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Fractional-Order Correntropy Adaptive Filters for Distributed Processing of $\alpha$-Stable Signals

Vinay Chakravarthi Gogineni, Sayed Pouria Talebi, Stefan Werner, Danilo P. Mandic

2020IEEE Signal Processing Letters48 citationsDOIOpen Access PDF

Abstract

This work revisits the problem of distributed adaptive filtering in multi-agent sensor networks. In contrast to classical approaches, the formulation relaxes the Gaussian assumption on the signal and noise to the generalized setting of α-stable distributions that do not possess second- and higher-order statistical moments. Most importantly, the considered scenario allows for different characteristic exponents throughout the network. Drawing upon ideas from correntropy-type local similarity measures and fractional-order calculus, a novel class of distributed fractional-order correntropy adaptive filters, that are robust against the jittery behavior of α-stable signals, is derived and their convergence criterion is established. The effectiveness of the proposed algorithms, as compared to existing distributed adaptive filtering techniques, is demonstrated via simulation examples.

Topics & Concepts

Convergence (economics)Adaptive filterGaussianComputer scienceNoise (video)Signal processingAlgorithmSimilarity (geometry)Gaussian noiseMathematicsControl theory (sociology)Artificial intelligenceQuantum mechanicsEconomicsRadarPhysicsControl (management)Image (mathematics)TelecommunicationsEconomic growthAdvanced Adaptive Filtering TechniquesTarget Tracking and Data Fusion in Sensor NetworksBlind Source Separation Techniques
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