Pbkp_redicting Ozone Pollution in Urban Areas Using Machine Learning and Quantile Regression Models


Abstract:

Ozone is the most harmful secondary pollutant in terms of negative effects on climate change and human health. Pbkp_redicting ozone emission levels has therefore gained importance within the field of environmental management. This study, performed in the Andean city of Cuenca, Ecuador, compares the performance of two methodologies currently used for this task and based on machine learning and quantile regression techniques. These techniques were applied using cross-sectional data to pbkp_redict the ozone concentration per city block during the year 2018. Our results reveal that ozone concentration is significantly influenced by nitrogen dioxide, sedimentary particles, sulfur dioxide, traffic, and spatial features. We use the mean square error, the coefficient of determination, and the quantile loss as evaluation metrics for the performance of the ozone pbkp_rediction models, employing a cross-validation scheme with a fold. Our work shows that the random forest technique outperforms gradient boosting pbkp_rediction, neural network, and quantile regression methods.

Año de publicación:

2021

Keywords:

  • Pollutants
  • Quantile regression
  • Ensemble models
  • Neural networks
  • Ozone

Fuente:

scopusscopus

Tipo de documento:

Conference Object

Estado:

Acceso restringido

Áreas de conocimiento:

  • Contaminación del aire
  • Aprendizaje automático
  • Ciencia ambiental

Áreas temáticas:

  • Ciencias de la computación
  • Tecnología (Ciencias aplicadas)
  • Ingeniería y operaciones afines