Jun 2, 2020

Webinars by IEEE Photonics Society Student Chapter

The IEEE Photonics Society Student Chapter of Mangalam College of Engineering has organized a series of the webinars to take away some useful stuffs during current COVID-19 quarantine. The webinar #5 was on:
FOSS TCAD/EDA Tools for Semiconductor Device Modeling
Dr. Wladyslaw Grabinski  
MOS-AK Association   



[paper] TID Effects in SOI FinFETs

Bias and geometry dependence of total-ionizing-dose effects in SOI FinFETs
Zhexuan Ren1, Xia An1, Gensong Li1, Runsheng Wang1, Nuo Xu2, Xing Zhang1 and Ru Huang1
1Institute of Microelectronics, Peking University, Beijing 100871, CN
2Department of Electrical Engineering and Computer Sciences, UCB, CA 94720, USA
Semiconductor Science and Technology, Volume 35, Number 7

Abstract: In this paper, a systematic research on the total-ionizing-dose (TID) effects of NMOS and PMOS silicon-on-insulator (SOI) FinFETs is performed experimentally. The bias and geometry dependence of TID effects are analysed. The experimental results show that the threshold voltage (Vth) shift occurs in SOI FinFETs after x-ray irradiation. After 1 Mrad (Si) irradiation, the maximum Vth shift is about 40 mV. The 'worst case' irradiation bias conditions for NMOS and PMOS are TG and ON states, respectively, which induces the largest Vth shift after irradiation. The 3D TCAD simulation is carried out to further analyse the bias dependence results. Simulation results highlight the difference in electric field distribution in the buried oxide under different bias configurations, which leads to different distribution of irradiation-induced trapped charges. Finally, clear geometry dependence is observed in the TID experiment. Both NMOS and PMOS devices with larger fin width and/or smaller gate length are more sensitive to TID irradiation. The results deepen the understanding of the TID effect of SOI FinFETs and provide important technical support for the radiation-hardened research of FinFET technology.

Figure: (a) SOI NMOS FinFET in 3D TCAD software with Z-cut in BOX layer. Simulated electric field distribution in Z-cut plane for OFF (b), ON (c) and TG (d) bias conditions. The white dashed box in figure (b), (c), (d) indicates the relative position of the channel region.

Acknowledgments: This work was supported in part by the National Natural Science Foundation of China (No.61421005, 61434007) and 111 Project (B18001). The authors would like to thank the staff of the Xinjiang Technical Institute of Physics and Chemistry (XTIPC), Chinese Academy of Sciences (CAS) for their assistance in the TID irradiation experiment.


[paper] In-memory hyperdimensional computing

In-memory hyperdimensional computing
Geethan Karunaratne, Manuel Le Gallo, Giovanni Cherubini, Luca Benini, Abbas Rahimi
and Abu Sebastian 
Nature Electronics (2020)
DOI: 10.1038/s41928-020-0410-3

Abstract: Hyperdimensional computing is an emerging computational framework that takes inspiration from attributes of neuronal circuits including hyperdimensionality, fully distributed holographic representation and (pseudo)randomness. When employed for machine learning tasks, such as learning and classification, the framework involves manipulation and comparison of large patterns within memory. A key attribute of hyperdimensional computing is its robustness to the imperfections associated with the computational substrates on which it is implemented. It is therefore particularly amenable to emerging non-von Neumann approaches such as in-memory computing, where the physical attributes of nanoscale memristive devices are exploited to perform computation. Here, we report a complete in-memory hyperdimensional computing system in which all operations are implemented on two memristive crossbar engines together with peripheral digital complementary metal–oxide–semiconductor (CMOS) circuits. Our approach can achieve a near-optimum trade-off between design complexity and classification accuracy based on three prototypical hyperdimensional computing-related learning tasks: language classification, news classification and hand gesture recognition from electromyography signals. Experiments using 760,000 phase-change memory devices performing analog in-memory computing achieve comparable accuracies to software implementations.
Fig.: The concept of in-memory hyperdimensional computing.

Acknowledgements: This work was supported in part by the European Research Council through the European Union’s Horizon 2020 Research and Innovation Programme under grant no. 682675 and in part by the European Union’s Horizon 2020 Research and Innovation Programme through the project MNEMOSENE under grant no. 780215.


Jun 1, 2020

[paper] Device Scaling for 3-nm Node and Beyond

Opportunities in Device Scaling for 3-nm Node and Beyond:
FinFET Versus GAA-FET Versus UFET
U. K. Das and T. K. Bhattacharyya
in IEEE TED, vol. 67, no. 6, pp. 2633-2638, June 2020, 
doi: 10.1109/TED.2020.2987139

Abstract: The performances of FinFET, gate-all-around (GAA) nanowire/nanosheet, and U-shaped FETs (UFETs) are studied targeting the 3-nm node (N3) and beyond CMOS dimensions. To accommodate a contacted gate pitch (CGP) of 32 nm and below, the gate length is scaled down to 14 nm and beyond. While going from 5-nm node (N5) to 3-nm node (N3) dimensions, the GAA-lateral nanosheet (LNS) shows 8% reduction in the effective drain current (Ieff) due to an enormous rise in short channel effects, such as subthreshold slope (SS) and drain-induced barrier lowering (DIBL). On the other hand, 5-nm diameter-based lateral nanowire shows an 80% rise in Ieff. Therefore, to enable future devices, we explored electrostatics and Ieff in FinFET, GAA-FET, and UFET architectures at a scaled dimension. The performances of both Si- and SiGe-based transistors are compared using an advanced TCAD device simulator.

Fig: Transistor architectures for future technologies. (a) FinFET device
(in {001} substrate plane, and sidewalls are in {110} planes) with crosssectional
fin channel (5 nm thin). (b) Fin is changed into a four-stacked
GAA-LNWs. (c) GAA- LNS having 20-nm width (W). (d) UFET structure.

Acknowledgment: The authors would like to thank Dr. Bidhan Pramanik, IIT Goa, India, Dr. KB Jinesh, IIST, Trivandrum, India, and Dr. Geert Eneman, IMEC, Leuven, Belgium, for their valuable technical support.

URL: https://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=9078841&isnumber=9098120

#US putting $37bn into #semiconductors. The aim is to match #China in its state investment in semiconductors. https://t.co/jJ6adDEiSE #paper https://t.co/pHv5mcyi6m


from Twitter https://twitter.com/wladek60

June 01, 2020 at 08:59AM
via IFTTT