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Data-Driven Identification of Networks of Dynamic Systems

Data-Driven Identification of Networks of Dynamic Systems

Michel Verhaegen , Technische Universiteit Delft, The Netherlands
Chengpu Yu , Beijing Institute of Technology
Baptiste Sinquin , Sysnav
April 2022
This ISBN is for an eBook version which is distributed on our behalf by a third party.
Adobe eBook Reader
9781009028097
$140.00
USD
Adobe eBook Reader
GBP
Hardback

This comprehensive text provides an excellent introduction to the state of the art in the identification of network-connected systems. It covers models and methods in detail, includes a case study showing how many of these methods are applied in adaptive optics and addresses open research questions. Specific models covered include generic modelling for MIMO LTI systems, signal flow models of dynamic networks and models of networks of local LTI systems. A variety of different identification methods are discussed, including identification of signal flow dynamics networks, subspace-like identification of multi-dimensional systems and subspace identification of local systems in an NDS. Researchers working in system identification and/or networked systems will appreciate the comprehensive overview provided, and the emphasis on algorithm design will interest those wishing to test the theory on real-life applications. This is the ideal text for researchers and graduate students interested in system identification for networked systems.

  • Provides a comprehensive overview of identifying network connected systems
  • Discusses key applications in large scale adaptive optics
  • Includes current open questions to prompt further research

Product details

April 2022
Adobe eBook Reader
9781009028097
0 pages
This ISBN is for an eBook version which is distributed on our behalf by a third party.

This comprehensive text provides an excellent introduction to the state of the art in the identification of network-connected systems. It covers models and methods in detail, includes a case study showing how many of these methods are applied in adaptive optics and addresses open research questions. Specific models covered include generic modelling for MIMO LTI systems, signal flow models of dynamic networks and models of networks of local LTI systems. A variety of different identification methods are discussed, including identification of signal flow dynamics networks, subspace-like identification of multi-dimensional systems and subspace identification of local systems in an NDS. Researchers working in system identification and/or networked systems will appreciate the comprehensive overview provided, and the emphasis on algorithm design will interest those wishing to test the theory on real-life applications. This is the ideal text for researchers and graduate students interested in system identification for networked systems.