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Distributed Quantization-Aware RLS Learning With Bias Compensation and Coarsely Quantized Signals

Alireza Danaee, Rodrigo C. de Lamare, Vítor H. Nascimento

2022IEEE Transactions on Signal Processing18 citationsDOIOpen Access PDF

Abstract

In this work, we present an energy-efficient distributed learning framework using coarsely quantized signals for Internet of Things (IoT) networks. In particular, we develop a distributed quantization-aware recursive least-squares (DQA-RLS) algorithm that can learn parameters in an energy-efficient fashion using signals quantized with few bits while requiring a low computational cost. Moreover, we develop a bias compensation strategy to further improve the performance of the proposed DQA-RLS algorithm. We carry out a statistical analysis of the proposed DQA-RLS algorithm and derive analytical expressions for predicting the mean-square deviation. A computational complexity evaluation and a study of the power consumption of the proposed and existing techniques are then presented. Numerical results assess the DQA-RLS algorithm against existing techniques for a distributed parameter estimation task in a scenario where IoT devices operate in peer-to-peer mode.

Topics & Concepts

Quantization (signal processing)Computer scienceComputational complexity theoryAlgorithmRecursive least squares filterAdaptive filterAdvanced Adaptive Filtering TechniquesSpeech and Audio ProcessingBlind Source Separation Techniques
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