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Global Optimization Method Based on the Statistical Genetic Algorithm for Solving Nonlinear Bilevel Programming Problems

机译:基于统计遗传算法的全局最优方法求解非线性双层规划问题

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This paper presents a global optimization method based on the statistical genetic algorithm for solving nonlinear bilevel programming problems. The bilevel programming problem is firstly transformed into a single level problem by applying Karush-Kuhn-Tucker conditions, and then an efficient method based on the statistical genetic algorithm has been proposed for solving the single level problem with the complementarity constraints. By certain handling tech- nology, the simplified problem without the complementarity constraints can be gotten. If it is solvable then its optimal solution is a feasible solution of the original bilevel pro- gramming problem. At last, a global optimal solution of the original problem can be found among its feasible solutions. Numerical experiments on some benchmark problems show that the new algorithm can find global optimal solutions of the bilevel programming problems in a small number of fit- ness evaluations.
机译:本文提出了一种基于统计遗传算法的全局优化方法,用于求解非线性双层规划问题。首先通过应用Karush-Kuhn-Tucker条件将双层规划问题转化为单层问题,然后提出了一种基于统计遗传算法的有效方法来求解具有互补约束的单层问题。通过某些处理技术,可以得到没有互补约束的简化问题。如果可以解决,那么它的最佳解决方案就是解决原始双层编程问题的可行方案。最后,在可行解中找到了原始问题的全局最优解。对一些基准问题的数值实验表明,该新算法可以在少数适应性评估中找到双层规划问题的全局最优解。

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