Improving Air Quality Forecast Accuracy in Urumqi-Changji-Shihezi Region Using an Ensemble Deep Learning Approach

被引:0
|
作者
Zhang, Bin [1 ]
Lü, Baolei [2 ]
Wang, Xinlu [3 ]
Zhang, Wenxian [3 ]
Hu, Yongtao [4 ]
机构
[1] Xinjiang Bingtuan Environmental Protection Sciences Research Institute, Urumqi,830002, China
[2] Huayun Sounding Meteorological Technology Company, Ltd., Beijing,102299, China
[3] Hangzhou AiMa Technologies, Hangzhou,311121, China
[4] School of Civil and Environmental Engineering, Georgia Institute of Technology, Atlanta,GA,30332, United States
关键词
Adaptive boosting - Random forests - Weather forecasting - Deep neural networks - Learning systems - Decision trees - Air quality - Land use;
D O I
10.13209/j.0479-8023.2020.070
中图分类号
学科分类号
摘要
A post-correction framework based on raw forecasts from the numerical air quality model CMAQ is implemented in the Urumqi-Changji-Shihezi region of Xinjiang Autonomous Region to achieve better forecasting performance of PM2.5. An ensemble deep learning method is used to correct the error of original forecasts of CMAQ. The method integrates four machine learning models: deep neural network model, random forest model, gradient boosting model and generalized linear model. In each model, the original meteorological forecasts, air quality forecasts and land use types are used as input data. With the independent evaluation data in 2018, the accuracy of the bias-corrected forecasts is significantly improved. The R2 values of the 5-day forecast is 0.41-0.60, which are improved from the original forecasts by 60%-160%, while the RMSE values are reduced by ~40%. As for the cross evaluation, the R2 values of post-corrected results increase by 50%-80%, while RMSE values are reduced by ~30%. The post-correction method is computationally efficient and can be deployed operationally for reliable daily forecasting. © 2020 Peking University.
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页码:931 / 938
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