Aydemir-Karadag Ayyuce
Department of Industrial Engineering, Faculty of Engineering, Cankaya University Main Campus, Yukariyurtcu Mah. Mimar Sinan Cad. No:4, 06790 Ankara, Turkey.
Arab J Sci Eng. 2022;47(3):3861-3876. doi: 10.1007/s13369-021-06106-4. Epub 2021 Sep 18.
There has been an unexpected increase in the amount of healthcare waste during the COVID-19 pandemic. Managing healthcare waste is vital, as improper practices in the waste system can lead to the further spread of the virus. To develop effective and sustainable waste management systems, decisions in all processes from the source of the waste to its disposal should be evaluated together. Strategic decisions involve locating waste processing centers, while operational decisions deal with waste collection. Although the periodic collection of waste is used in practice, it has not been studied in the relevant literature. This paper integrates the periodic inventory routing problem with location decisions for designing healthcare waste management systems and presents a bi-objective mixed-integer nonlinear programming model that minimizes operating costs and risk simultaneously. Due to the complexity of the problem, a two-step approach is proposed. The first stage provides a mixed-integer linear model that generates visiting schedules to source nodes. The second stage offers a Bi-Objective Adaptive Large Neighborhood Search Algorithm (BOALNS) that processes the remaining decisions considered in the problem. The performance of the algorithm is tested on several hypothetical problem instances. Computational analyses are conducted by comparing BOALNS with its other two versions, Adaptive Large Neighborhood Search Algorithm and Bi-Objective Large Neighborhood Search Algorithm (BOLNS). The computational experiments demonstrate that our proposed algorithm is superior to these algorithms in several performance evaluation metrics. Also, it is observed that the adaptive search engine increases the capability of BOALNS to achieve high-quality Pareto-optimal solutions.
在新冠疫情期间,医疗废物的数量意外增加。管理医疗废物至关重要,因为废物系统中的不当做法可能导致病毒进一步传播。为了开发有效且可持续的废物管理系统,应综合评估从废物源头到处置的所有流程中的决策。战略决策涉及确定废物处理中心的位置,而运营决策则涉及废物收集。尽管在实践中采用了定期收集废物的方式,但相关文献中尚未对其进行研究。本文将定期库存路径问题与选址决策相结合,以设计医疗废物管理系统,并提出了一个双目标混合整数非线性规划模型,该模型可同时最小化运营成本和风险。由于问题的复杂性,提出了一种两步法。第一阶段提供一个混合整数线性模型,用于生成前往源节点的访问计划。第二阶段提供一种双目标自适应大邻域搜索算法(BOALNS),用于处理该问题中考虑的其余决策。该算法的性能在几个假设的问题实例上进行了测试。通过将BOALNS与其另外两个版本,即自适应大邻域搜索算法和双目标大邻域搜索算法(BOLNS)进行比较,进行了计算分析。计算实验表明,我们提出的算法在几个性能评估指标上优于这些算法。此外,还观察到自适应搜索引擎提高了BOALNS获得高质量帕累托最优解的能力。