Simple Meta-heuristics using the simplex algorithm for non-linear programming
Simple Meta-heuristics using the simplex algorithm for non-linear programming
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Date
2007
Authors
João Pedro Pedroso
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Abstract
In this paper we present an extension of the Nelder and Mead simplex
algorithm for non-linear programming, which makes is suitable for
both unconstrained and constrained optimisation. We then explore several
extensions of the method for escaping local optima, and which make
it a simple, yet powerful tool for optimisation of nonlinear functions with
many local optima.
A strategy which proved to be extremely robust was random start local
search, with a correct, though unusual, setup. Actually, for some of the
benchmarks, this simple meta-heuristic remained as the most e®ective
one. The idea is to use a very large simplex at the begin; the initial
movements of this simplex are very large, and therefore act as a kind of
¯lter, which naturally drives the search into good areas.
We propose two more mechanisms for escaping local optima, which,
still being very simple to implement, provide better results for some dif-
¯cult problems.