Litcius/Paper detail

Spatial Modeling of Precipitation Based on Data-Driven Warping of Gaussian Processes

Vasiliki D. Agou, Andrew Pavlides, Dionissios T. Hristopulos

2022Entropy27 citationsDOIOpen Access PDF

Abstract

Modeling and forecasting spatiotemporal patterns of precipitation is crucial for managing water resources and mitigating water-related hazards. Globally valid spatiotemporal models of precipitation are not available. This is due to the intermittent nature, non-Gaussian distribution, and complex geographical dependence of precipitation processes. Herein we propose a data-driven model of precipitation amount which employs a novel, data-driven (non-parametric) implementation of warped Gaussian processes. We investigate the proposed warped Gaussian process regression (wGPR) using (i) a synthetic test function contaminated with non-Gaussian noise and (ii) a reanalysis dataset of monthly precipitation from the Mediterranean island of Crete. Cross-validation analysis is used to establish the advantages of non-parametric warping for the interpolation of incomplete data. We conclude that wGPR equipped with the proposed data-driven warping provides enhanced flexibility and-at least for the cases studied- improved predictive accuracy for non-Gaussian data.

Topics & Concepts

Image warpingComputer sciencePrecipitationGaussianGaussian processKrigingDynamic time warpingParametric statisticsInterpolation (computer graphics)Noise (video)Spatial analysisSynthetic dataData miningEnvironmental scienceArtificial intelligenceMathematicsStatisticsMeteorologyMachine learningGeographyPhysicsQuantum mechanicsImage (mathematics)Motion (physics)Climate variability and modelsHydrology and Watershed Management StudiesHydrology and Drought Analysis