Review and comparison of algorithms and software for mixed-integer derivative-free optimization

被引:0
作者
Nikolaos Ploskas
Nikolaos V. Sahinidis
机构
[1] University of Western Macedonia,Department of Electrical and Computer Engineering
[2] Georgia Institute of Technology,H. Milton Stewart School of Industrial & Systems Engineering
[3] Georgia Institute of Technology,School of Chemical & Biomolecular Engineering
来源
Journal of Global Optimization | 2022年 / 82卷
关键词
Derivative-free optimization algorithms; Mixed-integer optimization; Direct search methods; Surrogate models; Stochastic methods;
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学科分类号
摘要
This paper reviews the literature on algorithms for solving bound-constrained mixed-integer derivative-free optimization problems and presents a systematic comparison of available implementations of these algorithms on a large collection of test problems. Thirteen derivative-free optimization solvers are compared using a test set of 267 problems. The testbed includes: (i) pure-integer and mixed-integer problems, and (ii) small, medium, and large problems covering a wide range of characteristics found in applications. We evaluate the solvers according to their ability to find a near-optimal solution, find the best solution among currently available solvers, and improve a given starting point. Computational results show that the ability of all these solvers to obtain good solutions diminishes with increasing problem size, but the solvers evaluated collectively found optimal solutions for 93% of the problems in our test set. The open-source solvers MISO and NOMAD were the best performers among all solvers tested. MISO outperformed all other solvers on large and binary problems, while NOMAD was the best performer on mixed-integer, non-binary discrete, small, and medium-sized problems.
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页码:433 / 462
页数:29
相关论文
共 151 条
[1]  
Abramson MA(2009)Mesh adaptive direct search algorithms for mixed variable optimization Optim. Lett. 3 35-37
[2]  
Audet C(2009)OrthoMADS: a deterministic MADS instance with orthogonal directions SIAM J. Optim. 20 948-966
[3]  
Chrissis JW(2008)Nonsmooth optimization through mesh adaptive direct search and variable neighborhood search J. Glob. Optim. 41 299-318
[4]  
Walston JG(2000)Pattern search algorithms for mixed variable programming SIAM J. Optim. 11 573-594
[5]  
Abramson MA(2003)Analysis of generalized pattern searches SIAM J. Optim. 13 889-903
[6]  
Audet C(2006)Mesh adaptive direct search algorithms for constrained optimization SIAM J. Optim. 17 188-217
[7]  
Dennis JE(2019)The mesh adaptive direct search algorithm for granular and discrete variables SIAM J. Optim. 29 1164-1189
[8]  
Le Digabel S(2000)An evolutionary programming approach to mixed-variable optimization problems Appl. Math. Model. 24 931-942
[9]  
Audet C(2015)Derivative-free robust optimization for circuit design J. Optim. Theory Appl. 164 842-861
[10]  
Béchard V(2018)RBFOpt: an open-source library for black-box optimization with costly function evaluations Math. Program. Comput. 10 597-629