Precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic Pythagorean fuzzy dombi environment

Abstract Air quality is a major concern for human health, with pollutants linked to respiratory problems and chronic illnesses. Air quality monitoring systems are essential for measuring and tracking pollutants in indoor and outdoor environments. In the various disciplines of fuzzy environments, the...

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Main Authors: Hanan Alolaiyan, Umme Kalsoom, Umer Shuaib, Abdul Razaq, Abdul Wakil Baidar, Qin Xin
Format: Article
Language:English
Published: Nature Portfolio 2024-12-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-024-83478-1
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author Hanan Alolaiyan
Umme Kalsoom
Umer Shuaib
Abdul Razaq
Abdul Wakil Baidar
Qin Xin
author_facet Hanan Alolaiyan
Umme Kalsoom
Umer Shuaib
Abdul Razaq
Abdul Wakil Baidar
Qin Xin
author_sort Hanan Alolaiyan
collection DOAJ
description Abstract Air quality is a major concern for human health, with pollutants linked to respiratory problems and chronic illnesses. Air quality monitoring systems are essential for measuring and tracking pollutants in indoor and outdoor environments. In the various disciplines of fuzzy environments, the aggregation operators are indispensable components of the decision-making process and possess a significant capacity to manage unpredictable and ambiguous data. This study utilizes the linguistic Pythagorean fuzzy set to address the aforementioned environmental scenarios, which improve comprehension of air quality through the application of AOs. This work introduces two new aggregation operators: the linguistic Pythagorean fuzzy Dombi ordered weighted averaging (LPFDOWA) and the language Pythagorean fuzzy Dombi ordered weighted geometric (LPFDOWG), and examines their structural properties. Furthermore, we develop a novel scoring function for multiple attribute decision-making (MADM) issues within the context of linguistic Pythagorean fuzzy knowledge. We provide a systematic mathematical procedure to address MADM issues within the context of the linguistic Pythagorean fuzzy Dombi framework. Furthermore, we effectively employ these approaches to address the MADM issue of selecting an efficient Air quality monitoring systems for air pollution monitoring. Additionally, we present a thorough comparative analysis to demonstrate the effectiveness of the proposed methodology relative to conventional techniques.
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institution Kabale University
issn 2045-2322
language English
publishDate 2024-12-01
publisher Nature Portfolio
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series Scientific Reports
spelling doaj-art-14a6d6a1cc384c2d8dd5898247f7946e2025-01-05T12:29:12ZengNature PortfolioScientific Reports2045-23222024-12-0114112110.1038/s41598-024-83478-1Precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic Pythagorean fuzzy dombi environmentHanan Alolaiyan0Umme Kalsoom1Umer Shuaib2Abdul Razaq3Abdul Wakil Baidar4Qin Xin5Department of Mathematics, College of Science, King Saud UniversityDepartment of Mathematics, Government College UniversityDepartment of Mathematics, Government College UniversityDepartment of Mathematics, Division of Science and Technology, University of EducationDepartment of Mathematics, Kabul UniversityFaculty of Science and Technology, University of the Faroe IslandsAbstract Air quality is a major concern for human health, with pollutants linked to respiratory problems and chronic illnesses. Air quality monitoring systems are essential for measuring and tracking pollutants in indoor and outdoor environments. In the various disciplines of fuzzy environments, the aggregation operators are indispensable components of the decision-making process and possess a significant capacity to manage unpredictable and ambiguous data. This study utilizes the linguistic Pythagorean fuzzy set to address the aforementioned environmental scenarios, which improve comprehension of air quality through the application of AOs. This work introduces two new aggregation operators: the linguistic Pythagorean fuzzy Dombi ordered weighted averaging (LPFDOWA) and the language Pythagorean fuzzy Dombi ordered weighted geometric (LPFDOWG), and examines their structural properties. Furthermore, we develop a novel scoring function for multiple attribute decision-making (MADM) issues within the context of linguistic Pythagorean fuzzy knowledge. We provide a systematic mathematical procedure to address MADM issues within the context of the linguistic Pythagorean fuzzy Dombi framework. Furthermore, we effectively employ these approaches to address the MADM issue of selecting an efficient Air quality monitoring systems for air pollution monitoring. Additionally, we present a thorough comparative analysis to demonstrate the effectiveness of the proposed methodology relative to conventional techniques.https://doi.org/10.1038/s41598-024-83478-1Linguistic Pythagorean fuzzy setDombi ordered weighted averaging operatorDombi ordered weighted geometric operatorMulti-attribute decision-making problemAir quality monitoring system
spellingShingle Hanan Alolaiyan
Umme Kalsoom
Umer Shuaib
Abdul Razaq
Abdul Wakil Baidar
Qin Xin
Precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic Pythagorean fuzzy dombi environment
Scientific Reports
Linguistic Pythagorean fuzzy set
Dombi ordered weighted averaging operator
Dombi ordered weighted geometric operator
Multi-attribute decision-making problem
Air quality monitoring system
title Precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic Pythagorean fuzzy dombi environment
title_full Precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic Pythagorean fuzzy dombi environment
title_fullStr Precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic Pythagorean fuzzy dombi environment
title_full_unstemmed Precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic Pythagorean fuzzy dombi environment
title_short Precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic Pythagorean fuzzy dombi environment
title_sort precision measurement for effective pollution mitigation by evaluating air quality monitoring systems in linguistic pythagorean fuzzy dombi environment
topic Linguistic Pythagorean fuzzy set
Dombi ordered weighted averaging operator
Dombi ordered weighted geometric operator
Multi-attribute decision-making problem
Air quality monitoring system
url https://doi.org/10.1038/s41598-024-83478-1
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