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A new weighted mixed integer nonlinear model and FPND solution algorithm for RCPSP with multi-route work packages under fuzzy uncertainty

机译:具有模糊不确定性的多路径工作包的RCPSP新加权混合整数非线性模型和FPND解决方案算法

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摘要

Multiple routes of networks in fuzzy environments are essential issues in the project scheduling problems (PSPs) with resource constraints, fuzzy RCPSP-MR. Route assignment to flexible work package defined in a project activity network indicates more complexities in front of canonical PSP. Also, in the last few decades, considering uncertainties' concepts in project schedules have been essential and attracted the attention of researchers and project managers. Therefore, in this article, a new weighted mathematical model is presented under uncertainty conditions, and a new hybrid fuzzy approach is provided via two fuzzy primary methods. Then, a new four-part non-distinct (FPND) approach is proposed based on PSO, binary particle swarm optimization (BPSO) and genetic algorithm (GA) to minimize project end cost. In this approach as the first part and to generate high-quality primary routes for flexible work package, six different rules are investigated, and the appropriate route is chosen. In the second part, initial solutions are generated via PSO. Then, in the third part, initial solutions are improved based on GA. Finally, in the last part, assigned routes are improved with binary PSO. To appraise the effectiveness of the presented approach, influential parameters are tuned by Taguchi method. Finally, to evaluate the performance of FPND, 70 numerical examples are designed in different dimensions, and results are compared with other well-known algorithms.
机译:模糊环境中的多个网络路由是项目调度问题(PSP)的重要问题,具有资源约束,模糊RCPSP-MR。路由分配给项目活动网络中定义的灵活工作包,指示规范PSP前面的复杂性更多。此外,在过去的几十年中,考虑到项目时间表的不确定性的概念一直是必不可少的,并引起了研究人员和项目经理的注意。因此,在本文中,在不确定条件下提出了一种新的加权数学模型,并通过两个模糊的主要方法提供了一种新的混合模糊方法。然后,基于PSO,二进制粒子群优化(BPSO)和遗传算法(GA)来提出新的四部分非不同(FPND)方法,以最大限度地减少项目最终成本。在这种方法中作为第一部分并为灵活的工作包生成高质量的主要路线,研究了六种不同的规则,并选择适当的路线。在第二部分中,通过PSO生成初始解决方案。然后,在第三部分中,基于GA改善初始解决方案。最后,在最后一部分中,使用二进制PSO得到了分配的路由。为了评估所提出的方法的有效性,Taguchi方法调整有影响的参数。最后,为了评估FPND的性能,70个数值示例以不同的尺寸设计,并与其他众所周知的算法进行比较。

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