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Generalized Forgetting Recursive Least Squares: Stability and Robustness Guarantees

Brian Lai, Dennis S. Bernstein

2024IEEE Transactions on Automatic Control27 citationsDOI

Abstract

This work presents generalized forgetting recursive least squares (GF-RLS), a generalization of recursive least squares (RLS) that encompasses many extensions of RLS as special cases. First, sufficient conditions are presented for the 1) Lyapunov stability, 2) uniform Lyapunov stability, 3) global asymptotic stability, and 4) global uniform exponential stability of parameter estimation error in GF-RLS when estimating fixed parameters without noise. Second, robustness guarantees are derived for the estimation of timevarying parameters in the presence of measurement noise and regressor noise. These robustness guarantees are presented in terms of global uniform ultimate boundedness of the parameter estimation error. A specialization of this result gives a bound to the asymptotic bias of least squares estimators in the errors-in-variables problem. Lastly, a survey is presented to show how GF-RLS can be used to analyze various extensions of RLS from the literature.

Topics & Concepts

Robustness (evolution)Control theory (sociology)Computer scienceRobust controlMathematicsRecursive least squares filterMathematical optimizationControl systemAlgorithmControl (management)EngineeringArtificial intelligenceAdaptive filterElectrical engineeringGeneBiochemistryChemistryNeural Networks and ApplicationsMachine Learning and Algorithms