EGU21-2860
https://doi.org/10.5194/egusphere-egu21-2860
EGU General Assembly 2021
© Author(s) 2021. This work is distributed under
the Creative Commons Attribution 4.0 License.

Prediction and understanding of soft proton contamination in XMM-Newton: a machine learning approach

Elena Kronberg1, Fabio Gastaldello2, Stein Haaland3, Artem Smirnov4, Max Berrendorf5, Simona Ghizzardi2, Kip Kuntz6, Nithin Sivadas7, Robert Allen8, Andrea Tiengo2, Raluca llie9, Yu Huang9, and Lynn Kistler10
Elena Kronberg et al.
  • 1Ludwig Maximilian University of Munich, Geophysics, Munich, Germany (kronberg@geophysik.uni-muenchen.de)
  • 2Instituto di Astrofisica Spaziale e Fisica Cosmica (INAF-IASF), Milano, Italy
  • 3Birkeland Centre for Space Science, University of Bergen, Bergen, Norway
  • 4German Research Centre for Geosciences, Potsdam, Germany
  • 5Institute of Informatics, University of Munich, Munich, Germany
  • 6Johns Hopkins University, Baltimore, USA
  • 7Boston University, Boston, USA
  • 8Johns Hopkins University Applied Physics Lab, Laurel, USA
  • 9University of Illinois at Urbana-Champaign, Urbana, USA
  • 10University of New Hampshire, USA

One of the major and unfortunately unforeseen sources of background for the current generation of X-ray telescopes flying mainly in the magnetosphere are soft protons with few tens to hundreds of keV concentrated. One such telescope is the X-ray Multi-Mirror Mission (XMM-Newton) by ESA. Its observing time lost due to the contamination is  about 40%. This affects all the major broad science goals of XMM, ranging from cosmology to astrophysics of neutron stars and black holes. The soft proton background could dramatically impact future X-ray missions such Athena and SMILE missions. Magnetopsheric processes that trigger this background are still poorly understood. We use a machine learning approach to delineate related important parameters and to develop a model to predict the background contamination using 12 years of XMM observations. As predictors we use the location of XMM, solar and geomagnetic activity parameters. We revealed that the contamination is most strongly related to the distance in southern direction, ZGSE, (XMM observations were in the southern hemisphere), the solar wind velocity and the location on the magnetospheric magnetic field lines. We derived simple empirical models for the best two individual predictors and a machine learning model which utilizes an ensemble of the predictors (Extra Trees Regressor) and gives better performance. Based on our analysis, future X-Ray missions in the magnetosphere should minimize observations during  times  associated with high solar wind speed  and avoid closed magnetic field lines, especially at the dusk flank region at least in the southern hemisphere. 

How to cite: Kronberg, E., Gastaldello, F., Haaland, S., Smirnov, A., Berrendorf, M., Ghizzardi, S., Kuntz, K., Sivadas, N., Allen, R., Tiengo, A., llie, R., Huang, Y., and Kistler, L.: Prediction and understanding of soft proton contamination in XMM-Newton: a machine learning approach, EGU General Assembly 2021, online, 19–30 Apr 2021, EGU21-2860, https://doi.org/10.5194/egusphere-egu21-2860, 2021.