Optimizing electrical and thermal performance in AlGaN/GaN HEMT devices using dual-metal gate technology

IF 2.8 Q2 THERMODYNAMICS
Heat Transfer Pub Date : 2024-05-27 DOI:10.1002/htj.23099
Preethi Elizabeth Iype, V Suresh Babu, Geenu Paul
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Abstract

The investigation of aluminum gallium nitride/gallium nitride high electron mobility transistor (AlGaN/GaN HEMT) devices with a dual-metal gate (DMG) structure encompasses both electrical and thermal characteristics. As efforts to enhance heat dissipation progress, there is a concurrent exploration of novel semiconductor materials boasting high thermal conductivity, like boron arsenide and phosphide. Combining these materials into a model and measuring their interface achieves efficient energy transport. Minimizing the self-heating impact in AlGaN/GaN HEMTs is essential for enhancing device efficiency. This research exposes the heterogenous combination of boron arsenide and phosphide cooling substrates with metals, GaN semiconductors and HEMT. In this research, the autoencoder deep neural network techniques in GaN HEMT for self-heat reduction is driven by the ability to effectively analyze and model the thermal behavior of the device. Autoencoders learn complex relationships within temperature data and identify patterns associated with self-heating. By leveraging these learned representations, the deep neural network optimizes control strategies to mitigate self-heating effects in GaN HEMT devices, ultimately contributing to improved thermal management and enhanced overall performance. In this research, the use of genetic algorithms in GaN HEMT aims to optimize device parameters systematically, to minimize self-heating effects and enhance overall thermal performance. The structure also enhances electron mobility within the channel. Results show DMG structures, exhibiting higher saturation output currents and transconductance despite self-heating. The DMG exhibits a maximum gm value of 0.164 S/mm, which is 10% higher significantly enhancing GaN-based HEMTs for improved reliability and efficiency in various applications.

利用双金属栅极技术优化 AlGaN/GaN HEMT 器件的电气和热性能
对具有双金属栅极(DMG)结构的氮化铝镓/氮化镓高电子迁移率晶体管(AlGaN/GaN HEMT)器件的研究包括电气和热特性两个方面。随着加强散热的努力取得进展,人们同时也在探索具有高热导率的新型半导体材料,如砷化硼和磷化物。将这些材料结合到一个模型中并测量它们的界面,可以实现高效的能量传输。将 AlGaN/GaN HEMT 的自热影响降至最低对提高器件效率至关重要。这项研究揭示了砷化硼和磷化物冷却衬底与金属、氮化镓半导体和 HEMT 的异质组合。在这项研究中,自动编码器深度神经网络技术在 GaN HEMT 中用于降低自热量的驱动力来自于对器件热行为进行有效分析和建模的能力。自动编码器可学习温度数据中的复杂关系,并识别与自热相关的模式。利用这些学习到的表征,深度神经网络可以优化控制策略,减轻 GaN HEMT 器件的自热效应,最终改善热管理并提高整体性能。在这项研究中,遗传算法在氮化镓 HEMT 中的应用旨在系统地优化器件参数,从而最大限度地降低自热效应,提高整体热性能。这种结构还能提高沟道内的电子迁移率。结果表明,尽管存在自热,DMG 结构仍能表现出更高的饱和输出电流和跨导。DMG 的最大 gm 值为 0.164 S/mm,高出 10%,显著增强了基于氮化镓的 HEMT,从而提高了各种应用的可靠性和效率。
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来源期刊
Heat Transfer
Heat Transfer THERMODYNAMICS-
CiteScore
6.30
自引率
19.40%
发文量
342
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