ICE

Artificial Neural Network ICE 5th Sem Syllabus for AKTU B.Tech 2019-20 Scheme (Departmental Elective-I)

Artificial Neural Network detail syllabus for Instrumentation & Control Engineering (ICE), 2019-20 scheme is taken from AKTU official website and presented for AKTU students. The course code (REC054), and for exam duration, Teaching Hr/Week, Practical Hr/Week, Total Marks, internal marks, theory marks, and credits do visit complete sem subjects post given below.

For all other ice 5th sem syllabus for b.tech 2019-20 scheme aktu you can visit ICE 5th Sem syllabus for B.Tech 2019-20 Scheme AKTU Subjects. For all other Departmental Elective-I subjects do refer to Departmental Elective-I. The detail syllabus for artificial neural network is as follows.

Unit I

For the complete syllabus, results, class timetable and more kindly download iStudy. It’s a lightweight, easy to use, no images, no pdfs platform to make student’s life easier.

Unit II

Back propagation networks : (BPN) Architecture of feed forward network, single layer ANN, multilayer perceptron, back propagation learning, input – hidden and output layer computation, back propagation algorithm, applications, selection of tuning parameters in BPN, Numbers of hidden nodes, learning. 8

Unit III

Activation & Synaptic Dynamics : Introduction, Activation Dynamics models, synaptic Dynamics models, stability and convergence, recall in neural networks. Basic functional units of ANN for pattern recognition tasks: Basic feed forward, Basic feedback and basic competitive learning neural network. Pattern association, pattern classification and pattern mapping tasks. 8

Unit IV

For the complete syllabus, results, class timetable and more kindly download iStudy. It’s a lightweight, easy to use, no images, no pdfs platform to make student’s life easier.

Unit V

Competitive learning neural networks : Components of CL network pattern clustering and feature. Mapping network, ART networks, Features of ART models, character recognition using ART network. Applications of ANN: Pattern classification – Recognition of Olympic games symbols, Recognition of printed Characters. Neocognitron -Recognition of handwritten characters. NET Talk: to convert English text to speech. Recognition of consonant vowel (CV) segments, texture classification and segmentation. 8

Reference Books:

  1. S. Raj Sekaran , Vijayalakshmi Pari,” Neural networks, Fuzzy logic and Genetic Algorithms”, PHI Publication.
  2. Elaine Rich and Kevin Knight, “Artificial Intelligence”, TMH Publication.
  3. Rajiv Chopra, Machine Learning, Khanna Publishing House.
  4. B. Yegnanarayana, “Artificial neural Networks”, PHI Publication.

For detail syllabus of all other subjects of B.Tech Ice, 2019-20 regulation do visit Ice 5th Sem syllabus for 2019-20 Regulation.

Don’t forget to download iStudy for the latest syllabus, results, class timetable and more.

Leave a Reply

Your email address will not be published. Required fields are marked *

*

This site uses Akismet to reduce spam. Learn how your comment data is processed.