The semiconductor integrated circuit (IC) industry has experienced rapid growth. Technological advances in IC materials and design have produced generations of ICs where each generation has smaller and more complex circuits than the previous generation. However, these advances have increased the complexity of processing and manufacturing ICs and, for these advances to be realized, similar developments in IC processing and manufacturing are needed. In the course of integrated circuit evolution, functional density (i.e., the number of interconnected devices per chip area) has generally increased while geometry size (i.e., the smallest component (or line) that can be created using a fabrication process) has decreased. This scaling down process generally provides benefits by increasing production efficiency and lowering associated costs. Such scaling-down also produces a relatively high power dissipation value, which may be addressed by using low power dissipation devices such as complementary metal-oxide-semiconductor (CMOS) devices.
It is generally understood that circuit devices, such as NMOS or PMOS transistors degrade with use over time. As an example of degradation, leakage may increase and/or mobility may decrease as the device is used over time. This problem is multiplied as device size is further reduced. To determine a useful life for the device, designers often use a device model simulator, such as the well known SPICE computer simulation system to input varying parameters for the device. After running the simulation of the proposed device, the designers may use the outputted information from the simulation and modify parameters to improve upon the device where needed.
The traditional simulation systems assume the degradation indexes can be mapped as an age factor. A circuit device's age is generally a linear function of stress time. The simulation age of the device (ΔAge) increases during operation of the circuit. Age duration is traditionally calculated from a direct integral of the age. For example, traditional age calculations may be as follows:
Where D is the degradation of the device and where this traditional system assumes that D vs. time has a constant slope (n). Thus, the system extrapolates dt(tran_time) to T to predict a stress effect for the device. Given that the age is a linear function of stress time, the estimated age after a given long stress time may be obtained by direct linear extrapolation. In other words, contemporary simulation systems use an age constant (constant n) and extrapolate a value to predict a stress effect on the device being simulated. As such, n is assumed as being constant and independent of the bias condition of the device. Thus, this type of system incorrectly simulates bias dependant conditions of aging for circuit devices.
Thus, it is desirable to have a circuit device reliability simulation system addressing one or more of the issues discussed above by having an improved system to predict device reliability.
The present disclosure provides systems for predicting semiconductor reliability. In an embodiment a method for predicting the semiconductor reliability includes receiving a degradation parameter input of a semiconductor device and using a degradation equation to determine a plurality of bias dependent slope values for degradation over a short time period according to the degradation parameter input. The plurality of slope values include at least two different slope values for degradation over time. The system accumulates the plurality of slope values and projects the accumulated slope values over a long time period to determine a stress effect for the semiconductor device.
Aspects of the present disclosure are best understood from the following detailed description when read with the accompanying figures. It is emphasized that, in accordance with the standard practice in the industry, various features are not drawn to scale. In fact, the dimensions of the various features may be arbitrarily increased or reduced for clarity of discussion.
It is to be understood that the following disclosure provides many different embodiments, or examples, for implementing different features of the invention. Specific examples of components and arrangements are described below to simplify the present disclosure. These are, of course, merely examples and are not intended to be limiting.
It circuit devices, such as field-effect transistors (FETs), NMOS or PMOS transistors, and the like degrade with use over time. As an example of degradation, leakage may increase and/or mobility may decrease as the device is used. To determine a useful life for a designed device, designers often use a device model simulator, such as a SPICE computer simulation system. Users input varying parameters for the device and let the simulation system run a series of calculations relating to the design criteria and supplied parameters. After running the simulation of the proposed device, the designers may use the outputted information from the simulation and modify parameters to improve upon the device where needed. Thus, it should be understood that embodiments of the present disclosure may be implemented as software instructions stored and processed on computer hardware. For example, the instructions may be stored on a computer readable medium.
The traditional simulation systems assume the degradation indexes can be mapped as an age factor. Since a device's age is generally a linear function of stress time, age increase (ΔAge) within a circuit operation duration with varying biases can be obtained from a direct integral of the age. Since age is a linear function of stress time, the estimated age after a given long stress time is obtained by direct linear extrapolation. In other words, contemporary simulation systems use an age constant (e.g., constant slope) and extrapolate a value to predict a stress effect on the device being simulated. As such, the slope (e.g., n) is assumed as being constant and independent of the bias condition of the device. Thus, this type of system incorrectly simulates bias dependant conditions of aging for circuit devices.
Accordingly the systems and methods of the present disclosure provide a more general method for predicting device reliability. In embodiments of the present disclosure, n relates to a slope (rise/run), or many slopes which are non-constant and are device bias dependant. Using the new device degradation (D) integrals and D projection algorithms provided herein, it is possible to obtain more generalized aging behaviors for the device being simulated where V(t) relates to a bias waveform and tran_time. This is especially the case when the devices slope n and their correlations are bias-dependant. In other words, using the D projection algorithms provided herein, the predicted degradation of the device is more accurate than the traditional simulation models.
In semiconductor devices, different stress conditions provide different degradation of the device. Therefore, the embodiments of the present disclosure, avoid the assumption of age factor integral during circuit operation duration, but instead directly accumulate degradation (D) of electric parameters using an algorithm (e.g., ΔDi=ΔDi(g, Vi, Δti), as is described in more detail below. A piecewise algorithm is applied to calculate an effective slope (neff) and can thus avoid traditional linear extrapolation predictions of degradation. As such, the present disclosure calculates circuit device reliability by providing systems for 1) performing a ΔD integral process and 2) using the data obtained in the ΔD integral process to perform a D-projection process.
The data calculated from these systems provide for forming a piecewise slope of a degradation line of device degradation versus time that is used to extrapolate device degradation/reliability. The ΔD integral process determines a slope for many points on a degradation chart and the D-projection process decides which points are best applied for extrapolating the predicted device degradation. As should be understood, this type prediction is more accurate than previous systems.
ΔDi=ΔDi(g,Vi,Δti)
This may also be expressed as
ΔDi=ΔDi(g,Vi,Δti,Di)
where ΔD is an electric parameter. For example, ΔDi may represent a percent of change in current for the device, a voltage of the device, or a variety of degradation parameters for the device; g is a user defined degradation equation that represents the degradation for the semiconductor device; Vi is in volts; and Δti is in seconds. The degradation equation may be presented as
g=g(V,t)
where V is in volts and t is in seconds. A device transition time is calculated using the equation
tran_time=ΣΔti,
ΔD is found using equation
ΔD=ΣΔDi
and the degradation parameters are evaluated using
(Da,ΔDa),(Db,ΔDb), . . .
where, for example, Da has value of approximately 10 mV and Db has a value of approximately 40 mV. However, it is contemplated that other values may be used for the present disclosure.
Dstart is a unique case of D, when t=0 sec. Dstart is determined from previous run, where Dstart=0 for first run. ΔD may be expressed as follows:
At block 106, the method 100 provides that tran_time=SUM Δti and the method 100 accumulates ΔDi to ΔD=SUM (ΔDi) according to the graph of
The next part of this disclosure provides for using the data obtained above in the AD integral process to perform a D-projection process.
The method 500 then proceeds to block 506 where the method 500 uses a piecewise algorithm to extend the projection range and determine a D (degradation) estimate from Deff, ab, Deff, bc, . . . , as can be seen in
More specifically,
Deff≈(Aeff·t)n
In an embodiment, Da and Db are defined by users or by the simulation software system. For example, Da may be approximately 10 mV and Di, may be approximately 40 mV. ΔDa and ΔDb are determined from the ΔD integral of method 100.
Aeff and neff are derived from (Da, ΔDa, Db, ΔDb, Δt) according to the following:
Aeff and neff Derivation:
In addition, the following equations may be used:
to calculate (neff,ab, Aeff,ab), (neff,bc, Aeff,bc) . . . in the D-projection process provided herein.
using
to determine Destimate from Deff,ab, Deff,bc, . . . .
In summary, the methods and devices disclosed herein provide a circuid device reliability simulation system. In doing so, the present disclosure offers several advantages over prior art devices. It is understood that different embodiments disclosed herein offer different disclosure, and that they may make various changes, substitutions and alterations herein without departing from the spirit and scope of the present disclosure.
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