Abstract
Air quality forecasting is a significant method of protecting public health because it provides early warning of harmful air pollutants. In this study, we used correlation analysis and artificial neural networks (ANNs; including wavelet ANNs [WANNs]) to identify the linear and nonlinear associations, respectively, between the air pollution index (API) and meteorological variables in Xi’an and Lanzhou. Evaluating twelve algorithms and nineteen network topologies for the ANN and WANN models, we discovered that the optimal input variables for an API forecasting model were the APIs from the 3 preceding days and sixteen selected meteorological factors. Additionally, the API could be accurately predicted based solely on the value recorded 3 days earlier. Based on the correlation coefficients between the air pollution index of the targeted day and the tested variables, the API displayed the closest relationship with the API 1 day earlier as well as stronger correlations with the average temperature, average water vapor pressure, minimum temperature, maximum temperature, API 2 days earlier, and API 3 days earlier. When Bayesian regularization was applied as a training algorithm, the WANN and ANN models accurately reproduced the APIs in both Xi’an and Lanzhou, although the WANN model (R = 0.8846 for Xi’an and R = 0.8906 for Lanzhou) performed better than the ANN (R = 0.8037 for Xi’an and R = 0.7742 for Lanzhou) during the forecasting stage. These results demonstrate that WANNs are effective in short-term API forecasting because they can recognize historic patterns and thereby identify nonlinear relationships between the input and output variables. Thus, our study may provide a theoretical basis for environmental management policies.
Highlights
Air pollution is a theme of high importance, and global problems have demonstrated its damaging impacts on human physical health and ecosystems (Nguyen et al, 2015)
Evaluating twelve algorithms and nineteen network topologies for the artificial neural networks (ANNs) and wavelet artificial neural network (WANN) models, we discovered that the optimal input variables for an air pollution index (API) forecasting model were the APIs from the 3 preceding days and sixteen selected meteorological factors
This study presents an optimum system for nonlinear modeling of the daily API using ANNs and WANNs
Summary
Air pollution is a theme of high importance, and global problems have demonstrated its damaging impacts on human physical health and ecosystems (Nguyen et al, 2015). It has a detrimental effect on visibility, climate, and sustainable development (Lelieveld et al, 2015). Air pollution has adverse effects on people’s life span, and social communication willingness (Huang et al, 2018). Due to the large-scale development of industrialization and urbanization, China has been suffering from acute air pollution for many years (Liu and Diamond, 2005). In 2013, China suffered extremely serious haze pollution, influencing 800 million people, and daily average PM2.5 concentrations at a site in Xi’an were more than twice those of Beijing, Shanghai, and Guangzhou (Huang et al, 2014)
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