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Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria.

Year 2026, Volume: 10 Issue: 1, 29 - 40, 12.03.2026
https://doi.org/10.34110/forecasting.1829638
https://izlik.org/JA66UZ92UW

Abstract

Air pollution driven by rising atmospheric CO₂ concentrations represent a global health issue across the globe, which majorly affecting developing nations based on limited or no monitoring infrastructure, where planning intervention and effective policy are essential through use of predictive models that integrate real-time data with computational approaches. This study addresses the critical gap in air quality monitoring for semi-urban industrial communities in Nigeria by developing predictive models using low-cost sensor data. The study measured the in-situ data of atmospheric CO₂ concentrations, temperature, relative humidity, and pressure over three small-scale industries (Garri processing factory, bakery, and Ebu) in Nigeria, using PCE-AQD 50 sensor. Daily data were modified from 30 seconds data for modelling using Python programming language. OLS regression and SARIMAX models were employed to predict air quality trends over the study locations, while R², RMSE, and MAPE metrics assessed the model performance. The study developed models where SARIMAX model demonstrated superior predictive performance with R² = 0.89, and RMSE = 0.15, as well as OLS Regression revealed significant correlations between CO₂ concentrations and meteorological parameters. It was equally found that predictive simulations indicated that without intervention, CO₂ concentration levels in industrial communities could exceed WHO-recommended thresholds by 2030, while under moderate emission control scenarios, reduction of up to 25% is achievable. Hence, the research provides the first comprehensive prediction framework for air quality trends in semi-urban Nigerian industries, offering evidence-based insights for policymakers, enabling proactive public health interventions that safeguard public health and climate change mitigations, and demonstrating the potential of low-cost sensor to enhance air quality management in resource-constrained environments.

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There are 30 citations in total.

Details

Primary Language English
Subjects Computational Statistics, Applied Statistics
Journal Section Research Article
Authors

Gbadebo İsmaila Olatona 0000-0001-9415-6265

Sherifdeen Mosebolatan Oyedokun 0000-0001-9013-5512

Shuaib Adisa 0000-0001-9389-1874

Submission Date November 24, 2025
Acceptance Date January 22, 2026
Publication Date March 12, 2026
DOI https://doi.org/10.34110/forecasting.1829638
IZ https://izlik.org/JA66UZ92UW
Published in Issue Year 2026 Volume: 10 Issue: 1

Cite

APA Olatona, G. İ., Oyedokun, S. M., & Adisa, S. (2026). Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria. Turkish Journal of Forecasting, 10(1), 29-40. https://doi.org/10.34110/forecasting.1829638
AMA 1.Olatona Gİ, Oyedokun SM, Adisa S. Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria. TJF. 2026;10(1):29-40. doi:10.34110/forecasting.1829638
Chicago Olatona, Gbadebo İsmaila, Sherifdeen Mosebolatan Oyedokun, and Shuaib Adisa. 2026. “Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria”. Turkish Journal of Forecasting 10 (1): 29-40. https://doi.org/10.34110/forecasting.1829638.
EndNote Olatona Gİ, Oyedokun SM, Adisa S (March 1, 2026) Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria. Turkish Journal of Forecasting 10 1 29–40.
IEEE [1]G. İ. Olatona, S. M. Oyedokun, and S. Adisa, “Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria”., TJF, vol. 10, no. 1, pp. 29–40, Mar. 2026, doi: 10.34110/forecasting.1829638.
ISNAD Olatona, Gbadebo İsmaila - Oyedokun, Sherifdeen Mosebolatan - Adisa, Shuaib. “Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria”. Turkish Journal of Forecasting 10/1 (March 1, 2026): 29-40. https://doi.org/10.34110/forecasting.1829638.
JAMA 1.Olatona Gİ, Oyedokun SM, Adisa S. Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria. TJF. 2026;10:29–40.
MLA Olatona, Gbadebo İsmaila, et al. “Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria”. Turkish Journal of Forecasting, vol. 10, no. 1, Mar. 2026, pp. 29-40, doi:10.34110/forecasting.1829638.
Vancouver 1.Gbadebo İsmaila Olatona, Sherifdeen Mosebolatan Oyedokun, Shuaib Adisa. Integrating Predictive Modelling and Low-Cost Sensor for Air Quality Management and Public Health Intervention in Semi-Urban Nigeria. TJF. 2026 Mar. 1;10(1):29-40. doi:10.34110/forecasting.1829638

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