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System reliability analysis through active learning Kriging model with truncated candidate region

机译:通过候选区域被截断的主动学习Kriging模型进行系统可靠性分析

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摘要

System reliability analysis (SRA) with multiple failure modes is researched in this paper. Active learning Kriging (ALK) model which only finely approximates the performance function in the narrow region close to the limit state has shown great potential and several strategies based on ALK model have been proposed. The key of SRA based on ALK model is to identify the components with little contribution to system failure and avoid approximating them. However, we figure out that the existing strategies fail to fulfill this task if large numerical difference exists among the values of component performance functions. Therefore, a brand-new theory on identifying the unimportant component(s) is proposed. Based on this theory, the method based on ALK model with a truncated candidate region (TCR) is proposed and it is termed as ALK-TCR. ALK-TCR is capable to recognize and avoid approximating the unimportant component(s), even if large numerical difference arises among the components. Its high performance is demonstrated by three complicated examples. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文研究了具有多种故障模式的系统可靠性分析(SRA)。仅在接近极限状态的狭窄区域内精确逼近性能函数的主动学习克里格(ALK)模型已显示出巨大的潜力,并提出了几种基于ALK模型的策略。基于ALK模型的SRA的关键是识别对系统故障影响很小的组件,并避免对其进行逼近。但是,我们发现,如果组件性能函数的值之间存在较大的数值差异,则现有策略将无法完成此任务。因此,提出了一种关于识别不重要成分的崭新理论。基于此理论,提出了一种基于ALK模型的候选区域被截断的方法,称为ALK-TCR。即使组件之间出现很大的数值差异,ALK-TCR仍能够识别并避免近似不重要的组件。通过三个复杂的例子证明了其高性能。 (C)2017 Elsevier Ltd.保留所有权利。

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