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  4. Air quality assessment and pollution forecasting using artificial neural networks in Metropolitan Lima-Peru

Air quality assessment and pollution forecasting using artificial neural networks in Metropolitan Lima-Peru

Author(s)
Manuel Niño Lopez Portocarrero
Rodrigo Salas
Romina Torres
Paulo Canas Rodrigues
Date Issued
20 de diciembre de 2021
Type
Article
Volume
11
Issue
1
Start Page
24232
End Page
24232
DOI
10.1038/s41598-021-03650-9
Abstract
The prediction of air pollution is of great importance in highly populated areas because it directly impacts both the management of the city's economic activity and the health of its inhabitants. This work evaluates and predicts the Spatio-temporal behavior of air quality in Metropolitan Lima, Peru, using artificial neural networks. The conventional feedforward backpropagation known as Multilayer Perceptron (MLP) and the Recurrent Artificial Neural network known as Long Short-Term Memory networks (LSTM) were implemented for the hourly prediction of [Formula: see text] based on the past values of this pollutant and three meteorological variables obtained from five monitoring stations. The models were validated using two schemes: The Hold-Out and the Blocked-Nested Cross-Validation (BNCV). The simulation results show that periods of moderate [Formula: see text] concentration are predicted with high precision. Whereas, for periods of high contamination, the performance of both models, the MLP and LSTM, were diminished. On the other hand, the prediction performance improved slightly when the models were trained and validated with the BNCV scheme. The simulation results showed that the models obtained a good performance for the CDM, CRB, and SMP monitoring stations, characterized by a moderate to low level of contamination. However, the results show the difficulty of predicting this contaminant in those stations that present critical contamination episodes, such as ATE and HCH. In conclusion, the LSTM recurrent artificial neural networks with BNCV adapt more precisely to critical pollution episodes and have better predictability performance for this type of environmental data.
Subjects

Artificial neural net...

Predictability

Computer science

Multilayer perceptron...

Air quality index

Metropolitan area

Pollution

Recurrent neural netw...

Backpropagation

Feed forward

Feedforward neural ne...

Machine learning

Air pollution

Artificial intelligen...

Environmental science...

Meteorology

Statistics

Mathematics

Geography

Engineering

Organic chemistry

Chemistry

Control engineering

Biology

Ecology

Archaeology

Artificial neural net...

Predictability

Computer science

Multilayer perceptron...

Air quality index

Metropolitan area

Pollution

Recurrent neural netw...

Backpropagation

Feed forward

Feedforward neural ne...

Machine learning

Air pollution

Artificial intelligen...

Environmental science...

Meteorology

Statistics

Mathematics

Geography

Engineering

Physical Sciences Env...

Physical Sciences Env...

Physical Sciences Eng...

Metrics
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