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Genetic based fuzzy goal programming for multiobjective chance constrained programming problems with continuous random variables

机译:具有连续随机变量的多目标机会约束规划问题的基于遗传的模糊目标规划

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摘要

Solution procedure consisting of fuzzy goal programming and stochastic simulation-based genetic algorithm is presented, in this article, to solve multiobjective chance constrained programming problems with continuous random variables in the objective functions and in chance constraints. The fuzzy goal programming formulation of the problem is developed first using the stochastic simulation-based genetic algorithm. Without deriving the deterministic equivalent, chance constraints are used within the genetic process and their feasibilities are checked by the stochastic simulation technique. The problem is then reduced to an ordinary chance constrained programming problem. Again using the stochastic simulation-based genetic algorithm, the highest membership value of each of the membership goal is achieved and thereby the most satisfactory solution is obtained. The proposed procedure is illustrated by a numerical example.
机译:提出了由模糊目标规划和基于随机模拟的遗传算法组成的求解过程,以求解目标函数和机会约束中具有连续随机变量的多目标机会约束规划问题。首先使用基于随机模拟的遗传算法来开发问题的模糊目标规划公式。在不推导出确定性等价物的情况下,在遗传过程中使用机会约束,并通过随机模拟技术检查其可行性。然后将该问题简化为一个普通的机会约束编程问题。再次使用基于随机模拟的遗传算法,可以实现每个成员资格目标的最高成员资格值,从而获得最令人满意的解决方案。数值示例说明了所建议的过程。

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