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An efficient recursive identification algorithm for multilinear systems based on tensor decomposition

Yanjiao Wang, Ling Yang

2021International Journal of Robust and Nonlinear Control105 citationsDOI

Abstract

Abstract There are many important fields involving the multilinear system identification. A great number of parameters to be identified is an important challenge, leading to the need for tensorial decomposition and modeling of such systems. This article is about the parameter estimation of the higher‐order multilinear systems with non‐Gaussian noises and to explore the role of tensor algebra in the multilinear model identification. A high‐dimension system identification problem is reformulated in terms of low‐dimension problems by using the tensorial decomposition technique. Further, applying the multi‐innovation identification theory, the recursive algorithm combining with the logarithmic p ‐norms is investigated for multilinear systems with non‐Gaussian noises of low computational complexity. Finally, some simulation results illustrate the effectiveness of the proposed recursive identification method.

Topics & Concepts

Multilinear mapTensor decompositionTensor (intrinsic definition)Identification (biology)Multilinear algebraGaussianDimension (graph theory)System identificationLogarithmMathematicsAlgorithmDecompositionParameter identification problemMathematical optimizationComputer scienceApplied mathematicsAlgebra over a fieldPure mathematicsData modelingMathematical analysisModel parameterFiltered algebraPhysicsBotanyEcologyQuantum mechanicsDivision algebraBiologyDatabaseTensor decomposition and applicationsControl Systems and IdentificationBlind Source Separation Techniques