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Iterative Learning Control over Random Fading Channels
ISBN/GTIN

Iterative Learning Control over Random Fading Channels

E-BookPDFE-Book
Verkaufsrang16606inInformatik EDV
CHF189.60

Beschreibung

Random fading communication is a type of attenuation damage of data over certain propagation media. Establishing a systematic framework for the design and analysis of learning control schemes, the book studies in depth the iterative learning control for stochastic systems with random fading communication.

The authors introduce both cases where the statistics of the random fading channels are known in advance and unknown. They then extend the framework to other systems, including multi-agent systems, point-to-point tracking systems, and multi-sensor systems. More importantly, a learning control scheme is established to solve the multi-objective tracking problem with faded measurements, which can help practical applications of learning control for high-precision tracking of networked systems.

The book will be of interest to researchers and engineers interested in learning control, data-driven control, and networked control systems.
Weitere Beschreibungen

Details

Weitere ISBN/GTIN9781003821090
ProduktartE-Book
EinbandE-Book
FormatPDF
Erscheinungsdatum22.12.2023
Auflage23001 A. 1. Auflage
Seiten356 Seiten
SpracheEnglisch
Dateigrösse14883 Kbytes
Illustrationen93 schwarz-weiße Abbildungen, 93 schwarz-weiße Zeichnungen
Artikel-Nr.11697816
KatalogVC
Datenquelle-Nr.5676155
WarengruppeInformatik EDV
Weitere Details

Über den/die AutorIn

Dong Shen is a Professor at the School of Mathematics, Renmin University of China, Beijing, China. His research interests include iterative learning control, stochastic optimization, and distributed artificial intelligence.

Xinghuo Yu is the Distinguished Professor, a Vice-Chancellor's Professorial Fellow, and an Associate Deputy Vice-Chancellor at the Royal Melbourne Institute of Technology (RMIT University), Melbourne, Australia. He is a Fellow of the Australian Academy of Science, an Honorary Fellow of Engineers Australia, and a Fellow of the IEEE and several other professional associations.