SYSTEM AND METHOD OF CHARACTERIZING MICRO-FABRICATION PROCESSES
A system for assessing a structure and the tools and processes used to form the structure is described. 2D images of the structure are captured and processed to obtain 3D information concerning the structure. Both 2D and 3D information is then used to identify and analyze selected characteristics of the structure. This analysis allows for a quality assessment of the structure. The selected characteristics are correlated with information relating to the operation of the tool that carried out the process that at least in part created the structure. The correlation of tool/process information to structure characteristics allows for the generation of feedback that may be used to modify the tool or processed used to form the structure.
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This application claims the benefit of U.S. Provisional Application Ser. No. 61/800,331, filed Mar. 15, 2013, which is hereby incorporated by reference herein.
TECHNICAL FIELDThe present disclosure relates generally to assessment of microstructures formed using any of a number of micro-fabrication processes. More specifically, the present disclosure relates to systems and methods of observing structures created using microfabrication techniques and generating information useful for characterizing whether or how well the microfabrication techniques performed.
BACKGROUNDOptical techniques for observing substrate characteristics resulting from microfabrication processes such as thermal oxidation processes, chemical and physical vapor deposition processes of various kinds, epitaxy, photolithography and masking of various kinds, dry and wet etching processes of various kinds, laser ablation, focused ion beam milling and other similar techniques that are used to create or modify structures having features with critical dimensions on the order of a few micrometers or nanometers tend to be rather inflexible. Non-imaging techniques such as ellipsometry, scatterometry, and reflectometry permit the assessment of substrate or sample characteristics on a very small scale. However these techniques are generally useful only for the assessment of characteristics below a certain size or dimension, e.g. layer thicknesses on the order of a 10's or 100's of nanometers, structural features of a size that is on the order of the wavelength of light used to assess the structures and which generally are repetitive in nature or for particles that of a generally known type. These techniques are data intensive and require a large investment in mathematical models of specific structures and the hardware that can rapidly manipulate such models. Other non-imaging techniques such as laser triangulation are capable of locating small structures of a substrate when used as a scatterometer, but tend to be most useful for larger structures having dimensions that are larger than the wavelength of light being used for sensing purposes. The small spot size of a laser triangulation system allows one to build up a geometry of a structure that is assessed only on a point by point basis. Geometries of structures that interfere with the reflection of a fine beam (spot or line) of light become difficult to assess using this technique. Imaging techniques for assessing structures are limited to the native resolution of the optical system used to capture an image and also by the fact that the higher the resolution of the optical system, the more difficult it becomes to capture an image of an object that has a three-dimensional structure; the depth of focus of a higher resolution optical system limits the amount of a 3D structure that can be captured with the requisite focus needed to resolve structures of the object that fall outside the region that is in good focus. Accordingly, it is desirable to provide an approach to characterizing microfabrication processes in an accurate and efficient manner.
SUMMARYCaptured information is used to identify and analyze selected characteristics of a structure. This analysis allows for a quality assessment of the structure. The selected characteristics are correlated with information relating to the operation of a tool that carried out a process that at least in part created the structure. The correlation of tool/process information to structure characteristics allows for the generation of feedback that may be used to modify the tool or processed used to form the structure.
In the following detailed description, reference is made to the accompanying drawings that form a part hereof, and in which is shown, by way of illustration, specific embodiments in which the invention may be practiced. In the drawings, like numerals describe substantially similar components throughout the several views. These embodiments are described in sufficient detail to enable those skilled in the art to practice the invention. Other embodiments may be utilized and structural, logical, and electrical changes may be made without departing from the scope of the present invention. The following detailed description is, therefore, not to be taken in a limiting sense, and the scope of the present invention is defined only by the appended claims and equivalents thereof.
As those skilled in the art are aware, an optical imaging system which includes an imaging device such as a CMOS or CCD camera chip also typically includes one or more optical elements for magnifying and/or focusing the object. An object is said to be in focus when the physical location of the object being imaged is within the field of view of the camera and also within its depth of field. In this way, an image having a specified resolution may be obtained. This generic set of optical conditions being met, an optical system can be arranged in many ways to obtain useful images of an object.
While the camera 32 positioned directly above structure 10 is commonly used as part of machine vision systems based on a standard microscope design, other arrangements may be used as well as represented by cameras 32 inclined with respect to the structure 10.
Referring now to
Once a concatenated image 12 is obtained, inspection of the substrate and/or assessment of microfabrication tool operation may take place. In one embodiment the image 12 may be compared to a pre-defined model and in other embodiments features present in the image may be identified and characteristics thereof may be determined and recorded. In both cases, the results of the comparison/analysis may be acted upon immediately or on a delayed basis.
One type of model that may be used is a statistical model in which multiple images of the structure under test are captured and analyzed to produce a model of what an ideal structure should look like in an image 12. This type of model allows for a pixel by pixel comparison of the model and images 12. In one example the model is defined as an array of pixel value ranges, one range for each pixel in the model. Where a pixel in an image 12 falls outside of the range of values established for that pixel in the model, the pixel of the image 12 is noted as potentially being discrepant. Depending on the nature of the assessment, a single discrepant pixel may be sufficient to categorize the structure or the microfabrication tool used to at least partially form it as out of specification. In the case of a semiconductor device having a discrepant structure this may mean that the device is discarded or that it is diverted for some type of re-work. In the case of microfabrication tools, the presence of one or more discrepant pixels in an image 12 may be used to modify the operation of one or more of the microfabrication tools used to form the structure.
In some embodiments a model can be purely statistically derived such as by defining a “golden value” for each pixel as a mean of corresponding pixels from multiple concatenated images 12. While a direct comparison may be useful in some instances, it is typically more desirable to assess a degree of difference between a golden value and an actual value. Accordingly, a range such as that described above may be developed statistically by generating a standard deviation for a given pixel and using that as a range. However it has been found that applying an heuristic modification to statistically derived ranges to achieve better results. A suitable heuristic may involve simply narrowing or expanding a range to decrease or increase sensitivity of the assessment algorithm. One alternative to an heuristic would be to use neural network modeling to identify an appropriate adjustment to a model's range of acceptable values based on outcomes, i.e. quality, of the structures being fabricated and assessed.
In some instances, such as where inherent variability reduces the utility of a pixel based model, a structure under evaluation is imaged to form a concatenated image 12 which is then analyzed to identify and characterize features of the structure that appear in the image 12. In some cases an edge finding algorithm may be used to determine the presence and location of boundaries such as lower edge 28 and upper edge 29 (
In other instances a concatenated image 12 may be assessed using techniques that are known as blob analysis. These image processing techniques are useful for identifying regions that have similar characteristics. In one embodiment, a concatenated image 12 is analyzed to identify all pixels or regions that have values (e.g. intensity) that are outside of a given range. Blob analysis software attempts to determine whether the identified pixels or regions are discrepant by themselves or are part of a larger region or structure that is itself discrepant. For example, if a given pixel has an intensity value that is higher than a given value, blob analysis may be used to determine if adjacent pixels or regions have a similar character. If so, the similar pixels or regions may be grouped together and identified as a single blob which may or may not (depending on assessment criteria) be discrepant.
In addition to finding features on a structure, the present concepts may be used to characterize the geometry of a structure itself. As indicated above, one may be able to determine a surface roughness of a region 26 (
Using the geometric location of edges 28, 29, one may also determine the pitch P of these edges, the difference in height/altitude H, and the slope 21 of the surface of the structure. The slope 21 may also be assessed using surface roughness or blob analysis techniques described above to obtain some value of variability for the surface.
Information about a structure and its characteristics can be correlated to and/or analyzed with additional process information to fully character the process used to form the structure. One very helpful analysis is to correlate operational data derived from microfabrication tools used to form a structure to particular characteristics of the structure itself. In one embodiment operational data from a microfabrication tool that etches or ablates a portion of a substrate to form a structure 10 is correlated with the geometry of the structure 10 itself. If a slope/sidewall 21 of the structure 10 is intended, for example, to be substantially vertical, one can measure the inclination of the slope 21 and correlate this inclination with, for example, a power output, temperature or dose/dwell time of the microfabrication tool. Understanding relationships like this can be helpful to an operator of a specific microfabrication tool and to the operator of a fabrication facility that encompasses an entire fabrication process.
Note that correlation of data concerning one or more microfabrication processes with structures 10 may take place in either or both real time or on a delayed basis. In a preferred embodiment, data concerning microfabrication processes is captured on an ongoing basis and information that can tie this data to one or more substrates/structures is similarly captured. For example, the operating characteristics of a microfabrication tool are recorded and appended to a database or other data structure with a cross-reference to the substrates/structures that were processed by the selected microfabrication tool. The characteristics of the structure 10 that are of interest or which are to be controlled are similarly recorded such that a connection between tool and structure can be made. Since the recordation of microfabrication tool data and structure characteristics tends to be linear, determination of good or bad function of a tool is made after a structure has been formed, this correlation is used to control the operation of a microfabrication tool as it processes subsequent substrates. In those situations where a structure may be assessed in more or less real time, e.g. deposition processes that may be measured on an ongoing basis, the control feedback loop may be made in more or less real time. It is be to be understood however, that very often a time shifted correlation/control arrangement is determined before real time control of microfabrication tools may be accomplished.
In another embodiment, an image of an entire substrate may be captured at one time. Typically this is done using optics that are scaled to the size of the substrate and which have a numerical aperture that defines a suitable depth of field to permit the formation of a concatenated image having a desired depth resolution as described above. Imaging is preferably conducted at normal incidence to the substrate and is undertaken at multiple focal positions. Illumination may be brightfield, darkfield, a combination of both and may also include other features as wavelength specific filtering and/or polarization of light.
Although specific embodiments of the present invention have been illustrated and described herein, it will be appreciated by those of ordinary skill in the art that any arrangement that is calculated to achieve the same purpose may be substituted for the specific embodiments shown. Many adaptations of the invention will be apparent to those of ordinary skill in the art. Accordingly, this application is intended to cover any adaptations or variations of the invention. It is manifestly intended that this invention be limited only by the following claims and equivalents thereof.
Claims
1. A system for assessing structures formed by microfabrication processes and the microfabrication processes themselves comprising:
- an imaging system comprising a camera and illumination for obtaining 2D images of a structure at multiple focal positions to substantially characterize both 2D and 3D geometries of the structure;
- a mechatronic support for moving the substrate relative to the imaging system to address a field of view of the camera to a structure;
- a controller coupled to the imaging system and to the mechatronic support for coordinating the operation thereof and for receiving images from the imaging system, for forming a concatenated image from the received images, and for identifying features of the structure in the concatenated image that are indicative of the operation of a microfabrication tool.
2. The system for assessing structures formed by microfabrication processes and the microfabrication processes themselves wherein the controller is constructed and arranged to identify characteristics of the structure selected from a group consisting of: roughness, inclination, skew, pitch, height, aspect ratio, presence/absence of discontinuities and size.
Type: Application
Filed: Mar 14, 2014
Publication Date: Nov 5, 2015
Patent Grant number: 9658169
Applicant: Rudolph Technologies, Inc. (Flanders, NJ)
Inventors: John Thornell (Richardson, TX), Steven Knauber (Richardson, TX), Jatinder Dhaliwal (Plano, TX), Justin Miller (Bloomington, MN), Michael Grant (Minneapolis, MN), Kenneth Durden (Vadnais Heights, MN)
Application Number: 14/213,451