Neural Network Systems Techniques and Applications: Advances in Theory and Applications: Control and Dynamic Systems, cartea 7
Cornelius T. Leondesen Limba Engleză Hardback – 8 feb 1998
Control and Dynamic Systems covers the important topics of highly effective Orthogonal Activation Function Based Neural Network System Architecture, multi-layer recurrent neural networks for synthesizing and implementing real-time linear control,adaptive control of unknown nonlinear dynamical systems, Optimal Tracking Neural Controller techniques, a consideration of unified approximation theory and applications, techniques for the determination of multi-variable nonlinear model structures for dynamic systems with a detailed treatment of relevant system model input determination, High Order Neural Networks and Recurrent High Order Neural Networks, High Order Moment Neural Array Systems, Online Learning Neural Network controllers, and Radial Bias Function techniques.
Coverage includes:
- Orthogonal Activation Function Based Neural Network System Architecture (OAFNN)
- Multilayer recurrent neural networks for synthesizing and implementing real-time linear control
- Adaptive control of unknown nonlinear dynamical systems
- Optimal Tracking Neural Controller techniques
- Consideration of unified approximation theory and applications
- Techniques for determining multivariable nonlinear model structures for dynamic systems, with a detailed treatment of relevant system model input determination
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Specificații
ISBN-13: 9780124438675
ISBN-10: 0124438679
Pagini: 438
Dimensiuni: 152 x 229 x 26 mm
Greutate: 0.79 kg
Editura: ELSEVIER SCIENCE
Seria Control and Dynamic Systems
ISBN-10: 0124438679
Pagini: 438
Dimensiuni: 152 x 229 x 26 mm
Greutate: 0.79 kg
Editura: ELSEVIER SCIENCE
Seria Control and Dynamic Systems
Public țintă
AUDIENCE: Practitioners, researchers, and students in industrial manufacturing, electrical, and mechanical engineering; computer science and engineering.Cuprins
Zhu, Shukl, and Paul, Orthogonal Functions for Systems Identification and Control. Wang, Multilayer Recurrent Neural Networks for Synthesizing and Tuning Linear Control Systems via Pole Assignment. Rovithakis andChristodoulou, Direct and Indirect Techniques to Control Unknown Nonlinear Dynamical Systems Using Dynamical Neural Networks. Park, Choi, and Lee, A Receding Horizon Optimal Tracking Neuro-Controller for Nonlinear Dynamic Systems. Polycarpou, On-Line Approximators for Nonlinear System Identification: A Unified Approach. Billings and Chen, The Determination of Multivariable Nonlinear Models for Dynamic Systems. Kosmatopoulos and Christodoulou, High-Order Neural Network Systems in the Identification of Dynamical Systems. Porter, Liu, and Trevino, Neurocontrols for Systems with Unknown Dynamics. Napolitano and Kincheloe, On-Line Learning Neural Networks for Aircraft Autopilot and Command Augmentation Systems. Tan, Suykens, Yu, and Vandewalle, Nonlinear System Modeling.