Hf₀.₅Zr₀.₅O₂ (HZO) exhibits processing-dependent polymorphism, forming multiple crystallographic phases that critically influence its electrical properties. However, conventional characterization methods face significant limitations: X-ray diffraction (XRD) suffers from overlapping peaks, while transmission electron microscopy (TEM) provides only localized information with limited statistical coverage. These challenges necessitate high-resolution, large-area analytical techniques capable of quantitative phase mapping. In this study, we developed a comprehensive phase-analysis workflow combining four-dimensional scanning transmission electron microscopy (4D-STEM) with unsupervised machine learning. Nanobeam electron diffraction (NBED) patterns were processed using non-negative matrix factorization (NMF) and k-means clustering to identify structurally distinct regions. Phase indexing was performed through automated d-spacing extraction and template matching, with validation using simulated diffraction patterns. Applied to HZO films on La₂/₃Sr₁/₃MnO₃ substrates, this workflow yielded phase fractions consistent with XRD while providing spatially resolved nanoscale phase distributions. The methodology was subsequently applied to investigate degradation mechanisms in HZO-based memristor devices under repeated electrical cycling. Large-area 4D-STEM phase mapping revealed progressive transformation from ferroelectric orthorhombic to non-ferroelectric monoclinic phase as devices transitioned through pristine, degraded, and breakdown states. Complementary HRTEM, grain- size analysis, and EELS measurements confirmed concurrent oxygen vacancy redistribution and microstructural reorganization, establishing a direct link between field-induced orthorhombic phase instability and device failure. This work demonstrates that integrating 4D-STEM with unsupervised learning enables rapid, statistically robust phase characterization, overcoming limitations of conventional techniques and providing critical insights for next-generation ferroelectric and resistive switching memory devices.
Publisher
Ulsan National Institute of Science and Technology
Degree
Master
Major
Graduate School of Semiconductor Materials and Devices Engineering Semiconductor Materials and Devices Engineering