Mathematical Methods in Interdisciplinary Sciences Mathematical Methods in Interdisciplinary Sciences

Mathematical Methods in Interdisciplinary Sciences

    • €109.99
    • €109.99

Publisher Description

Brings mathematics to bear on your real-world, scientific problems

Mathematical Methods in Interdisciplinary Sciences provides a practical and usable framework for bringing a mathematical approach to modelling real-life scientific and technological problems. The collection of chapters Dr. Snehashish Chakraverty has provided describe in detail how to bring mathematics, statistics, and computational methods to the fore to solve even the most stubborn problems involving the intersection of multiple fields of study. Graduate students, postgraduate students, researchers, and professors will all benefit significantly from the author's clear approach to applied mathematics.

The book covers a wide range of interdisciplinary topics in which mathematics can be brought to bear on challenging problems requiring creative solutions. Subjects include:
Structural static and vibration problems Heat conduction and diffusion problems Fluid dynamics problems
The book also covers topics as diverse as soft computing and machine intelligence. It concludes with examinations of various fields of application, like infectious diseases, autonomous car and monotone inclusion problems.

GENRE
Science & Nature
RELEASED
2020
15 June
LANGUAGE
EN
English
LENGTH
464
Pages
PUBLISHER
Wiley
PROVIDER INFO
John Wiley & Sons Ltd
SIZE
48.9
MB
Next Generation Data Technologies for Collective Computational Intelligence Next Generation Data Technologies for Collective Computational Intelligence
2009
E-Expertise: Modern Collective Intelligence E-Expertise: Modern Collective Intelligence
2009
Models and Algorithms for Global Optimization Models and Algorithms for Global Optimization
2007
From Nano to Space From Nano to Space
2007
Robust Data Mining Robust Data Mining
2012
Robust Optimization-Directed Design Robust Optimization-Directed Design
2006
Learning with Fractional Orthogonal Kernel Classifiers in Support Vector Machines Learning with Fractional Orthogonal Kernel Classifiers in Support Vector Machines
2023
Computational Fractional Dynamical Systems Computational Fractional Dynamical Systems
2022
APPLIED ARTIFICIAL NEURAL NETWORK METHODS ENGINEERS & SCIENT APPLIED ARTIFICIAL NEURAL NETWORK METHODS ENGINEERS & SCIENT
2021
WAVE DYNAMICS WAVE DYNAMICS
2022
Vibration of Plates Vibration of Plates
2008
Concepts of Soft Computing Concepts of Soft Computing
2019