MA4103 Applied Mathematics for Embedded Systems Technologists Syllabus:
MA4103 Applied Mathematics for Embedded Systems Technologists Syllabus – Anna University PG Syllabus Regulation 2021
OBJECTIVES :
To understand the techniques of Fourier transform to solve partial differential equations.
To become familiar with graph theory for modelling the embedded system.
To understand various optimization techniques for utilizing system and network resources.
To understand the basic concepts of probability to apply in embedded technology.
To understand the basic concept of random variables and queuing theories to address stochastic and dynamic environment in embedded technology.
UNIT I FOURIER TRANSFORM TECHNIQUES FOR PARTIAL DIFFERENTIAL EQUATIONS
Fourier transform : Definitions – Properties – Transform of elementary functions – Dirac delta function – Convolution theorem – Parseval’s identity – Solutions to partial differential equations : Heat equation – Wave equation – Laplace and Poison’s equations.
UNIT II GRAPH THEORY
Introduction to paths, trees, vector spaces – Matrix coloring and directed graphs – Some basic algorithms – Shortest path algorithms – Depth – First search on a graph – Isomorphism – Other Graph – Theoretic algorithms – Performance of graph theoretic algorithms – Graph theoretic computer languages.
UNIT III OPTIMIZATION TECHNIQUES
Linear programming – Basic concepts – Graphical and simplex methods – Big M method – Two phase simplex method – Revised simplex method – Transportation problems – Assignment problems.
UNIT IV PROBABILITY AND RANDOM VARIABLES
Probability – Axioms of probability – Conditional probability – Baye’s theorem – Random variables – Probability function – Moments – Moment generating functions and their properties – Binomial, Poisson, Exponential, Normal distributions – Two dimensional random variables – Poisson process.
UNIT V QUEUEING THEORY
Single and multiple servers – Markovian queuing models – Finite and infinite capacity queues – Finite source model – Queuing applications.
TOTAL : 60 PERIODS
OUTCOMES:
Upon Completion of the course, the students will be able to
Apply Fourier transform techniques to solve PDE technology.
Model the networks in embedded systems using graph theory.
Use the ideas of probability and random variables in solving engineering problems.
Address stochastic and dynamic behavior of data transfer using queuing theories in embedded systems technologies.
REFERENCES:
1. Taha H .A., ” Operations Research: An Introduction ” , 9th Edition, Pearson Education Asia, New Delhi, 2016.
2. Walpole R.E., Myer R.H., Myer S.L., and Ye, K., ” Probability and Statistics for Engineers and Scientists “, 7th Edition, Pearson Education, Delhi, 2002.
3. Sankara Rao, K., “ Introduction to Partial Differential Equations ”, Prentice Hall of India Pvt. Ltd., New Delhi, 1997.
4. Narasingh Deo, ” Graph Theory with Applications to Engineering and Computer Science “, Prentice Hall India,1997.
5. S. S. Rao, ” Engineering Optimization, Theory and Practice “, 4th Edition, John Wiley and Sons, 2009.