Finite Difference Computing with PDEs Finite Difference Computing with PDEs

Finite Difference Computing with PDEs

A Modern Software Approach

Περιγραφή εκδότη

This book is open access under a CC BY 4.0 license.

This easy-to-read book introduces the basics of solving partial differential equations by means of finite difference methods. Unlike many of the traditional academic works on the topic, this book was written for practitioners. Accordingly, it especially addresses: the construction of finite difference schemes, formulation and implementation of algorithms, verification of implementations, analyses of physical behavior as implied by the numerical solutions, and how to apply the methods and software to solve problems in the fields of physics and biology.

ΕΙΔΟΣ
Επιστήμη και φύση
ΚΥΚΛΟΦΟΡΗΣΕ
2017
21 Ιουνίου
ΓΛΩΣΣΑ
EN
Αγγλικά
ΑΡ. ΣΕΛΙΔΩΝ
530
σελίδες
ΕΚΔΟΤΗΣ
Springer International Publishing
ΣΤΟΙΧΕΙΑ ΠΑΡΟΧΟΥ
Springer Science & Business Media LLC
ΜΕΓΕΘΟΣ
11,9
MB
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