Recurrent Neural Networks
eBook - PDF

Recurrent Neural Networks

  1. 402 pages
  2. English
  3. PDF
  4. Available on iOS & Android
eBook - PDF

About this book

The concept of neural network originated from neuroscience, and one of its primitive aims is to help us understand the principle of the central nerve system and related behaviors through mathematical modeling. The first part of the book is a collection of three contributions dedicated to this aim. The second part of the book consists of seven chapters, all of which are about system identification and control. The third part of the book is composed of Chapter 11 and Chapter 12, where two interesting RNNs are discussed, respectively.The fourth part of the book comprises four chapters focusing on optimization problems. Doing optimization in a way like the central nerve systems of advanced animals including humans is promising from some viewpoints.

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Yes, you can access Recurrent Neural Networks by Xiaolin Hu,P. Balasubramaniam, Xiaolin Hu, P. Balasubramaniam in PDF and/or ePUB format, as well as other popular books in Computer Science & Neural Networks. We have over one million books available in our catalogue for you to explore.

Information

Table of contents

  1. Recurrent Neural Networks
  2. Contents
  3. Preface
  4. 1. Aperiodic (Chaotic) Behavior in RNN with Homeostasis as a Source of Behavior Novelty: Theory and Applications
  5. 2. Biological Signals Identification by a Dynamic Recurrent Neural Network: from Oculomotor Neural Integrator to Complex Human Movements and Locomotion
  6. 3. Linguistic Productivity and Recurrent Neural Networks
  7. 4. Recurrent Neural Network Identification and Adaptive Neural Control of Hydrocarbon Biodegradation Processes
  8. 5. Design of Self-Constructing Recurrent-Neural-Network-Based Adaptive Control
  9. 6. Recurrent Fuzzy Neural Networks and Their Performance Analysis
  10. 7. Recurrent Interval Type-2 Fuzzy Neural Network Using Asymmetric Membership Functions
  11. 8. Rollover Control in Heavy Vehicles via Recurrent High Order Neural Networks
  12. 9. A New Supervised Learning Algorithm of Recurrent Neural Networks and Stability Analysis in Discrete-Time Domain
  13. 10. Application of Recurrent Neural Networks to Rainfall-runoff Processes
  14. 11. Recurrent Neural Approach for Solving Several Types of Optimization Problems
  15. 12. Applications of Recurrent Neural Networks to Optimization Problems
  16. 13. Neurodynamic Optimization: Towards Nonconvexity
  17. 14. An Improved Extremum Seeking Algorithm Based on the Chaotic Annealing Recurrent Neural Network and Its Application
  18. 15. Stability Results for Uncertain Stochastic High-Order Hopfield Neural Networks with Time Varying Delays
  19. 16. Dynamics of Two-Dimensional Discrete-Time Delayed Hopfield Neural Networks
  20. 17. Case Studies for Applications of Elman Recurrent Neural Networks
  21. 18. Partially Connected Locally Recurrent Probabilistic Neural Networks