Showing posts with label machine learning approach. Show all posts
Showing posts with label machine learning approach. Show all posts

Jan 18, 2023

Neural networks and machine learning approach for compact modeling

[NN] Wang, Qiuwei, Mao Ye, Yao Li, Xiaoxiao Zheng, Jiaji He, Jun Du, and Yiqiang Zhao. "MOSFET modeling of 0.18 μm CMOS technology at 4.2 K using BP neural network." Microelectronics Journal (2023): 105678. DOI: 10.1016/j.sse.2022.108580

Highlights
  • The cryogenic characterization of SMIC CMOS technology at 4.2K is presented.
  • An optimization model VCCS is proposed to calibrate the cryogenic characteristics.
  • BP neural network is, for the first time, used in MOSFET modeling.
  • The cryo-model can be applied to SPICE simulator and assist in cryo-CMOS circuit design and simulation.
Fig: The structure of graph-based compact model of FinFET. The model receives the input features such as voltages, geometries, etc. as a vector and predicts the drain current (Ids) and its derivatives as output features.


[ML] Gaidhane, Amol D., Ziyao Yang, and Yu Cao. "Graph-based Compact Modeling (GCM) of CMOS transistors for efficient parameter extraction: A machine learning approach." Solid-State Electronics (2023): 108580.

Highlights
  • Developed a Graph-based compact model for FinFET.
  • Model implemented in Verilog-A for SPICE simulation.
  • Requires less number of model parameters and is computationally efficient than BSIM