单光子雪崩二极管
二极管
计算机科学
光子
光电子学
雪崩二极管
雪崩光电二极管
物理
光学
电气工程
探测器
工程类
电信
电压
击穿电压
作者
Kazi Mohammad Mamun,Hasan Sajid,Nezih Pala,Mst Shamim Ara Shawkat
出处
期刊:SoutheastCon
日期:2025-03-22
卷期号:: 1276-1281
被引量:3
标识
DOI:10.1109/southeastcon56624.2025.10971454
摘要
This paper presents machine learning (ML) based novel single photon avalanche diode (SPAD) device modeling. We investigate three popular ML models, Extreme Gradient Boosting (XGBoost), Long-Short Term Memory (LSTM) and Feed Forward Neural Network (FFNN) for predicting the I-V characteristics of SPAD devices. Due to the data-driven nature, all of these models are viable alternatives to Technology Computer-Aided Design (TCAD) and can significantly reduce the computational cost. We trained and evaluated each of the models using a large amount of real-world I-V data produced through TCAD simulations and compared their performances. The FFNN model demonstrated a smooth convergence through the learning period with a coefficient of determination $(R^{2})$ of 0.9779 which means that it can generalize the model well. In comparision, LSTM and XGBoost outperformed FFNN with a higher $R^{2}$ of 0.9835 and 0.9929 respectively. Therefore, XGBoost captures the overall trend of the data better among these three models. Based on these findings, the XGBoost model proves to be more efficient in predicting the I-V characteristics of SPADs.
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