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Exponential distribution-based genetic algorithm for solving mixed-integer bilevel programming problems

机译:基于指数分布的遗传算法求解混合整数双层规划问题

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Two classes of mixed-integer nonlinear bilevel programming problems are discussed. One is that the follower's functions are separable with respect to the follower's variables, and the other is that the follower's functions are convex if the follower's variables are not restricted to integers. A genetic algorithm based on an exponential distribution is proposed for the aforementioned problems. First, for each fixed leader's variable x, it is proved that the optimal solution y of the follower's mixed-integer programming can be obtained by solving associated relaxed problems, and according to the convexity of the functions involved, a simplified branch and bound approach is given to solve the follower's programming for the second class of problems. Furthermore, based on an exponential distribution with a parameter A, a new crossover operator is designed in which the best individuals are used to generate better offspring of crossover. The simulation results illustrate that the proposed algorithm is efficient and robust.
机译:讨论了两类混合整数非线性双层规划问题。一个是跟随者的函数相对于跟随者的变量是可分离的,另一个是如果跟随者的变量不限于整数,则跟随者的函数是凸的。针对上述问题,提出了一种基于指数分布的遗传算法。首先,对于每个固定的领导者变量x,证明可以通过解决相关联的松弛问题来获得跟随者的混合整数规划的最优解y,并且根据所涉及函数的凸性,采用简化的分支定界方法。用于解决跟随者的第二类问题的编程。此外,基于具有参数A的指数分布,设计了一种新的交叉算子,其中使用最佳个体生成更好的交叉子代。仿真结果表明,该算法是有效且鲁棒的。

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