Low-power distributed sparse recovery testbed on wireless sensor networks

R. R. D. Lucia, S. Fosson, E. Magli
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引用次数: 1

Abstract

Recently, distributed algorithms have been proposed for the recovery of sparse signals in networked systems, e.g. wireless sensor networks. Such algorithms allow large networks to operate autonomously without the need of a fusion center, and are very appealing for smart sensing problems employing low-power devices. They exploit local communications, where each node of the network updates its estimates of the sensed signal also based on the correlated information received from neighboring nodes. In the literature, theoretical results and numerical simulations have been presented to prove convergence of such methods to accurate estimates. Their implementation, however, raises some concerns in terms of power consumption due to iterative inter-node communications, data storage, computation capabilities, global synchronization, and faulty communications. On the other hand, despite these potential issues, practical implementations on real sensor networks have not been demonstrated yet. In this paper we fill this gap and describe a successful implementation of a class of randomized, distributed algorithms on a real low-power wireless sensor network test bed with very scarce computational capabilities. We consider a distributed compressed sensing problem and we show how to cope with the issues mentioned above. Our tests on synthetic and real signals show that distributed compressed sensing can successfully operate in a real-world environment.
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无线传感器网络低功耗分布式稀疏恢复试验台
最近,分布式算法被提出用于网络系统中稀疏信号的恢复,例如无线传感器网络。这种算法允许大型网络在不需要融合中心的情况下自主运行,并且对于使用低功耗设备的智能传感问题非常有吸引力。它们利用本地通信,其中网络的每个节点也根据从邻近节点接收到的相关信息更新其对感知信号的估计。在文献中,已经提出理论结果和数值模拟来证明这些方法收敛于准确的估计。然而,由于迭代节点间通信、数据存储、计算能力、全局同步和故障通信,它们的实现在功耗方面引起了一些关注。另一方面,尽管存在这些潜在问题,但在真实传感器网络上的实际实现尚未得到证明。在本文中,我们填补了这一空白,并描述了在计算能力非常有限的实际低功耗无线传感器网络测试台上成功实现一类随机分布算法。我们考虑一个分布式压缩感知问题,并展示如何处理上面提到的问题。我们对合成信号和真实信号的测试表明,分布式压缩感知可以成功地在现实环境中运行。
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