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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part H. Journal of Engineering in Medicine >Multi-objective integrated planning and scheduling model for operating rooms under uncertainty
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Multi-objective integrated planning and scheduling model for operating rooms under uncertainty

机译:不确定性下手术室的多目标综合规划和调度模型

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This article formulates the operating rooms considering several constraints of the real world, such as decision-making styles, multiple stages for surgeries, time windows for resources, and specialty and complexity of surgery. Based on planning, surgeries are assigned to the working days. Then, the scheduling part determines the sequence of surgeries per day. Moreover, an integrated fuzzy possibilistic–stochastic mathematical programming approach is applied to consider some sources of uncertainty, simultaneously. Net revenues of operating rooms are maximized through the first objective function. Minimizing a decision-making style inconsistency among human resources and maximizing utilization of operating rooms are considered as the second and third objectives, respectively. Two popular multi-objective meta-heuristic algorithms including Non-dominated Sorting Genetic Algorithm and Multi-Objective Particle Swarm Optimization are utilized for solving the developed model. Moreover, different comparison metrics are applied to compare the two proposed meta-heuristics. Several test problems based on the data obtained from a public hospital located in Iran are used to display the performance of the model. According to the results, Non-dominated Sorting Genetic Algorithm-II outperforms the Multi-Objective Particle Swarm Optimization algorithm in most of the utilized metrics. Moreover, the results indicate that our proposed model is more effective and efficient to schedule and plan surgeries and assign resources than manual scheduling.
机译:本文根据现实世界的若干约束,如决策方式,手术,资源时间窗的多个阶段以及手术的特殊和复杂性,制定了若干限制的手术室。基于规划,将手术分配给工作日。然后,调度部分确定每天的手术序列。此外,应用了集成模糊可能的 - 随机数学编程方法,以考虑一些不确定性来源。手术室的净收入通过第一个目标函数最大化。最小化人力资源的决策风格不一致,并最大限度地利用手术室被视为第二和第三目标。两个流行的多目标元 - 启发式算法包括非主导的分类遗传算法和多目标粒子群优化,用于解决开发的模型。此外,应用了不同的比较度量来比较两个提出的元启发式。基于位于伊朗的公用医院获得的数据的几个测试问题用于显示模型的性能。根据结果​​,非主导的分类遗传算法-II优于大多数利用度量的多目标粒子群优化算法。此外,结果表明,我们提出的模型更有效和有效地安排和计划手术,并将资源分配而不是手动调度。

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