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In this study, grazing-incidence small-angle X-ray scattering (GISAXS) is used to collect statistical information on dimensional parameters in an area of 20 × 15 mm on photonic structures produced by nanoimprint lithography. The photonic structures are composed of crystalline and locally quasicrystalline two-dimensional patterns with structure sizes between about 100 nm and 10 µm to enable broadband visible light absorption for use in solar-energy harvesting. These first GISAXS measurements on locally quasicrystalline samples demonstrate that GISAXS is capable of showing the locally quasicrystalline nature of the samples while at the same time revealing the long-range periodicity introduced by the lattice design. The scattering is described qualitatively in the framework of the distorted-wave Born approximation using a hierarchical model mirroring the sample design, which consists of a rectangular and locally quasicrystalline supercell that is repeated periodically to fill the whole surface. The nanoimprinted samples are compared with a sample manufactured using electron-beam lithography and the distortions of the periodic and locally quasiperiodic samples are quantified statistically. Owing to the high sensitivity of GISAXS to deviations from the perfect lattice, the misalignment of the crystallographic axes was measured with a resolution of 0.015°, showing distortions of up to ±0.15° in the investigated samples.

Supporting information

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Hyper-Text Markup Language (HTML) file https://doi.org/10.1107/S1600576719001080/rg5156sup1.html
Animated graphic showing the phi distribution of the NIL 12-fold quasi sample

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Portable Document Format (PDF) file https://doi.org/10.1107/S1600576719001080/rg5156sup2.pdf
GISAXS calibration procedure

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Zip compressed file https://doi.org/10.1107/S1600576719001080/rg5156sup3.zip
Raw data and evaluation scripts


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