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A01=Andrea L'Afflitto
A01=Andrew J. Kurdila
A01=John A. Burns
Age Group_Uncategorized
Age Group_Uncategorized
Author_Andrea L'Afflitto
Author_Andrew J. Kurdila
Author_John A. Burns
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Category1=Non-Fiction
Category=GPFC
Category=PBKF
Category=TJFM
COP=Switzerland
Delivery_Pre-order
Language_English
PA=Not yet available
Price_€100 and above
PS=Forthcoming
softlaunch

Data-Driven, Nonparametric, Adaptive Control Theory

Data-Driven, Nonparametric, Adaptive Control Theory introduces a novel approach to the control of deterministic, nonlinear ordinary differential equations affected by uncertainties. The methods proposed enforce satisfactory trajectory tracking despite functional uncertainties in the plant model. The book employs the properties of reproducing kernel Hilbert (native) spaces to characterize both the functional space of uncertainties and the controller's performance. Classical control systems are extended to broader classes of problems and more informative characterizations of the controllers performances are attained.

Following an examination of how backstepping control and robust control Lyapunov functions can be ported to the native setting, numerous extensions of the model reference adaptive control framework are considered. The authors approach breaks away from classical paradigms in which uncertain nonlinearities are parameterized using a regressor vector provided a priori or reconstructed online. The problem of distributing the kernel functions that characterize the native space is addressed at length by employing data-driven methods in deterministic and stochastic settings.

The first part of this book is a self-contained resource, systematically presenting elements of real analysis, functional analysis, and native space theory. The second part is an exposition of the theory of nonparametric control systems design. The text may be used as a self-study book for researchers and practitioners and as a reference for graduate courses in advanced control systems design. MATLAB® codes, available on the authors website, and suggestions for homework assignments help readers appreciate the implementation of the theoretical results.

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Current price €128.69
Original price €142.99
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A01=Andrea L'AfflittoA01=Andrew J. KurdilaA01=John A. BurnsAge Group_UncategorizedAuthor_Andrea L'AfflittoAuthor_Andrew J. KurdilaAuthor_John A. Burnsautomatic-updateCategory1=Non-FictionCategory=GPFCCategory=PBKFCategory=TJFMCOP=SwitzerlandDelivery_Pre-orderLanguage_EnglishPA=Not yet availablePrice_€100 and abovePS=Forthcomingsoftlaunch

Will deliver when available. Publication date 05 Feb 2025

Product Details
  • Dimensions: 155 x 235mm
  • Publication Date: 05 Feb 2025
  • Publisher: Springer International Publishing AG
  • Publication City/Country: Switzerland
  • Language: English
  • ISBN13: 9783031780028

About Andrea L'AfflittoAndrew J. KurdilaJohn A. Burns

Professor Andrew J. Kurdila is an expert in reproducing kernel Hilbert spaces Koopman theory approximation theory and control on native spaces. Among his numerous recognitions we recall the W. Martin Johnson Professorship at Virginia Tech the TEES faculty fellowship at Texas A&M University and the AIAA associate fellowship to name a few. He is the author of 5 books on various topics in the general area of control theory and more than 300 peer-reviewed journal and conference papers. Professor Andrea L'Afflitto is an expert in robust model reference adaptive control theory and its applications to autonomous aerospace systems. Dr. L'Afflitto is an AIAA Associate Fellow one of the 2018 DARPA Young Faculty Awardees and received numerous externally funded awards for his research in the area of adaptive control theory and autonomous uninhabited aerial vehicles. Presently Dr. L'Afflitto is the Senior Editor for the Autonomous Systems track of the IEEE Transactionson Aerospace and Electronic Systems and is a member of the IEEE Editorial Board. He is the authors of a monograph on flight controls 3 book chapters and more than 40 peer-reviewed journal and conference papers. Finally he served as the first editor for a contributed book on the guidance navigation and control of advanced aerospace systems. Professor John A. Burns is the Hatcher Professor of Mathematics and Director of the Interdisciplinary Center for Applied Mathematics at Virginia Tech. He is an IEEE Lifetime Fellow SIAM Fellow and recipient of numerous awards in mathematics including the Idalia Reid Prize.Dr. Burns is an expert in optimal control theory control of partial differential equations and estimation theory. He is the author of 1 book on calculus of variations and more than 200 peer-reviewed journal and conference papers. Furthermore he served as co-editor of two contributed books and principal or co-principal investigator for more than40 externally funded competitive research projects. Finally Professor Burns delivered more than 250 invited talks at universities world-class research centers and international conferences. Presently Dr. Burns serves as the Series Editor for the Monograph and Research Notes in Mathematics and served as editor-in-chief associate editor and editor for numerous journals in mathematics and control theory.

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