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Stochastic simulation-based genetic algorithm for chance constrained fractional programming problem

机译:基于随机模拟的遗传算法求解机会约束分数规划问题

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The field of chance constrained fractional programming (CCFP) has grown into a huge area over the last few years because of its applications in real life problems. Therefore, finding a solution technique to it is of paramount importance. The solution technique so far has been deriving deterministic equivalence of CCFP with random coefficients in the objective function and/or constraints and is possible only if random variable follows some specified distribution with known parameters. This paper presents a stochastic simulation-based genetic algorithm (GA) for solving CCFP problems, where random variables used can follow any continuous distribution. The solution procedure is tested on a few numerical examples. The results demonstrate that the suggested approach could provide researchers a promising way for solving various types of chance constrained programming (CCP) problems.
机译:机会受限分数编程(CCFP)领域由于在现实生活中的应用而在过去几年中已发展成广阔的领域。因此,找到一种解决方法至关重要。到目前为止,求解技术一直在推导CCFP与目标函数和/或约束中具有随机系数的确定性等价关系,并且仅当随机变量遵循具有已知参数的某些指定分布时才有可能。本文提出了一种用于解决CCFP问题的基于随机模拟的遗传算法(GA),其中使用的随机变量可以遵循任何连续分布。求解程序在几个数字示例上进行了测试。结果表明,该建议的方法可以为研究人员提供解决各种类型的机会受限编程(CCP)问题的有前途的方法。

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