DGCA3QM: DESIGN OF A DUAL GENETIC ALGORITHM BASED AUTOREGRESSION MODEL FOR CORRELATIVE PREDICTION OF AIR QUALITY METRICS

Prediction of air quality metrics is a multidomain task that involves analysis of different inter-related parameters. These parameters include, type of location, NO2 levels, SO2 levels, Respirable Suspended Particulate Matter (RSPM) levels, Fine particulate matter (PM2.5) levels, etc. Researchers ha...

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Main Authors: Harna M. Bodele, G. M. Asutkar, Kiran G. Asutkar
Format: Article
Language:English
Published: University of Kragujevac 2025-03-01
Series:Proceedings on Engineering Sciences
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Online Access:https://pesjournal.net/journal/v7-n1/70.pdf
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author Harna M. Bodele
G. M. Asutkar
Kiran G. Asutkar
author_facet Harna M. Bodele
G. M. Asutkar
Kiran G. Asutkar
author_sort Harna M. Bodele
collection DOAJ
description Prediction of air quality metrics is a multidomain task that involves analysis of different inter-related parameters. These parameters include, type of location, NO2 levels, SO2 levels, Respirable Suspended Particulate Matter (RSPM) levels, Fine particulate matter (PM2.5) levels, etc. Researchers have proposed a wide variety of models to predict air quality via deep learning, bioinspired optimizations, regression analysis, and correlative analysis. But these models are either highly complex, or showcase low efficiency levels, which limits their applicability when used for big data scenarios. Moreover, most of these models do not consider parameter correlation between different metrics, which affects their accuracy levels. To overcome these issues, this text proposes design of a Dual Genetic Algorithm (DGA) based Auto regression model for Correlative prediction (AC) of Air Quality Metrics. The proposed model initially collects large-scale datasets of multiple Air quality metrics for different areas, and uses a bioinspired optimization model for identification of correlative parameter sets. These sets are processed via an Autoregressive model, which assists in prediction of future air quality metrics via analysis of technical indicators including Simple Moving Average (SMA), Ternary Moving Average (TMA), etc. The predicted values are further optimized via another bioinspired layer that assists in identification of high correlation value changes, thereby improving prediction performance under large data samples. Due to incorporation of dual bioinspired optimizers with autoregressive correlation, the model is able to improve prediction accuracy by 8.5%, precision by 4.9%, recall by 1.5%, while reducing computational delay by 3.4% when compared with standard air quality analysis models. These enhancements assist in deploying the model for real-time air quality prediction scenarios.
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spelling doaj-art-24de6471b35643eca8e06c68384fcd8c2025-08-20T02:47:49ZengUniversity of KragujevacProceedings on Engineering Sciences2620-28322683-41112025-03-017168970010.24874/PES07.01D.024DGCA3QM: DESIGN OF A DUAL GENETIC ALGORITHM BASED AUTOREGRESSION MODEL FOR CORRELATIVE PREDICTION OF AIR QUALITY METRICSHarna M. Bodele 0https://orcid.org/0009-0009-0153-7225G. M. Asutkar 1https://orcid.org/0000-0001-8307-3974Kiran G. Asutkar 2https://orcid.org/0009-0001-6621-7160Electronics and Telecommunication Engineering Department, JaiDev College of Engineering and Management Nagpur- 441501, India Electronics Department, Priyadarshini College of Engineering, Nagpur- 440019, India Department of Civil Engineering, Government college of Engineering, Nagpur- 441108, India Prediction of air quality metrics is a multidomain task that involves analysis of different inter-related parameters. These parameters include, type of location, NO2 levels, SO2 levels, Respirable Suspended Particulate Matter (RSPM) levels, Fine particulate matter (PM2.5) levels, etc. Researchers have proposed a wide variety of models to predict air quality via deep learning, bioinspired optimizations, regression analysis, and correlative analysis. But these models are either highly complex, or showcase low efficiency levels, which limits their applicability when used for big data scenarios. Moreover, most of these models do not consider parameter correlation between different metrics, which affects their accuracy levels. To overcome these issues, this text proposes design of a Dual Genetic Algorithm (DGA) based Auto regression model for Correlative prediction (AC) of Air Quality Metrics. The proposed model initially collects large-scale datasets of multiple Air quality metrics for different areas, and uses a bioinspired optimization model for identification of correlative parameter sets. These sets are processed via an Autoregressive model, which assists in prediction of future air quality metrics via analysis of technical indicators including Simple Moving Average (SMA), Ternary Moving Average (TMA), etc. The predicted values are further optimized via another bioinspired layer that assists in identification of high correlation value changes, thereby improving prediction performance under large data samples. Due to incorporation of dual bioinspired optimizers with autoregressive correlation, the model is able to improve prediction accuracy by 8.5%, precision by 4.9%, recall by 1.5%, while reducing computational delay by 3.4% when compared with standard air quality analysis models. These enhancements assist in deploying the model for real-time air quality prediction scenarios.https://pesjournal.net/journal/v7-n1/70.pdfair qualitypredictiondualbioinspiredcorrelationauto regressiontechnicalindicatorsscenarios
spellingShingle Harna M. Bodele
G. M. Asutkar
Kiran G. Asutkar
DGCA3QM: DESIGN OF A DUAL GENETIC ALGORITHM BASED AUTOREGRESSION MODEL FOR CORRELATIVE PREDICTION OF AIR QUALITY METRICS
Proceedings on Engineering Sciences
air quality
prediction
dual
bioinspired
correlation
auto regression
technical
indicators
scenarios
title DGCA3QM: DESIGN OF A DUAL GENETIC ALGORITHM BASED AUTOREGRESSION MODEL FOR CORRELATIVE PREDICTION OF AIR QUALITY METRICS
title_full DGCA3QM: DESIGN OF A DUAL GENETIC ALGORITHM BASED AUTOREGRESSION MODEL FOR CORRELATIVE PREDICTION OF AIR QUALITY METRICS
title_fullStr DGCA3QM: DESIGN OF A DUAL GENETIC ALGORITHM BASED AUTOREGRESSION MODEL FOR CORRELATIVE PREDICTION OF AIR QUALITY METRICS
title_full_unstemmed DGCA3QM: DESIGN OF A DUAL GENETIC ALGORITHM BASED AUTOREGRESSION MODEL FOR CORRELATIVE PREDICTION OF AIR QUALITY METRICS
title_short DGCA3QM: DESIGN OF A DUAL GENETIC ALGORITHM BASED AUTOREGRESSION MODEL FOR CORRELATIVE PREDICTION OF AIR QUALITY METRICS
title_sort dgca3qm design of a dual genetic algorithm based autoregression model for correlative prediction of air quality metrics
topic air quality
prediction
dual
bioinspired
correlation
auto regression
technical
indicators
scenarios
url https://pesjournal.net/journal/v7-n1/70.pdf
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AT gmasutkar dgca3qmdesignofadualgeneticalgorithmbasedautoregressionmodelforcorrelativepredictionofairqualitymetrics
AT kirangasutkar dgca3qmdesignofadualgeneticalgorithmbasedautoregressionmodelforcorrelativepredictionofairqualitymetrics