Salimian Sina, Mousavi Seyed Meysam
Department of Industrial Engineering, Shahed University, Tehran, Iran.
Arab J Sci Eng. 2023;48(5):7005-7017. doi: 10.1007/s13369-022-07168-8. Epub 2022 Sep 6.
Coronavirus diseases 2019 (COVID-19) pandemic is an essential challenge to the health and safety of people, medical members, and treatment systems worldwide. Digital technologies (DTs) have been universally introduced to improve the treatment of patients during the pandemic. Nevertheless, only a few governments have been partly successful in executing the DT strategies. In this regard, it is critical to demonstrate a suitable strategy for the governments. This problem is built based on the experts' opinions with some conflicting criteria to evaluate various types of alternatives. Hence, this research presents a new multi-criteria decision-making (MCDM) model under uncertain conditions. For this reason, interval-valued intuitionistic fuzzy sets (IVIFSs) are employed to help decision-makers (DMs) evaluate in a broader area and cope with uncertain information. Moreover, a new extended weighting method based on weighted distance-based approximation (WDBA) and a new combined ranking approach are proposed to determine the DMs' weights and rank the alternatives under IVIF conditions. The developed weighting method is constructed based on computing the DMs' weights with objective criteria weights. Furthermore, a new ranking approach is proposed by obtaining two ranking indexes separately: The first and second ranking indexes are calculated according to the positive and negative ideal solutions distances and the nature of criteria weights, respectively. Afterward, the final values of rankings are computed by considering a new aggregating procedure. The results of the proposed model represent the first alternative as the best strategy. Comparisons between the IVIF-TOPSIS and IVIF-VIKOR methods are also provided to investigate the proposed model to determine the rankings of main alternatives. Sensitivity analyses are conducted to check the reliability and the robustness of the model. For this purpose, criteria weights are analyzed to compute the dependencies' degree of the new extended weighting method. The dependencies of the ranking model are discussed on the criteria weights as well.
2019年冠状病毒病(COVID-19)大流行是对全球人民、医务人员和治疗系统的健康与安全的一项重大挑战。在大流行期间,数字技术(DTs)已被广泛应用于改善患者的治疗。然而,只有少数政府在实施数字技术战略方面取得了部分成功。在这方面,为政府展示一个合适的战略至关重要。这个问题是基于专家意见构建的,有一些相互冲突的标准来评估各种类型的替代方案。因此,本研究提出了一种在不确定条件下的新型多准则决策(MCDM)模型。为此,采用区间值直觉模糊集(IVIFSs)来帮助决策者(DMs)在更广泛的范围内进行评估,并处理不确定信息。此外,还提出了一种基于加权距离逼近(WDBA)的新型扩展加权方法和一种新的组合排序方法,以确定决策者的权重并在IVIF条件下对替代方案进行排序。所开发的加权方法是基于用客观准则权重计算决策者的权重构建的。此外,通过分别获得两个排序指标提出了一种新的排序方法:第一个和第二个排序指标分别根据正理想解和负理想解的距离以及准则权重的性质来计算。然后,通过考虑一种新的聚合程序来计算最终的排序值。所提出模型的结果表明第一个替代方案是最佳策略。还提供了IVIF-TOPSIS和IVIF-VIKOR方法之间的比较,以研究所提出的模型来确定主要替代方案的排名。进行敏感性分析以检查模型的可靠性和稳健性。为此,分析准则权重以计算新型扩展加权方法的依赖程度。还讨论了排序模型在准则权重方面的依赖性。