Optimizing a multi-objective master surgical scheduling under probabilistic length of stay and demand uncertainty

IF 1.4 4区 工程技术 Q2 ENGINEERING, MULTIDISCIPLINARY Scientia Iranica Pub Date : 2023-09-20 DOI:10.24200/sci.2023.59427.6248
Mohammad Ebrahimi, Arezoo Atighehchian, Majid Esmaelian
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Abstract

The Master surgical scheduling (MSS) program is used at the tactical level of operating room scheduling, and its optimal creation can reduce the waiting queue of patients, as well as hospital costs. The patients’ length of stay (LOS) has a great impact on the downstream resources management. The uncertain nature of LOS and surgeries demand increases the challenges of MSS creation. The aim of the article is to determine the MSS program integrated with combination of surgical operations of each block of the operating rooms. For this purpose, a novel mathematical model was proposed for multi-objective MSS problems with a probabilistic LOS. Then, the chance-constrained programming method was employed to cope with the uncertain demands. The ε-constraint method was used for small-scale problems. Moreover, two metaheuristic algorithms including the multi-objective gray wolf optimizer (MOGWO) and the non-dominated sorting genetic algorithm-II (NSGAII) were designed to deal with large-scale problems. Based on the results, the MOGWO outperforms the NSGAII in terms of both the MID measure and the run time. The sensitivity analysis on the capacity of the wards parameter at different levels of demand uncertainty was performed to help managers to decide about the appropriate capacity of the wards.
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基于概率住院时间和需求不确定性的多目标主手术调度优化
主手术调度(MSS)程序用于手术室调度的战术层面,其优化创建可以减少患者的等待队列,降低医院成本。患者的住院时间(LOS)对下游资源管理有很大的影响。LOS和手术需求的不确定性增加了MSS创建的挑战。本文的目的是确定与各块手术室手术相结合的MSS方案。为此,提出了一种新的具有概率LOS的多目标MSS问题的数学模型。然后,采用机会约束规划方法处理不确定需求。ε-约束方法用于求解小尺度问题。此外,设计了多目标灰狼优化算法(MOGWO)和非支配排序遗传算法- ii (NSGAII)两种元启发式算法来处理大规模问题。基于结果,MOGWO在MID度量和运行时间方面都优于NSGAII。通过对不同需求不确定性水平下病房容量参数的敏感性分析,帮助管理人员确定合适的病房容量。
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来源期刊
Scientia Iranica
Scientia Iranica 工程技术-工程:综合
CiteScore
2.90
自引率
7.10%
发文量
59
审稿时长
2 months
期刊介绍: The objectives of Scientia Iranica are two-fold. The first is to provide a forum for the presentation of original works by scientists and engineers from around the world. The second is to open an effective channel to enhance the level of communication between scientists and engineers and the exchange of state-of-the-art research and ideas. The scope of the journal is broad and multidisciplinary in technical sciences and engineering. It encompasses theoretical and experimental research. Specific areas include but not limited to chemistry, chemical engineering, civil engineering, control and computer engineering, electrical engineering, material, manufacturing and industrial management, mathematics, mechanical engineering, nuclear engineering, petroleum engineering, physics, nanotechnology.
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