Martian Ionosphere Electron Density Prediction Using Bagged Trees
November 03, 2022 ยท Declared Dead ยท ๐ 2022 International Conference on Electrical and Computing Technologies and Applications (ICECTA)
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Authors
Abdollah Masoud Darya, Noora Alameri, Muhammad Mubasshir Shaikh, Ilias Fernini
arXiv ID
2211.01902
Category
physics.ao-ph
Cross-listed
cs.LG
Citations
0
Venue
2022 International Conference on Electrical and Computing Technologies and Applications (ICECTA)
Last Checked
2 months ago
Abstract
The availability of Martian atmospheric data provided by several Martian missions broadened the opportunity to investigate and study the conditions of the Martian ionosphere. As such, ionospheric models play a crucial part in improving our understanding of ionospheric behavior in response to different spatial, temporal, and space weather conditions. This work represents an initial attempt to construct an electron density prediction model of the Martian ionosphere using machine learning. The model targets the ionosphere at solar zenith ranging from 70 to 90 degrees, and as such only utilizes observations from the Mars Global Surveyor mission. The performance of different machine learning methods was compared in terms of root mean square error, coefficient of determination, and mean absolute error. The bagged regression trees method performed best out of all the evaluated methods. Furthermore, the optimized bagged regression trees model outperformed other Martian ionosphere models from the literature (MIRI and NeMars) in finding the peak electron density value, and the peak density height in terms of root-mean-square error and mean absolute error.
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