In spectroscopic experiments, data acquisition in multi-dimensional phase space may require long acquisition time, owing to the large phase space volume to be covered. In such case, the limited time available for data acquisition can be a serious constraint for experiments in which multidimensional spectral data are acquired. Here, taking angle-resolved photoemission spectroscopy (ARPES) as an example, we demonstrate a denoising method that utilizes deep learning as an intelligent way to overcome the constraint. With readily available ARPES data and random generation of training data set, we successfully trained the denoising neural network without overfitting. The denoising neural network can remove the noise in the data while preserving its intrinsic information. We show that the denoising neural network allows us to perform similar level of second-derivative and line shape analysis on data taken with two orders of magnitude less acquisition time. The importance of our method lies in its applicability to any multidimensional spectral data that are susceptible to statistical noise.
翻译:在光谱实验中,多维空间的数据获取可能需要很长的时间,因为需要覆盖的相位空间量很大。在这种情况下,可用于数据获取的时间有限可能严重制约获取多维光谱数据的实验。在这里,以角解光分光谱分析(ARPES)为例,我们展示了一种分泌方法,这种方法利用深层学习作为克服制约的智能方法。有了可轻易获得的亚光谱数据并随机生成培训数据集,我们成功地培训了解密神经网络,而不作过度的调整。分泌神经网络可以消除数据中的噪音,同时保存其内在信息。我们显示,脱去神经网络允许我们对数据进行类似程度的二级分光谱和线形分析,其次等量为获取时间的两个级。我们的方法的重要性在于它适用于任何易于统计噪音的多维谱数据。