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Tensor-Based Adaptive Filtering Algorithms

Laura-Maria Dogariu, Cristian-Lucian Stanciu, Camelia Elisei-Iliescu, Constantin Paleologu, Jacob Benesty, Silviu Ciochină

2021Symmetry32 citationsDOIOpen Access PDF

Abstract

Tensor-based signal processing methods are usually employed when dealing with multidimensional data and/or systems with a large parameter space. In this paper, we present a family of tensor-based adaptive filtering algorithms, which are suitable for high-dimension system identification problems. The basic idea is to exploit a decomposition-based approach, such that the global impulse response of the system can be estimated using a combination of shorter adaptive filters. The algorithms are mainly tailored for multiple-input/single-output system identification problems, where the input data and the channels can be grouped in the form of rank-1 tensors. Nevertheless, the approach could be further extended for single-input/single-output system identification scenarios, where the impulse responses (of more general forms) can be modeled as higher-rank tensors. As compared to the conventional adaptive filters, which involve a single (usually long) filter for the estimation of the global impulse response, the tensor-based algorithms achieve faster convergence rate and tracking, while also providing better accuracy of the solution. Simulation results support the theoretical findings and indicate the advantages of the tensor-based algorithms over the conventional ones, in terms of the main performance criteria.

Topics & Concepts

AlgorithmAdaptive filterTensor (intrinsic definition)Computer scienceSystem identificationSignal processingFinite impulse responseImpulse responseImpulse (physics)Filter (signal processing)Rank (graph theory)MathematicsDigital signal processingData miningPure mathematicsQuantum mechanicsCombinatoricsComputer visionPhysicsComputer hardwareMathematical analysisMeasure (data warehouse)Tensor decomposition and applicationsAdvanced Adaptive Filtering TechniquesPower System Optimization and Stability
Tensor-Based Adaptive Filtering Algorithms | Litcius