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在语言直觉模糊框架下优化土壤去污的生物修复技术

Optimizing bioremediation techniques for soil decontamination in a linguistic intuitionistic fuzzy framework.

作者信息

Alolaiyan Hanan, Hayat Misbah, Shuaib Umer, Razaq Abdul, Salman Mohammed Abdullah, Xin Qin

机构信息

Department of Mathematics, King Saud University, Riyadh, Saudi Arabia.

Department of Mathematics, Government College University, Faisalabad, 38000, Pakistan.

出版信息

Sci Rep. 2024 Jul 10;14(1):15979. doi: 10.1038/s41598-024-66863-8.

Abstract

Bioremediation techniques, which harness the metabolic activities of microorganisms, offer sustainable and environmentally friendly approaches to contaminated soil remediation. These methods involve the introduction of specialized microbial consortiums to facilitate the degradation of pollutants, contribute to soil restoration, and mitigate environmental hazards. When selecting the most effective bioremediation technique for soil decontamination, precise and dependable decision-making methods are critical. This research endeavors to tackle the aforementioned concern by utilizing the tool of aggregation operators in the framework of the Linguistic Intuitionistic Fuzzy (LIF) environment. Linguistic Intuitionistic Fuzzy Sets (LIFSs) provide a robust framework for representing and managing uncertainties associated with linguistic expressions and intuitionistic assessments. Aggregation operators enrich the decision-making process by efficiently handling the intrinsic uncertainties, preferences, and priorities of MADM problems; as a consequence, the decisions produced are more reliable and precise. In this research, we utilize this concept to devise innovative aggregation operators, namely the linguistic intuitionistic fuzzy Dombi weighted averaging operator (LIFDWA) and the linguistic intuitionistic fuzzy Dombi weighted geometric operator (LIFDWG). We also demonstrate the critical structural properties of these operators. Additionally, we formulate novel score and accuracy functions for multiple attribute decision-making (MADM) problems within LIF knowledge. Furthermore, we develop an algorithm to confront the complexities associated with ambiguous data in solving decision-making problems in the LIF Dombi aggregation environment. To underscore the efficacy and superiority of our proposed methodologies, we adeptly apply these techniques to address the MADM problem concerning the optimal selection of a bioremediation technique for soil decontamination. Moreover, we present a comparative evaluation to delineate the authenticity and practical applicability of the recently introduced approaches relative to previously formulated techniques.

摘要

生物修复技术利用微生物的代谢活动,为污染土壤修复提供了可持续且环保的方法。这些方法包括引入专门的微生物群落,以促进污染物的降解,助力土壤恢复,并减轻环境危害。在选择最有效的土壤净化生物修复技术时,精确可靠的决策方法至关重要。本研究致力于通过在语言直觉模糊(LIF)环境框架中使用聚合算子工具来解决上述问题。语言直觉模糊集(LIFSs)为表示和管理与语言表达及直觉评估相关的不确定性提供了一个强大的框架。聚合算子通过有效处理多属性决策(MADM)问题的内在不确定性、偏好和优先级,丰富了决策过程;因此,所产生的决策更加可靠和精确。在本研究中,我们利用这一概念设计创新的聚合算子,即语言直觉模糊Dombi加权平均算子(LIFDWA)和语言直觉模糊Dombi加权几何算子(LIFDWG)。我们还展示了这些算子的关键结构特性。此外,我们为LIF知识中的多属性决策(MADM)问题制定了新颖的得分和准确性函数。此外,我们开发了一种算法,以应对在LIF Dombi聚合环境中解决决策问题时与模糊数据相关的复杂性。为了强调我们提出的方法的有效性和优越性,我们巧妙地应用这些技术来解决关于土壤净化生物修复技术最佳选择的MADM问题。此外,我们进行了比较评估,以描述最近引入的方法相对于先前制定的技术的真实性和实际适用性。

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