Issue |
A&A
Volume 675, July 2023
|
|
---|---|---|
Article Number | A50 | |
Number of page(s) | 32 | |
Section | Planets and planetary systems | |
DOI | https://doi.org/10.1051/0004-6361/202346290 | |
Published online | 03 July 2023 |
(433) Eros and (25143) Itokawa surface properties from reflectance spectra
1
Department of Geosciences and Geography,
PO Box 64,
00014
University of Helsinki, Finland
e-mail: david.korda.sirrah@gmail.com
2
Institute of Geology, Czech Academy of Sciences,
Rozvojová 269,
16500
Prague, Czech Republic
3
Astronomical Institute, Charles University,
V Holešovičkách 2,
18000
Prague, Czech Republic
4
DLR Institute of Planetary Research,
Rutherfordstraße 2,
12489
Berlin, Germany
5
Department of Physics,
PO Box 64,
00014
University of Helsinki, Finland
Received:
1
March
2023
Accepted:
28
April
2023
Context. Our knowledge of near-Earth asteroid (NEA) composition is important for planetary research, planetary defence, and future in-space resource utilisation. Upcoming space missions, for example, Hera, M-ARGO, or missions to the asteroid (99942) Apophis, will provide us with surface-resolved NEA reflectance spectra. Neural networks are useful tools for analysing reflectance spectra and determining material composition with high precision and low processing time.
Aims. We applied neural-network models on disk-resolved spectra of the Eros and Itokawa asteroids observed by the NEAR Shoemaker and Hayabusa spacecraft. With this approach, the mineral variations or intensity of space weathering can be mapped.
Methods. We built and tested two types of convolutional neural networks (CNNs). The first one was trained using asteroid reflectance spectra with known taxonomy classes. The other one used silicate reflectance spectra with assigned mineral abundances and compositions.
Results. The reliability of the classification model depends on the resolution of reflectance spectra. Typical F1 score and Cohen's κC values decrease from about 0.90 for high-resolution spectra to about 0.70 for low-resolution spectra. The predicted silicate composition does not strongly depend on spectrum resolution and coverage of the 2-µm band of pyroxene. The typical root mean square error is between 6 and 10 percentage points. For the Eros and Itokawa asteroids, the predicted taxonomy classes favour the S-type and the predicted surface compositions are homogeneous and correspond to the composition of L/LL and LL ordinary chondrites, respectively. On the Itokawa surface, the model identified fresh spots that were connected with craters or coarse-grain areas.
Conclusions. The neural network models trained with measured spectra of asteroids and silicate samples are suitable for deriving surface silicate mineralogy with a reasonable level of accuracy. The predicted surface mineralogy is comparable to the mineralogy of returned samples measured in the laboratory. Moreover, the taxonomical predictions can point out locations of fresher areas.
Key words: minor planets, asteroids: general / methods: numerical / methods: data analysis / techniques: spectroscopic
© The Authors 2023
Open Access article, published by EDP Sciences, under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
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