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Deep Learning Methods On Neutron Scattering Data

机译:中子散射数据的深度学习方法

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摘要

Recently, by using deep learning methods, a computer is able to surpass or come close to matching human performance on image analysis and recognition. This advanced methods could also help extracting features from neutron scattering experimental data. Those data contain rich scientific information about structure and dynamics of materials under investigation. Deep learning could help researchers better understand the link between experimental data and materials properties. Moreover, it could also help to optimize neutron scattering experiment by predicting the best possible instrument configuration. Among all possible experimental methods, we begin our study on the small-angle neutron scattering (SANS) data and by predicting the structure geometry of the sample material at an early stage. This step is a keystone to predict the experimental parameters to properly setup the instrument as well as the best measurement strategy. In this paper, we propose to use transfer learning to retrain a convolutional neural networks (CNNs) based pre rained model to adapt the scattering images classification, which could predict the structure of the materials at an early stage in the SANS experiment. This deep neural network is trained and validated on simulated database, and tested on real scattering images.
机译:最近,通过使用深度学习方法,计算机能够超越或接近匹配的人类性能在图像分析和识别上。这种高级方法还可以帮助提取中子散射实验数据的特征。这些数据包含有关正在调查的材料结构和动态的丰富科学信息。深度学习可以帮助研究人员更好地了解实验数据和材料属性之间的联系。此外,它还可以通过预测最佳可能的仪器配置来帮助优化中子散射实验。在所有可能的实验方法中,我们开始研究小角度中子散射(SAN)数据,并通过在早期阶段预测样品材料的结构几何形状。该步骤是预测正确设置仪器以及最佳测量策略的实验参数的梯形。在本文中,我们建议使用转移学习来重新研磨基于卷积神经网络(CNNS)的前下雨模型以适应散射图像分类,这可以预测SAN实验中的早期阶段的材料结构。这种深度神经网络在模拟数据库上培训并验证,并在实际散射图像上进行测试。

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