Logotipo del repositorio
Comunidades y Colecciones
Estadísticas
¿Nuevo Usuario? Pulse aquí para registrarse¿Has olvidado tu contraseña?
  1. Inicio
  2. Producción Científica UPeU
  3. Publicaciones
  4. A Self-Organizing Topological Multilayer Perceptron for Improving the Prediction of Extreme Values of the PM2.5

A Self-Organizing Topological Multilayer Perceptron for Improving the Prediction of Extreme Values of the PM2.5

Author(s)
Ana María Gómez Lamus
Romina Torres
Rodrigo Salas
Date Issued
12 de mayo de 2022
Type
Preprint
DOI
10.21203/rs.3.rs-1617371/v1
Abstract
Abstract The prediction of air pollutant levels plays an essential role in regulatory plans focused on controlling and mitigating air pollutants, such as particulate matter (PM). Even when elevated pollution episodes may be rare, they recirculate within an area where more people may present significant adverse health consequences. Thus, even when they are difficult to predict, pollution peaks prediction of air pollution particulate matter (PM2.5) is a crucial problem to address. Several machine learning (ML) approaches have been used to predict a set of air pollutants using different combinations of predictor parameters. Unfortunately, they are still not enough to generate accurate predictions of extreme values. This paper proposes a new hybrid method that combines the unsupervised learning Self-Organizing Maps with the supervised multilayer perceptron. The proposed method is applied for the prediction of extreme values of PM2.5, using five-year pollution data obtained from nine weather stations located in the metropolitan area of Santiago, Chile. Simulation results show that the hybrid method improves the performance metrics when predicting extreme values of PM2.5.
Subjects

Multilayer perceptron...

Particulates

Air pollution

Metropolitan area

Pollutant

Pollution

Environmental science...

Artificial neural net...

Perceptron

Extreme learning mach...

Set (abstract data ty...

Air pollutants

Computer science

Self-organizing map

Machine learning

Artificial intelligen...

Meteorology

Geography

Ecology

Archaeology

Biology

Programming language

Multilayer perceptron...

Particulates

Air pollution

Metropolitan area

Pollutant

Pollution

Environmental science...

Artificial neural net...

Perceptron

Extreme learning mach...

Set (abstract data ty...

Air pollutants

Computer science

Self-organizing map

Machine learning

Artificial intelligen...

Meteorology

Geography

Ecology

Physical Sciences Env...

Physical Sciences Env...

Physical Sciences Eng...

Metrics
Get Involved!
  • Source Code
  • Documentation
  • Slack Channel
Make it your own

DSpace-CRIS can be extensively configured to meet your needs. Decide which information need to be collected and available with fine-grained security. Start updating the theme to match your Institution's web identity.

Need professional help?

The original creators of DSpace-CRIS at 4Science can take your project to the next level, get in touch!

Desarrollado con Software DSpace-CRIS - Extensión mantenida y optimizada por 4Science

  • Accessibility settings
  • Política de privacidad
  • Acuerdo de usuario final
  • Enviar Sugerencias
PersonasUnidades OrganizativasProyectosFinanciamientosPublicacionesPatentes
PersonasUnidades OrganizativasProyectosFinanciamientosPublicacionesPatentes