Data-Driven Modeling, Filtering and Control -

Data-Driven Modeling, Filtering and Control

Methods and applications
Buch | Hardcover
304 Seiten
2019
Institution of Engineering and Technology (Verlag)
978-1-78561-712-6 (ISBN)
159,95 inkl. MwSt
Using important examples, this book showcases the potential of the latest data-based and data-driven methodologies for filter and control design. It discusses the most important classes of dynamic systems, along with the statistical and set membership analysis and design frameworks.
The scientific research in many engineering fields has been shifting from traditional first-principle-based to data-driven or evidence-based theories. The latter methods may enable better system design, based on more accurate and verifiable information.


In the era of big data, IoT and cyber-physical systems, this subject is of growing importance, as data-driven approaches are key enablers to solve problems that could not be addressed by standard approaches. This book presents a number of innovative data-driven methodologies, complemented by significant application examples, to show the potential offered by the most recent advances in the field. Applicable across a range of disciplines, the topics discussed here will be of interest to scientists, engineers and students in automatic control and learning systems, automotive and aerospace engineering, electrical engineering and signal processing.

Carlo Novara is an Associate Professor at Politecnico di Torino, Italy. He holds a Ph.D. degree in Computer and System Engineering. His research interests include nonlinear and LPV system identification, filtering/estimation, time series prediction, nonlinear control, data-driven methods, Set Membership methods, sparse methods, and automotive, aerospace, biomedical and sustainable energy applications. Simone Formentin is a Tenure-track Assistant Professor at Politecnico di Milano, Italy. He obtained his Ph.D. degree in Information Technology. His research interests include machine learning and automatic control, with a focus on mechatronics and automotive applications.

Chapter 1: Introduction
Part I: Data-driven modeling

Chapter 2: A kernel-based approach to supervised nonparametric identification of Wiener systems
Chapter 3: Identification of a quasi-LPV model for wing-flutter analysis using machine-learning techniques
Chapter 4: Experimental modeling of a web-winding machine: LPV approaches
Chapter 5: In situ identification of electrochemical impedance spectra for Li-ion batteries



Part II: Data-driven filtering and control

Chapter 6: Dynamic measurement
Chapter 7: Multivariable iterative learning control: analysis and designs for engineering applications
Chapter 8: Algorithms for data-driven H∞-norm estimation
Chapter 9: A comparative study of VRFT and set-membership data-driven controller design techniques: active suspension tuning case
Chapter 10: Relative accuracy of two methods for approximating observed Fisher information
Chapter 11: A hierarchical approach to data-driven LPV control design of constrained systems
Chapter 12: Set membership fault detection for nonlinear dynamic systems
Chapter 13: Robust data-driven control of systems with nonlinear distortions

Erscheinungsdatum
Reihe/Serie Control, Robotics and Sensors
Verlagsort Stevenage
Sprache englisch
Maße 156 x 234 mm
Themenwelt Technik Elektrotechnik / Energietechnik
ISBN-10 1-78561-712-5 / 1785617125
ISBN-13 978-1-78561-712-6 / 9781785617126
Zustand Neuware
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