Nature Inspired Computing: Algorithms, Performance and Applications
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Abstract
Nature Inspired algorithms have served as the backbone of modern computing technology
and over the past three decades, the eld has grown enormously. A large number
of applications have been solved by these algorithms and are replacing the traditional
classical optimization algorithms. In this thesis, some of these nature inspired algorithms
such as cuckoo search algorithm (CS),
ower pollination algorithm (FPA) and others
have been studied. All these algorithms are state-of-the-art algorithms and have proven
their worth in terms of competitiveness and application to various domains of research.
The aim is to develop new improved algorithms through mitigating well-known problems
that these algorithms su er from, such as local optima stagnation, poor exploration,
slow convergence and parametric complexity. Such improvements should help these new
variants to solve highly challenging optimization problems in contrast to existing algorithms.
Di erent ideas and logic are employed in designing such new versions such as
hybridization that combine the strength of di erent mutation strategies to add diversity
in the solution space, adaptive parameter adaptations to converge faster, improved global
and local search strategy to enhance the exploration and exploitation respectively. Also
self-adaptivity, population size reduction and lower computational complexity methods
have been analysed to provide prospective algorithms for the next generation researchers.
Apart from these, based on the mating patterns of naked mole-rat, a new algorithm
namely naked mole-rat algorithm (NMR) was proposed. To validate the performance of
all these developed algorithms, various challenging test suites from the IEEE-CEC benchmarks
are used. Each of these benchmarks constitute problems of di erent characteristics
such as ruggedness, multimodality, noise in tness, ill-conditioning, non-separability and
interdependence. Moreover, various real-world optimization problems from diversi ed
elds such as Antenna arrays, frequency modulation, stirred tank reactor and others are
also used. The results of comparative study and statistical tests a rm the superior and
e cient performance of proposed algorithms.
