The representation of sub-grid processes, especially clouds, remains the largest source of uncertainty for climate prediction. Cloud-resolving models alleviate many of the gravest problems but are computationally expensive. In this talk I will show how a deep neural network can learn to parameterize atmospheric sub-grid processes from a short-term high-resolution dataset. Our results tie in with a recent push towards a more data-driven climate model development.
17.07.2018
15:15 Uhr