Data di Pubblicazione:
1992
Abstract:
A new evolutionary method for the global optimization of functions
with continuous variables is proposed. This algorithm can be viewed as
an efficient parallelization of the simulated annealing technique,
although a suitable interval coding shows a close analogy between
real-coded genetic algorithms and the proposed method, called {\sl
interval genetic algorithm}.
Some well defined genetic operators allow a considerable
improvement in reliability and efficiency with respect to a
conventional simulated annealing even on a sequential computer.
Results of simulations on Rosenbrock valleys and cost functions with
flat areas or fine-grained local minima are reported.
Furthermore, tests on classical problems in the field of neural
networks are presented; they show a possible practical application of
the interval genetic algorithm.
Tipologia CRIS:
01.01 Articolo in rivista
Elenco autori:
Muselli, Marco
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