Precipitation forecast using RNN variants by analyzing Optimizers and Hyperparameters for Time-series based Climatological Data
J. Subha,
S. Saudia
Abstract:Flood is a significant problem in many regions of the world for the catastrophic damage it causes to both property and human lives; excessive precipitation being the major cause. The AI technologies, Deep Learning Neural Networks and Machine Learning algorithms attempt realistic solutions to numerous disaster management challenges. This paper works on RNN- based rainfall/ precipitation forecasting models by investigating the performances of various Recurrent Neural Network (RNN) architectures, Bidirectional RN… Show more
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