MA4157 Mathematical Modeling and Simulation Syllabus:
MA4157 Mathematical Modeling and Simulation Syllabus – Anna University PG Syllabus Regulation 2021
COURSE OBJECTIVES:
This course will help the students to
acquire the knowledge of solving system of linear equations using an appropriate numerical methods.
approximate the functions using polynomial interpolation numerical differentiation and integration using interpolating polynomials.
acquire the knowledge of numerical solution of ordinary differential equation by single and multi step0 methods.
obtain the solution of boundary value problems in partial differential equations using finite differences.
study simulation and Monte-Carlo methods and their applications.
UNIT I MATRICES AND LINEAR SYSTEMS OF EQUATIONS
Solution of Linear Systems : Cramer’s Rule – Gaussian elimination and Gauss Jordon methods – Cholesky decomposition method – Gauss Seidel iteration method – Eigenvalue problems : Power method with deflation for both symmetric and non symmetric matrices and Jacobi method for symmetric matrices.
UNIT II INTERPOLATION, DIFFERENTIATION AND INTEGRATION
Lagrange’s interpolation – Newton’s divided differences – Hermite’s interpolation – Newton’s forward and backward differences – Numerical differentiation – Numerical integration : Trapezoidal and Simpson’s rules – Gaussian quadrature : 2 and 3 point rules.
UNIT III DIFFERENTIAL EQUATIONS
Initial value problems for first and second order ODEs : Single step methods – Taylor’s series method – Euler’s and modified Euler’s methods – Runge – Kutta method of fourth order – Multi step methods : Milne’s and Adam Bashforth methods – Boundary value problems : Finite difference approximations to derivatives – Finite difference method of solving second order ODEs .
UNIT IV PARTIAL DIFFERENTIAL EQUATIONS
Classification of second order PDE’s – Finite difference approximations to partial derivatives – Elliptic equations : Solution of Laplace and Poisson equations – One dimensional parabolic equation – Bender Schmidt method – Hyperbolic equation : One dimensional wave equation.
UNIT V SIMULATION AND MONTE CARLO METHODS
Random numbers : Random number algorithms and generators – Estimation of areas and volumes by Monte Carlo techniques – Numerical integration – Computing volumes – Simulation : Loaded Die Problem – Birthday problem – Buffon’s needle problem – Two dice problem and Neutron shielding problem.
TOTAL: 60 PERIODS
COURSE OUTCOMES :
At the end of the course, students will be able to
solve an algebraic or transcendental equation and linear system of equations using an appropriate numerical method.
approximation of functions using polynomial interpolation, numerical differentiation and integration using interpolating polynomials.
numerical solution of differential equations by single and multistep methods.
solution of boundary value problems and initial boundary value problems in partial differential equations using finite differences.
simulation and Monte-Carlo methods and their applications.
REFERENCES :
1. Burden, R.L. and Faires, J.D. “Numerical Analysis”, 9th Edition, Cengage Learning, Delhi, 2016.
2. Cheney, W and Kincaid D., “Numerical Mathematics and Computing”, 7th Edition, Cengage Learning , Delhi, 2014.
3. Jain, M.K., Iyengar, S.R.K. and Jain R.K. “Numerical Methods for Scientific and Engineering Computation”, 6th Edition, New Age International Pvt. Ltd., Delhi, 2014.
4. Landau, D.P. and Binder, K., “A Guide to Monte – Carlo Simulations in Statistical Physics”, 3rd Edition, Cambridge University Press, Cambridge, 2009.
5. Maki, D P and Thompson, M., “Mathematical Modelling with Computer Simulation”, Cengage Learning, Delhi , 2011.
6. Sastry, S.S., “Introductory Methods of Numerical Analysis”, 5th Edition, PHI Learning Pvt. Ltd., Delhi, 2012.
7. Taha, H.A. “Operations Research”, 10th Edition, Pearson Education India, Delhi, 2018.