2.2 Modeling of Trap Generation
The trap-generation mechanisms in the insulator, which is the cause of TDDB, consist
of AHI, AHR (also known as HR), and TC mechanisms (3). According to previous papers describing the trap generation in the insulator by
the different physical mechanisms, the dominant trap-generation mechanism depends
on the conditions in which the insulator operates. In this section, the dominant trap-generation
mechanism is classified according to the experimental results of previous studies,
and the hybrid analysis method having the continuity of each mechanism is implemented
for the first time, to the knowledge of the author, in the proposed framework. The
physical description for each mechanism and the modeling procedures are as follows:
① TC: Polarization occurs when an electric field (E-field) is applied to a dielectric
with polarity. This polarization causes the distortion of the lattice, and as a result,
the molecules in the dielectric are affected not only by the external E-field ($E_{ox}$)
but also by the polarization vector $\textit{P}$ (=$\chi \epsilon _{0}E_{ox}$).
Finally, the magnitude of the local E-field ($\textit{E}$$_{loc}$) applied to the
insulator molecules is
where $\chi $ is the electric susceptibility, and $\textit{L}$ is the Lorentz factor,
which is approximately $\textit{L}$ = 1/3 for symmetrical cubic structures (4). Thus, $E_{loc}=$ $\left(\frac{2+k}{3}\right)E_{ox}$. In the SiO$_{2}$ system, when
the dielectric constant $\textit{k}$ is 3.9, the local E-field is estimated to be
approximately $2E_{loc}$. This electrical stress causes the breakage of the natural
weak bond of the insulator (Si-Si bond, i.e., oxygen vacancy). The reduced activation
energy for the breakage of the Si-Si bond induced by $E_{loc}$ in the insulator can
be expressed as
where $Δ H_{0}$ is the field-free activation energy and $p_{\mathrm{eff}}$ is the
effective dipole moment, which is determined by the polar bonding in the molecule
and has a value of approximately 7–14 eÅ (5). According to a previous study (6), $Δ H_{0}\approx 1.0\,\,\mathrm{eV}$ and $p_{\mathrm{eff}}\approx 7\,\,\mathrm{eÅ
}$ under a weak E-field, and $Δ H_{0}\approx 2.0\,\,\mathrm{eV}$ and $p_{\mathrm{eff}}\approx
13\,\,\mathrm{eÅ }$ under a strong E-field. In this study, we use the latter condition
for insulator breakdown analysis under a strong E-field.
According to the TC model, the field-enhanced thermal bond breakage (\textit{dN/dt})
can be expressed by the first-order reaction rate equation as
where $\textit{N}$($\textit{t}$) is the number of traps per cm$^{3}$ under the given
conditions (time, temperature, and E-field), and $\textit{k}$$_{break}$ is the bond-breakage
rate. The solution of Eq. (3) is $N\left(t\right)=N_{0}\left(1- exp\left(- k_{\textit{break}}t\right)\right)$,
where $\textit{N}$$_{0}$ is the initial number of weak bonds (number of oxygen vacancies).
According to (7), $\textit{N}$$_{0}$ is 1/20 for number of SiO$_{2}$ bonding; thus, we use $N_{0}=1.4\times
10^{21}/\mathrm{cm}^{3}$(7). The bond-breakage rate, $\textit{k}$$_{break}$, can be expressed using the Boltzmann
probability.
Here, $\textit{v}$$_{0}$ is the lattice vibration frequency (~10$^{13}$/s),$Δ H$is
the activation energy due to the local E-field, $\textit{k}$$_{b}$ is the Boltzmann
constant, and $\textit{T}$ is the temperature (8). According to Eqs. (1-3), if the probability of trap generation for the unit cell constituting the insulator
follows the Poisson distribution, the parameter $\textit{b}$ of the Poisson distribution
is the product of the number of traps per unit volume ($\textit{N}$($\textit{t}$))
and volume of the unit cell (${a_{0}}^{3}$). Therefore, $b=N\left(t\right)\times {a_{0}}^{3}$.
② AHI: Unlike the TC model, which analyzes the TDDB according to the breakage of weak
bonds in the insulator, the AHI model analyzes the TDDB according to the Fowler–Nordheim
(FN) tunneling phenomenon. In comparison with the TC model, the AHI model is caused
by a stronger E-field. In many previous studies, AHI modeling was performed according
to the carrier fluence (9). However, in this study, the cell-based analytical percolation path model is used
to analyze the TDDB.
Fig. 2. Description of the AHI model used in this study, including the electron injection
for majority ionization, hole generation/drift, and defect generation.
Table 1. Assumptions for the AHI model
Fig. 2 depicts the operation of the AHI model. The operation of the AHI model begins with
injecting electrons from the cathode to the anode via FN tunneling. The injected electrons
generate holes through the valence electrons and impact the ionization of the anode.
These high-energy hot holes pass through the insulator through the tunneling and thermionic
emission mechanism and generate defects in the insulator (3). The impact ionization is divided into majority ionization and minority ionization
(10). Majority ionization is the case where the ionized hole has a kinetic energy that
exceeds the$\mathrm{E}_{\mathrm{v}}$ of the insulator, as shown in Fig. 2. This occurs when the energy ($E_{IN}$) of the injected electrons is higher than
the threshold energy ($E_{TH}$) of 6 eV; $E_{TH}=$ $\phi _{H}+E_{G}\left(Si\right)=4.8\,\,\mathrm{eV}+1.1\,\,\mathrm{eV}\approx
6\,\,\mathrm{eV}\,.$The minority ionization mechanism does not have enough energy
to cause the generated hole to exceed the valence-band energy ($\mathrm{E}_{\mathrm{v}})$
of the insulator. Because more tunneling events are needed to pass through the insulator,
the generation rate is significantly lower than that for majority ionization, and
the minority ionization has a smaller effect on the TDDB (11). Therefore, the AHI modeling in this study considers only the dominant majority ionization.
Assumptions are needed to perform AHI modeling, as shown in Table 1, in accordance with previous studies and the electrical characteristics of the SiO$_{2}$
system, which is the gate insulator in the semiconductor device considered in this
study. AHI modeling begins with the FN tunneling current equation (12):
The impact ionization rate can be expressed as (13)
where we can take parameter values such as $\text{Y} _{0}=2.15\times 10^{6}\,\mathrm{cm}^{-
1}$ and $\textit{H}$ = 82 MV/cm from a previous experiment (14). As the current density of the generated holes is $J_{H}=\text{Y} J_{FN}$(11), the charge of the generated hole is $J_{H}\times A_{ox}\times t$, where $\textit{A}$$_{ox}$
is the insulator area and $\textit{t}$ is the observation time. This value divided
by $\textit{q}$ is the number of generated holes. As the generated holes drift to
the insulator, they can generate defects. The defect-generation probability ($P_{\textit{defect}}$)
is newly defined as a fitting parameter. This is the probability that a defect will
be generated for each drifted hot hole. This parameter can have the field dependency,
$P_{\textit{defect}}$ increases as $E_{ox}$ increases. Accordingly, the expected number
of defects throughout the oxide is $\frac{J_{H}\times A_{ox}\times t}{q}\times P_{\textit{defect}}$.
If the number of defects generated in the insulator is divided by the insulator volume,
the expected number of defects per unit volume in the insulator can be obtained as
follows: number of defects generated in insulator ${\div}$ insulator volume = number
of defects per unit volume of insulator [ea/cm$^{3}$]. Similar to the TC model, assuming
that the defect occurrence of the unit cell follows the Poisson distribution, the
Poisson parameter $\textit{b}$ can be calculated as follows: $\textit{b}$ = number
of defects per unit volume of insulator$\times $ volume of insulator(${a_{0}}^{3}$).
③ AHR (HR): In semiconductor devices, such as metal–oxide semiconductor (MOS) transistors,
the hydrogen passivation technique is widely used to improve the interface quality
of SiO$_{2}$ insulators grown on a silicon substrate. The Si-H bonds at the Si-SiO$_{2}$
interface are broken, the generated hydrogen atoms/ions are released into the insulator,
and TDDB occurs (15). This is mainly observed in hyper-thin insulators of $T_{ox}\leq 50\mathrm{Å }$(3).
These hydrogen atoms/ions drift and diffuse into the insulator and act as traps (11). The HR model is similar to the AHI model in that electrons are tunneled from the
cathode. However, it differs in that direct tunneling (DT) is dominant over FN tunneling
in thin insulators with $T_{ox}\leq 50\mathrm{Å }$. Therefore, in the HR modeling,
the DT equation is used. Additionally, the hydrogen desorption mechanism of the HR
model is divided into several categories, with the main ones being electrical excitation
(EE) and vibrational excitation (VE). In EE, hydrogen desorption occurs via field
emission, and in VE, hydrogen desorption occurs via phonons. The results of previous
experiments show that the Si-H bond has a relatively long vibrational lifetime of
$\sim 10^{- 8}$s in the Si-SiO2 system (16). Thus, VE mechanism is more important than EE mechanism. VE can be divided into three
mechanisms: single electron coherent excitation, incoherent excitation (17), and multi-electron excitation (18). Incoherent excitation in a modern small semiconductor device that operate at high
E-field is very rare, and the rate of occurrence of multi-electron excitation is lower
than that of single electron excitation. Therefore, in this study, only single electron
excitation, which has the highest occurrence rate among the three VE mechanisms, is
considered, and the threshold energy required for hydrogen desorption is 2.5–3 eV.
Fig. 3 depicts the operation of the HR model.
Assumptions are needed to perform HR modeling, as shown in Table 2. The HR modeling begins with the DT current equation (19,20)
Fig. 3. Description of the HR model used in this study, including the electron injection,
hydrogen generation / drift / diffusion, and defect generation.
Table 2. Assumptions for the HR model
where $\phi _{s}$ is the barrier height and $V_{ox}$ is the voltage across the insulator.
Using Eq. (7), the charge amount of the injected electron can be calculated as $J_{DT}\times A_{ox}\times
t$, where $\textit{A}$$_{ox}$ is the insulator area, and $\textit{t}$ is the observation
time. This value divided by $\textit{q}$ is the number of injected electrons. The
injected electrons can release hydrogen via Si-H bonding at the Si-SiO$_{2}$ interface.
The hydrogen-release probability ($P_{\textit{release}}$) is newly defined as a fitting
parameter. This is the probability that a hydrogen atom/ion will be released for each
injected electron. This parameter can have the field dependency, $P_{\textit{release}}$
increases as $E_{ox}$ increases. The number of released hydrogen atoms/ions is calculated
as $\frac{J_{DT}\times A_{ox}\times t}{q}~ \times P_{\textit{release}}$. If we assume
that all the injected hydrogen operates as a defect inside the insulator, by dividing
the number of hydrogen atoms or ions in the insulator by the volume of the insulator,
the expected number of traps per unit volume of the insulator can be determined. Finally,
the Poisson distribution parameter can be calculated in the same manner as for the
AHI model.
The trap-generation mechanism is appropriately selected automatically in consideration
of the semiconductor device insulator structure, and electrical characteristics (dynamic
bias, E-field, etc.). By using the modeled trap-generation mechanisms as described
above, it is possible to calculate the trap-generation probability (failure probability)
in the unit cell in the oxide insulator by calculating the Poisson parameter, assuming
the Poisson distribution.
2.3 Modeling of Percolation Path Estimator
We use the cell-based analytical percolation model to analyze the lifetime of dielectric
breakdown caused by traps in the insulator, as described by the TC, AHI, and HR physical
mechanisms. As shown in Fig. 4, in the percolation model, traps inside the insulator between two electrodes are
randomly generated by stress and form a conductive path between the electrodes, causing
electrical breakdown (21,22). The multiple percolation path model is a model that considers not only the shortest
distance between the electrodes (23) but also the path of the nearest cells. As shown in Fig. 4, the simulation was conducted with a model in which the nine nearest cells could
form a path.
Fig. 4. Description of the cell-based analytical model for percolation-path estimation.
The two most widely used types of percolation models are the Monte Carlo (MC) model
and the cell-based analytical model. The MC model generates traps randomly in the
insulator to determine the failure probability of the device over time and has the
disadvantage of a long simulation time. In comparison, the cell-based analytical model
is advantageous because it requires less simulation time (<10% compared with the MC
model) and can predict the lifetime efficiently even under various stress conditions
(24). Therefore, in this study, a cell-based analytical model is used to perform lifetime
analysis.
First, the insulating layer is divided into unit cells. If the Poisson distribution
parameter obtained in the previous step is $\textit{b}$, the probability of generating
$\textit{k}$-traps in the unit cell can be obtained by using the PMF$P\left(X=k\right)=(b^{k}e^{-
b})/k!\left(k=0,1,2,3,\cdots \right)$of the Poisson distribution (25). If there is at least one trap in the unit cell, the cell is determined as defective,
and $\textit{P}$(defective cell) = 1 - $\textit{P}$(no trap in the unit cell) = $1-
e^{- b}$. The failure rate of a cell is denoted as$F_{cell}=\lambda \,.$ The probability
that a column becomes the percolation path is $F_{perc}=9^{n- 1}\lambda ^{n}$, and
the probability that the percolation path is not generated in all $\textit{N}$ columns
is$1- F_{perc}$ $=\left(1- \frac{1}{9}\left(9\lambda \right)^{n}\right)^{N}.$Then,
the Weibit ($\textit{W}$$_{BD}$) can be calculated as$W_{BD}=\ln \left[- \ln \left(1-
F_{BD}\right)\right]=\ln \left[- N\ln \left(1- \frac{1}{9}\left(9\lambda \right)^{n}\right]\right.\,,$
and because $\lambda \leq 1$,$W_{BD}\approx \ln \left(N\right)+\ln \left(\frac{1}{9}\right)+n\ln
\left(9\lambda \right)$(23,26).
2.4 Modeling of Lifetime Analyzer
In this study, we use the Weibull distribution and temperature–nonthermal (T-NT) relationship
for the lifetime distribution and lifetime/stress relationship, respectively, and
the T-NT Weibull model is assumed as an accelerated-lifetime test model by combining
the lifetime distribution and the lifetime/stress relationship. Note that the Weibull
distribution is applicable to all cases, regardless of whether the probability of
failure increases, decreases, or remains constant over time. This is why we use the
Weibull distribution in this study. The suitability of the data for the Weibull distribution
can be evaluated by using the Weibull plot with the Weibit ($\textit{W}$$_{BD}$, which
was obtained in Sections 2.3) and \textit{ln}(\textit{time}) as the y and x axes,
respectively. Fig. 5 shows an example of a Weibull plot in which the temperature and bias voltage in an
MOS transistor device are varied (27).
Fig. 5. Example of a Weibull plot in which the temperature and bias voltage in an
MOS transistor device are varied.
In the T-NT Weibull relation, the temperature and the bias voltage are considered
separately as stress sources by considering the Arrhenius relationship and the inverse
power law relationship simultaneously. The corres-ponding equation is (28)
where $\textit{t}$ is time, $\textit{V}$ is the voltage, and $\textit{T}$ is the temperature.
If we have three parameters, such as $\textit{B}$, $\textit{C}$, and $\textit{n}$,
the lifetime and stress relationship can be predicted. ${\beta}$ can be obtained from
the slope of the $\textit{W}$$_{BD}$$\textit{-ln(t)}$ curve, which is used to check
the validity of the data. The three parameters ($\textit{B}$, $\textit{C}$, and $\textit{n}$)
are extracted from the lifetime and stress experimental data by using the linearization
technique of the T-NT Weibull relationship. Once the three parameters are obtained,
relationship between the lifetime and stress (such as the voltage and temperature)
can be obtained according to the T-NT relationship, which is expressed by the following
equation.
The model parameters are extracted automatically via regression analysis using Python
code, and various lifetime and stress analyses (e.g., for a specific lifetime or predicting
the lifetime at a specific failure rate) can be easily performed in the framework.