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SO-I: a surrogate model algorithm for expensive nonlinear integer programming problems including global optimization applications

机译:SO-I:一种替代模型算法,用于解决昂贵的非线性整数编程问题,包括全局优化应用

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This paper presents the surrogate model based algorithm SO-I for solving purely integer optimization problems that have computationally expensive black-box objective functions and that may have computationally expensive constraints. The algorithm was developed for solving global optimization problems, meaning that the relaxed optimization problems have many local optima. However, the method is also shown to perform well on many local optimization problems, and problems with linear objective functions. The performance of SO-I, a genetic algorithm, Nonsmooth Optimization by Mesh Adaptive Direct Search (NOMAD), SO-MI (Mueller et al. in Comput Oper Res 40(5):1383-1400, 2013), variable neighborhood search, and a version of SO-I that only uses a local search has been compared on 17 test problems from the literature, and on eight realizations of two application problems. One application problem relates to hydropower generation, and the other one to throughput maximization. The numerical results show that SO-I finds good solutions most efficiently. Moreover, as opposed to SO-MI, SO-I is able to find feasible points by employing a first optimization phase that aims at minimizing a constraint violation function. A feasible user-supplied point is not necessary.
机译:本文提出了一种基于代理模型的算法SO-1,用于解决具有计算量大的黑盒目标函数并且可能具有计算量大的约束的纯整数优化问题。该算法是为解决全局优化问题而开发的,这意味着松弛优化问题具有许多局部最优解。但是,该方法还显示出在许多局部优化问题以及线性目标函数问题上的效果很好。 SO-I的性能,一种遗传算法,基于网格自适应直接搜索(NOMAD)的非平滑优化,SO-MI(Mueller等人,Comput Oper Res 40(5):1383-1400,2013),可变邻域搜索,在文献中的17个测试问题以及两个应用问题的8个实现方面,已经比较了仅使用本地搜索的SO-I版本。一个应用问题涉及水力发电,另一个应用问题涉及吞吐量最大化。数值结果表明,SO-I最有效地找到了好的解决方案。而且,与SO-MI相反,SO-I能够通过采用旨在使约束违反函数最小化的第一优化阶段来找到可行的点。用户提供的可行点不是必需的。

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