Tese
Proposta de um algoritmo evolutivo assistido por um modelo de aproximação Kriging para problemas de otimização de alto custo computacional
Fecha
2020-12-14Autor
Mônica Aparecida Cruvinel Valadão
Institución
Resumen
Optimization problems that require the evaluation of functions with high computational
cost are frequently solved through metamodel-based strategies. Examples of strategies
based on metamodels are the Surrogate Model Assisted Evolutionary Algorithms (SAEAs)
that are usually employed to solve optimization problems that are computationally expensive to be evaluated and require several function evaluations, such as the ones with a large
number of variables. Currently, SAEAs have been applied in problems involving up to 100
variables. In such methods, the metamodel is used to guide the evolutionary algorithm
towards promising regions of the search space and to reduce the number of function
evaluations required. However, the cost associated with the update of the metamodel
cannot be prohibitive. This work proposes a self-adaptive SAEA, named SAEAa, which
couples in the same framework a parameter self-adaptation and a mechanism that allows
the choice between different mutation operators. More precisely, it couples mutation
operators with distinct features, adding in the SAEAa maintenance of population diversity
and selective pressure in the evolutive process. Another feature of SAEAa is that it employs a unidimensional Ordinary Kriging metamodel. Thus, it reduces the computational
cost of training this kind of metamodel compared to the standard form Kriging. The
description of the proposed strategy also addresses aspects that directly influence the
quality of metamodel and population diversity, which are not treated in SAEAs existing in
the literature. The proposed approach was employed to solve a set of analytical functions
of single-objective optimization problems. The results obtained suggest that the SAEAa
presents a better performance, in terms of solution quality and computational cost, when
compared to recent strategies. Besides, the proposed approach was employed on the
solution of a ground-penetrating radar (GPR) antenna design. The solution returned by
SAEAa was validated, and it showed to be suitable for application in GPR. Furthermore,
it was possible to show a considerable reduction in computational resources (time) from
using the proposed approach.