区间线性双层规划问题的一种高效遗传算法

Hecheng Li, Lei Fang
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引用次数: 3

摘要

本文研究一类区间线性双层规划问题,其中领导者和追随者的部分或全部目标函数系数用区间表示。求解这类问题的重点是在给定的区间内取不同目标系数时,确定最优取值范围。为了得到这类问题的最优解和最差最优解,提出了一种高效的遗传算法。首先,采用实数编码方案将下层客观系数编码为个体,并以相对区间作为遗传算法的搜索空间;其次,对于每个编码个体,得到一个简化的区间线性双层规划,其中区间系数简单地表示为上层目标函数;最后,将简化后的问题进一步分解为两个不带区间系数的线性双层规划,利用线性规划的最优性理论进行求解。将最优值作为适应度值,得到最佳和最差最优解。为了说明所提算法的有效性,算例表明了该算法的可行性和鲁棒性。
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An Efficient Genetic Algorithm for Interval Linear Bilevel Programming Problems
This paper deals with a class of interval linear bilevel programming problems, in which some or all of the leader's and follower's objective function coefficients are specified in terms of intervals. The focus of solving this class of problems is on determining the optimal value range when different coefficients of objectives are taken in intervals given. In order to obtain the best and the worst optimal solutions to this class of problems, an efficient genetic algorithm is developed. Firstly, the objective coefficients of the lower level are encoded as individuals using real coding scheme, and the relative intervals are taken as the search space of the genetic algorithm. Secondly, for each encoded individual, a simplified interval linear bilevel program is obtained, in which interval coefficients are simply in the upper level objective function. Finally, the simplified problem is further divided into two linear bilevel programs without interval coefficients and solved by using the optimality theory of linear programming. The optimal values are taken as fitness values, by which the best and the worst optimal solutions can be obtained. In order to illustrate the efficiency of the proposed algorithm, two examples are solved and the results show that the algorithm is feasible and robust.
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