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The art of applying mathematics to real-world dynamical problems
such as structural dynamics, fluid dynamics, wave dynamics, robot
dynamics, etc. can be extremely challenging. Various aspects of
mathematical modelling that may include deterministic or uncertain
(fuzzy, interval, or stochastic) scenarios, along with integer or
fractional order, are vital to understanding these dynamical
systems. Mathematical Methods in Dynamical Systems offers
problem-solving techniques and includes different analytical,
semi-analytical, numerical, and machine intelligence methods for
finding exact and/or approximate solutions of governing equations
arising in dynamical systems. It provides a singular source of
computationally efficient methods to investigate these systems and
includes coverage of various industrial applications in a simple
yet comprehensive way.
The subject of fractional calculus has gained considerable
popularity and importance during the past three decades, mainly due
to its validated applications in various fields of science and
engineering. It is a generalization of ordinary differentiation and
integration to arbitrary (non-integer) order. The fractional
derivative has been used in various physical problems, such as
frequency-dependent damping behavior of structures, biological
systems, motion of a plate in a Newtonian fluid, controller for the
control of dynamical systems, and so on. It is challenging to
obtain the solution (both analytical and numerical) of related
nonlinear partial differential equations of fractional order. So
for the last few decades, a great deal of attention has been
directed towards the solution for these kind of problems. Different
methods have been developed by other researchers to analyze the
above problems with respect to crisp (exact) parameters. However,
in real-life applications such as for biological problems, it is
not always possible to get exact values of the associated
parameters due to errors in measurements/experiments, observations,
and many other errors. Therefore, the associated parameters and
variables may be considered uncertain. Here, the uncertainties are
considered interval/fuzzy. Therefore, the development of
appropriate efficient methods and their use in solving the
mentioned uncertain problems are the recent challenge. In view of
the above, this book is a new attempt to rigorously present a
variety of fuzzy (and interval) time-fractional dynamical models
with respect to different biological systems using computationally
efficient method. The authors believe this book will be helpful to
undergraduates, graduates, researchers, industry, faculties, and
others throughout the globe.
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