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A continuous-time framework for least squares parameter estimation
Affiliation:1. Centre de Recherche en Informatique Signal et Automatique de Lille Université de Lille 1 59655 Villeneuve d''Ascq Cedex France;2. Department of Computer Science, University College London, Gower Street London, WC1E 6BT, UK;1. Department of Computer Science, UFMG, Belo Horizonte, Brazil;2. RMoD Team, Inria, Lille, France
Abstract:This paper proposes a continuous-time framework for the least-squares parameter estimation method through evolution equations. Nonlinear systems in the standard state space representation that are linear in the unknown, constant parameters are investigated. Two estimators are studied. The first one consists of a linear evolution equation while the second one consists of an impulsive linear evolution equation. The paper discusses some theoretical aspects related to the proposed estimators: uniqueness of a solution and an attractive equilibrium point which solves for the unknown parameters. A deterministic framework for the estimation under noisy measurements is proposed using a Sobolev space with negative index to model the noise. The noise can be of large magnitude. Concrete signals issued from an electronic device are used to discuss numerical aspects.
Keywords:Evolution equations  Parameter estimation  Least squares  Sobolev spaces  Estimation under noise
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