基于变异交叉遗传算法的人-工分配优化

Sulaman Ahmad Naz, M. Tanweer, Azhar Dilshad, M. Sikander
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引用次数: 0

摘要

工作分配问题一直是世界上众多知名学者研究的焦点。然而,由于这个问题被认为是np完全的,因此仍然不可能找到在多项式时间内解决上述问题的确定数量的步骤。在这个范例中,研究界专注于开发和设计算法,以最少的计算步骤产生结果。因此,毫无疑问,有一个很好的机会来检查以前开发的算法的有效性,并将它们与其他研究科学家开发的解决方案进行比较。本文提出了标准遗传算法(GA)的一种新变体,即带突变交叉的遗传算法(GAMC)来解决这一问题,并对其进行了实现和结果分析。该方法的关键是提出了突变交叉的思想,以避免标准遗传算法中使用的交叉产生的不可行的子代,从而以较少的计算步骤提供最优结果。
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Person-Job Allocation Optimization using Genetic Algorithm with Mutated-Crossover (GAMC)
The Job Allocation/Assignment Problem has been a pivot of research for numerous well-known researchers around the world. However, as this problem is considered to be NP-complete, it is still not possible to find a deterministic number of steps that solve the said problem within a polynomial time. In this paradigm, the research community is focused to develop and design algorithms that produce results with minimum computational steps. As a result, without any doubt, there is a great opportunity to examine the effectiveness of previously developed algorithms and compare them with solutions developed by other research scientists. In this paper, we have proposed a new variant of the standard Genetic Algorithm (GA) referred to as the Genetic Algorithm with Mutated-Crossover (GAMC) to solve this problem, implement it and analyze the results. The key point in this approach is to present the idea of Mutated-Crossover to avoid infeasible children generated by the crossover used in standard GA that has provided optimal results with lesser computational steps.
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