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A Cross-Entropy Based Population Learning Algorithm for Multi-mode Resource-Constrained Project Scheduling Problem with Minimum and Maximum Time Lags

机译:具有最小和最大时滞的多模式资源受限项目调度问题的基于交叉熵的种群学习算法

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The multi-mode resource-constrained project scheduling problem with minimum and maximum time lags is considered in the paper. An activity is performed in a mode, which determines the demand of renewable and nonre-newable resources required for its processing and minimum and maximum time lags between adjacent activities. The goal is to find a mode assignment to the activities and their start times such that all constraints are satisfied and the project duration is minimized. Because the problem is NP-hard a population-learning algorithm (PLA2) is proposed to tackle the problem. PLA2 is a population-based approach which takes advantage of the features common to the social education system rather than to the evolutionary processes. The proposed approach perfectly suits for multi-agent systems because it is based on the idea of constructing a hybrid algorithm integrating different optimization techniques complementing each other and producing a synergetic effect. Results of the experiment were compared to the results published in Project Scheduling Problem Library.
机译:本文考虑了具有最小和最大时滞的多模式资源受限项目调度问题。活动以某种方式执行,该方式确定对其进行处理所需的可再生和不可再生资源的需求以及相邻活动之间的最小和最大时间延迟。目的是找到对活动及其开始时间的模式分配,以便满足所有约束并最小化项目持续时间。由于该问题是NP难题,因此提出了一种人口学习算法(PLA2)来解决该问题。 PLA2是一种基于人群的方法,它利用了社会教育系统而非进化过程所共有的功能。所提出的方法非常适合多智能体系统,因为它基于构造混合算法的思想,该算法整合了彼此互补的不同优化技术并产生协同效应。将实验结果与“项目计划问题库”中发布的结果进行了比较。

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