Robust LMS-based compressive sensing reconstruction algorithm for noisy wireless sensor networks

Yu-Min Lin, H. Kuo, A. Wu
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Abstract

Wireless sensor networks (WSNs) show immense promise in many applications, such as environmental monitoring and remotely metering. Compressive sensing (CS) is a novel signal processing that has been envisioned as a useful regime to address the energy and scaling constraints in WSNs. CS is able to move the burden of sensory nodes to central cloud/server. However, prevailing CS reconstruction algorithms are vulnerable to noise. In this paper, we exploit the natural noise-tolerance property of least mean square (LMS) adaptive filter and propose a greedy-LMS algorithm for CS reconstruction. When SNR is 48dB, greedy-LMS algorithm achieves 16% and 47% higher successful rate than BPDN and OMP, respectively. In addition, the computational complexity of greedy-LMS is competitive with OMP.
基于lms的噪声无线传感器网络鲁棒压缩感知重构算法
无线传感器网络(WSNs)在环境监测和远程计量等许多应用中显示出巨大的前景。压缩感知(CS)是一种新的信号处理方法,被认为是解决无线传感器网络中能量和尺度限制的有效方法。CS能够将感知节点的负担转移到中心云/服务器。然而,现有的CS重建算法容易受到噪声的影响。本文利用最小均方(LMS)自适应滤波器的自然抗噪特性,提出了一种用于CS重构的贪心-LMS算法。在信噪比为48dB时,贪婪lms算法比BPDN和OMP算法的成功率分别提高16%和47%。此外,贪婪lms的计算复杂度与OMP相竞争。
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