Complex Circular Intuitionistic Fuzzy Heronian Mean Aggregation for Dynamic Air Quality Monitoring and Public Health Risk Prediction

In recent years, air pollution has become a global concern due to its adverse impact on human health, leading to increased chronic conditions and early deaths. The effects of poor-quality air extend beyond individual health to communities and economies. Therefore, improving the prediction of air pol...

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Main Author: Xiangnuo Kong
Format: Article
Language:English
Published: IEEE 2024-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10676970/
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author Xiangnuo Kong
author_facet Xiangnuo Kong
author_sort Xiangnuo Kong
collection DOAJ
description In recent years, air pollution has become a global concern due to its adverse impact on human health, leading to increased chronic conditions and early deaths. The effects of poor-quality air extend beyond individual health to communities and economies. Therefore, improving the prediction of air pollution levels and identifying related health hazards is crucial. Traditional models struggle with the complexities and uncertainties of dynamic air contaminants, limiting their effectiveness. To overcome these challenges, we introduce a novel Complex Circular Intuitionistic Fuzzy Heronian Mean (CCIFHM) approach for monitoring dynamic air quality and assessing public health risks. This approach defines the proposed fuzzy models’ properties, theorems, and axioms. Extensive experimental validations using air quality data from various operators compared the CCIFHM with existing models, demonstrating its superior ability to estimate air pollution levels and assess public health risks. Our findings suggest that the CCIFHM model can significantly enhance air quality monitoring and risk prediction by providing more accurate and reliable data, thus supporting better policy formulation and decision-making. By addressing the limitations of current models, the CCIFHM approach can potentially improve public health protection and foster a healthier environment.
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spelling doaj-art-acb3abdf85b34a1ea916e2a5cb691bbf2025-08-20T01:57:08ZengIEEEIEEE Access2169-35362024-01-011212989712991610.1109/ACCESS.2024.345817210676970Complex Circular Intuitionistic Fuzzy Heronian Mean Aggregation for Dynamic Air Quality Monitoring and Public Health Risk PredictionXiangnuo Kong0https://orcid.org/0009-0007-6227-0208School of Medical, The University of Edinburgh, Edinburgh, U.K.In recent years, air pollution has become a global concern due to its adverse impact on human health, leading to increased chronic conditions and early deaths. The effects of poor-quality air extend beyond individual health to communities and economies. Therefore, improving the prediction of air pollution levels and identifying related health hazards is crucial. Traditional models struggle with the complexities and uncertainties of dynamic air contaminants, limiting their effectiveness. To overcome these challenges, we introduce a novel Complex Circular Intuitionistic Fuzzy Heronian Mean (CCIFHM) approach for monitoring dynamic air quality and assessing public health risks. This approach defines the proposed fuzzy models’ properties, theorems, and axioms. Extensive experimental validations using air quality data from various operators compared the CCIFHM with existing models, demonstrating its superior ability to estimate air pollution levels and assess public health risks. Our findings suggest that the CCIFHM model can significantly enhance air quality monitoring and risk prediction by providing more accurate and reliable data, thus supporting better policy formulation and decision-making. By addressing the limitations of current models, the CCIFHM approach can potentially improve public health protection and foster a healthier environment.https://ieeexplore.ieee.org/document/10676970/Air quality monitoringhealth risk predictioncomplex circular intuitionistic fuzzy SetHeronian meanaggregation operators
spellingShingle Xiangnuo Kong
Complex Circular Intuitionistic Fuzzy Heronian Mean Aggregation for Dynamic Air Quality Monitoring and Public Health Risk Prediction
IEEE Access
Air quality monitoring
health risk prediction
complex circular intuitionistic fuzzy Set
Heronian mean
aggregation operators
title Complex Circular Intuitionistic Fuzzy Heronian Mean Aggregation for Dynamic Air Quality Monitoring and Public Health Risk Prediction
title_full Complex Circular Intuitionistic Fuzzy Heronian Mean Aggregation for Dynamic Air Quality Monitoring and Public Health Risk Prediction
title_fullStr Complex Circular Intuitionistic Fuzzy Heronian Mean Aggregation for Dynamic Air Quality Monitoring and Public Health Risk Prediction
title_full_unstemmed Complex Circular Intuitionistic Fuzzy Heronian Mean Aggregation for Dynamic Air Quality Monitoring and Public Health Risk Prediction
title_short Complex Circular Intuitionistic Fuzzy Heronian Mean Aggregation for Dynamic Air Quality Monitoring and Public Health Risk Prediction
title_sort complex circular intuitionistic fuzzy heronian mean aggregation for dynamic air quality monitoring and public health risk prediction
topic Air quality monitoring
health risk prediction
complex circular intuitionistic fuzzy Set
Heronian mean
aggregation operators
url https://ieeexplore.ieee.org/document/10676970/
work_keys_str_mv AT xiangnuokong complexcircularintuitionisticfuzzyheronianmeanaggregationfordynamicairqualitymonitoringandpublichealthriskprediction