2023
DOI: 10.3390/atmos14040614
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Prediction of the Concentration of Particulate Matter 2.5 Using Virtual Sensors Applied to Valle de Aburrá

Abstract: Pollution in urban areas has been one of the most relevant problems of the last decade since it represents a threat to public health. Specifically, particulate matter (PM2.5) is a pollutant that causes serious health complications, such as heart and lung diseases. Centers for monitoring contaminants and climatic variables have been established to adopt measures to control the consequences of high levels of air pollution. However, these monitoring centers sometimes make decisions when pollution levels are alrea… Show more

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“…The Kalman filter [14,15] is a prominent filter used for state estimation in dynamic systems, and it is an effective filter for noise handling through estimation that considers noise in both the system and observation models. In this study, the filter is applied with system noise Q set to 4 and measurement noise R set to 10, based on the deviations of and TPMs, respectively.…”
Section: Light Scattering Methodmentioning
confidence: 99%
“…The Kalman filter [14,15] is a prominent filter used for state estimation in dynamic systems, and it is an effective filter for noise handling through estimation that considers noise in both the system and observation models. In this study, the filter is applied with system noise Q set to 4 and measurement noise R set to 10, based on the deviations of and TPMs, respectively.…”
Section: Light Scattering Methodmentioning
confidence: 99%