Near-optimal sensor placement for signals lying in a union of subspaces

Dalia El Badawy, J. Ranieri, M. Vetterli
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引用次数: 8

Abstract

Sensor networks are commonly deployed to measure data from the environment and accurately estimate certain parameters. However, the number of deployed sensors is often limited by several constraints, such as their cost. Therefore, their locations must be opportunely optimized to enhance the estimation of the parameters. In a previous work, we considered a low-dimensional linear model for the measured data and proposed a near-optimal algorithm to optimize the sensor placement. In this paper, we propose to model the data as a union of subspaces to further reduce the amount of sensors without degrading the quality of the estimation. Moreover, we introduce a greedy algorithm for the sensor placement for such a model and show the near-optimality of its solution. Finally, we verify with numerical experiments the advantage of the proposed model in reducing the number of sensors while maintaining intact the estimation performance.
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位于子空间并集中的信号的近最优传感器放置
传感器网络通常用于测量来自环境的数据并准确估计某些参数。然而,部署传感器的数量通常受到一些限制,例如成本。因此,必须适当地优化它们的位置,以增强对参数的估计。在之前的工作中,我们考虑了测量数据的低维线性模型,并提出了一种近乎最优的算法来优化传感器的放置。在本文中,我们建议将数据建模为子空间的并集,以进一步减少传感器的数量而不降低估计的质量。此外,我们还引入了一种贪婪算法来求解该模型的传感器位置,并展示了其解的近最优性。最后,通过数值实验验证了该模型在保持估计性能不变的情况下减少传感器数量的优势。
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