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Full automation of point defect detection in transition metal dichalcogenides through a dual mode deep learning algorithm.

Dong-Hwan YangYu-Seong ChuOdongo Francis Ngome OkelloSeung-Young SeoGunho MoonKwang Ho KimMoon-Ho JoDongwon ShinTeruyasu MizoguchiSejung YangSi-Young Choi
Published in: Materials horizons (2023)
Point defects often appear in two-dimensional (2D) materials and are mostly correlated with physical phenomena. The direct visualisation of point defects, followed by statistical inspection, is the most promising way to harness structure-modulated 2D materials. Here, we introduce a deep learning-based platform to identify the point defects in 2H-MoTe 2 : synergy of unit cell detection and defect classification. These processes demonstrate that segmenting the detected hexagonal cell into two unit cells elaborately cropped the unit cells: further separating a unit cell input into the Te 2 /Mo column part remarkably increased the defect classification accuracies. The concentrations of identified point defects were 7.16 × 10 20 cm 2 of Te monovacancies, 4.38 × 10 19 cm 2 of Te divacancies and 1.46 × 10 19 cm 2 of Mo monovacancies generated during an exfoliation process for TEM sample-preparation. These revealed defects correspond to the n-type character mainly originating from Te monovacancies, statistically. Our deep learning-oriented platform combined with atomic structural imaging provides the most intuitive and precise way to analyse point defects and, consequently, insight into the defect-property correlation based on deep learning in 2D materials.
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