Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10523719 | Mathematics and Computers in Simulation | 2005 | 9 Pages |
Abstract
This paper presents an analysis of an adaptive random search (ARS) algorithm, a global minimization method. A probability model is introduced to characterize the statistical properties of the number of iterations required to find an acceptable solution. Moreover, based on this probability model, a new stopping criterion is introduced to predict the maximum number of iterations required to find an acceptable solution with a pre-specified level of confidence. Finally, this paper presents a systematic procedure for choosing the user-specified parameters in the ARS algorithm for fastest convergence. The results, which are valid for search spaces of arbitrary dimensions, are illustrated on a simple three-dimensional example.
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Control and Systems Engineering
Authors
Rajeeva Kumar, Pierre T. Kabamba, David C. Hyland,