Abstract:
Many efforts have been concentrated on the merging of communication and computation
technologies which requires low power, high-frequency techniques which results in a trade-off
between power consumption and system performance. In the past decade, horizontal field effect
devices (MESFETs and HEMTs) and vertical bipolar device (HBT) reigned the high-frequency
applications industry. The applications where input noise and total power are the major issues,
FETs are preferable and where matching, frequency variation, high flicker noise are a concern,
HBTs are leading technology. However, it has limited applicability in high-density low power
circuit applications. The high volume integration and acceptable performance capability of
Multigate FET have given the semiconductor industry a boost. In the last few decades due to
aggressive scaling, there has been a large change in the device physics. Challenges of
continuous scaling and enhanced speed are overcome by using various geometrical shape of the
gate, increased number of channel controlling surfaces, Source/Drain (S/D) Engineering, Gate
engineering, amongst others. FinFET technology comes forth as a major milestone in the field
of nano-electronics after successfully launching the tri-gate transistors commercially in the
22 nm technology node due to its excellent performance. It has taken its rightful place amongst
semiconductor industries/foundries. Nonetheless, possessing the same challenges faced by any
budding technology, FinFET with sub-20 nm feature size also confronted several
design/fabrication challenges. The technological confinement is the main reason behind the
deterioration of the short-channel characteristics. To overcome these challenges, non-planar
undoped channel, graded doping profile of source/drain, crystal orientation, selectively
deposited raised source/drain engineering are incorporated. In past decade, industry demand
was to have a mix of mixed-mode, analog/RF and digital applications with FinFETs. This
necessitates improvement of the FinFET high-frequency performance and extraction of
microwave models since accurate and complete high-frequency transistor modeling plays a key
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role. FinFETs present good scalability, less leakage and intra-die variability as well as
suppression of short channel effects.
The serious shortcomings of future device miniaturization are that the scaling of parasitic
components is not in proportion to area. For short channel, the ratio of intrinsic and extrinsic
capacitance drastically degraded which means total gate capacitance is controlled by the
extrinsic part. Therefore, the key factors which often contribute to worsening the RF
performance are the higher magnitude of parasitics of quasi-planar structure and fin width
quantization of FinFETs. Another important factor which regulates the fundamental limits to
signal resolution is total noise which is dominated by thermal noise component at radio
frequency (RF). The limitations are imposed due to an exorbitant increase in parasitics and noise
(sources are additional fringing field emanating from finite gate electrode thickness of FinFET)
that in turn worsens the dynamic performance. Therefore, the RF circuit designers need to adapt
their designs taking into account these critical issues so as to improve overall performance in
terms of device/circuit parameters such as unity gain cut-off frequency ( fT ) and maximum
frequency of operation ( fmax), minimum noise figure (NFmin) and output power (Pout ) for RF
noise and power application.
In this thesis, we proposed an analytical model based on successive conformal mapping to
compute the bias dependent inner fringe capacitance in nonplanar multigate MOSFET structure
with doping modulated source/drain (S/D) and gate underlap for sub-20 nm node. The
conventional analytical model of capacitance and resistance for planar MOSFET cannot be
applied to the nonplanar multigate FinFET. This model considers 3-D devices fabricated on bulk
oxide, gate-S/D extension with non-uniform doping gradient and spacers. The percentage
variation of inner fringe capacitance with respect to underlap length is studied for various fin
width and oxide thickness. From this proposed model, we efficiently give physical insight of the
contribution of various portion of the MOSFET nonplanar structure quantitatively. Hence, the
results obtained can provide device design guidelines for reducing fringe capacitance and hence
an improved speed.
We also describe in this proposed analytical model of outer fringe capacitances of a 3D
architecture of multi-fin device under study. The models are based on different assumptions and
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fitting parameters, the agreement among results are found quite good thereby verifying the
validity of the model. This distinctness has been carefully explored by analyzing the individual
modeling parameters and the physical phenomenon contributing to gate parasitic capacitances.
The development of parasitic model facilitate accurate quantitative prediction of the parasitics
introduced by each part of the device structure.
We also leveraged the thermal noise model to evaluate accurate noise performance at the circuit
level. The proposed analytical model is used to evaluate the inversion charge, electric field, gate
resistance, source drain resistance and consequently, additional noise caused by the
three-dimensional structure of FinFET. It is observed that additional fringe field increases its
minimum noise figure (NFmin) and noise resistance (Rn) by approximately 1dB and 100W
respectively and optimum admittance increases to 5.45 m0 at 20 GHz for a device operating
under saturation region. Motivated by the excellent device electrostatics, we further explore the
possibility of a generalised model and proposed a new hybridized fuzzy-neural predictive
intelligent (HFNPI) model for predicting FinFET model based on biased and structural
parameters. It assesses the performance of resultant structure on the basis of selected RF
figure-of-merit (RF-FOM). Based on the application requirements, RF figure-of-merit such as
fT and fmax are used as appropriate performance criteria to analyze the device performance. The
combination of fuzzy and Artificial Neural Network (ANN) system have been used to model
fuzzy multi-criteria decision process. Each parameter has its own impact (positive/negative) on
the figure-of-merit (FOM). It is certainly complex to select the best factors specifically when the
data set is incomplete or imprecise. The framework for the HFNPI model has underlapped
FinFET structural/process parameters. The model was evaluated on the basis of TCAD
simulator data set for determining the dependence of fT and fmax (at fixed bias condition of VGS
and VDS) on geometrical/process parameters gate length (Lg), underlap length (Lun), fin
thickness (Tf in), fin height (Hf in), spacer thickness (Lsp), channel doping (Nch) etc. The best
suitable model parameters are then selected based on the most dominating combination of input
criteria for augmenting the RF design metrics. It is observed that the performance parameter fT
and fmax can be accurately reproduced by the resulting model, is determined by the non-linear
mapping performed by the fuzzy membership functions. The developed algorithm exploit the
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feature of both fuzzy and neural network which results in a reduction of computation time and
the exact variation of more than three parameters can be analyzed for best optimization
structure. It is able to find out the most dominating parameters to be tuned. The HFNPI model
can be used in a CAD and optimization providing a faster solution and speed up design cycle by
reducing the time for geometrical dimensions determination for the required application.