Long Short-Term Memory Approach for Short-Term Air Quality Forecasting in the Bay of Algeciras (Spain)

被引:7
作者
Rodriguez-Garcia, Maria Inmaculada [1 ]
Carrasco-Garcia, Maria Gema [2 ]
Gonzalez-Enrique, Javier [1 ]
Ruiz-Aguilar, Juan Jesus [2 ]
Turias, Ignacio J. [1 ]
机构
[1] Univ Cadiz, Algeciras Sch Engn & Technol ASET, Dept Comp Sci Engn, Algeciras 11202, Spain
[2] Univ Cadiz, Algeciras Sch Engn & Technol ASET, Dept Ind & Civil Engn, Algeciras 11202, Spain
关键词
air pollution forecasting; LSTM models; deep learning; maritime traffic; ANNs; nitrogen oxides; sulphur dioxide; SHIPPING EMISSIONS; POLLUTION; MODEL; OPTIMIZATION; POLLUTANTS; IMPACTS;
D O I
10.3390/su15065089
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Predicting air quality is a very important task, as it is known to have a significant impact on health. The Bay of Algeciras (Spain) is a highly industrialised area with one of the largest superports in Europe. During the period 2017-2019, different data were recorded in the monitoring stations of the bay, forming a database of 131 variables (air pollutants, meteorological information, and vessel data), which were predicted in the Algeciras station using long short-term memory models. Four different approaches have been developed to make SO2 and NO2 forecasts 1 h and 4 h in Algeciras. The first uses the remaining 130 exogenous variables. The second uses only the time series data without exogenous variables. The third approach consists of using an autoregressive time series arrangement as input, and the fourth one is similar, using the time series together with wind and ship data. The results showed that SO2 is better predicted with autoregressive information and NO2 is better predicted with ships and wind autoregressive time series, indicating that NO2 is closely related to combustion engines and can be better predicted. The interest of this study is based on the fact that it can serve as a resource for making informed decisions for authorities, companies, and citizens alike.
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页数:20
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