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Title: An instrumental variable method for robot identification based on time variable parameter estimation (English)
Author: Brunot, Mathieu
Author: Janot, Alexandre
Author: Young, Peter
Author: Carrillo, Francisco
Language: English
Journal: Kybernetika
ISSN: 0023-5954 (print)
ISSN: 1805-949X (online)
Volume: 54
Issue: 1
Year: 2018
Pages: 202-220
Summary lang: English
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Category: math
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Summary: This paper considers the data-based identification of industrial robots using an instrumental variable method that uses off-line estimation of the joint velocities and acceleration signals based only on the measurement of the joint positions. The usual approach to this problem relies on a ‘tailor-made’ prefiltering procedure for estimating the derivatives that depends on good prior knowledge of the system's bandwidth. The paper describes an alternative Integrated Random Walk SMoothing (IRWSM) method that is more robust to deficiencies in such a priori knowledge and exploits an optimal recursive algorithm based on a simple integrated random walk model and a Kalman filter with associated fixed interval smoothing. The resultant IDIM-IV instrumental variable method, using this approach to signal generation, is evaluated by its application to an industrial robot arm and comparison with previously proposed methods. (English)
Keyword: industrial robot system
Keyword: system identification
Keyword: instrumental variable method
Keyword: parameter estimation
Keyword: Kalman filter
Keyword: fixed interval smoothing
MSC: 70E60
MSC: 93B30
idZBL: Zbl 06861621
idMR: MR3780963
DOI: 10.14736/kyb-2018-1-0202
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Date available: 2018-03-26T19:58:45Z
Last updated: 2020-01-05
Stable URL: http://hdl.handle.net/10338.dmlcz/147158
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