X-ray free-electron lasers (XFELs) as the world`s most brilliant light sources provide ultrashort X-ray pulses with durations typically on the order of femtoseconds. Recently, they have approached and entered the attosecond regime, which holds new promises for single-molecule imaging and studying nonlinear and ultrafast phenomena like localized electron dynamics. The technological evolution of XFELs toward well-controllable light sources for precise metrology of ultrafast processes was, however, hampered by the diagnostic capabilities for characterizing X-ray pulses at the attosecond frontier. In this regard, the spectroscopic technique of photoelectron angular streaking has successfully proven how to non-destructively retrieve the exact time-energy structure of XFEL pulses on a single-shot basis. By using artificial intelligence algorithms, in particular convolutional neural networks, we here show how this technique can be leveraged from its proof-of-principle stage toward routine diagnostics at XFELs, thus enhancing and refining their scientific access in all related disciplines.
翻译:X射线自由电子激光器(XFELs)是世界上最辉煌的光源,它提供了超短X射线脉冲,其持续时间通常以femtocons为依次。最近,它们接近并进入了第二级制度,它为单分子成像和研究非线性及超快现象,如局部电子动态提供了新的承诺。XFELs的技术演化为控制良好的超快过程精确计量仪光源。然而,由于在第二边界对X射线脉冲进行定性的诊断能力而受到了阻碍。在这方面,角线性线性光电动光谱技术成功地证明如何在单发的基础上不毁灭地恢复XFEL脉冲的确切时间能量结构。通过使用人工情报算法,特别是革命神经网络,我们在这里展示了如何利用这一技术,从它的校准阶段到XFELs的常规诊断,从而增强和改进其所有相关学科的科学访问。