Improving Thermospheric Density Predictions in Low‐Earth Orbit With Machine Learning

Author:

Acciarini Giacomo12ORCID,Brown Edward134ORCID,Berger Tom5ORCID,Guhathakurta Madhulika6,Parr James1,Bridges Christopher12,Baydin Atılım Güneş178

Affiliation:

1. Trillium Technologies Inc. London UK

2. Surrey Space Centre University of Surrey Guildford UK

3. Computer Science Department University of Cambridge Cambridge UK

4. Space Weather and Atmosphere Team British Antarctic Survey Cambridge UK

5. Space Weather Center CU Boulder Boulder CO USA

6. NASA Headquarters Washington DC DC USA

7. Department of Engineering Science University of Oxford Oxford UK

8. Department of Computer Science University of Oxford Oxford UK

Abstract

AbstractThermospheric density is one of the main sources of uncertainty in the estimation of satellites' position and velocity in low‐Earth orbit. This has negative consequences in several space domains, including space traffic management, collision avoidance, re‐entry predictions, orbital lifetime analysis, and space object cataloging. In this paper, we investigate the prediction accuracy of empirical density models (e.g., NRLMSISE‐00 and JB‐08) against black‐box machine learning (ML) models trained on precise orbit determination‐derived thermospheric density data (from CHAMP, GOCE, GRACE, SWARM‐A/B satellites). We show that by using the same inputs, the ML models we designed are capable of consistently improving the predictions with respect to state‐of‐the‐art empirical models by reducing the mean absolute percentage error (MAPE) in the thermospheric density estimation from the range of 40%–60% to approximately 20%. As a result of this work, we introduce Karman: an open‐source Python software package developed during this study. Karman provides functionalities to ingest and preprocess thermospheric density, solar irradiance, and geomagnetic input data for ML readiness. Additionally, it facilitates developing and training ML models on the aforementioned data and benchmarking their performance at different altitudes, geographic locations, times, and solar activity conditions. Through this contribution, we offer the scientific community a comprehensive tool for comparing and enhancing thermospheric density models using ML techniques.

Publisher

American Geophysical Union (AGU)

Subject

Atmospheric Science

Reference52 articles.

1. Acciarini G. Brown E. &Baydin A. G.(2023).Karman[Software].Karman Software. Retrieved fromhttps://karman-project.readthedocs.io/en/latest/

2. Flying Through Uncertainty

3. Lognormal distribution of the observed and modelled neutral thermospheric densities

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