Fuzzy lifetime in genetic algorithm against premature convergence
Date
2010-06-02Author
Mohammad Jalali, Varnamkhasti
Lai, Soon Lee
Mohd Rizam, Abu Bakar
Nawfal, A. Mehdy
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Show full item recordAbstract
A large scale of design, control, scheduling or other
engineering problems results in solution of optimization
problems. In numerous areas of engineering there are
problems to which Genetic Algorithms (GAs) can without
difficulty be applied. Premature convergence is a classical
problem in finding optimal solution in Genetic Algorithms.
Varying the population size and the population diversity are
the two possible ways of avoiding the premature convergence
in a GA. If the population size is small, the diversity of
population may be small and the GA will converge very
quickly. On the other hand, if the population size is too big,
the GA will take a lot of time to converge and this may cause
wastage in computational resources. In this paper, we propose
a Fuzzy Genetic Algorithm (FGA) which uses a new technique
that is based on the lifetime for each chromosome. We use a
conceptual of distance from the best chromosome in a
population to create a fuzzy membership function which
formed a new fitness function for the FGA. This new fitness
function will then be used in a bi-linear allocation lifetime for
varying the population size. Computational experiments are
conducted to compare the performance of this new technique
with some commonly used selection mechanisms found in a
standard GA for solving some numerical functions from the
literature.
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