A review of fuzzy logic analysis in COVID-19 pandemic and a new technique through extended hexagonal intuitionistic fuzzy number in analysis of COVID-19

Q3 Mathematics
Laxmi Rathour , Vinay Singh , M.K. Sharma , Nitesh Dhiman , Vishnu Narayan Mishra
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引用次数: 0

Abstract

Several intuitionistic fuzzy logic approaches have been used for the diagnosis of COVID-19 patients. We have developed a fuzzy rule base system for the detection of COVID-19 patients. In this study, we have considered six major parameters based symmetric/asymmetric, linear/non-linear hexagonal intuitionistic fuzzy numbers (HIFN) for the input-output factors of the problem. In real-life diagnosis problems, such as assessing COVID-19 symptoms, applying symmetric and asymmetric, linear and non-linear hexagonal intuitionistic fuzzy numbers allows for a more accurate representation of patient conditions. Centre of area method is used for the defuzzied value of the hexagonal intuitionistic fuzzy parameters. HIFN are used because they provide a detailed representation of uncertainty, incorporating both membership and non-membership degrees through six parameters. This flexibility allows for nuanced modelling of real-world scenarios, such as medical diagnoses, where data often includes ambiguity. Then the HIFN approach is used for obtaining the compromising and superlative solution in the diagnostic process of COVID-19 patients. To figure out the adaptability of the proposed HIFN based technique, a comparative study is also introduced. The originality, limitations, future aspects and advantages of using this HIFN based technique is also discussed in this article.
COVID-19 大流行病中的模糊逻辑分析综述,以及通过扩展六边形直觉模糊数分析 COVID-19 的新技术
有几种直觉模糊逻辑方法被用于诊断 COVID-19 患者。我们开发了一种用于检测 COVID-19 患者的模糊规则库系统。在这项研究中,我们考虑了基于对称/非对称、线性/非线性六边形直觉模糊数(HIFN)的六个主要参数,作为问题的输入输出因素。在实际诊断问题中,如评估 COVID-19 症状时,应用对称和非对称、线性和非线性六方直觉模糊数可以更准确地表示病人的情况。面积中心法用于六边形直觉模糊参数的模糊值。使用 HIFN 的原因是它们能详细地表示不确定性,通过六个参数将成员度和非成员度结合起来。这种灵活性允许对现实世界中的情况进行细致入微的建模,例如医疗诊断,其中的数据往往包含模糊性。然后,在 COVID-19 患者的诊断过程中,使用 HIFN 方法获得折中和最优解。为了弄清所提出的基于 HIFN 的技术的适应性,还介绍了一项比较研究。本文还讨论了使用这种基于 HIFN 技术的独创性、局限性、未来方面和优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Results in Control and Optimization
Results in Control and Optimization Mathematics-Control and Optimization
CiteScore
3.00
自引率
0.00%
发文量
51
审稿时长
91 days
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