Copula-based synthetic data augmentation for machine-learning emulators
David Meyer, Thomas Nagler, Robin J. Hogan
Abstract
Abstract. Can we improve machine-learning (ML) emulators with synthetic data? If data are scarce or expensive to source and a physical model is available, statistically generated data may be useful for augmenting training sets cheaply. Here we explore the use of copula-based models for generating synthetically augmented datasets in weather and climate by testing the method on a toy physical model of downwelling longwave radiation and corresponding neural network emulator. Results show that for copula-augmented datasets, predictions are improved by up to 62 % for the mean absolute error (from 1.17 to 0.44 W m−2).
Topics & Concepts
DownwellingArtificial neural networkSynthetic dataComputer scienceLongwaveBathythermographMachine learningClimate modelTraining setMean absolute errorData miningNoisy dataArtificial intelligenceData modelingData sourceStatistical learningInterpolation (computer graphics)Deep learningExperimental dataEnvironmental scienceMean absolute percentage errorOutgoing longwave radiationDeep neural networksWeather forecastingMeteorologyDownscalingMeteorological Phenomena and SimulationsClimate variability and modelsModel Reduction and Neural Networks