Chemical and mineral compositions of asteroids reflect the formation and history of our Solar System. This knowledge is also important for planetary defence and in-space resource utilisation. We aim to develop a fast and robust neural-network-based method for deriving the mineral modal and chemical compositions of silicate materials from their visible and near-infrared spectra. The method should be able to process raw spectra without significant pre-processing. We designed a convolutional neural network with two hidden layers for the analysis of the spectra, and trained it using labelled reflectance spectra. For the training, we used a dataset that consisted of reflectance spectra of real silicate samples stored in the RELAB and C-Tape databases, namely olivine, orthopyroxene, clinopyroxene, their mixtures, and olivine-pyroxene-rich meteorites. We used the model on two datasets. First, we evaluated the model reliability on a test dataset where we compared the model classification with known compositional reference values. The individual classification results are mostly within 10 percentage-point intervals around the correct values. Second, we classified the reflectance spectra of S-complex (Q-type and V-type, also including A-type) asteroids with known Bus-DeMeo taxonomy classes. The predicted mineral chemical composition of S-type and Q-type asteroids agree with the chemical composition of ordinary chondrites. The modal abundances of V-type and A-type asteroids show a dominant contribution of orthopyroxene and olivine, respectively. Additionally, our predictions of the mineral modal composition of S-type and Q-type asteroids show an apparent depletion of olivine related to the attenuation of its diagnostic absorptions with space weathering. This trend is consistent with previous results of the slower pyroxene response to space weathering relative to olivine.
翻译:小行星的化学和矿物成分反映了太阳系的形成和历史。这一知识对于行星防御和空间资源利用也很重要。我们的目标是开发一个快速和强大的神经网络模型,从可见和近红外光谱中提取硅酸盐材料的矿物模型和化学成分。该方法应能在没有大量预处理的情况下处理原始光谱。我们设计了一个具有两个隐藏层的神经网络,用于分析光谱,并用贴有标签的反射光谱进行了培训。在培训中,我们使用了一个由RELAB和C-Tape数据库中储存的实硅酸样品的反映性天气特征光谱组成的数据集,即寡头、正眼霉素、其混合物和寡头颗粒-离子-小行星的流光谱。我们在两个数据集中使用了该模型。我们用一个测试数据集对模型的可靠性进行了评估,将模型分类与已知的引用值进行比较。个人分类结果大多在RELAB和C-C-S-Sloral-seral-lal-loral-sal-sal-lational-lational-sal-lational-lational-leval-leval-lational-lational-lational-leval-leval-lational-leval-slational-lational-lational-lational-s-s-s-s-s-leval-leval-leval-s-leval-leval-leval-lation-s-lation-leval-lation-lation-lation-lation-l-lation-lation-lation-s-s-s-s-s-s-s-s-s-s-s-s-s-s-lxxxxxxxxxxxxxxxxxxl-l-l-l-s-s-s-l-l-s-s-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-lxxxxxxxxxxxxxxxxxxx-l-l-l-l