Department of Mathematics, Faculty of Physical and Numerical Sciences, Abdul Wali Khan University, Mardan, Khyber Pakhtunkhwa, Pakistan.
Department of Computer Science, Faculty of Applied Sciences, Taiz University, Taiz 6803, Yemen.
Comput Intell Neurosci. 2022 Jan 31;2022:4488576. doi: 10.1155/2022/4488576. eCollection 2022.
The intuitionistic fuzzy set (IFS) and bipolar fuzzy set (BFS) are all effective models to describe ambiguous and incomplete cognitive knowledge with membership, non-membership, negative membership, and hesitancy sections. But in daily life problems, there are some situations where we cannot apply the ordinary models of IFS and BFS, separately. Hence, there is a need to combine both the models of IFS and BFS into a single one. A tripolar fuzzy set (TFS) is a generalization of IFS and BFS. In circumstances where BFS and IFS models cannot be used individually, a tripolar fuzzy model is more dependable and efficient. Further, the IFS and BFS models are reduced to corollaries due to the proposed model of TFS. For this purpose in this article, we first consider some novel operations on tripolar fuzzy information. These operations are formulated on the basis of well-known Dombi T-norm and T-conorm, and the desirable properties are discussed. By applying the Dombi operations, arithmetic and geometric aggregation operators of TFS are proposed, and we introduce the concepts of a TF-Dombi weighted average (TFDWA) operator, a TF-Dombi ordered weighted average (TFDOWA) operator, and a TF-Dombi hybrid weighted (TFDHW) operator and explore their fundamental features including idempotency, boundedness, monotonicity, and others. In the second part, we propose TF-Dombi weighted geometric (TFDWG) operator, TF-Dombi ordered weighted geometric (TFDOWG) operator, and TF-Dombi hybrid geometric (TFDHG) operator. The features and specific cases of the mentioned operators are examined. Enterprise resource planning (ERP) is a management and integration approach that organizations employ to manage and develop many aspects of their operations. The study's primary contribution is to employ TFS to create certain decision-making strategies for the selection of optimal ERP systems. The proposed operators are then used to build several techniques for solving multiattribute decision-making (MADM) issues with TF information. Finally, an example of ERP system selection is investigated to demonstrate that the techniques suggested are trustworthy and realistic.
直觉模糊集 (IFS) 和双极模糊集 (BFS) 都是描述具有隶属度、非隶属度、负隶属度和犹豫度部分的模糊和不完整认知知识的有效模型。但是在日常生活问题中,有些情况下我们不能分别应用 IFS 和 BFS 的普通模型。因此,需要将 IFS 和 BFS 的模型合并为一个。三体模糊集 (TFS) 是 IFS 和 BFS 的推广。在 BFS 和 IFS 模型不能单独使用的情况下,三体模糊模型更加可靠和高效。此外,由于提出的 TFS 模型,IFS 和 BFS 模型简化为推论。为此,本文首先考虑三体模糊信息的一些新运算。这些运算基于著名的 Dombi T-范数和 T-模,讨论了其理想性质。通过应用 Dombi 运算,提出了 TFS 的算术和几何聚合算子,并引入了 TF-Dombi 加权平均 (TFDWA) 算子、TF-Dombi 有序加权平均 (TFDOWA) 算子和 TF-Dombi 混合加权 (TFDHW) 算子的概念,并探讨了它们的基本特征,包括幂等性、有界性、单调性等。在第二部分中,我们提出了 TF-Dombi 加权几何 (TFDWG) 算子、TF-Dombi 有序加权几何 (TFDOWG) 算子和 TF-Dombi 混合几何 (TFDHG) 算子。研究了这些算子的特点和特例。企业资源规划 (ERP) 是组织用来管理和发展其运营多个方面的管理和集成方法。本研究的主要贡献是使用 TFS 为最佳 ERP 系统的选择创建特定的决策策略。然后,使用这些算子构建了几种基于 TF 信息的多属性决策 (MADM) 问题的求解技术。最后,研究了一个 ERP 系统选择的实例,以证明所提出的技术是可靠和现实的。