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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >A Semiautomatic Method for History Matching Using Sequential Monte Carlo
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A Semiautomatic Method for History Matching Using Sequential Monte Carlo

机译:一种半自动方法历史匹配使用序贯蒙特卡罗

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The aim of the history matching method is to locate nonimplausible regions of the parameter space of complex deterministic or stochastic models by matching model outputs with data. It does this via a series of waves where at each wave an emulator is fitted to a small number of training samples. An implausibility measure is defined which takes into account the closeness of simulated and observed outputs as well as emulator uncertainty. As the waves progress, the emulator becomes more accurate so that training samples are more concentrated on promising regions of the space and poorer parts of the space are rejected with more confidence. While history matching has proved to be useful, existing implementations are not fully automated, and some ad hoc choices are made during the process, which involves user intervention and is time consuming. This occurs especially when the nonimplausible region becomes small and it is difficult to sample this space uniformly to generate new training points. In this article we develop a sequential Monte Carlo (SMC) algorithm for implementing history matching that is semiautomated. Our novel SMC approach reveals that the history matching method yields a nonimplausible region that can be multimodal, highly irregular, and very difficult to sample uniformly. Our SMC approach offers a much more reliable sampling of the nonimplausible space, which requires additional computation compared to other approaches used in the literature.
机译:的目标匹配方法是历史定位nonimplausible区域的参数复杂的确定性或随机的空间模型通过匹配模型输出数据。这是通过一系列的波在每一个在哪里波模拟器是少量的安装训练样本。考虑了亲密的定义模拟和观察到的输出模拟器不确定性。这样训练模拟器变得更加准确样品更集中在有前途的区域的空间和贫穷的部分信心十足的空间被拒绝。历史匹配已经证明是有用的,现有的实现并不完全自动化,期间和一些特别的选择过程,涉及用户干预和耗费时间。nonimplausible区域变小了,小和很难样本空间均匀生成新的训练点。开发一个序贯蒙特卡罗(SMC)算法实现历史匹配半自动的。产生一个历史匹配方法nonimplausible地区可以多通道,样品高度不规则,很难均匀。可靠的nonimplausible空间的采样,这需要额外的计算相比文献中使用的其他方法。

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