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Title Multivariate Prediction Of Pm10 Concentration By Lstm Neural Networks
ID_Doc 38694
Authors Di Antonio L.; Rosato A.; Colaiuda V.; Lombardi A.; Tomassetti B.; Panella M.
Year 2019
Published 2019 Photonics and Electromagnetics Research Symposium - Fall, PIERS - Fall 2019 - Proceedings
DOI http://dx.doi.org/10.1109/PIERS-Fall48861.2019.9021929
Abstract Air presence of particulate pollutants is an environmental problem with significant health issues. Monitoring their concentration is a key factor for the correct management of urban activities. In the smart cities scenario, the most fruitful tools for such application are sensor networks combined with machine learning techniques. In this work, neural networks are employed to forecast particulate concentration of air pollutants using a novel multivariate approach. We analyzed five years of data relating to PM10 concentration, studying the performance of different models based on the Long Short Term Memory paradigm, optimizing their hyperparameters accordingly. The tests show good results in terms of approximation and generalization capabilities, along with a sensible dependence on the weather conditions. © 2019 IEEE.
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