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 hbox {PM}_{10} 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 hbox {PM}_{10} 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.

Highlights

  • 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 study addressed the problem of forecasting PM10 concentration on an hourly scale based on air quality indicators from five monitoring stations in Lima, Peru

  • A comparative study was accomplished between the Multilayer Perceptron (MLP) and Long Short-Term Memory networks (LSTM) neural networks evaluated with the Hold-Out and Blocked Nested Cross-Validation

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Summary

Introduction

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. 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. The US Environmental Protection ­Agency[2] mentions that one of the pollutants with the most significant negative impact on public health is particulate material with a diameter of less than ten μm ( PM10 ) because it can access the respiratory tract causing severe damage to health For their part, Valdivia and P­ acsi[3] report that Metropolitan Lima (LIM) is vulnerable to high concentrations of PM10 , due to its accelerated industrial and economic growth, in addition to its large population, as it is home to 29% of the total Peruvian p­ opulation[4]. These models have been widely used to forecast time series and applied to environmental data such as particulate matter in different c­ ountries[13,14]

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