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An EM-based identification algorithm for a class of hybrid systems with application to power electronics
Authors
RP Aguilera
JC Agüero
+3 more
BI Godoy
GC Goodwin
JI Yuz
Publication date
6 March 2014
Publisher
'Informa UK Limited'
Doi
Cite
Abstract
In this paper we present an identification algorithm for a class of continuous-time hybrid systems. In such systems, both continuous-time and discrete-time dynamics are involved. We apply the expectation-maximisation algorithm to obtain the maximum likelihood estimate of the parameters of a discrete-time model expressed in incremental form. The main advantage of this approach is that the continuous-time parameters can directly be recovered. The technique is particularly well suited to fast-sampling rates. As an application, we focus on a standard identification problem in power electronics. In this field, our proposed algorithm is of importance since accurate modelling of power converters is required in high- performance applications and for fault diagnosis. As an illustrative example, and to verify the performance of our proposed algorithm, we apply our results to a flying capacitor multicell converter. © 2014 © 2014 Taylor & Francis
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info:doi/10.1080%2F00207179.20...
Last time updated on 21/04/2021
OPUS - University of Technology Sydney
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Last time updated on 18/10/2019