基于q学习的双目标手术问题调度元启发式算法

Ruixue Zhang;Hui Yu;Adam Slowik;Kaizhou Gao
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引用次数: 0

摘要

随着医院对手术需求的不断增加,手术调度问题引起了广泛关注。本研究的重点是解决一个有准备时间的手术安排问题。首先,建立一个数学模型,使所有手术的最大完成时间(makespan)和患者等待时间同时最小化。疲劳作用的时间计入手术时间,这是医生长时间工作造成的。其次,对四种伴侣启发式算法进行了优化,以解决相关问题。设计了三种新的策略来提高初始解的质量。为了提高算法的收敛性,根据手术调度问题的特点,提出了7种局部搜索算子。第三,利用Q-learning在每次迭代中动态选择当前状态的最优局部搜索算子。最后,通过对比30个实例的实验结果,验证了基于q学习的局部搜索策略的有效性。在所有比较算法中,基于q学习的改进人工蜂群(ABC)局部搜索算法具有最好的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Q-Learning Based Meta-Heuristics for Scheduling Bi-Objective Surgery Problems with Setup Time
Since the increasing demand for surgeries in hospitals, the surgery scheduling problems have attracted extensive attention. This study focuses on solving a surgery scheduling problem with setup time. First, a mathematical model is created to minimize the maximum completion time (makespan) of all surgeries and patient waiting time, simultaneously. The time by the fatigue effect is included in the surgery time, which is caused by doctors' long working time. Second, four mate-heuristics are optimized to address the relevant problems. Three novel strategies are designed to improve the quality of the initial solutions. To improve the convergence of the algorithms, seven local search operators are proposed based on the characteristics of the surgery scheduling problems. Third, Q-learning is used to dynamically choose the optimal local search operator for the current state in each iteration. Finally, by comparing the experimental results of 30 instances, the Q-learning based local search strategy's effectiveness is verified. Among all the compared algorithms, the improved artificial bee colony (ABC) with Q-learning based local search has the best competitiveness.
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