Using Machine Learning to Generate a GISS ModelE Calibrated Physics Ensemble (CPE)

  • Gregory S. Elsaesser
  • , Marcus van Lier-Walqui
  • , Qingyuan Yang
  • , Maxwell Kelley
  • , Andrew S. Ackerman
  • , Ann M. Fridlind
  • , Gregory V. Cesana
  • , Gavin A. Schmidt
  • , Jingbo Wu
  • , Ali Behrangi
  • , Suzana J. Camargo
  • , Bithi De
  • , Kuniaki Inoue
  • , Nicolas M. Leitmann-Niimi
  • , Jeffrey D.O. Strong

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

A neural network (NN) surrogate of the NASA GISS ModelE atmosphere (version E3) is trained on a perturbed parameter ensemble (PPE) spanning 45 physics parameters and 36 outputs. The NN is leveraged in a Markov Chain Monte Carlo (MCMC) Bayesian parameter inference framework to generate a second posterior constrained ensemble coined a “calibrated physics ensemble,” or CPE. The CPE members are characterized by diverse parameter combinations and are, by definition, close to top-of-atmosphere radiative balance, and must broadly agree with numerous hydrologic, energy cycle and radiative forcing metrics simultaneously. Global observations of numerous cloud, environment, and radiation properties (provided by global satellite products) are crucial for CPE generation. The inference framework explicitly accounts for discrepancies (or biases) in satellite products during CPE generation. We demonstrate that product discrepancies strongly impact calibration of important model parameter settings (e.g., convective plume entrainment rates; fall speed for cloud ice). Structural improvements new to E3 are retained across CPE members (e.g., stratocumulus simulation). Notably, the framework improved the simulation of shallow cumulus and Amazon rainfall while not degrading radiation fields, an upgrade that neither default parameters nor Latin Hypercube parameter searching achieved. Analyses of the initial PPE suggested several parameters were unimportant for output variation. However, many “unimportant” parameters were needed for CPE generation, a result that brings to the forefront how parameter importance should be determined in PPEs. From the CPE, two diverse 45-dimensional parameter configurations are retained to generate radiatively-balanced, auto-tuned atmospheres that were used in two E3 submissions to CMIP6.

Original languageEnglish (US)
Article numbere2024MS004713
JournalJournal of Advances in Modeling Earth Systems
Volume17
Issue number4
DOIs
StatePublished - Apr 2025

Keywords

  • calibration
  • climate modeling
  • clouds
  • convection
  • machine learning
  • tuning

ASJC Scopus subject areas

  • Global and Planetary Change
  • Environmental Chemistry
  • General Earth and Planetary Sciences

Fingerprint

Dive into the research topics of 'Using Machine Learning to Generate a GISS ModelE Calibrated Physics Ensemble (CPE)'. Together they form a unique fingerprint.

Cite this