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Multivariate versus Univariate Sensor Selection for Spatial Field Estimation

机译:用于空间场估计的多变量与单变量传感器选择

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The paper discusses the sensor selection problem in estimating spatial fields. It is demonstrated that selecting a subset of sensors depends on modelling spatial processes. It is first proposed to exploit Gaussian process (GP) to model a univariate spatial field and multivariate GP (MGP) to jointly represent multivariate spatial phenomena. A Matérn cross-covariance function is employed in the MGP model to guarantee its cross-covariance matrices to be positive semi-definite. We then consider two corresponding univariate and multivariate sensor selection problems in effectively monitoring multiple spatial random fields. The sensor selection approaches were implemented in the real-world experiments and their performances were compared. Difference of results obtained by the univariate and multivariate sensor selection techniques is insignificant; that is, either of the methods can be efficiently used in practice.
机译:本文讨论了空间字段估算中的传感器选择问题。 证明选择传感器的子集取决于建模空间过程。 首先提出利用高斯过程(GP)来模拟一个单变量的空间场和多元GP(MGP),以共同代表多变量空间现象。 MGP模型中采用Matérn交叉协方差函数,以保证其交叉协方差矩阵为正半定。 然后,我们考虑有效监测多个空间随机字段的两个相应的单变量和多变量传感器选择问题。 传感器选择方法在现实世界实验中实施,并比较了他们的表演。 单变量和多变量传感器选择技术获得的结果差异是微不足道的; 也就是说,可以在实践中有效地使用这些方法。

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