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Anales (Asociación Física Argentina)

Print version ISSN 0327-358XOn-line version ISSN 1850-1168

Abstract

SCAGLIOTTI, A. F.  and  JORGE, D. G. A.. Low-cost methods to particulate matter preliminary study in the center-north of Buenos Aires suburbs. An. AFA [online]. 2022, vol.33, n.1, pp.18-23. ISSN 0327-358X.  http://dx.doi.org/10.31527/analesafa.2022.33.1.18.

Abstract Air quality is one of the biggest environmental problems today, and airborne particles are a well-studied indicator given their impacts on health and climate. The cost of regulatory measurement equipment leads to limited information availability in many parts of the world, as in Argentina. This work proposes modeling of particulate matter from Artificial Neural Networks, fed with data from low-cost equipment developed and used for this purpose. In this way, a study of air quality in the Center-North of the Buenos Aires suburbs is presented, providing new information on quantities and types of particles in a region without historical antecedents. Coarse particles were mostly found at low concentrations and a prediction model for particulate matter with good performance was developed.

Keywords : air quality; low cost measurements; neural networks.

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