222
Page views
1
Files
0
Videos
0
R.Links

Icon
Syllabus

UNIT
1
UNIT I: Neural Networks-1

(Introduction & Architecture) Neuron, Nerve structure and synapse, Artificial Neuron and its model, activation functions, Neural network architecture: single layer and multilayer feed forward networks, recurrent networks. Various learning techniques, perception and convergence rule, Auto-associative and hetro-associative memory.

UNIT
2
UNIT II: Neural Networks-II

(Back propagation networks) Architecture: perception model, solution, single layer artificial neural network, multilayer perception model, back propagation learning methods, effect of learning rule, co-efficient back propagation algorithm, factors affecting back propagation training, applications.

UNIT
3
UNIT III: Fuzzy Logic-I

(Introduction) Basic concepts of fuzzy logic, Fuzzy sets and Crisp sets, Fuzzy set theory and operations, Properties of fuzzy sets, Fuzzy and Crisp relations, Fuzzy to Crisp conversion.

UNIT
4
UNIT IV: Fuzzy Logic –II

(Fuzzy Membership, Rules) Membership functions, interference in fuzzy logic, fuzzy if-then rules, Fuzzy implications and Fuzzy algorithms, Fuzzyfications & Defuzzificataions, Fuzzy Controller, Industrial applications.

UNIT
5
UNIT V: Genetic Algorithm(GA):

Basic concepts, working principle, procedures of GA, flow chart of GA, Genetic representations, (encoding) Initialization and selection, Genetic operators, Mutation, Generational Cycle, applications.

Reference Book:

1. Siman Haykin, “Neural Netowrks”, Prentice Hall of India 2. Timothy J. Ross, “Fuzzy Logic with Engineering Applications”, Wiley India. 3. Kumar Satish, “Neural Networks”, Tata Mc Graw Hill

Text Book:

1. S. Rajsekaran & G.A. Vijayalakshmi Pai, “Neural Networks,Fuzzy Logic and Genetic Algorithm:Synthesis and Applications”, Prentice Hall of India. 2. N.P.Padhy, “Artificial Intelligence and Intelligent Systems”, Oxford University Press.

 

Print    Download