论文标题

机器学习光子检测算法,用于相干X射线超快波动分析

A machine learning photon detection algorithm for coherent X-ray ultrafast fluctuation analysis

论文作者

Chitturi, Sathya R., Burdet, Nicolas G., Nashed, Youssef, Ratner, Daniel, Mishra, Aashwin, Lane, TJ, Seaberg, Matthew, Esposito, Vincent, Yoon, Chun H., Dunne, Mike, Turner, Joshua J.

论文摘要

X射线不含电子激光器(XFEL)实验带来了独特的功能,并打开了研究的新方向,例如创建新的物质状态或直接测量原子运动。这样的领域之一就是能够在不同时间从动态系统散射后使用细分间隔的相干X射线脉冲集进行比较。这使得在超快脉冲持续时间级别的多体量子系统中的波动进行了研究,但是该方法仅限于精选的示例和所需的复杂和先进的分析工具。通过将新方法应用于此问题,我们在三个不同的领域取得了定性的进步,这也可能还会在新领域中找到应用。与通常用于估计像素化检测器上的光子分布以获得连贯的X射线斑点图案上的光子分布相比,我们的算法管道可实现CPU硬件上的数量级加速度,并在GPU硬件上对GPU硬件上的大小提高。我们还发现,它在低对比度条件下保留了准确性,这是许多结构动力学实验的典型机制。最后,它可以预测高平均强度应用中的光子分布,这是迄今为止尚未访问的制度。我们的AI辅助算法将通过自动化先前挑战的分析和实现新的实验,而如果没有这项工作中描述的发展,这些新实验是不可行的。

X-ray free electron laser (XFEL) experiments have brought unique capabilities and opened new directions in research, such as creating new states of matter or directly measuring atomic motion. One such area is the ability to use finely spaced sets of coherent x-ray pulses to be compared after scattering from a dynamic system at different times. This enables the study of fluctuations in many-body quantum systems at the level of the ultrafast pulse durations, but this method has been limited to a select number of examples and required complex and advanced analytical tools. By applying a new methodology to this problem, we have made qualitative advances in three separate areas that will likely also find application to new fields. As compared to the `droplet-type' models which typically are used to estimate the photon distributions on pixelated detectors to obtain the coherent X-ray speckle patterns, our algorithm pipeline achieves an order of magnitude speedup on CPU hardware and two orders of magnitude improvement on GPU hardware. We also find that it retains accuracy in low-contrast conditions, which is the typical regime for many experiments in structural dynamics. Finally, it can predict photon distributions in high average-intensity applications, a regime which up until now, has not been accessible. Our AI-assisted algorithm will enable a wider adoption of x-ray coherence spectroscopies, by both automating previously challenging analyses and enabling new experiments that were not otherwise feasible without the developments described in this work.

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