4 research outputs found
Simulation of statistical variability in nano-CMOS transistors using drift-diffusion, Monte Carlo and non-equilibrium Green's function techniques
In this paper, we present models and tools developed
and used by the Device Modelling Group at the University
of Glasgow to study statistical variability introduced
by the discreteness of charge and matter in contemporary
and future Nano-CMOS transistors. The models and tools,
based on Drift-Diffusion (DD),Monte Carlo (MC) and Non-
Equilibrium Green’s Function (NEGF) techniques, are encapsulated
in the Glasgow 3D statistical ‘atomistic’ device
simulator. The simulator can handle most of the known
sources of statistical variability including Random Discrete
Dopants (RDD), Line Edge Roughness (LER), Thickness
Fluctuations in the Oxide (OTF) and Body (BTF), granularity
of the Poly-Silicon (PSG), Metal Gate (MGG) and
High-κ (HKG), and oxide trapped charges (OTC). The results
of the statistical simulations are verified with respect to
measurements carried out on fabricated devices. Predictions
about the magnitude of the statistical variability in future
generations of nano-CMOS devices are also presented