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Modeling and identification of linear parameter-varying systems

This book aims to bridge the gap between Linear Parameter-Varying (LPV) modeling and control by investigating fundamental questions of modeling and identification. It explores missing details of LPV system theory that have hindered the formulation of a well established identification framework. By proposing a unified LPV system theory, based on a behavioral approach, the concepts of representations, equivalence transformations and means to compare model structures are re-established, giving a solid basis for an identification theory. It is also explored when and how first-principle nonlinear models can be efficiently converted to LPV descriptions detailing possible pitfalls. Building on well-founded system theoretical concepts, the classical LTI prediction-error framework is extended to the LPV case via the use of series-expansion representations. The book is written as a research monograph with a broad scope, trying to cover the key issues from system theory to modeling and identification. It is meant to be interesting for both researchers and engineers but also for graduate students in systems and control who would like to learn about the LPV framework.

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  • "This book aims to bridge the gap between Linear Parameter-Varying (LPV) modeling and control by investigating fundamental questions of modeling and identification. It explores missing details of LPV system theory that have hindered the formulation of a well established identification framework. By proposing a unified LPV system theory, based on a behavioral approach, the concepts of representations, equivalence transformations and means to compare model structures are re-established, giving a solid basis for an identification theory. It is also explored when and how first-principle nonlinear models can be efficiently converted to LPV descriptions detailing possible pitfalls. Building on well-founded system theoretical concepts, the classical LTI prediction-error framework is extended to the LPV case via the use of series-expansion representations. The book is written as a research monograph with a broad scope, trying to cover the key issues from system theory to modeling and identification. It is meant to be interesting for both researchers and engineers but also for graduate students in systems and control who would like to learn about the LPV framework."@en
  • "Manuscripts should be written in English and be no less than 100, preferably no more than 500 pages. The manuscript in its final and approved version must be submitted in camera-ready form. You are strongly encouraged to use LATEX together with the corresponding Springer LATEX macro packages. The corresponding electronic files are also required for the production process. in particular the online version. Detailed instructions for authors can be found on the engineering site of our homepage: springer.com/series/642."
  • "Manuscripts should be sent to one of the series editors, Professor Dr.-Ing. M. Thoma, Institut for Regelungstechnik, Technische Universitat, Appelstraße 11, 30167 Hannover, Germany, Professor Frank Allgower, Universitat Stuttgart, Inst. Systemtheorie Technischer Prozesse (IST), Pfaffenwaldring 9, 70550 Stuttgart, Germany or Professor M. Morari, Institut fur Automatik, ETH/ETL I 29, Physikstraße 3, 8092 Zurich, Switzerland, or directly to the Engineering Editor, Springer-Verlag, Tiergartenstraße 17, 69121 Heidelberg, Germany. --Book Jacket."
  • "Publication in LNCIS is free of charge. Springer-Verlag retains copyright. However, all authors are free to use the material in other publications, with acknowledgment to Springer-Verlag."

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  • "Electronic books"@en

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  • "Modeling and identification of linear parameter-varying systems"
  • "Modeling and identification of linear parameter-varying systems"@en
  • "Modeling and Identification of Linear Parameter-Varying Systems"@en
  • "Modeling and Identification of Linear Parameter-Varying Systems"