首页> 外文期刊>International journal for uncertainty quantifications >REPLICATION-BASED EMULATION OF THE RESPONSE DISTRIBUTION OF STOCHASTIC SIMULATORS USING GENERALIZED LAMBDA DISTRIBUTIONS
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REPLICATION-BASED EMULATION OF THE RESPONSE DISTRIBUTION OF STOCHASTIC SIMULATORS USING GENERALIZED LAMBDA DISTRIBUTIONS

机译:基于复制的仿真随机模拟器使用广义λ分布的响应分布

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摘要

Due to limited computational power, performing uncertainty quantification analyses with complex computational models can be a challenging task. This is exacerbated in the context of stochastic simulators, the response of which to a given set of input parameters, rather than being a deterministic value, is a random variable with unknown probability density function (PDF). Of interest in this paper is the construction of a surrogate that can accurately predict this response PDF for any input parameters. We suggest using a flexible distribution family the generalized lambda distribution to approximate the response PDF. The associated distribution parameters are cast as functions of input parameters and represented by sparse polynomial chaos expansions. To build such a surrogate model, we propose an approach based on a local inference of the response PDF at each point of the experimental design based on replicated model evaluations. Two versions of this framework are proposed and compared on analytical examples and case studies.
机译:由于计算能力有限,执行具有复杂计算模型的不确定性量化分析可能是一个具有挑战性的任务。这在随机模拟器的背景下加剧了,对给定的输入参数集而不是确定性值的响应是具有未知概率密度函数(PDF)的随机变量。本文的兴趣是建造代理,可以准确地预测这种响应PDF的任何输入参数。我们建议使用灵活的分销系列广义的Lambda分布来近似响应PDF。关联的分发参数作为输入参数的函数,由稀疏多项式混沌扩展表示。为了构建这种代理模型,我们基于复制的模型评估,基于实验设计的每个点的响应PDF的本地推理提出一种方法。在分析示例和案例研究中提出并比较了这一框架的两个版本。

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