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首页> 外文期刊>International Journal of Production Research >A bi-objective robust resource allocation model for the RCPSP considering resource transfer costs
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A bi-objective robust resource allocation model for the RCPSP considering resource transfer costs

机译:考虑资源转移成本的RCPSP的双目标稳健资源分配模型

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摘要

Resource allocation is one of the core issues in project scheduling to ensure the effective use of scare renewable resources, and has been regularly encountered in production systems in the manufacturing and service industries. The transfers of renewable resources between activities generally incur certain scheduling costs and affect the robustness of a certain schedule in an uncertain environment. To address this issue, a bi-objective optimisation model is proposed to make the resource transfer decisions, which aims to minimise the transfer cost and maximise solution robustness in the presence of activity duration variability. The proposed model employs a novel resource-oriented flow formulation that is different from those of the previous literature. A NSGA-II and a Pareto simulated annealing (PSA) algorithm have been applied as the solution methodologies. Besides, the effectiveness of the metaheuristics are evaluated in comparison with a -constraint method. In detail, the algorithms are carried out on a set of benchmarks and are compared to test their efficiencies based on four performance metrics: number of non-dominated solutions, general distance, hypervolume and spacing. Finally, a case study of a real project further indicates that the suggested model and algorithms are applicable and beneficial to the problem in practice.
机译:资源分配是项目调度中的核心问题之一,以确保有效使用恐慌可再生资源,并在制造业和服务行业的生产系统中定期遇到。活动之间的可再生资源转移通常会产生某些调度成本并影响不确定环境中某些时间表的稳健性。为了解决这个问题,提出了一种双目标优化模型来进行资源转移决策,旨在最大限度地减少转移成本并在活动持续时间变异性存在下最大化解决方案鲁棒性。所提出的模型采用了一种不同的资源导向的流制构,与先前文献的流动制定不同。已经应用了NSGA-II和帕累托模拟退火(PSA)算法作为解决方案方法。此外,与截止方法相比,评估了化学学的有效性。详细地,算法在一组基准上进行,并将其基于四个性能度量测试其效率,以测试它们的效率:非主导解决方案的数量,一般距离,超级和间距。最后,对真实项目的案例研究进一步表明建议的模型和算法适用,并有利于在实践中的问题。

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