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Short-Term Prediction of PM2.5 Using LSTM Deep Learning Methods

Endah Kristiani, Hao Lin, Jwu‐Rong Lin, Yen-Hsun Chuang, Chin‐Yin Huang, Chao‐Tung Yang

2022Sustainability76 citationsDOIOpen Access PDF

Abstract

This paper implements deep learning methods of recurrent neural networks and short-term memory models. Two kinds of time-series data were used: air pollutant factors, such as O3, SO2, and CO2 from 2017 to 2019, and meteorological factors such as temperature, humidity, wind direction, and wind speed. A trained model was used to predict air pollution within an eight-hour period. Correlation analysis was applied using Pearson and Spearman correlation coefficients. The KNN method was used to fill in the missing values to improve the generated model’s accuracy. The average absolute error percentage value was used in the experiments to evaluate the model’s performance. LSTM had the lowest RMSE value at 1.9 than the other models from the experiments. CNN had a significant RMSE value at 3.5, followed by Bi-LSTM at 2.5 and Bi-GRU at 2.7. In comparison, the RNN was slightly higher than LSTM at a 2.4 value.

Topics & Concepts

Mean squared errorWind speedTerm (time)Correlation coefficientRecurrent neural networkDeep learningPearson product-moment correlation coefficientArtificial neural networkArtificial intelligenceStatisticsSeries (stratigraphy)Time seriesCorrelationComputer scienceMean absolute errorMeteorologyMathematicsGeographyBiologyGeometryQuantum mechanicsPaleontologyPhysicsAir Quality Monitoring and ForecastingAir Quality and Health ImpactsVehicle emissions and performance
Short-Term Prediction of PM2.5 Using LSTM Deep Learning Methods | Litcius