Identification of Lifted Models for General Dual-Rate Sampled-Data Systems Using N4SID Algorithm
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概要
- 論文の詳細を見る
In this paper, we consider the identification problem for a dual-rate system in which the input sampling period may differ from that of the output. Based on the lifting operators, a lifted system which is equivalent to the original dual-rate system can be derived so that a lifted state-space model can be obtained which maps the relations between the dual-rate input-output data. Then the Numerical Subspace State-Space IDentification (N4SID) algorithm is modified and used to identify the lifted state-space model for the first time in the literature, taking the causality constraints of the lifted system into account. Finally, numerical studies are included to show the excellent numerical performance of the proposed algorithm.
- 社団法人 電気学会の論文
- 2008-05-01
著者
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Qin Pan
Graduate School Of Information Science And Electrical Engineering Kyushu University
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Yang Z‐j
Kyushu Univ.
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Yang Zi-jiang
Graduate School Of Information Science And Electrical Engineering Kyushu University
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KANAE Shunshoku
Graduate school of information science and electrical engineering, Kyushu University
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WADA Kiyoshi
Graduate school of information science and electrical engineering, Kyushu University
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Yang Z‐j
Graduate School Of Information Science And Electrical Engineering Kyushu University
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Yang Zi‐jiang
Kyushu Univ.
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Wada Kiyoshi
Graduate School Of Information Science And Electrical Engineering Kyushu University
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Kanae Shunshoku
Kyushu Univ.
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Kanae Shunshoku
Graduate School Of Information Science And Electrical Engineering Kyushu University
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