The present invention relates to a method, system and medium for modeling and controlling processes. More specifically, the present invention relates to modeling and controlling semiconductor-processing equipment that has multivariate input parameters.
In manufacturing products that include precision discrete parts (e.g., microelectronic chips on silicon substrates), controlling manufacturing processes plays a crucial role. Controlling such processes may require, among other things, monitoring the characteristics of manufactured parts (e.g., processed wafers, hereinafter referred to as outputs) and adjusting input parameters accordingly. By adjusting the values of the input parameters, different types of outputs can be produced and the characteristics of the outputs can also be controlled.
For automating the control of the manufacturing processes, a mathematical model of the processing equipment can be used. One example of such a model is called a predictive model. This model is used to predict the future output values (e.g., the characteristics of products) based on historical information (e.g., input parameter values and the corresponding output qualities).
One such predictive model is an offset technique, which is illustrated in
In equipment that has more than one output, at least some of the outputs may include mutual (shared) inputs. This means the output values of the equipment are not completely independent from each other (e.g., changing an input to adjust a given output may unintentionally change the characteristics of other outputs). In a conventional modeling technique, each output has its own correction system as if the output values are independent from each other. Because the dependencies between the different outputs are not accounted for by the conventional technique, it does not always lead to accurate predictions. In addition, adjusting one offset of one output can affect other outputs.
Embodiments of the present invention advantageously overcome the above-described shortcomings of the aforementioned techniques. More specifically, embodiments of the present invention provide a system, method and medium for controlling semiconductor-processing equipment that has multivariate input parameters and outputs.
Embodiments of the present invention minimize the effects of outputs being interdependent from each other. This is achieved by providing input parameter transformations having transformation coefficients. The coefficients are obtained by minimizing a score function. This, in turn, allows accurate models to be obtained. Using the models, highly precise control of manufacturing equipment is accomplished.
In particular, an example method according to embodiments of the present invention includes the steps of identifying at least one input that causes a change in at least two of a plurality of outputs, storing values of the identified inputs and corresponding empirical output values, and calculating and storing predicted output values, based on, in part, the values of the identified inputs. The example method may further include the steps of calculating a set of transform coefficients by minimizing a score equation that is a function of, in part, differences between one or more of the empirical output values and their corresponding predicted output values, and calculating one or more input values for one or more desired output values based on, in part, the calculated set of transform coefficients.
The detailed description of the present application showing various distinctive features may be best understood when the detailed description is read in reference to the appended drawings in which:
Embodiments of the present invention generally provide systems, methods and mediums for creating one or more adaptive process models to mathematically represent multivariate input parameter systems. The present invention is particularly applicable in a manufacturing process such as manufacturing and/or processing semiconductor wafers. In particular, the present invention relates to modeling techniques as used by equipment involved in the manufacturing of semiconductor wafers. A general overview of embodiments of the present invention is provided below. It will be followed by a specific example implementation of the present invention.
Before discussing embodiments of the present invention,
As a general overview of embodiments of the present invention, in
In embodiments of the present invention, the step of obtaining the predictive model can be divided into two steps. The first is to transform the values of the input parameters 301 into transformed input values 307. The second is to use the transformed input values 307 in calculating predicted output values 303.
With respect to the transformation, input parameter values (X1, X2, X3) along with coefficient vector {right arrow over (P)} are transformed into (X′1, X′2, and X′3) by transform functions ψ1, ψ2, and ψ3. Examples of transformation functions include:
X′1=PX1; X′2=PX2 (In this example, the value of {right arrow over (P)} is identical for both X1 and X2.)
2) X′1=P11X1+P12X12; X′2=P21X12+P22X22+PcrossX1X2 (In this example, P11, P12, P21, P22 and Pcross can have different values.)
The coefficient values are calculated by the steps of: a. collecting historical information on input parameter values and actual output values; b. creating a score function based on the collected information; and c. finding the coefficient values that minimize the score function, Sp.
The above steps are described by making references to semiconductor processing tools. As such, the step of collecting the historical information entails a set of data points for processing a number of wafers. In particular, input parameter values and actual output values for a number of wafers that have been processed by the processing equipment would be collected. This collection would then be used in the next step of minimizing the score function. Here, the score function, Sp, is:
where:
The above-described steps calculate an optimal {right arrow over (P)} (i.e., a vector of coefficients for input transformation functions) such that the prediction model of the present invention provides the closest possible predicted outputs to the actual outputs. In a processing model with multivariate input parameters, when the score is minimized, the negative effect of the interdependencies between output values on the model accuracy would also be minimized.
Now turning to describe an example implementation of the embodiments described above, as shown in
These components are further explained by also referring to
The input transformer 401, upon receiving the information from the corrector 405, calculates transformed input parameter values {right arrow over (X)}′i (step 505). Once the transformed input parameter values are calculated, the input transformer 401 sends the transformed input values to the corrector 405.
The corrector 405, upon receiving the transformed input parameter values from the input transformer 401, sends the transformed input parameter values to the input/output dependence model 403. The input/output dependency model 403 then calculates predicted output parameter values ypred (step 507). The corrector 405 then calculates the score Sp, and sets a new {right arrow over (P)} (a vector of parameters of input transformation functions) in order to minimize the score Sp (step 509). These steps can be repeated until an optimum {right arrow over (P)} that yields a minimal score Sp is obtained, and return the optimum {right arrow over (P)}. Each time new data is obtained, a new score from new data is created and a new optimum {right arrow over (P)} value is calculated. This newly calculated vector {right arrow over (P)} could be used for transforming the input values, meaning: {right arrow over (P)}new≡{right arrow over (P)}optimum.
In embodiments of the present invention, the optimum coefficients can be combined with the most recent vector such that:
{right arrow over (P)}new≡{right arrow over (P)}previous+K({right arrow over (P)}optimum−{right arrow over (P)}previous) wherein K<1.
As a new set of data points arrives, a new optimum {right arrow over (P)} can be recalculated.
Once a set of coefficients is calculated, a set of input values can be obtained (e.g., a recipe) for a desired set of output values. More specifically, from a set of desired values, a set of transformed input values, {right arrow over (X)}′i, can be obtained by reversing the predictive model (e.g., the input/output dependence model 403). The transformed input values can then be reverse transformed using the coefficients {right arrow over (P)} to obtain the input value to produce the desired output values.
In the above-described embodiments, the raw input values are transformed using the calculated coefficients. The transformation is required to account for the dependencies among input parameters as graphically illustrated in
An example embodiment of the computer in which embodiments of the present invention operate (e.g., the various components described in
A display interface 772 interfaces display 748 and permits information from the bus 756 to be displayed on display 748. Communications with external devices, such as the other components of the system described above, occur utilizing, for example, communication port 774. Optical fibers and/or electrical cables and/or conductors and/or optical communication (e.g., infrared, and the like) and/or wireless communication (e.g., radio frequency (RF), and the like) can be used as the transport medium between the external devices and communication port 774. Peripheral interface 754 interfaces the keyboard 750 and mouse 752, permitting input data to be transmitted to bus 756. In addition to these components, the internal hardware 713 also optionally includes an infrared transmitter and/or infrared receiver. Infrared transmitters are optionally utilized when the computer system is used in conjunction with one or more of the processing components/stations/modules that transmit/receive data via infrared signal transmission. Instead of utilizing an infrared transmitter or infrared receiver, the computer system may also optionally use a low power radio transmitter 780 and/or a low power radio receiver 782. The low power radio transmitter transmits the signal for reception by components of the production process, and receives signals from the components via the low power radio receiver. The low power radio transmitter and/or receiver are standard devices in industry.
Although the computer in
In general, it should be emphasized that the various components of embodiments of the present invention can be implemented in hardware, software or a combination thereof. In such embodiments, the various components and steps would be implemented in hardware and/or software to perform the functions of embodiments of the present invention. Any presently available or future developed computer software language and/or hardware components can be employed in such embodiments of the present invention. For example, at least some of the functionality mentioned above could be implemented using Visual Basic, C, C++, or any assembly language appropriate in view of the processor(s) being used. It could also be written in an interpretive environment such as Java and transported to multiple destinations to various users.
The many features and advantages of embodiments of the present invention are apparent from the detailed specification, and thus, it is intended by the appended claims to cover all such features and advantages of the invention which fall within the true spirit and scope of the invention. Further, since numerous modifications and variations will readily occur to those skilled in the art, it is not desired to limit the invention to the exact construction and operation illustrated and described, and accordingly, all suitable modifications and equivalents may be resorted to, falling within the scope of the invention. For instance, output values can be transformed similar to the transform performed on the input parameters, and operations can be performed on the transformed output values similar to those performed on the transformed input parameters.
This application is a continuation of U.S. patent application Ser. No. 10/712,273, now U.S. Pat. No. ______, filed Nov. 14, 2003, which claims the benefit of U.S. Provisional Application No. 60/426,393, filed Nov. 15, 2002, which is incorporated herein by reference.
Number | Date | Country | |
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60426393 | Nov 2002 | US |
Number | Date | Country | |
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Parent | 10712273 | Nov 2003 | US |
Child | 11888363 | Jul 2007 | US |