand challenge to handle random process in time-variant reliability analysis due to the extremely high computational cost. In this work, a new adaptive extreme response surface (AERS) approach is proposed for time-variant reliability problems. With AERS, the dimensionality of a random process is first reduced to a set of standard normal variables and corresponding deterministic orthogonal functions based on spectral decomposition. As a result, the limit state function is reformulated as a function of only random variables and time. Next, Gaussian process (GP) models are constructed as surrogate models for predicting the value of limit state function at all discretized time nodes to approximate the extreme response surface. The accuracy of GP surrogate models is quantified by a confidence level measure and continuously improved through the sequential adaptive sampling. Using the GP surrogate models, time-dependent reliability is computed via Monte Carlo simulations (MCS). Two case studies are used to demonstrate the effectivepess of the AERS method for time-variant reliability analysis. (C) 2016 Elsevier Ltd. All rights reserved.
机译:时变可靠性分析旨在揭示在随时间变化的不确定性下工程系统可靠性的时间演变,这种不确定性最好用随机过程来描述。实际上,由于极高的计算成本,在时变可靠性分析中处理随机过程仍然是一个巨大的挑战。在这项工作中,针对时变可靠性问题,提出了一种新的自适应极限响应面(AERS)方法。使用AERS,首先将随机过程的维数减少为一组标准正态变量和基于频谱分解的相应确定性正交函数。结果,极限状态函数被重新构造为仅随机变量和时间的函数。接下来,将高斯过程(GP)模型构建为替代模型,以预测所有离散时间节点的极限状态函数的值,以近似极限响应面。 GP替代模型的准确性通过置信度度量进行量化,并通过顺序自适应采样不断提高。使用GP替代模型,可通过蒙特卡洛模拟(MCS)计算与时间有关的可靠性。通过两个案例研究来证明AERS方法在时变可靠性分析中的有效性。 (C)2016 Elsevier Ltd.保留所有权利。

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