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Weak Constraint Gaussian Processes for optimal sensor placement

机译:最佳传感器放置的弱约束高斯工艺

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We present a Weak Constraint Gaussian Process (WCGP) model to integrate noisy inputs into the classical Gaussian Process (GP) predictive distribution. This model follows a Data Assimilation approach (i.e. by considering information provided by observed values of a noisy input in a time window). Due to the increased number of states processed from real applications and the time complexity of GP algorithms, the problem mandates a solution in a high performance computing environment. In this paper, parallelism is explored by defining the parallel WCGP model based on domain decomposition. Both a mathematical formulation of the model and a parallel algorithm are provided. We use the algorithm for an optimal sensor placement problem. Experimental results are provided for pollutant dispersion within a real urban environment. (C) 2020 Elsevier B.V. All rights reserved.
机译:我们呈现了一个弱的约束高斯过程(WCGP)模型,将噪声输入集成到经典高斯过程(GP)预测分布中。该模型遵循数据同化方法(即通过考虑时间窗口中嘈杂输入的观察值提供的信息)。由于从真实应用程序处理的状态增加以及GP算法的时间复杂性,问题要求在高性能计算环境中提出解决方案。在本文中,通过基于域分解定义并行WCGP模型来探索并行性。提供了模型的数学制定和并行算法。我们使用该算法进行最佳传感器放置问题。在真正的城市环境中提供实验结果用于污染物分散。 (c)2020 Elsevier B.v.保留所有权利。

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