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Using wavelet transform and dynamic time warping to identify the limitations of the CNN model as an air quality forecasting system
2020
Geoscientific Model Development
Abstract. As the deep learning algorithm has become a popular data analysis technique, atmospheric scientists should have a balanced perception of its strengths and limitations so that they can provide a powerful analysis of complex data with well-established procedures. Despite the enormous success of the algorithm in numerous applications, certain issues related to its applications in air quality forecasting (AQF) require further analysis and discussion. This study addresses significant
doi:10.5194/gmd-13-6237-2020
fatcat:7whjm4gkh5de3ezr34j7apyofq