Dynamic Sensor Placement Based on Sampling Theory for Graph Signals

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE open journal of signal processing Pub Date : 2024-09-23 DOI:10.1109/OJSP.2024.3466133
Saki Nomura;Junya Hara;Hiroshi Higashi;Yuichi Tanaka
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Abstract

In this paper, we consider a sensor placement problem where sensors can move within a network over time. Sensor placement problem aims to select $K$ sensor positions from $N$ candidates where $K < N$ . Most existing methods assume that sensor positions are static, i.e., they do not move, however, many mobile sensors like drones, robots, and vehicles can change their positions over time. Moreover, underlying measurement conditions could also be changed, which are difficult to cover with statically placed sensors. We tackle the problem by allowing the sensors to change their positions in their neighbors on the network. We dynamically determine the sensor positions based on graph signal sampling theory such that the non-observed signals on the network can be best recovered from the observations. For signal recovery, the dictionary is learned from a pool of observed signals. It is also used for the sensor position selection. In experiments, we validate the effectiveness of the proposed method via the mean squared error of the reconstructed signals. The proposed dynamic sensor placement outperforms the existing static ones for both synthetic and real data.
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基于图形信号采样理论的动态传感器布局
在本文中,我们考虑的是传感器会在网络中随时间移动的传感器位置问题。传感器放置问题旨在从 $N$ 候选位置中选择 $K$ 传感器位置,其中 $K < N$。现有的大多数方法都假设传感器的位置是静态的,即它们不会移动,然而,许多移动传感器(如无人机、机器人和车辆)的位置会随着时间的推移而改变。此外,潜在的测量条件也可能发生变化,而静态放置的传感器很难做到这一点。我们通过允许传感器改变其在网络上邻居的位置来解决这个问题。我们根据图信号采样理论动态确定传感器位置,以便从观测结果中最好地恢复网络上的非观测信号。对于信号恢复,字典是从观测信号池中学习的。它还用于传感器位置选择。在实验中,我们通过重建信号的均方误差验证了所提方法的有效性。在合成数据和真实数据方面,所提出的动态传感器放置方法都优于现有的静态方法。
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CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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