2018 SpaceOps Conference 2018
DOI: 10.2514/6.2018-2639
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Machine Learning Modeling Methods for Radiation Belts Profile Predictions

Abstract: This paper presents the results of the potential application of machine learning techniques, specifically the Random Forest method, to spacecraft operations optimization. The test subject is ESAs INTEGRAL gamma ray observatory with the goal of demonstrating that AI techniques can reliably model the radiation environment of the satellite as it orbits the Earth and passes through the Earths trapped radiation zones in the Van Allen belts. The results clearly demonstrate that machine learning can approximate predi… Show more

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Cited by 5 publications
(6 citation statements)
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References 5 publications
(6 reference statements)
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“…For this task, we consider two data representations -positional and per-revolution. The former, positional representation, is similar to the one proposed by Finn et al [14]. Here, the data is ordered in a series where examples describe the state of the spacecraft using the orbital elements and the IREM counts (or binary indicators whether INTEGRAL is in the belts or not).…”
Section: B Galaxai-integralmentioning
confidence: 99%
See 1 more Smart Citation
“…For this task, we consider two data representations -positional and per-revolution. The former, positional representation, is similar to the one proposed by Finn et al [14]. Here, the data is ordered in a series where examples describe the state of the spacecraft using the orbital elements and the IREM counts (or binary indicators whether INTEGRAL is in the belts or not).…”
Section: B Galaxai-integralmentioning
confidence: 99%
“…Accurately modeling and predicting the spacecraft's position w.r.t these radiation belts is important. This allows for better control over activation/deactivation of onboard instruments and ultimately leading to optimal scientific output [14].…”
Section: Introductionmentioning
confidence: 99%
“…Finally, while the proposed methodology focuses on the thermal subsystem of the MEX spacecraft, it can also be readily applied to the other subsystems. Moreover, it can also be extended to other spacecraft such as the XMM Newton [17], Integral [20] and ExoMars as well as rovers (such as Curiosity and ExoMars) exploring Mars.…”
Section: Ensemble Of Ensemblesmentioning
confidence: 99%
“…The outcome of which was an unprecedented interest in MEX, an incredibly enthusiastic response from the ML community with several models which are an order of magnitude more accurate than the predictive model presently used by the MEX FCT. Demonstrated on Mars Express, similar approaches such as [4,5] are already applied to other spacecraft and subsystems.…”
Section: B Mars Express Thermal Subsystem Use-casementioning
confidence: 99%