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Multi-objective optimization for repetitive scheduling under uncertainty

机译:不确定条件下重复性调度的多目标优化

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Purpose The purpose of this paper is to present a newly developed multi-objective optimization method for the time, cost and work interruptions for repetitive scheduling while considering uncertainties associated with different input parameters. Design/methodology/approach The design of the developed method is based on integrating six modules: uncertainty and defuzzification module using fuzzy set theory, schedule calculations module using the integration of linear scheduling method (LSM) and critical chain project management (CCPM), cost calculations module that considers direct and indirect costs, delay penalty, and work interruptions cost, multi-objective optimization module using Evolver (c) 7.5.2 as a genetic algorithm (GA) software, module for identifying multiple critical sequences and schedule buffers, and reporting module. Findings For duration optimization that utilizes fuzzy inputs without interruptions or adding buffers, duration and cost generated by the developed method are found to be 90 and 99 percent of those reported in the literature, respectively. For cost optimization that utilizes fuzzy inputs without interruptions, project duration generated by the developed method is found to be 93 percent of that reported in the literature after adding buffers. The developed method accelerates the generation of optimum schedules. Originality/value Unlike methods reported in the literature, the proposed method is the first multi-objective optimization method that integrates LSM and the CCPM. This method considers uncertainties of productivity rates, quantities and availability of resources while utilizing multi-objective GA function to minimize project duration, cost and work interruptions simultaneously. Schedule buffers are assigned whether optimized schedule allows for interruptions or not. This method considers delay and work interruption penalties, and bonus payments.
机译:目的本文的目的是提出一种新的针对时间,成本和工作中断的多目标优化方法,用于重复性计划,同时考虑与不同输入参数相关的不确定性。设计/方法/方法所开发方法的设计基于集成六个模块:使用模糊集理论的不确定性和反模糊化模块,使用线性调度方法(LSM)和关键链项目管理(CCPM)集成的调度计算模块,成本考虑直接和间接成本,延误惩罚和工作中断成本的计算模块,使用Evolver(c)7.5.2作为遗传算法(GA)软件的多目标优化模块,用于识别多个关键序列和计划缓冲区的模块,以及报告模块。结果对于使用模糊输入而不中断或添加缓冲区的持续时间优化,发现由开发方法生成的持续时间和成本分别是文献中报道的90%和99%。对于利用模糊输入而不中断的成本优化,发现通过开发方法生成的项目工期为文献中报告的添加缓冲区后的工期的93%。所开发的方法加快了最佳计划的生成。原创性/价值与文献中报道的方法不同,所提出的方法是第一个将LSM和CCPM集成在一起的多目标优化方法。该方法考虑了生产率,数量和资源可用性的不确定性,同时利用多目标GA函数来最小化项目工期,成本和工作中断。无论优化的时间表是否允许中断,都将分配时间表缓冲区。此方法考虑了延迟和工作中断的罚款以及奖金。

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