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Prediction of Rainfall Using Intensified LSTM Based Recurrent Neural Network with Weighted Linear Units
2019
Atmosphere
Prediction of rainfall is one of the major concerns in the domain of meteorology. Several techniques have been formerly proposed to predict rainfall based on statistical analysis, machine learning and deep learning techniques. Prediction of time series data in meteorology can assist in decision-making processes carried out by organizations responsible for the prevention of disasters. This paper presents Intensified Long Short-Term Memory (Intensified LSTM) based Recurrent Neural Network (RNN)
doi:10.3390/atmos10110668
fatcat:bo3le6jbt5g3vlug3wyp67gbfa