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Title: Emulating aerosol optics with randomly generated neural networks

Journal Article · · Geoscientific Model Development (Online)

Abstract. Atmospheric aerosols have a substantial impact on climate and remain one of the largest sources of uncertainty in climate prediction. Accurate representation of their direct radiative effects is a crucial component of modern climate models. However, direct computation of the radiative properties of aerosol populations is far too computationally expensive to perform in a climate model, so optical properties are typically approximated using a parameterization. This work develops artificial neural networks (ANNs) capable of replacing the current aerosol optics parameterization used in the Energy Exascale Earth System Model (E3SM). A large training dataset is generated by using Mie code to directly compute the optical properties of a range of atmospheric aerosol populations given a large variety of particle sizes, wavelengths, and refractive indices. Optimal neural architectures for shortwave and longwave bands are identified by evaluating ANNs with randomly generated wirings. Randomly generated deep ANNs are able to outperform conventional multilayer-perceptron-style architectures with comparable parameter counts. Finally, the ANN-based parameterization produces significantly more accurate bulk aerosol optical properties than the current parameterization when compared with direct Mie calculations using mean absolute error. The success of this approach makes possible the future inclusion of much more sophisticated representations of aerosol optics in climate models that cannot be captured by extension of the existing parameterization scheme and also demonstrates the potential of random-wiring-based neural architecture search in future applications in the Earth sciences.

Sponsoring Organization:
USDOE
Grant/Contract Number:
AC05-76RL01830
OSTI ID:
1972745
Alternate ID(s):
OSTI ID: 1974352
Journal Information:
Geoscientific Model Development (Online), Journal Name: Geoscientific Model Development (Online) Journal Issue: 9 Vol. 16; ISSN 1991-9603
Publisher:
Copernicus GmbHCopyright Statement
Country of Publication:
Germany
Language:
English

References (47)

Description and evaluation of a new four-mode version of the Modal Aerosol Module (MAM4) within version 5.3 of the Community Atmosphere Model journal January 2016
An evolutionary algorithm that constructs recurrent neural networks journal January 1994
Review of Aerosol–Cloud Interactions: Mechanisms, Significance, and Challenges journal November 2016
CAM-chem: description and evaluation of interactive atmospheric chemistry in the Community Earth System Model journal January 2012
Machine Learning the Warm Rain Process journal February 2021
Toward Data‐Driven Weather and Climate Forecasting: Approximating a Simple General Circulation Model With Deep Learning journal November 2018
Improving Data‐Driven Global Weather Prediction Using Deep Convolutional Neural Networks on a Cubed Sphere journal September 2020
An Overview of the Atmospheric Component of the Energy Exascale Earth System Model journal August 2019
Aerosols in the E3SM Version 1: New Developments and Their Impacts on Radiative Forcing journal January 2020
The general dynamic equation for aerosols. Theory and application to aerosol formation and growth journal February 1979
Deep learning to represent subgrid processes in climate models journal September 2018
Exploring Randomly Wired Neural Networks for Image Recognition conference October 2019
Toward a minimal representation of aerosols in climate models: description and evaluation in the Community Atmosphere Model CAM5 journal January 2012
Deep Residual Learning for Image Recognition conference June 2016
Clouds and Aerosols book June 2014
Aerosols, Cloud Microphysics, and Fractional Cloudiness journal September 1989
Radiative transfer for inhomogeneous atmospheres: RRTM, a validated correlated-k model for the longwave journal July 1997
Description of Aerosol Dynamics by the Quadrature Method of Moments journal January 1997
The importance of comprehensive parameter sampling and multiple observations for robust constraint of aerosol radiative forcing journal January 2018
Evaluation of aerosol direct radiative forcing in MIRAGE journal March 2001
Correcting Weather and Climate Models by Machine Learning Nudged Historical Simulations journal August 2021
Prognostic Validation of a Neural Network Unified Physics Parameterization journal June 2018
The DOE E3SM Coupled Model Version 1: Overview and Evaluation at Standard Resolution journal July 2019
Fast and accurate learned multiresolution dynamical downscaling for precipitation journal October 2021
Efficacy of climate forcings journal January 2005
Using deep learning to emulate and accelerate a radiative-transfer model journal July 2021
Correcting Coarse‐Grid Weather and Climate Models by Machine Learning From Global Storm‐Resolving Simulations journal February 2022
Radiative forcing by long-lived greenhouse gases: Calculations with the AER radiative transfer models journal January 2008
Outlook for Exploiting Artificial Intelligence in the Earth and Environmental Sciences journal May 2021
Hyperparameter Optimization book May 2019
Bounding global aerosol radiative forcing of climate change journal November 2019
Evolving artificial neural networks journal January 1999
Light scattering in planetary atmospheres journal October 1974
Retrieving the aerosol complex refractive index using PyMieScatt: A Mie computational package with visualization capabilities journal January 2018
Using Ensemble of Neural Networks to Learn Stochastic Convection Parameterizations for Climate and Numerical Weather Prediction Models from Data Simulated by a Cloud Resolving Model journal January 2013
Downscaling atmospheric chemistry simulations with physically consistent deep learning journal September 2022
Improved Mie scattering algorithms journal January 1980
Comparison of discrete, discrete-sectional, modal and moment models for aerosol dynamics simulations journal February 2020
The Influence of Pollution on the Shortwave Albedo of Clouds journal July 1977
Learning Transferable Architectures for Scalable Image Recognition conference June 2018
Densely Connected Convolutional Networks conference July 2017
Paths to accuracy for radiation parameterizations in atmospheric models: PATHS TO PARAMETERIZATION ACCURACY journal May 2013
Sectional representations for simulating aerosol dynamics journal August 1980
Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification conference December 2015
Multilayer feedforward networks are universal approximators journal January 1989
Parameterization of optical properties for hydrated internally mixed aerosol: PARAMETERIZATION OF OPTICAL PROPERTIES FOR HYDRATED AEROSOL journal May 2007
The Community Earth System Model Version 2 (CESM2) journal February 2020