Empirical-statistical downscaling (ESD) can be a computationally advantageous alternative to dynamical downscaling in representing a high-resolution regional climate. Two distinct strategies of ESD are employed here to reconstruct near-surface winds in a region of rugged terrain. ESD is used to reconstruct the innermost grid of a multiply nested mesoscale model framework for regional climate downscaling. An analog ensemble (AnEn) and a convolutional neural network (CNN) are compared in their ability to represent near-surface winds in the innermost grid in lieu of dynamical downscaling. Downscaling for a 30 year climatology of 10 m April winds is performed for southern MO, USA. Five years of training suffices for producing low mean absolute ...
[1] Statistical downscaling provides a technique for deriving local-scale information of precipitati...
This paper presents a novel approach to developing empirically downscaled estimates of near-surface ...
AbstractA new open source neural network temporal downscaling model is described and tested using CR...
In this paper, we present the novel approach for the downscaling of of near-surface winds in the Nor...
Datasets and source codes for the manuscript "Surrogate Downscaling of Mesoscale Wind Fields Using E...
International audienceEstimating the impact of wind-driven snow transport requires modeling wind fie...
Numerical weather and climate simulations nowadays produce terabytes of data, and the data volume co...
Statistical downscaling methods seek to model the relationship between large scale atmospheric circu...
Near-surface wind is difficult to estimate using global numerical weather and climate models, becaus...
Weather forecasts at high spatio-temporal resolution are of great relevance for industry and society...
This study uses regional climate model (RCM) simulated precipitation at low and high spatial resolut...
International audienceThis study investigates dynamically different data-driven methods, specificall...
Inspired by the success of superresolution applications in computer vision, deep neural networks hav...
A new open source neural network temporal downscaling model is described and tested using CRU-NCEP r...
Numerous marine applications require the prediction of medium- and long-term sea states. Climate mod...
[1] Statistical downscaling provides a technique for deriving local-scale information of precipitati...
This paper presents a novel approach to developing empirically downscaled estimates of near-surface ...
AbstractA new open source neural network temporal downscaling model is described and tested using CR...
In this paper, we present the novel approach for the downscaling of of near-surface winds in the Nor...
Datasets and source codes for the manuscript "Surrogate Downscaling of Mesoscale Wind Fields Using E...
International audienceEstimating the impact of wind-driven snow transport requires modeling wind fie...
Numerical weather and climate simulations nowadays produce terabytes of data, and the data volume co...
Statistical downscaling methods seek to model the relationship between large scale atmospheric circu...
Near-surface wind is difficult to estimate using global numerical weather and climate models, becaus...
Weather forecasts at high spatio-temporal resolution are of great relevance for industry and society...
This study uses regional climate model (RCM) simulated precipitation at low and high spatial resolut...
International audienceThis study investigates dynamically different data-driven methods, specificall...
Inspired by the success of superresolution applications in computer vision, deep neural networks hav...
A new open source neural network temporal downscaling model is described and tested using CRU-NCEP r...
Numerous marine applications require the prediction of medium- and long-term sea states. Climate mod...
[1] Statistical downscaling provides a technique for deriving local-scale information of precipitati...
This paper presents a novel approach to developing empirically downscaled estimates of near-surface ...
AbstractA new open source neural network temporal downscaling model is described and tested using CR...