肖特基二极管
材料科学
复合数
二极管
光电子学
人工智能
工程物理
计算机科学
复合材料
物理
作者
Yashar Azizian‐Kalandaragh,Ali Barkhordari,Süleyman Özçelik,Ş. Altındal
出处
期刊:Physica Scripta
[IOP Publishing]
日期:2024-06-28
卷期号:99 (8): 086001-086001
被引量:5
标识
DOI:10.1088/1402-4896/ad5d2d
摘要
Abstract This study employs two Machine Learning (ML) models to predict the electronic current and then analyze the main electronic variables of Schottky diodes (SDs), including leak current (I 0 ), potential barrier height (Φ B0 ), ideality factor (n), series resistance (R s ), shunt resistance (R sh ), rectifying ratio (RR), and interface states density (N ss ). The I-V characteristics are examined for both without and with an interlayer. The polyvinylpyrrolidone (PVP) polymer and BaTiO 3 nanostructures are combined to form the nanocomposite interface. The ML algorithms that are employed include the Gaussian Process Regression (GPR) and Kernel Ridge Regression (KRR). The thermionic emission theory is used to gather training data for ML algorithms. Ultimately, the effectiveness of these ML methods in anticipating the electric characteristics of SDs is evaluated by contrasting the predicted and experimental findings in order to identify the optimal ML model. Whereas the GPR algorithm has given values that are closer to the actual values, the ML predictions of fundamental electric variables by practically both algorithms have the best level of agreement with the actual values. Also, the obtained findings indicate that when the nanocomposite interface is used, the amount of I 0 and N ss for metal-semiconductor (MS) Schottky diodes reduces and φ B0 increases.
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