iterative identification for multivariable systems with time-delays based on basis pursuit de-noising and auxiliary model
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2018
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Abstract
This paper focuses on the joint estimation of parameters and time-delays of the multiple-input single-output output-error systems. Since the time-delays are unknown, an effective identification model with a high dimensional and sparse parameter vector is established based on overparameterization. Then, the identification problem is converted to a sparse optimization problem. Based on the basis pursuit de-noising criterion and the auxiliary model identification idea, an auxiliary model based basis pursuit de-noising iterative algorithm is presented. The parameters are estimated by solving a quadratic program, and the unavailable terms in the information vector are updated by the auxiliary model outputs iteratively. The time-delays are estimated according to the sparse structure of the parameter vector. The proposed method can obtain effective estimates of the parameters and time-delays from few sampled data. The simulation results illustrate the effectiveness of the proposed algorithm.
| Reference Key |
you2018algorithmsiterative
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| Authors | ;Junyao You;Yanjun Liu |
| Journal | indian journal of hematology & blood transfusion : an official journal of indian society of hematology and blood transfusion |
| Year | 2018 |
| DOI |
10.3390/a11110180
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