Tirkolaee Erfan Babaee, Torkayesh Ali Ebadi
Department of Industrial Engineering, Istinye University, Istanbul, Turkey.
School of Business and Economics, RWTH Aachen University, 52072 Aachen, Germany.
Appl Intell (Dordr). 2022;52(12):13614-13633. doi: 10.1007/s10489-022-03335-4. Epub 2022 Mar 7.
Nowadays, healthcare waste management has become one of the significant environmental, health, and social problems. Due to population and urbanization growth and an increase in healthcare waste disposals according to the growing number of diseases and pandemics like COVID-19, disposal of healthcare waste has become a critical issue. Authorities in big cities require reliable decision support systems to empower them to make strategic decisions to provide safe disposal methods with a prospective vision. Since inappropriate healthcare waste management systems would definitely bring up dangerous environmental, social, health, and economic issues for every city. Therefore, this paper attempts to address the landfill location selection problem for healthcare waste using a novel decision support system. Novel decision support model integrates K-means algorithms with Stratified Best-Worst Method (SBWM) and a novel hybrid MARCOS-CoCoSo under grey interval numbers. The proposed decision support system considers waste generate rate in medical centers, future unforeseen but potential events, and uncertainty in experts' opinion to optimally locate required landfills for safe and economical disposal of dangerous healthcare waste. To investigate the feasibility and applicability of the proposed methodology, a real case study is performed for Mazandaran province in Iran. Our proposed methodology could efficiently deal with 79 medical centers within 4 clusters addressing 9 criteria to prioritize candidate locations. Moreover, the sensitivity analysis of weight coefficients is carried out to evaluate the results. Finally, the efficiency of the methodology is compared with several well-known methods and its high efficiency is demonstrated. Results recommend adherence to local rules and regulations, and future expansion potential as the top two criteria with importance values of 0.173 and 0.164, respectively. Later, best location alternatives are determined for each cluster of medical centers.
如今,医疗废物管理已成为重大的环境、健康和社会问题之一。由于人口增长、城市化进程加快,以及随着诸如COVID-19等疾病和大流行病数量的增加,医疗废物处置量也在上升,医疗废物的处置已成为一个关键问题。大城市的管理部门需要可靠的决策支持系统,以便能够做出战略决策,前瞻性地提供安全的处置方法。因为不当的医疗废物管理系统肯定会给每个城市带来危险的环境、社会、健康和经济问题。因此,本文试图利用一种新型决策支持系统来解决医疗废物填埋场选址问题。新型决策支持模型将K均值算法与分层最佳最差法(SBWM)以及灰色区间数下的新型混合MARCOS-CoCoSo相结合。所提出的决策支持系统考虑了医疗中心的废物产生率、未来不可预见但潜在的事件以及专家意见的不确定性,以优化确定所需填埋场的位置,实现危险医疗废物的安全经济处置。为了研究所提出方法的可行性和适用性,对伊朗马赞德兰省进行了一个实际案例研究。我们提出的方法能够有效地处理4个集群内的79个医疗中心,涉及9个标准,对候选地点进行优先级排序。此外,还进行了权重系数的敏感性分析以评估结果。最后,将该方法的效率与几种知名方法进行了比较,并证明了其高效性。结果表明,遵守当地法规和未来扩展潜力分别是重要性值为0.173和0.164的前两个标准。随后,为每个医疗中心集群确定了最佳选址方案。