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Distributed sensor selection for field estimation

机译:分布式传感器选择用于现场估计

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摘要

We study the sensor selection problem for field estimation, where a best subset of sensors is activated to monitor a spatially correlated random field. Different from most commonly used centralized selection algorithms, we propose a decentralized architecture where sensor selection can be carried out in a distributed way and by the sensors themselves. A decentralized approach is essential since each sensor has access only to the information (e.g., correlation) in its neighborhood. To make distributed optimization possible, we decompose the global cost function into local cost functions that require only the information in local neighborhoods of sensors. We then employ the alternating direction method of multipliers (ADMM) to solve the proposed sensor selection problem. In our algorithm, each sensor solves small-scale optimization problems, and communicates directly only with its immediate neighbors. Numerical results are provided to show the effectiveness of our approach.
机译:我们研究了用于场估计的传感器选择问题,其中激活了传感器的最佳子集以监视空间相关的随机场。与最常用的集中式选择算法不同,我们提出了一种分散式架构,其中传感器的选择可以分布式方式进行,也可以由传感器本身进行。由于每个传感器只能访问其附近的信息(例如,相关性),因此分散的方法是必不可少的。为了使分布式优化成为可能,我们将全局成本函数分解为仅需要传感器本地附近区域中的信息的本地成本函数。然后,我们采用乘数的交替方向方法(ADMM)来解决所提出的传感器选择问题。在我们的算法中,每个传感器解决了小规模的优化问题,并且仅直接与其直接邻居进行通信。数值结果表明了我们方法的有效性。

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