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首页> 外文期刊>Computers & Industrial Engineering >Novel operational laws and power Muirhead mean operators of picture fuzzy values in the framework of Dempster-Shafer theory for multiple criteria decision making
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Novel operational laws and power Muirhead mean operators of picture fuzzy values in the framework of Dempster-Shafer theory for multiple criteria decision making

机译:Dempster-Shafer理论框架中多标准决策框架模糊值的小说法模糊值的动力学均值算子

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摘要

Two critical steps in multiple criteria decision making are to quantify the considered criteria and to evaluate the quantified criteria to determine desirable alternatives. An important tool for the first step is picture fuzzy value and a convincing way for the second step is to use aggregation operators. So far, a number of aggregation operators of picture fuzzy values have been presented. These operators have common advantages in providing satisfying generality in capturing the interactions of criteria and having the capability to reduce the influence of biased criterion values. But they sometimes produce unreasonable aggregation results due to a few undesirable properties of their applied operational laws. In this paper, the Dempster-Shafer theory is introduced into the picture fuzzy environment and a set of novel operational laws of picture fuzzy values in the framework of this theory are firstly developed. Then some power Muirhead mean operators of picture fuzzy values based on the developed operational laws are presented. On the basis of the presented operators, a method for solving the multiple criteria decision making problems with picture fuzzy values is proposed. This method is illustrated via a practical example and validated via quantitative and qualitative comparisons. The validation results suggest that the method can maintain the common advantages of the existing aggregation operators of picture fuzzy values and concurrently address their common limitations.
机译:多个标准决策中的两个关键步骤是量化所考虑的标准,并评估定量标准以确定所需的替代方案。第一步的一个重要工具是图像模糊值,第二步是使用聚合运算符的令人信服的方式。到目前为止,已经介绍了许多图片模糊值的聚合运算符。这些操作员具有共同的优势,在提供令人满意的普遍性方面,在捕获标准的相互作用和能力来降低偏置标准值的影响时。但由于其应用程序法律的一些不良属性,他们有时会产生不合理的聚合结果。在本文中,首先开发了在该理论的框架中引入了Dempster-Shafer理论,并在该理论的框架中引入了图片模糊环境的一组新的图像模糊值。然后,提出了一些基于发发的操作法的图片模糊值的一些功率Muirhead平均算子。基于所提出的运营商,提出了一种解决模糊值问题的多标准决策的方法。该方法通过实际示例说明并通过定量和定性比较验证。验证结果表明,该方法可以维护图片模糊值的现有聚合运算符的共同优势,并同时解决其共同限制。

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