Multi-objective mathematical models to resolve parallel machine scheduling problems with multiple resources

Q3 Decision Sciences Yugoslav Journal of Operations Research Pub Date : 2023-01-01 DOI:10.2298/yjor221215008k
Salma Kanoun, B. Jerbi, H. Kamoun, Lobna Kallel
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Abstract

Mathematical programming, and above all, the multi-objective scheduling problems stand as remarkably versatile tools, highly useful for optimizing the health care services. In this context, the present work is designed to put forward two-fold multi-objective mixed integer linear programs, simultaneously integrating the objectives of minimizing the patients? total waiting and flow time, while minimizing the doctors' work-load variations. For this purpose, the three major health-care system intervening actors are simultaneously considered, namely, the patients, doctors and machines. To the best of our knowledge, such an issue does not seem to be actually addressed in the relevant literature. To this end, we opt for implementing an appropriate lexicographic method, whereby, effective solutions enabling to minimize the performance of two-objective functions could be used to solve randomly generated small cases. Mathematical models of our study have been resolved using the CPLEX software. Then, results have been comparatively assessed in terms of both objectives and CPU times. A real laser-treatment case study, involving a set of diabetic retinopathy patients in the ophthalmology department in Habib Bourguiba Hospital in Sfax, Tunisia, helps in illustrating the effective practicality of our advanced approach. To resolve the treated problem, we use three relevant heuristics which have been compared to the first-come first-served rule. We find that the program based on our second formulation with time-limit provided the best solution in terms of total flow time.
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多目标数学模型求解多资源并行机器调度问题
数学规划,尤其是多目标调度问题,是一种非常通用的工具,对优化医疗服务非常有用。在此背景下,本工作旨在提出双重多目标混合整数线性规划,同时整合患者数量最少的目标。总等待和流动时间,同时尽量减少医生的工作量变化。为此目的,同时考虑了医疗保健系统的三个主要干预行为者,即患者、医生和机器。据我们所知,这一问题似乎并没有在相关文献中得到解决。为此,我们选择实现一种适当的词典编纂方法,从而使双目标函数的性能最小化的有效解决方案可以用于解决随机生成的小案例。使用CPLEX软件对我们研究的数学模型进行了求解。然后,根据目标和CPU时间对结果进行比较评估。一个真实的激光治疗案例研究,涉及突尼斯斯法克斯Habib Bourguiba医院眼科的一组糖尿病视网膜病变患者,有助于说明我们先进方法的有效实用性。为了解决所处理的问题,我们使用了三种相关的启发式方法,这些启发式方法与先到先得规则进行了比较。我们发现基于我们的第二种有时限公式的方案在总流时间方面提供了最佳的解决方案。
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来源期刊
Yugoslav Journal of Operations Research
Yugoslav Journal of Operations Research Decision Sciences-Management Science and Operations Research
CiteScore
2.50
自引率
0.00%
发文量
14
审稿时长
24 weeks
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