B.E DEGREE PROGRAMME COMPUTER SCIENCE AND ENGINEERING
(Offered in Colleges affiliated to Anna University)
CURRICULUM AND SYLLABUS – REGULATIONS – 2004
B.E. COMPUTER SCIENCE AND ENGINEERING
LIST OF ELECTIVES FOR COMPUTER SCIENCE AND ENGINEERING
CS1018  SOFT COMPUTING 
AIM
  To introduce the techniques of soft computing and adaptive neuro-fuzzy  inferencing systems which differ from conventional AI and computing in  terms of its tolerance to imprecision and uncertainty.
OBJECTIVES
  • To introduce the ideas of fuzzy sets, fuzzy logic and use of  heuristics based on human experience
  • To become familiar with neural networks that can learn from  available examples and generalize to form appropriate rules for  inferencing systems
  • To provide the mathematical background for carrying out the  optimization associated with neural network learning
  • To familiarize with genetic algorithms and other random search  procedures useful while seeking global optimum in self-learning  situations
  • To introduce case studies utilizing the above and illustrate the  intelligent behavior of programs based on soft computing
UNIT I   FUZZY SET THEORY               10
  Introduction to Neuro – Fuzzy and Soft Computing – Fuzzy Sets – Basic  Definition and Terminology – Set-theoretic Operations – Member Function  Formulation and Parameterization – Fuzzy Rules and Fuzzy Reasoning –  Extension Principle and Fuzzy Relations – Fuzzy If-Then Rules – Fuzzy  Reasoning – Fuzzy Inference Systems – Mamdani Fuzzy Models – Sugeno  Fuzzy Models – Tsukamoto Fuzzy Models – Input Space Partitioning and  Fuzzy Modeling.
 
  UNIT II  OPTIMIZATION                   8
  Derivative-based Optimization – Descent Methods – The Method of  Steepest Descent – Classical Newton’s Method – Step Size Determination –  Derivative-free Optimization – Genetic Algorithms – Simulated Annealing  – Random Search – Downhill Simplex Search.
  UNIT III  NEURAL NETWORKS               10
  Supervised Learning Neural Networks – Perceptrons - Adaline –  Backpropagation Mutilayer Perceptrons – Radial Basis Function Networks –  Unsupervised Learning Neural Networks – Competitive Learning Networks –  Kohonen Self-Organizing Networks – Learning Vector Quantization –  Hebbian Learning.
  UNIT IV  NEURO FUZZY MODELING                9
  Adaptive Neuro-Fuzzy Inference Systems – Architecture – Hybrid  Learning Algorithm – Learning Methods that Cross-fertilize ANFIS and  RBFN – Coactive Neuro Fuzzy Modeling – Framework Neuron Functions for  Adaptive Networks – Neuro Fuzzy Spectrum.
  UNIT V  APPLICATIONS OF COMPUTATIONAL INTELLIGENCE           8
  Printed Character Recognition – Inverse Kinematics Problems –  Automobile Fuel Efficiency Prediction – Soft Computing for Color Recipe  Prediction. 
 TOTAL : 45
  TEXT BOOK
  1. J.S.R.Jang, C.T.Sun and E.Mizutani, “Neuro-Fuzzy and Soft  Computing”, PHI, 2004, Pearson Education 2004.
REFERENCES
  1. Timothy J.Ross, “Fuzzy Logic with Engineering Applications”,  McGraw-Hill, 1997.
  2. Davis E.Goldberg, “Genetic Algorithms: Search, Optimization and  Machine Learning”, Addison Wesley, N.Y., 1989.
  3. S. Rajasekaran and G.A.V.Pai, “Neural Networks, Fuzzy Logic and  Genetic Algorithms”, PHI, 2003.
  4. R.Eberhart, P.Simpson and R.Dobbins, “Computational Intelligence -  PC Tools”, AP Professional, Boston, 1996.
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