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Controlled Stratification Based on Kriging Surrogate Model: An Algorithm for Determining Extreme Quantiles in Electromagnetic Compatibility Risk Analysis

机译:基于Kriging代理模型的受控分层:一种确定电磁兼容风险风险分析中极度定量的算法

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An electromagnetic compatibility failure is a consequence of an applied interference level being in excess of the susceptibility level of the electronic equipment under investigation. Both interference and susceptibility levels depend on various configurations of coupling paths described by sets of unknown or uncertain parameters. It is therefore convenient to describe the applied interference and the susceptibility levels as random variables. As extreme values may have a strong impact on the risk of failure, we focus in this article on the estimation of extreme values of interference level (relevant applied fields, currents or voltages) by means of a restricted set of numerical simulations. The controlled stratification method aims at reducing the variance of estimation of extreme quantile, based on a correlated simple model. We recently highlighted that a kriging surrogate model was a good candidate to provide this simple model. Combined with controlled stratification, we obtained better estimation performances than using a standalone kriging model with the same output sample size. In practice, this sample size is limited due to the excessive simulation time of electromagnetic solvers. In this paper, we propose an original algorithm, which aims at checking whether the sample size is adequate to perform an acceptable estimation or not. We first validate the algorithm using analytical models. Finally, we apply this method to estimate the 99% quantile of the total radiated power of a source located inside an open cavity with 16 uncertain inputs. In that case, the algorithm reduces the number of calls to the initial model to approximately 40% of the budget that is required using a standard Monte Carlo approach. Moreover, it provides almost 4 times more extreme outputs. More remarkably, our proposed algorithm provides guidance for assessing the performance of quantile estimation according to the initially sample size of the design of experiment.
机译:电磁兼容性故障是应用干扰水平超过在调查中的电子设备的易感性水平的后果。干扰和敏感性水平均取决于由未知或不确定参数集描述的各种配置的耦合路径。因此,将应用的干扰和磁化率水平描述为随机变量是方便的。由于极端值可能对失败风险产生强烈影响,我们专注于通过限制的数值模拟集估计干扰水平(相关应用领域,电流或电压)的极端值。基于相关的简单模型,受控分层方法旨在降低极值估计的差异。我们最近强调了一个Kriging代理模型是提供这个简单模型的好候选人。结合受控分层,我们获得了比使用具有相同输出样本大小的独立Kriging模型的估计性能。在实践中,由于电磁溶剂的过度模拟时间,该样品大小受到限制。在本文中,我们提出了一种原始算法,其旨在检查样本大小是否足以执行可接受的估计。我们首先使用分析模型验证算法。最后,我们应用这种方法来估计具有16个不确定输入的开口腔内的源极辐射功率的总辐射功率的99%。在这种情况下,该算法将初始模型的呼叫数减少到使用标准蒙特卡罗方法所需预算的大约40%。此外,它提供了更多的极端输出量。更值得注意的是,我们的提出算法提供了根据实验设计最初的样本大小评估量化估计性能的指导。

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