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GAUSSIAN PROCESS ADAPTIVE IMPORTANCE SAMPLING

机译:高斯过程自适应重要抽样

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The objective is to calculate the probability, P_F, that a device will fail when its inputs, x, are randomly distributed with probability density, p (x), e.g., the probability that a device will fracture when subject to varying loads. Here failure is defined as some scalar function, y (x), exceeding a threshold, T. If evaluating y (x) via physical or numerical experiments is sufficiently expensive or P_F is sufficiently small, then Monte Carlo (MC) methods to estimate P_F will be unfeasible due to the large number of function evaluations required for a specified accuracy. Importance sampling (IS), i.e., preferentially sampling from "important" regions in the input space and appropriately down-weighting to obtain an unbiased estimate, is one approach to assess P_F more efficiently. The inputs are sampled from an importance density, p' (x). We present an adaptive importance sampling (AIS) approach which endeavors to adoptively improve the estimate of the ideal importance density, p~* (x), during the sampling process. Our approach uses a mixture of component probability densities that each approximate p~* (x). An iterative process is used to construct the sequence of improving component probability densities. At each iteration, a Gaussian process (GP) surrogate is used to help identify areas in the space where failure is likely to occur. The GPs are not used to directly calculate the failure probability; they are only used to approximate the importance density. Thus, our Gaussian process adaptive importance sampling (GPAIS) algorithm overcomes limitations involving using a potentially inaccurate surrogate model directly in IS calculations. This robust GPAIS algorithm performs surprisingly well on a pathological test function.
机译:目的是计算当设备的输入x以概率密度p(x)随机分布时设备失效的概率P_F,例如,当设备承受变化的负载时设备破裂的概率。在这里,故障定义为超过阈值T的某个标量函数y(x)。如果通过物理或数值实验评估y(x)足够昂贵或P_F足够小,则采用蒙特卡洛(MC)方法估算P_F由于要达到指定的精度需要进行大量的功能评估,因此这将是不可行的。重要采样(IS),即,优先从输入空间中的“重要”区域采样并适当降低权重以获得无偏估计,是一种更有效地评估P_F的方法。从重要性密度p'(x)采样输入。我们提出了一种自适应重要性抽样(AIS)方法,该方法致力于在采样过程中逐步改善理想重要性密度p〜*(x)的估计。我们的方法使用了混合的成分概率密度,每个近似p〜*(x)。使用迭代过程来构造提高组件概率密度的序列。在每次迭代中,都使用高斯过程(GP)替代来帮助识别空间中可能发生故障的区域。 GP不用于直接计算故障概率;它们仅用于近似重要性密度。因此,我们的高斯过程自适应重要性采样(GPAIS)算法克服了直接在IS计算中使用潜在不准确的替代模型的局限性。这种强大的GPAIS算法在病理测试功能上的表现出奇地好。

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