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首页> 外文期刊>Journal of Hydrology >Assessing clustering strategies for Gaussian mixture filtering a subsurface contaminant model
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Assessing clustering strategies for Gaussian mixture filtering a subsurface contaminant model

机译:评估高斯混合过滤地下污染物模型的聚类策略

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摘要

An ensemble-based Gaussian mixture (GM) filtering framework is studied in this paper in term of its dependence on the choice of the clustering method to construct the GM. In this approach, a number of particles sampled from the posterior distribution are first integrated forward with the dynamical model for forecasting. A GM representation of the forecast distribution is then constructed from the forecast particles. Once an observation becomes available, the forecast GM is updated according to Bayes' rule. This leads to (i) a Kalman filter-like update of the particles, and (ii) a Particle filter-like update of their weights, generalizing the ensemble Kalman filter update to non-Gaussian distributions. We focus on investigating the impact of the clustering strategy on the behavior of the filter. Three different clustering methods for constructing the prior GM are considered: (i) a standard kernel density estimation, (ii) clustering with a specified mixture component size, and (iii) adaptive clustering (with a variable GM size). Numerical experiments are performed using a two-dimensional reactive contaminant transport model in which the contaminant concentration and the heterogenous hydraulic conductivity fields are estimated within a confined aquifer using solute concentration data. The experimental results suggest that the performance of the GM filter is sensitive to the choice of the GM model. In particular, increasing the size of the GM does not necessarily result in improved performances. In this respect, the best results are obtained with the proposed adaptive clustering scheme. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文研究了一种基于集成的高斯混合(GM)滤波框架,它依赖于构建GM的聚类方法的选择。在这种方法中,首先将从后验分布中采样的多个粒子与动力学模型进行正向集成以进行预测。然后,根据预测粒子构造GM表示预测分布。一旦有了观测值,便会根据贝叶斯规则更新预测GM。这导致(i)粒子的类似Kalman滤波器的更新,以及(ii)粒子的类似权重的类似于Filter的更新,将集合Kalman滤波器的更新推广到非高斯分布。我们专注于研究聚类策略对过滤器行为的影响。考虑了用于构建现有GM的三种不同的聚类方法:(i)标准内核密度估计,(ii)具有指定混合物成分大小的聚类,以及(iii)自适应聚类(具有可变GM大小)。使用二维反应性污染物传输模型进行数值实验,其中使用溶质浓度数据估算密闭含水层中的污染物浓度和非均质水力传导率场。实验结果表明,GM滤波器的性能对GM模型的选择很敏感。特别是,增加GM的大小并不一定会改善性能。在这方面,通过提出的自适应聚类方案可以获得最佳结果。 (C)2016 Elsevier B.V.保留所有权利。

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