Discrete-time high order neural control : trained with Kalman filtering
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Bibliographic Information
Discrete-time high order neural control : trained with Kalman filtering
(Studies in computational intelligence, v. 112)
Springer, c2008
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Note
Bibliography: p. [103]-108
Includes index
Description and Table of Contents
Description
Neural networks have become a well-established methodology as exempli?ed by their applications to identi?cation and control of general nonlinear and complex systems; the use of high order neural networks for modeling and learning has recently increased. Usingneuralnetworks,controlalgorithmscanbedevelopedtoberobustto uncertainties and modeling errors. The most used NN structures are Feedf- ward networks and Recurrent networks. The latter type o?ers a better suited tool to model and control of nonlinear systems. There exist di?erent training algorithms for neural networks, which, h- ever, normally encounter some technical problems such as local minima, slow learning, and high sensitivity to initial conditions, among others. As a viable alternative, new training algorithms, for example, those based on Kalman ?ltering, have been proposed. There already exists publications about trajectory tracking using neural networks; however, most of those works were developed for continuous-time systems. On the other hand, while extensive literature is available for linear discrete-timecontrolsystem,nonlineardiscrete-timecontroldesigntechniques have not been discussed to the same degree. Besides, discrete-time neural networks are better ?tted for real-time implementations.
Table of Contents
Mathematical Preliminaries.- Discrete-Time Adaptive Neural Backstepping.- Discrete-Time Block Control.- Discrete-Time Neural Observers.- Discrete-Time Output Trajectory Tracking.- Real Time Implementation.- Conclusions and Future Work.
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