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An Enhanced Data-Driven Weather Forecasting using Deep Learning Model

Lalitha Krishnasamy, D. Vijay Anand, T. Vigneshwaran, Laxmi Kumari Pathak, S Maheswaran

202316 citationsDOI

Abstract

Predicting present climate and the evolution of the ecosystem is more crucial than ever because of the huge climatic shift that has occurred in nature. Weather forecasts normally are made through compiling numerical data on from the atmospheric state at the moment and also applying scientific knowledge in the atmospheric processes to forecast on how the weather atmosphere would evolve. The most popular study subject nowadays is rainfall forecasting because of complexity in handling the data processing in addition to applications in weather monitoring. Four different state temperature data were collected and applied deep learning methods to predict the temperature level in the forthcoming months. The results brought out with the accuracy from 92.5% to 97.2% for different state temperature data.

Topics & Concepts

Weather forecastingMeteorologyWeather predictionNumerical weather predictionComputer scienceAtmospheric modelClimate changeDeep learningData modelingAtmosphere (unit)Environmental scienceClimatologyMachine learningArtificial intelligenceGeographyGeologyDatabaseOceanographyMeteorological Phenomena and SimulationsPrecipitation Measurement and AnalysisSolar Radiation and Photovoltaics
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