PM2.5 forecasting for an urban area based on deep learning and decomposition method
air pollutant; air quality; article; deep learning; empirical mode decomposition; human; Malaysia; particulate matter; particulate matter 2.5; predictive model; short term memory; urban area; air pollutant; air pollution; forecasting; Air Pollutants; Air Pollution; Deep Learning; Forecasting; Humans...
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Main Authors: | Zaini N., Ean L.W., Ahmed A.N., Abdul Malek M., Chow M.F. |
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Other Authors: | 56905328500 |
Format: | Article |
Published: |
Nature Research
2023
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