Application of machine learning methods for the classification of asteroid resonance motion

When studying the resonant asteroid dynamics, it is necessary to classify time series of critical arguments on circulation, libration, or mixed case depending on their behavior. It is logical to use modern methods of machine learning to automatize this process. Earlier, a similar problem was solved...

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Veröffentlicht in:Vestnik Tomskogo gosudarstvennogo universiteta. Matematika i mekhanika 2022-04 (76), p.87-100
Hauptverfasser: Galushina, Tatyana Yu, Nikolaeva, Elizaveta A., Krasavin, Dmitriy S., Lenter, Oksana N.
Format: Artikel
Sprache:eng ; rus
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Zusammenfassung:When studying the resonant asteroid dynamics, it is necessary to classify time series of critical arguments on circulation, libration, or mixed case depending on their behavior. It is logical to use modern methods of machine learning to automatize this process. Earlier, a similar problem was solved for artificial satellites of the Earth. The purpose of this paper is to adapt the software attended for distinguishing resonant and nonresonant motion of satellites to solving asteroid dynamics problems. To achieve this goal, it is necessary to modify the program code and to train the created model on time rows obtained during the study of the asteroid orbital evolution. Operation of the modified software can be divided into three stages. At the first stage, to simplify the model-classifier, we make coding of time series of asteroid resonant arguments by vectors of lower dimension using an artificial neural network - an autoencoder. The second stage includes automatic clustering time series of asteroid resonant arguments by the HDBSCAN method (Hierarchical Density-Based Spatial Clustering of Applications with Noise) and their manual labeling to learn the classifier. At the third stage, based on the obtained training set, the artificial neural network-classifier is learned. The results of the classifier operation are estimated by visual comparison of graphs of the time series and received assessments. We may conclude that the classifier works correctly in most cases; some inaccuracies are observed in case of extreme amplitude and in the mixed case when libration passes to circulation. Contribution of the authors: the authors contributed equally to this article. The authors declare no conflicts of interests.
ISSN:1998-8621
2311-2255
DOI:10.17223/19988621/76/7