Course Details
Subject {L-T-P / C} : FP6234 : Food Process Modelling and Simulation { 3-0-0 / 3}
Subject Nature : Theory
Coordinator : Sushil Kumar Singh
Syllabus
| Module 1 : |
Module 1: Statistical Analysis in Food Processing
|
Course Objective
| 1 . |
To enable students to apply statistical analysis techniques for interpreting and analyzing food process data using hypothesis testing and inference methods. |
| 2 . |
To equip students with skills to develop predictive models using linear regression, multiple regression, and empirical modeling techniques for food processing applications. |
| 3 . |
To train students in optimizing food processing parameters using Artificial Neural Networks (ANNs) and Genetic Algorithms. |
| 4 . |
To help students utilize deep learning models by developing and evaluating Convolutional Neural Networks (CNNs) for food process simulations and predictions. |
Course Outcome
| 1 . |
By the end of this course, students will be able to:
|
Essential Reading
| 1 . |
R.J. Freund and W.J. Wilson, Statistical Methods, Academic Press , 2nd Edition |
| 2 . |
H. Das, Food Processing Operations Analysis, Asian Books Private Limited |
Supplementary Reading
| 1 . |
Douglas C. Montgomery, Design and Analysis of Experiments, John Wiley & Sons , 5th Edition |
| 2 . |
M.H. Kutner, C.J. Nachtsheim, J. Neter, W. Li, Applied Linear Statistical Models, McGraw-Hill , 5th Edition |



