Reduced Order Probabilistic Emulation for Physics‐Based Thermosphere Models

Abstract The geospace environment is volatile and highly driven. Space weather has effects on Earth's magnetosphere that cause a dynamic and enigmatic response in the thermosphere, particularly on the evolution of neutral mass density. Many models exist that use space weather drivers to produce...

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Main Authors: Richard J. Licata, Piyush M. Mehta
Format: Article
Language:English
Published: Wiley 2023-05-01
Series:Space Weather
Subjects:
Online Access:https://doi.org/10.1029/2022SW003345
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author Richard J. Licata
Piyush M. Mehta
author_facet Richard J. Licata
Piyush M. Mehta
author_sort Richard J. Licata
collection DOAJ
description Abstract The geospace environment is volatile and highly driven. Space weather has effects on Earth's magnetosphere that cause a dynamic and enigmatic response in the thermosphere, particularly on the evolution of neutral mass density. Many models exist that use space weather drivers to produce a density response, but these models are typically computationally expensive or inaccurate for certain space weather conditions. In response, this work aims to employ a probabilistic machine learning (ML) method to create an efficient surrogate for the Thermosphere Ionosphere Electrodynamics General Circulation Model (TIE‐GCM), a physics‐based thermosphere model. Our method leverages principal component analysis to reduce the dimensionality of TIE‐GCM and recurrent neural networks to model the dynamic behavior of the thermosphere much quicker than the numerical model. The newly developed reduced order probabilistic emulator (ROPE) uses Long‐Short Term Memory neural networks to perform time‐series forecasting in the reduced state and provide distributions for future density. We show that across the available data, TIE‐GCM ROPE has similar error to previous linear approaches while improving storm‐time modeling. We also conduct a satellite propagation study for the significant November 2003 storm which shows that TIE‐GCM ROPE can capture the position resulting from TIE‐GCM density with <5 km bias. Simultaneously, linear approaches provide point estimates that can result in biases of 7–18 km.
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spelling doaj-art-5cddebd60bca4e0aa80af9228b792a1d2025-01-14T16:26:43ZengWileySpace Weather1542-73902023-05-01215n/an/a10.1029/2022SW003345Reduced Order Probabilistic Emulation for Physics‐Based Thermosphere ModelsRichard J. Licata0Piyush M. Mehta1Department of Mechanical and Aerospace Engineering West Virginia University Morgantown WV USADepartment of Mechanical and Aerospace Engineering West Virginia University Morgantown WV USAAbstract The geospace environment is volatile and highly driven. Space weather has effects on Earth's magnetosphere that cause a dynamic and enigmatic response in the thermosphere, particularly on the evolution of neutral mass density. Many models exist that use space weather drivers to produce a density response, but these models are typically computationally expensive or inaccurate for certain space weather conditions. In response, this work aims to employ a probabilistic machine learning (ML) method to create an efficient surrogate for the Thermosphere Ionosphere Electrodynamics General Circulation Model (TIE‐GCM), a physics‐based thermosphere model. Our method leverages principal component analysis to reduce the dimensionality of TIE‐GCM and recurrent neural networks to model the dynamic behavior of the thermosphere much quicker than the numerical model. The newly developed reduced order probabilistic emulator (ROPE) uses Long‐Short Term Memory neural networks to perform time‐series forecasting in the reduced state and provide distributions for future density. We show that across the available data, TIE‐GCM ROPE has similar error to previous linear approaches while improving storm‐time modeling. We also conduct a satellite propagation study for the significant November 2003 storm which shows that TIE‐GCM ROPE can capture the position resulting from TIE‐GCM density with <5 km bias. Simultaneously, linear approaches provide point estimates that can result in biases of 7–18 km.https://doi.org/10.1029/2022SW003345thermosphereensembleLSTM
spellingShingle Richard J. Licata
Piyush M. Mehta
Reduced Order Probabilistic Emulation for Physics‐Based Thermosphere Models
Space Weather
thermosphere
ensemble
LSTM
title Reduced Order Probabilistic Emulation for Physics‐Based Thermosphere Models
title_full Reduced Order Probabilistic Emulation for Physics‐Based Thermosphere Models
title_fullStr Reduced Order Probabilistic Emulation for Physics‐Based Thermosphere Models
title_full_unstemmed Reduced Order Probabilistic Emulation for Physics‐Based Thermosphere Models
title_short Reduced Order Probabilistic Emulation for Physics‐Based Thermosphere Models
title_sort reduced order probabilistic emulation for physics based thermosphere models
topic thermosphere
ensemble
LSTM
url https://doi.org/10.1029/2022SW003345
work_keys_str_mv AT richardjlicata reducedorderprobabilisticemulationforphysicsbasedthermospheremodels
AT piyushmmehta reducedorderprobabilisticemulationforphysicsbasedthermospheremodels