An LS-Decomposition Approach for Robust Data Recovery in Wireless Sensor Networks

Abstract

Wireless sensor networks are widely adopted in military, civilian and commercial applications, which fuels an exponential explosion of sensory data. However, a major challenge to deploy effective sensing systems is the presence of massive missing entries, measurement noise, and anomaly readings. Existing works assume that sensory data matrices have low-rank structures. This does not hold in reality due to anomaly readings, causing serious performance degradation. In this paper, we introduce an LS-Decomposition approach for robust sensory data recovery, which decomposes a corrupted data matrix as the superposition of a low-rank matrix and a sparse anomaly matrix. First, we prove that LS-Decomposition solves a convex program with bounded approximation error. Second, using data sets from the IntelLab, GreenOrbs, and NBDC-CTD projects, we find that sensory data matrices contain anomaly readings. Third, we propose an accelerated proximal gradient algorithm and prove that it approximates the optimal solution with convergence rate O(1/k2) (k is the number of iterations). Evaluations on real data sets show that our scheme achieves recovery error ≤ 5\% for sampling rate ≥ 50\% and almost exact recovery for sampling rate ≥ 60\%, while state-of-the-art methods have error 10\% 15\% at sampling rate 90\%.

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