Linear Time-Varying Parameter Estimation: Maximum A Posteriori Approach via Semidefinite Programming

IEEE CONTROL SYSTEMS LETTERS(2024)

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摘要
We study the problem of identifying a linear time-varying output map from measurements and linear time-varying system states, which are perturbed with Gaussian observation noise and process uncertainty, respectively. Employing a stochastic model as prior knowledge for the parameters of the unknown output map, we reconstruct their estimates from input/output pairs via a Bayesian approach to optimize the posterior probability density of the output map parameters. The resulting problem is a non-convex optimization, for which we propose a tractable linear matrix inequalities approximation to warm-start a first-order subsequent method. The efficacy of our algorithm is shown experimentally against classical Expectation Maximization and Dual Kalman Smoother approaches.
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关键词
Bayes methods,Uncertainty,Time-varying systems,Kalman filters,Indexes,Gaussian distribution,Dynamical systems,Estimation,identification,semidefinite programming,linear matrix inequalities,optimization
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