Reduced Order Probabilistic Emulation for Physics-Based Thermosphere Models

11/08/2022
by   Richard J. Licata, et al.
0

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.

READ FULL TEXT

page 3

page 6

page 11

page 14

research
09/16/2021

Machine-Learned HASDM Model with Uncertainty Quantification

The first thermospheric neutral mass density model with robust and relia...
research
01/06/2022

Uncertainty Quantification Techniques for Space Weather Modeling: Thermospheric Density Application

Machine learning (ML) has often been applied to space weather (SW) probl...
research
08/24/2022

Calibrated and Enhanced NRLMSIS 2.0 Model with Uncertainty Quantification

The Mass Spectrometer and Incoherent Scatter radar (MSIS) model family h...
research
04/21/2021

Principal Component Density Estimation for Scenario Generation Using Normalizing Flows

Neural networks-based learning of the distribution of non-dispatchable r...
research
03/23/2022

A Deep Learning Approach to Probabilistic Forecasting of Weather

We discuss an approach to probabilistic forecasting based on two chained...
research
10/01/2019

MASS-UMAP: Fast and accurate analog ensemble search in weather radar archive

The use of analogs - similar weather patterns - for weather forecasting ...
research
06/01/2022

Non-Intrusive Reduced Models based on Operator Inference for Chaotic Systems

This work explores the physics-driven machine learning technique Operato...

Please sign up or login with your details

Forgot password? Click here to reset