SOMS: SurrOgate MultiStart algorithm for use with nonlinear programming for global optimization
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BORIS DOI
Date of Publication
2015
Publication Type
Article
Division/Institute
Author
Shoemaker, Christine A. |
Subject(s)
Series
International Transactions in Operational Research
ISSN or ISBN (if monograph)
1475-3995
Publisher
Blackwell
Language
English
Publisher DOI
Description
SOMS is a general surrogate-based multistart algorithm, which is used in combination with any local optimizer to find global optima for computationally expensive functions with multiple local minima. SOMS differs from previous multistart methods in that a surrogate approximation is used by the multistart algorithm to help reduce the number of function evaluations necessary to identify the most promising points from which to start each nonlinear programming local search. SOMS’s numerical results are compared with four well-known methods, namely, Multi-Level Single Linkage (MLSL), MATLAB’s MultiStart, MATLAB’s GlobalSearch, and GLOBAL. In addition, we propose a class of wavy test functions that mimic the wavy nature of objective functions arising in many black-box simulations. Extensive comparisons of algorithms on the wavy testfunctions and on earlier standard global-optimization test functions are done for a total of 19 different test problems. The numerical results indicate that SOMS performs favorably in comparison to alternative methods and does especially well on wavy functions when the number of function evaluations allowed is limited.