책 세부 정보
형식
킨들
언어
영어
출판됨
Dec 6, 2012
출판사
Springer
설명
In this insightful work, G.P. Liu explores the intersection of nonlinear systems identification and control through the innovative lens of neural networks. The author delves into the complexities of modeling and controlling nonlinear dynamic systems, emphasizing the capabilities of neural networks to enhance these processes. Liu's approach reveals the potential for adaptive and intelligent control strategies, making it a valuable resource for researchers and practitioners in the fields of control engineering and artificial intelligence.
Throughout the chapters, readers are introduced to various methodologies that leverage neural network architectures to solve intricate identification problems. The book provides a blend of theoretical foundations and practical applications, equipping readers with the knowledge to implement neural network solutions effectively. Liu's engaging writing style demystifies the challenges of nonlinear control, making this an essential addition to any engineer's library.
Throughout the chapters, readers are introduced to various methodologies that leverage neural network architectures to solve intricate identification problems. The book provides a blend of theoretical foundations and practical applications, equipping readers with the knowledge to implement neural network solutions effectively. Liu's engaging writing style demystifies the challenges of nonlinear control, making this an essential addition to any engineer's library.