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Integrated Smart Dust Monitoring and Prediction System for Surface Mine Sites Using IoT and Machine Learning Techniques

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Journal Sci Rep
Specialty Science
Date 2024 Mar 30
PMID 38555354
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Abstract

The mining industry confronts significant challenges in mitigating airborne particulate matter (PM) pollution, necessitating innovative approaches for effective monitoring and prediction. This research focuses on the design and development of an Internet of Things (IoT)-based real-time monitoring system tailored for PM pollutants in surface mines, specifically PM 1.0, PM 2.5, PM 4.0, and PM 10.0. The novelty of this work lies in the integration of IoT technology for real-time measurement and the application of machine learning (ML) techniques for accurate prediction based on recorded dust pollutants data. The study's findings indicate that PM 1.0 pollutants exhibited the highest concentration in the atmosphere of the ball clay surface mine sites, with the stockyard site registering the maximum levels of PM pollutants (28.45 µg/m, 27.89 µg/m, 26.17 µg/m, and 27.24 µg/m, respectively) due to the dry nature of clay materials. Additionally, the research establishes four ML models-Decision Tree (DT), Gradient Boosting Regression (GBR), Random Forest (RF), and Linear Regression (LR)-for predicting PM pollutant concentrations. Notably, Random Forest demonstrates superior performance with the lowest Mean Absolute Error (MAE) and Root Mean Squared Error (RMSE) at 1.079 and 1.497, respectively. This comprehensive solution, combining IoT-based monitoring and ML-based prediction, contributes to sustainable mining practices, safeguarding worker well-being, and preserving the environment.

References
1.
Choubin B, Abdolshahnejad M, Moradi E, Querol X, Mosavi A, Shamshirband S . Spatial hazard assessment of the PM10 using machine learning models in Barcelona, Spain. Sci Total Environ. 2019; 701:134474. DOI: 10.1016/j.scitotenv.2019.134474. View

2.
Ali M, Liu G, Yousaf B, Ullah H, Abbas Q, Munir M . A systematic review on global pollution status of particulate matter-associated potential toxic elements and health perspectives in urban environment. Environ Geochem Health. 2018; 41(3):1131-1162. DOI: 10.1007/s10653-018-0203-z. View

3.
Gilik A, Ogrenci A, Ozmen A . Air quality prediction using CNN+LSTM-based hybrid deep learning architecture. Environ Sci Pollut Res Int. 2021; 29(8):11920-11938. DOI: 10.1007/s11356-021-16227-w. View

4.
Just A, Arfer K, Rush J, Dorman M, Shtein A, Lyapustin A . Advancing methodologies for applying machine learning and evaluating spatiotemporal models of fine particulate matter (PM) using satellite data over large regions. Atmos Environ (1994). 2020; 239. PMC: 7591135. DOI: 10.1016/j.atmosenv.2020.117649. View

5.
Luo X, Bing H, Luo Z, Wang Y, Jin L . Impacts of atmospheric particulate matter pollution on environmental biogeochemistry of trace metals in soil-plant system: A review. Environ Pollut. 2019; 255(Pt 1):113138. DOI: 10.1016/j.envpol.2019.113138. View