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Linguistic neutrosophic power Muirhead mean operators for safety evaluation of mines

机译:语言中性学功率Muirhead均值均衡矿井安全评估

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摘要

Safety is the fundamental guarantee for the sustainable development of mining enterprises. As the safety evaluation of mines is a complex system engineering project, consistent and inconsistent, even hesitant evaluation information may be contained simultaneously. Linguistic neutrosophic numbers (LNNs), as the extensions of linguistic terms, are effective means to entirely and qualitatively convey such evaluation information with three independent linguistic membership functions. The aim of our work is to investigate several mean operators so that the safety evaluation issues of mines are addressed under linguistic neutrosophic environment. During the safety evaluation process of mines, many influence factors should be considered, and some of them may interact with each other. To this end, the Muirhead mean (MM) operators are adopted as they are powerful tools to deal with such situation. On the other hand, to diminish the impacts of irrational data provided by evaluators, the power average (PA) operators are under consideration. Thus, with the combination of MM and PA, the power MM operators and weighted power MM operators are proposed to aggregate linguistic neutrosophic information. Meanwhile, some key points and special cases are studied. The advantages of these operators are that not only the interrelations among any number of inputs can be reflected, but also the effects of unreasonable information can be reduced. Thereafter, a new linguistic neutrosophic ranking technique based on these operators is developed to evaluate the mine safety. Moreover, in-depth discussions are made to show the robust and flexible abilities of our method. Results manifest that the proposed method is successful in dealing with mine safety evaluation issues within linguistic neutrosophic circumstances.
机译:安全是矿业企业可持续发展的根本保障。由于对地雷的安全评估是复杂的系统工程项目,可以同时包含一致和不一致的,甚至犹豫不决的评估信息。作为语言术语的扩展,语言中性学数字(LNN)是完全和定性地传达三个独立语言隶属函数的评估信息的有效手段。我们的工作目的是调查几个平均运营商,以便在语言中性学环境下解决矿山的安全评估问题。在矿山的安全评估过程中,应考虑许多影响因素,其中一些可能互相互动。为此,采用Muirhead均值(mm)运算符,因为它们是处理这种情况的强大工具。另一方面,为了减少评估人员提供的非理性数据的影响,正在考虑功率平均值(PA)运营商。因此,利用MM和PA的组合,提出了功率MM操作员和加权功率MM操作员以聚合语言中性学信息。同时,研究了一些关键点和特殊情况。这些运营商的优点是,不仅可以反映任何数量输入之间的相互关系,而且可以减少不合理信息的影响。此后,开发了一种基于这些运营商的新语言中性学排名技术来评估矿井安全性。此外,进行了深入的讨论,以显示我们方法的稳健和灵活性。结果表明,所提出的方法在语言中性环境中处理矿井安全评估问题。

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