基于强化学习的高压SiC MOSFET保护环设计方法

IF 5 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Tejender Singh Rawat;Chia-Lung Hung;Yi-Kai Hsiao;Wei-Chen Yu;Surya Elangovan;Wei-Ting Lin;Yi-Rong Lin;Kai-Lin Yang;Nien-Yi Jan;Yung-Hui Li;Hao-Chung Kuo
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引用次数: 0

摘要

对于大功率碳化硅(SiC)器件来说,击穿电压分析是一个重要参数,尤其是在护环设计方面。这项工作探索了在碳化硅护环参数(如离子注入剂量和能量)上实施机器学习的方法。在这项工作中,强化学习方法已成功应用于 1.7 kV SiC 护环器件 TCAD 模拟数据的参数预测。我们的工作成功预测了 2.5 kV 护环设计的参数。为了进行训练,我们部署了近端策略优化(PPO)和优势行动者-批评者(A2C)RL 代理。网络结构保持为 "自动",有 3 个隐藏层,每层有 128 个神经元。与其他作品相比,我们的方法切实可行,易于实施,本文对此进行了论证。通过使用 1.7 kV 护环装置的有限设计参数,训练代理成功预测了 2.5 kV 护环装置的设计参数,这一点已通过 TCAD 仿真得到证实。与独立的 TCAD 仿真相比,这项工作更加准确、实用,并且以结果为导向,我们相信这将大大降低计算成本。此外,在 TCAD 数据上实施 ML 可以大大加快功率器件的设计探索,并最终缩短产品上市时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Reinforcement-Learning Based Approach for Designing High-Voltage SiC MOSFET Guard Rings
For high-power silicon carbide (SiC) devices, breakdown voltage analysis is an important parameter, especially for guard ring design. This work explores the implementation of machine learning on SiC guard ring parameters such as ion implanted dose and energy. In this work, the reinforcement learning method has been successfully implemented on the 1.7 kV SiC guard ring device TCAD simulated data for the prediction of parameters. Our work has predicted the parameters successfully for the 2.5 kV guard ring design. For training, proximal policy optimization (PPO) and advantage actor-critic (A2C) RL agents were deployed. The network architecture was kept at “auto” with 3 hidden layers of 128 neurons in each layer. Our method is practically feasible and easily implemented as compared to other works, and has been shown in this paper. By using the limited design parameters of the 1.7 kV guard ring device, the trained agent has successfully predicted the design parameters for the 2.5 kV guard ring device, which has been confirmed using TCAD simulations. This work is more accurate, practical, and result-oriented, and we believe that this can significantly minimize the computational cost as compared to the standalone TCAD simulations. Also, this implementation of ML on TCAD data can substantially accelerate the design exploration for the power devices and ultimately lower product-to-market time.
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CiteScore
8.60
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