RadNet 1.0: exploring deep learning architectures for longwave radiative transfer

Volume: 13, Issue: 9, Pages: 4399 - 4412
Published: Sep 21, 2020
Abstract
. Simulating global and regional climate at high resolution is essential to study the effects of climate change and capture extreme events affecting human populations. To achieve this goal, the scalability of climate models and efficiency of individual model components are both important. Radiative transfer is among the most computationally expensive components in a typical climate model. Here we attempt to model this component using a neural...
Paper Details
Title
RadNet 1.0: exploring deep learning architectures for longwave radiative transfer
Published Date
Sep 21, 2020
Volume
13
Issue
9
Pages
4399 - 4412
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