Springer, 2023. — 123 p. — (Simula SpringerBriefs on Computing, 15). — ISBN 3031467671.
This volume explains the foundations of
modern solvers for
ordinary differential equations (ODEs). Formulating and solving ODEs is an essential part of mathematical modeling and computational science, and numerous solvers are available in commercial and open source software. However, no single ODE solver is the best choice for every single problem, and choosing the right solver requires fundamental insight into how the solvers work. This book will provide exactly that insight, to enable students and researchers to select the right solver for any ODE problem of interest, or implement
their own solvers if needed. The presentation is compact and accessible, and
focuses on the large and widely used class of solvers known as
Runge-Kutta methods. Explicit and implicit methods are motivated and explained, as well as methods for
error control and automatic time step selection, and all the solvers are implemented
as a class hierarchy in Python.
Series Foreword.
Preface.
Programming a Simple ODE Solver.
Improving the Accuracy.
Stable Solvers for Stiff ODE Systems.
Adaptive Time Step Methods.
Modeling Infectious Diseases.
A Programming of Difference Equations.
References.
Index.
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