Recursive least-squares identification algorithms with incompleteexcitation: convergence analysis and application to adaptivecontrol |
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Authors: | Bittanti S. Bolzern P. Campi M. |
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Affiliation: | Dipartimento di Elettronica, Politecnico di Milano ; |
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Abstract: | The convergence properties of a fairly general class of adaptive recursive least-squares algorithms are studied under the assumption that the data generation mechanism is deterministic and time invariant. First, the (open-loop) identification case is considered. By a suitable notion of excitation subspace, the convergence analysis of the identification algorithm is carried out with no persistent excitation hypothesis, i.e. it is proven that the projection of the parameter error on the excitation subspace tends to zero, while the orthogonal component of the error remains bounded. The convergence of an adaptive control scheme based on the minimum variance control law is then dealt with. It is shown that under the standard minimum-phase assumption, the tracking error converges to zero whenever the reference signal is bounded. Furthermore, the control variable turns out to be bounded |
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