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Título
Air Pollution Monitoring Using WSN Nodes with Machine Learning Techniques: A Case Study
Autor(es)
Palabras clave
WSN
Air pollution
Data analysis
Clasificación UNESCO
1203 Ciencia de los ordenadores
Fecha de publicación
2022
Editor
Oxford University Press
Citación
Rosero-Montalvo, P. D., López-Batista, V. F., Arciniega-Rocha, R., & Peluffo-Ordóñez, D. H. (2022). Air Pollution Monitoring Using WSN Nodes with Machine Learning Techniques: A Case Study. Logic Journal of the IGPL, 30(4), 599-610. https://doi.org/10.1093/JIGPAL/JZAB005
Resumen
[EN]Air pollution is a current concern of people and government entities. Therefore, in urban scenarios, its monitoring and subsequent analysis is a remarkable and challenging issue due mainly to the variability of polluting-related factors. For this reason, the present work shows the development of a wireless sensor network that, through machine learning techniques, can be classified into three different types of environments: high pollution levels, medium pollution and no noticeable contamination into the Ibarra City. To achieve this goal, signal smoothing stages, prototype selection, feature analysis and a comparison of classification algorithms are performed. As relevant results, there is a classification performance of 95% with a significant noisy data reduction.
URI
ISSN
1367-0751
DOI
10.1093/JIGPAL/JZAB005
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