PM 2.5 Prediction with a Novel Multi-Step-Ahead Forecasting Model Based on Dynamic Wind Field Distance
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- Zongxi Qu & Xiaogang Hao & Fazhen Zhao & Chunhua Niu, 2023. "Uncertainty analysis–forecasting system based on decomposition–ensemble framework for PM2.5 concentration forecasting in China," Journal of Forecasting, John Wiley & Sons, Ltd., vol. 42(8), pages 2027-2044, December.
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Keywords
PM 2.5 prediction; spatiotemporal correlation; long short-term memory neural network; convolutional neural work; KNN;All these keywords.
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