Data-driven discovery of dynamics from time-resolved coherent scattering

IF 9.4 1区 材料科学 Q1 CHEMISTRY, PHYSICAL
Nina Andrejevic, Tao Zhou, Qingteng Zhang, Suresh Narayanan, Mathew J. Cherukara, Maria K. Y. Chan
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引用次数: 0

Abstract

Coherent X-ray scattering (CXS) techniques are capable of interrogating dynamics of nano- to mesoscale materials systems at time scales spanning several orders of magnitude. However, obtaining accurate theoretical descriptions of complex dynamics is often limited by one or more factors—the ability to visualize dynamics in real space, computational cost of high-fidelity simulations, and effectiveness of approximate or phenomenological models. In this work, we develop a data-driven framework to uncover mechanistic models of dynamics directly from time-resolved CXS measurements without solving the phase reconstruction problem for the entire time series of diffraction patterns. Our approach uses neural differential equations to parameterize unknown real-space dynamics and implements a computational scattering forward model to relate real-space predictions to reciprocal-space observations. This method is shown to recover the dynamics of several computational model systems under various simulated conditions of measurement resolution and noise. Moreover, the trained model enables estimation of long-term dynamics well beyond the maximum observation time, which can be used to inform and refine experimental parameters in practice. Finally, we demonstrate an experimental proof-of-concept by applying our framework to recover the probe trajectory from a ptychographic scan. Our proposed framework bridges the wide existing gap between approximate models and complex data.

Abstract Image

数据驱动的时间分辨相干散射动态发现
相干 X 射线散射(CXS)技术能够在跨越几个数量级的时间尺度上探测纳米到中尺度材料系统的动态。然而,获得复杂动力学的精确理论描述往往受到一个或多个因素的限制--真实空间中可视化动力学的能力、高保真模拟的计算成本以及近似或现象模型的有效性。在这项工作中,我们开发了一种数据驱动框架,可直接从时间分辨 CXS 测量中发现动力学机理模型,而无需解决整个衍射图样时间序列的相位重建问题。我们的方法使用神经微分方程对未知实空间动力学进行参数化,并实施计算散射前向模型,将实空间预测与倒易空间观测联系起来。结果表明,这种方法能在各种测量分辨率和噪声模拟条件下恢复多个计算模型系统的动态。此外,训练有素的模型能够估算出远超过最长观测时间的长期动态,可用于在实践中提供信息和完善实验参数。最后,我们通过应用我们的框架来恢复探针的轨迹,展示了一个实验性的概念验证。我们提出的框架弥补了近似模型与复杂数据之间的巨大差距。
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来源期刊
npj Computational Materials
npj Computational Materials Mathematics-Modeling and Simulation
CiteScore
15.30
自引率
5.20%
发文量
229
审稿时长
6 weeks
期刊介绍: npj Computational Materials is a high-quality open access journal from Nature Research that publishes research papers applying computational approaches for the design of new materials and enhancing our understanding of existing ones. The journal also welcomes papers on new computational techniques and the refinement of current approaches that support these aims, as well as experimental papers that complement computational findings. Some key features of npj Computational Materials include a 2-year impact factor of 12.241 (2021), article downloads of 1,138,590 (2021), and a fast turnaround time of 11 days from submission to the first editorial decision. The journal is indexed in various databases and services, including Chemical Abstracts Service (ACS), Astrophysics Data System (ADS), Current Contents/Physical, Chemical and Earth Sciences, Journal Citation Reports/Science Edition, SCOPUS, EI Compendex, INSPEC, Google Scholar, SCImago, DOAJ, CNKI, and Science Citation Index Expanded (SCIE), among others.
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