Fr. 70.00

Neural Network Methods for Dynamic Equations on Time Scales

English · Paperback / Softback

Shipping usually within 6 to 7 weeks

Description

Read more

This book aims to handle dynamic equations on time scales using artificial neural network (ANN). Basic facts and methods for ANN modeling are considered. The multilayer artificial neural network (ANN) model is introduced for solving of dynamic equations on arbitrary time scales. A multilayer ANN model with one input layer containing a single node, a hidden layer with m nodes, and one output node are investigated. The feed-forward neural network model and unsupervised error back-propagation algorithm are developed. Modification of network parameters is done without the use of any optimization technique. The regression-based neural network (RBNN) model is introduced for solving dynamic equations on arbitrary time scales. The RBNN trial solution of dynamic equations is obtained by using the RBNN model for single input and single output system. A variety of initial and boundary value problems are solved. The Chebyshev neural network (ChNN) model and Levendre neural network model are developed. The ChNN trial solution of dynamic equations is obtained by using the ChNN model for single input and single output system. 
This book is addressed to a wide audience of specialists such as mathematicians, physicists, engineers, and biologists. It can be used as a textbook at the graduate level and as a reference book for several disciplines.

List of contents

Introduction.- Multilayer Artificial Neural Networks.- Regression Based Artificial Neural Networks.- Chebyshev Neural Networks.- Legendre Neural Networks.- Index.

Summary

This book aims to handle dynamic equations on time scales using artificial neural network (ANN). Basic facts and methods for ANN modeling are considered. The multilayer artificial neural network (ANN) model is introduced for solving of dynamic equations on arbitrary time scales. A multilayer ANN model with one input layer containing a single node, a hidden layer with m nodes, and one output node are investigated. The feed-forward neural network model and unsupervised error back-propagation algorithm are developed. Modification of network parameters is done without the use of any optimization technique. The regression-based neural network (RBNN) model is introduced for solving dynamic equations on arbitrary time scales. The RBNN trial solution of dynamic equations is obtained by using the RBNN model for single input and single output system. A variety of initial and boundary value problems are solved. The Chebyshev neural network (ChNN) model and Levendre neural network model are developed. The ChNN trial solution of dynamic equations is obtained by using the ChNN model for single input and single output system. 
This book is addressed to a wide audience of specialists such as mathematicians, physicists, engineers, and biologists. It can be used as a textbook at the graduate level and as a reference book for several disciplines.

Product details

Authors Svetlin Georgiev
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 02.04.2025
 
EAN 9783031850554
ISBN 978-3-0-3185055-4
No. of pages 112
Dimensions 155 mm x 7 mm x 235 mm
Weight 195 g
Illustrations VIII, 112 p. 38 illus., 34 illus. in color.
Series SpringerBriefs in Applied Sciences and Technology
SpringerBriefs in Computational Intelligence
Subjects Natural sciences, medicine, IT, technology > Technology > General, dictionaries

Artificial Intelligence, Mathematik für Ingenieure, Engineering mathematics, Computational Intelligence, neural network, artificial neural network, Dynamic Equations, Time Scale theory

Customer reviews

No reviews have been written for this item yet. Write the first review and be helpful to other users when they decide on a purchase.

Write a review

Thumbs up or thumbs down? Write your own review.

For messages to CeDe.ch please use the contact form.

The input fields marked * are obligatory

By submitting this form you agree to our data privacy statement.