Enabling RFCMOS solutions for emerging advanced applications
John J. Pekarik, Douglas D. Coolbaugh, et al.
GAAS 2005
A technique for extracting statistical compact model parameters using artificial neural networks (ANNs) is proposed. ANNs can model a much higher degree of nonlinearity compared to existing quadratic polynomial models and, hence, can even be used in sub-100-nm technologies to model leakage current that exponentially depends on process parameters. Existing techniques cannot be extended to handle such exponential functions. Additionally, ANNs can handle multiple input multiple output relations very effectively. The concept applied to CMOS devices improves the efficiency and accuracy of model extraction. Results from the ANN match the ones obtained from SPICE simulators within 1%. © 1982-2012 IEEE.
John J. Pekarik, Douglas D. Coolbaugh, et al.
GAAS 2005
Xin Li, Weimin Wu, et al.
IEEE Transactions on Electron Devices
Josef Watts, Yoo-Mi Lee, et al.
NSTI-Nanotech 2007
Jing Wang, Henry Trombley, et al.
NSTI-Nanotech 2012