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A decomposition-based stochastic programming approach for the project scheduling problem under time/cost trade-off settings and uncertain durations

机译:基于时间/成本权衡设置和不确定工期的项目调度问题的基于分解的随机规划方法

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Resource allocation in project networks allows for the control of the processing time of an activity under time-cost tradeoff settings. In practice, project decisions are made in advance when activity durations are still highly uncertain. Given an activity-on-node project network and a set of execution modes for each activity, we consider the problem of deciding how and when to execute each activity to minimize project completion time or total cost with respect to captured activity durations. The inherent stochasticity is represented using a set of discrete scenarios in which each scenario is associated with a probability of occurrence and a realization of activity durations. In this paper, we propose a path-based two-stage stochastic integer programming approach in which the execution modes are determined in the first stage while the second stage performs activity scheduling according to the realizations of activity durations, hence, providing flexibility in the scheduling process at subsequent stages. The solution methodology is based on a decomposition algorithm which has been implemented and widely tested using a large number of test instances of varying size and uncertainty. The reported computational results demonstrate that the proposed algorithm converges fast to the optimal solution and present the benefits of using the stochastic model as opposed to the traditional deterministic model that considers only expected values of activity durations.
机译:项目网络中的资源分配允许在时间成本权衡设置下控制活动的处理时间。实际上,当活动持续时间仍然非常不确定时,项目决策是提前做出的。给定一个节点上的活动项目网络和每个活动的一组执行模式,我们考虑决定如何以及何时执行每个活动的问题,以最大程度地减少项目完成时间或相对于捕获的活动持续时间的总成本。内在的随机性是使用一组离散的场景来表示的,其中每个场景都与发生概率和活动持续时间的实现相关联。在本文中,我们提出了一种基于路径的两阶段随机整数规划方法,该方法在第一阶段确定执行模式,而第二阶段根据活动持续时间的实现执行活动调度,从而在调度中提供灵活性在后续阶段进行处理。解决方案方法基于一种分解算法,该分解算法已使用各种大小和不确定性的大量测试实例进行了实施并进行了广泛测试。报告的计算结果表明,所提出的算法可以快速收敛到最优解,并且相对于仅考虑活动持续时间的预期值的传统确定性模型,该方法具有使用随机模型的优势。

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