Multivariate climate downscaling with latent neural processes
Accepted version
Peer-reviewed
Repository URI
Repository DOI
Change log
Authors
Abstract
Statistical downscaling is a vital tool in generating high resolution projections for climate impact studies. This study applies convolutional latent neural processes to multivariate downscaling of maximum temperature and precipitation. In contrast to existing downscaling methods, this model is shown to produce spatially coherent predictions at arbitrary locations specified at test time, regardless of whether training data are available at these points.
Description
Keywords
Journal Title
Conference Name
ICML 2021 Workshop Tackling Climate Change with Machine Learning
Journal ISSN
Volume Title
Publisher
Publisher DOI
Publisher URL
Rights and licensing
Except where otherwised noted, this item's license is described as All Rights Reserved
