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Integration of Detection Techniques and Machine Learning to Improve Data Quality in Atmospheric Monitoring (#1268)

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Date of Conference

July 16-18, 2025

Published In

"Engineering, Artificial Intelligence, and Sustainable Technologies in service of society"

Location of Conference

Mexico

Authors

Quintero, Eladio

González, Jonathan

García, Felisindo

Collado, Edwin

García, Antony

Saez, Yessica

Abstract

Concentrations of particulate matter (PM) in the air pose a significant risk to human health and the environment. Accuracy in the measurement of these pollutants is critical for effective air quality management; however, monitoring stations present errors and inconsistent data that affect the reliability of the analysis. In this study, different methods based on data science and machine learning are presented and compared to correct and improve the quality of PM measurements. This includes an exploration data analysis to identify temporal patterns in air pollution specifically of PM, detection and removal of outliers using the interquartile range method, normalization and transformation of temporal variables, and implementation of a convolutional autoencoder model for missing data correction. The methodology was applied to a dataset collected by a monitoring station in Panama, and the results showed that the removal of outliers significantly reduced the distortion in the data, while the autoencoder achieved a moderate reconstruction of missing values, with a MAE of 0.1322 and a coefficient of determination R² of 0.5770. The findings suggest that the combination of statistical techniques and machine learning models allows to improve the reliability of PM monitoring data, providing more accurate information for environmental decision-making. In addition, this study opens new lines of research, such as the development of low-cost correction models for community stations, the analysis of the impact of meteorological events on particulate matter concentrations, and the comparison of pollution patterns in different urban environments.

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