Common Community Physics Package (CCPP) - Single Column Model (SCM)

NeuralGCM

Overview

Teaching: 0 min
Exercises: 0 min
Questions
  • What are neural general circulation models for weather and climate?

Objectives
  • Learn about the artificial intelligence and machine learning models used for weather anc climate

What are artificial neural networks?

NeuralGCM

Precipitation minus evaporation

image (a) Tropical (latitudes −20° to 20°) precipitation minus evaporation (P minus E) rate distribution, (b) Extratropical (latitudes 30° to 70° in both hemispheres) P minus E, (c) mean P minus E for 2020 ERA514 and (d) NeuralGCM-0.7° (calculated from the third day of forecasts and averaged over all forecasts initialized in 2020), (e) the bias between NeuralGCM-0.7° and ERA5, (f-g) Snapshot of daily precipitation minus evaporation for 2020-01-04 for (f) NeuralGCM-0.7° (forecast initialized on 2020-01-02) and (g) ERA5.

Tropical Cyclone densities and annual regional counts

image (a) Tropical Cyclone (TC) density from ERA514 data spanning 1987–2020. (b) TC density from NeuralGCM-1.4° for 2020, generated using 34 different initial conditions all initialized in 2019. (c) Box plot depicting the annual number of TCs across different regions, based on ERA5 data (1987–2020), NeuralGCM-1.4° for 2020 (34 initial conditions), and orange markers show ERA5 for 2020. In the box plots, the red line represents the median; the box delineates the first to third quartiles; the whiskers extend to 1.5 times the interquartile range (Q1 − 1.5IQR and Q3 + 1.5IQR), and outliers are shown as individual dots. Each year is defined from January 19th to January 17th of the following year, aligning with data availability from X-SHiELD (eXperimental System for High-resolution prediction on Earth-to-Local Domains developed at the Geophysical Fluid Dynamics Laboratory). For NeuralGCM simulations, the 3 initial conditions starting in January 2019 exclude data for January 17th, 2021, as these runs spanned only two years.

Key Points