Type: Article
Robust optimization using Bayesian optimization algorithm: Early detection of non-robust solutions
Journal: Applied Soft Computing (15684946)Year: December 2017Volume: 61Issue: Pages: 1125 - 1138
Kaedi M.a Ahn C.W.
DOI:10.1016/j.asoc.2017.03.042Language: English
Abstract
Probabilistic robustness evaluation is a promising approach to evolutionary robust optimization; however, high computational time arises. In this paper, we apply this approach to the Bayesian optimization algorithm (BOA) with a view to improving its computational time. To this end, we analyze the Bayesian networks constructed in BOA in order to extract the patterns of non-robust solutions. In each generation, the solutions that match the extracted patterns are detected and then discarded from the process of evaluation; therefore, the computational time in discovering the robust solutions decreases. The experimental results demonstrate that our proposed method reduces computational time, while increasing the robustness of solutions. © 2017