放大器
噪声系数
材料科学
电子工程
低噪声放大器
光电子学
共栅
电容
双极结晶体管
电气工程
异质结双极晶体管
共发射极
跨导
晶体管
工程类
CMOS芯片
物理
电压
量子力学
电极
作者
T. W. Kim,Gyungtae Ryu,J. Lee,Moon-Kyu Cho,Daniel M. Fleetwood,John D. Cressler,Ickhyun Song
出处
期刊:Electronics
[Multidisciplinary Digital Publishing Institute]
日期:2024-04-11
卷期号:13 (8): 1445-1445
被引量:1
标识
DOI:10.3390/electronics13081445
摘要
In this study, the degradation characteristics of radio frequency (RF)-low-noise amplifiers (LNA) due to a total ionizing dose (TID) is investigated. As a device-under-test (DUT), sample LNAs were prepared using silicon–germanium (SiGe) heterojunction bipolar transistors (HBTs) as core elements. The LNA was based on a cascode stage with emitter degeneration for narrowband applications. By using a simplified small-signal model of a SiGe HBT, design equations such as gain, impedance matching, and noise figure (NF) were derived for analyzing TID-induced degradations in the circuit-level performance. To study radiation effects in circuits, the SiGe-RF-LNAs fabricated in a commercial 350 nm SiGe technology were exposed to 10-keV X-rays to a total ionizing dose of up to 3 Mrad(SiO2). The TID-induced performance changes of the LNA were modeled by applying degradation to device parameters. In the modeling process, new parameter values after irradiation were estimated based on information in the literature, without direct measurements of SiGe HBTs used in the LNA chip. As a result, the relative contributions of parameters on the circuit metrics were compared, identifying dominant parameters for degradation modeling. For the TID effects on input matching (S11) and NF, the base resistance (RB) and the base-to-emitter capacitance (Cπ) of the input transistor were mostly responsible, whereas the transconductances (gm) played a key role in the output matching (S22) and gain (S21). To validate the proposed approach, it has been applied to a different LNA in the literature and the modeling results predicted the TID-induced degradations within reasonable ranges.
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