Liu Jiliang, Yager Kevin G
Center for Functional Nanomaterials, Brookhaven National Laboratory, Upton, NY 11973, USA.
IUCrJ. 2018 Oct 8;5(Pt 6):737-752. doi: 10.1107/S2052252518012058. eCollection 2018 Nov 1.
Grazing-incidence small-angle X-ray scattering (GISAXS) is a powerful technique for measuring the nanostructure of coatings and thin films. However, GISAXS data are plagued by distortions that complicate data analysis. The detector image is a warped representation of reciprocal space because of refraction, and overlapping scattering patterns appear because of reflection. A method is presented to unwarp GISAXS data, recovering an estimate of the true undistorted scattering pattern. The method consists of first generating a guess for the structure of the reciprocal-space scattering by solving for a mutually consistent prediction from the transmission and reflection sub-components. This initial guess is then iteratively refined by fitting experimental GISAXS images at multiple incident angles, using the distorted-wave Born approximation (DWBA) to convert between reciprocal space and detector space. This method converges to a high-quality reconstruction for the undistorted scattering, as validated by comparing with grazing-transmission scattering data. This new method for unwarping GISAXS images will broaden the applicability of grazing-incidence techniques, allowing experimenters to inspect undistorted visualizations of their data and allowing a broader range of analysis methods to be applied to GI data.
掠入射小角X射线散射(GISAXS)是一种用于测量涂层和薄膜纳米结构的强大技术。然而,GISAXS数据受到使数据分析复杂化的畸变困扰。由于折射,探测器图像是倒易空间的扭曲表示,并且由于反射会出现重叠的散射图案。本文提出了一种对GISAXS数据进行解扭曲的方法,以恢复真实无畸变散射图案的估计值。该方法首先通过求解透射和反射子分量的相互一致预测来生成倒易空间散射结构的初始猜测。然后,使用扭曲波玻恩近似(DWBA)在倒易空间和探测器空间之间进行转换,通过拟合多个入射角下的实验GISAXS图像,对该初始猜测进行迭代优化。通过与掠入射透射散射数据进行比较验证,该方法收敛到无畸变散射的高质量重建。这种用于解扭曲GISAXS图像的新方法将拓宽掠入射技术的适用性,使实验人员能够检查其数据的无畸变可视化结果,并允许将更广泛的分析方法应用于掠入射数据。