Community Sites
Create your own community website and start earning today !
It's Free !
 
Communities Members BookmarksPolls Fresher Jobs Strange Photos Academic Projects New Member FAQ  



My Profile
Active Members
TodayLast 7 Days more...



Awards & Gifts
Online Exams

Fresher Jobs


Our fresher job section is exclusively for fresh graduates! Find jobs for freshers in major Indian cities including Bangalore, Chennai, Hyderabad, Pune or Kochi

Resources


Find educational articles, blogs, discussion threads and other resources.

Colleges


Find details about any college in India or search for courses.

website counter



JNTU 2007-08 IV Year II Sem. B. Tech. MP- Elective IV-Neural Networks and Fuzzy Logic Systems


Posted Date: 21 Dec 2007    Resource Type: Articles/Knowledge Sharing    Category: Syllabus

Posted By: India       Member Level: Diamond
Rating:     Points: 1



JAWAHARLAL NEHRU TECHNOLOGICAL UNIVERSITY
HYDERABAD
IV Year B.Tech. MP II-SEM T P C
3+1* 0 3
NEURAL NETWORKS AND FUZZY LOGIC SYSTEMS
(Elective – IV)

Objective :
This course introduces the basics of Neural Networks and essentials of Artificial Neural Networks with Single Layer and Multilayer Feed Forward Networks. Also deals with Associate Memories and introduces Fuzzy sets and Fuzzy Logic system components. The Neural Network and Fuzzy Logic application to Systems Engineering is also presented. This subject is very important and useful for doing Project Work.

Unit – I: Introduction to Neural Networks
Introduction, Humans and Computers, Organization of the Brain, Biological Neuron, Biological and Artificial Neuron Models, Characteristics of ANN, McCulloch-Pitts Model, Historical Developments, Potential Applications of ANN.

Unit- II: Essentials of Artificial Neural Networks
Artificial Neuron Model, Operations of Artificial Neuron, Types of Neuron Activation Function, ANN Architectures, Classification Taxonomy of ANN ¬– Connectivity, Learning Strategy (Supervised, Unsupervised, Reinforcement), Learning Rules.

Unit–III: Single Layer Feed Forward Neural Networks
Introduction, Perceptron Models: Discrete, Continuous and Multi-Category, Training Algorithms: Discrete and Continuous Perceptron Networks, Limitations of the Perceptron Model.

Unit- IV: Multilayer Feed forward Neural Networks
Credit Assignment Problem, Generalized Delta Rule, Derivation of Backpropagation (BP) Training, Summary of Backpropagation Algorithm, Kolmogorov Theorem, Learning Difficulties and Improvements.

Unit V: Associative Memories
Paradigms of Associative Memory, Pattern Mathematics, Hebbian Learning, General Concepts of Associative Memory, Bidirectional Associative Memory (BAM) Architecture, BAM Training Algorithms: Storage and Recall Algorithm, BAM Energy Function.
Architecture of Hopfield Network: Discrete and Continuous versions, Storage and Recall Algorithm, Stability Analysis.

Unit – VI: Classical & Fuzzy Sets
Introduction to classical sets - properties, Operations and relations; Fuzzy sets, Membership, Uncertainty, Operations, properties, fuzzy relations, cardinalities, membership functions.

UNIT VII: Fuzzy Logic System Components
Fuzzification, Membership value assignment, development of rule base and decision making system, Defuzzification to crisp sets, Defuzzification methods.

UNIT VIII: Applications
Neural network applications: Process identification, control, fault diagnosis.
Fuzzy logic applications: Fuzzy logic control and Fuzzy classification.




Responses

Author: India    21 Dec 2007Member Level: Diamond   Points : 5
TEXT BOOKS:
1. S. Rajasekharan and G. A. Vijayalakshmi pai, “Neural Networks, Fuzzy logic, Genetic algorithms: synthesis and applications”, PHI Publication, 2004.
2. John Yen and Reza Langan, “Fuzzy Logic: Intelligence, Control and Information”, Pearson Education, 2004.
REFERENCE BOOKS:
1. Simon Haykin, “Neural Networks- A comprehensive foundation”, Pearson Education, 2001.
2. S.N.Sivanandam, S.Sumathi,S. N. Deepa “Introduction to Neural Networks using MATLAB 6.0”, TMH, 2006.
3. James A Freeman and Davis Skapura, Neural Networks Pearson Education, 2002.
Timothy J. Ross, “ Fuzzy Logic With Engineering Applications”, McGraw-Hill Inc. 1997



Feedbacks      
Popular Tags   What are tags ?   Search Tags  
(No tags found.)

Post Feedback


This is a strictly moderated forum. Only approved messages will appear in the site. Please use 'Spell Check' in Google toolbar before you submit.
You must Sign In to post a response.
Next Resource: JNTU 2007-08 IV Year II Sem. B. Tech. MP- Elective IV-Interactive Computer Graphics
Previous Resource: JNTU 2007-08 IV Year II Sem. B. Tech. MP- Elective IV-Total Quality Management
Return to Discussion Resource Index
Post New Resource
Category: Syllabus


Post resources and earn money!
 
Related Resources



Watch TV Channels
  • Watch Asianet TV online
  • Kairali TV in Internet
  • Surya TV online
  • Amritha TV Channel

  • Contact Us    Privacy Policy    Terms Of Use   

    SpiderWorks Technologies Pvt Ltd. 2006 - 2007 All Rights Reserved.