000 03777nam a22002417a 4500
003 IIITD
005 20240504122715.0
008 240412b |||||||| |||| 00| 0 eng d
020 _a9783031119996
040 _aIIITD
082 _a515.625
_bNEU-D
100 _aNeuberger, John M.
245 _aDifference matrices for ODE and PDE :
_ba MATLAB companion
_cby John M. Neuberger
260 _aSwitzerland :
_bSpringer,
_c©2023
300 _axiv, 204 p. :
_bill. ;
_c23 cm.
504 _aIncludes bibliographical references.
505 _t1. Introduction
_t 2. Review of elementary numerical methods and MATLAB(R)
_t3. Ordinary Differential Equations
_t4. Partial Differential Equations
_t5. Advanced topics in semilinear elliptic BVP
520 _aThe use of difference matrices and high-level MATLAB® commands to implement finite difference algorithms is pedagogically novel. This unique and concise textbook gives the reader easy access and a general ability to use first and second difference matrices to set up and solve linear and nonlinear systems in MATLAB which approximate ordinary and partial differential equations. Prerequisites include a knowledge of basic calculus, linear algebra, and ordinary differential equations. Some knowledge of partial differential equations is a plus though the text may easily serve as a supplement for the student currently working through an introductory PDEs course. Familiarity with MATLAB is not required though a little prior experience with programming would be helpful.In addition to its special focus on solving in MATLAB, the abundance of examples and exercises make this text versatile in use. It would serve well in a graduate course in introductory scientific computing for partial differential equations. With prerequisites mentioned above plus some elementary numerical analysis, most of the material can be covered and many of the exercises assigned in a single semester course. Some of the more challenging exercises make substantial projects and relate to topics from other typical graduate mathematics courses, e.g., linear algebra, differential equations, or topics in nonlinear functional analysis. A selection of the exercises may be assigned as projects throughout the semester. The student will develop the skills to run simulations corresponding to the primarily theoretical course material covered by the instructor. The book can serve as a supplement for the instructor teaching any course in differential equations. Many of the examples can be easily implemented and the resulting simulation demonstrated by the instructor. If the course has a numerical component, a few of the more difficult exercises may be assigned as student projects. Established researchers in theoretical partial differential equations may find this book useful as well, particularly as an introductory guide for their research students. Those unfamiliar with MATLAB can use the material as a reference to quickly develop their own applications in that language. Practical assistance in implementing algorithms in MATLAB can be found in these pages. A mathematician who is new to the practical implementation of methods for scientific computation in general can learn how to implement and execute numerical simulations of differential equations in MATLAB with relative ease by working through a selection of exercises. Additionally, the book can serve as a practical guide in independent study, undergraduate or graduate research experiences, or for reference in simulating solutions to specific thesis or dissertation-related experiments.
650 _aComputational Mathematics and Numerical Analysis.
650 _aDifference and Functional Equations.
650 _aMathematics—Data processing
942 _2ddc
_cBK
999 _c172459
_d172459