A Finite Time Convergent Least-Squares Modification Of The Dynamic Regressor Extension And Mixing Algorithm

IFAC PAPERSONLINE(2020)

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Abstract
The recently proposed Dynamic Regressor Extension and Mixing (DREM) algorithm can be used to estimate the parameters of structured uncertainties contained in the mathematical model of a plant. In order to provide an adaptation that is less sensitive to the unavoidable mismatch between a plant and its model a least-squares based modification of the DREM estimator is proposed in this paper. The modified estimator yields significantly better estimation results as illustrated by the conducted real-world experiment and its parameter estimates also converge within finite time. Copyright (C) 2020 The Authors.
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Key words
Nonlinear observers and filter design, parameter identification, finite time estimation, parameter estimation, nonlinear regressor
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