This invention relates to identification of silicon substrates and, more particularly, to a method of identifying solar cells during the manufacturing process.
Ion implantation is a standard technique for introducing conductivity-altering impurities into substrates. A desired impurity material is ionized in an ion source, the ions are accelerated to form an ion beam of prescribed energy, and the ion beam is directed at the surface of the substrate. The energetic ions in the beam penetrate into the bulk of the substrate material and are embedded into the crystalline lattice of the substrate material to form a region of desired conductivity.
Solar cells provide pollution-free, equal-access energy using a free natural resource. Due to environmental concerns and rising energy costs, solar cells, which may be composed of silicon substrates, are becoming more globally important. Any reduced cost to the manufacture or production of high-performance solar cells or any efficiency improvement to high-performance solar cells would have a positive impact on the implementation of solar cells worldwide. This will enable the wider availability of this clean energy technology.
Doping may improve efficiency of solar cells.
In the past, solar cells have been doped using a dopant-containing glass or a paste that is heated to diffuse dopants into the solar cell. This does not allow precise doping of the various regions of the solar cell and, if voids, air bubbles, or contaminants are present, non-uniform doping may occur. Solar cells could benefit from ion implantation because ion implantation allows precise doping of the solar cell. Ion implantation of solar cells, however, may require a certain pattern of dopants or that only certain regions of the solar cell substrate are implanted with ions. Previously, implantation of only certain regions of a substrate has been accomplished using photoresist and ion implantation. Use of photoresist, however, would add an extra cost to solar cell production because extra process steps are involved. Other hard masks on the solar cell surface likewise are expensive and require extra steps.
The production of a solar cell requires many individual, sequential processing steps. Some of these steps may include:
This list is not intended to be comprehensive and only serves to show the number of different steps which a solar cell must do through during production.
A primary goal of solar cell production is to produce the most efficient cells at the lowest production cost. Each of the above mentioned steps adds cost to the solar cell production process, as well as creating variability in the quality of the completed product.
To better understand the process, cell performance parameters, such as short circuit current density (Jsc), open circuit voltage (Voc), and fill factor (FF) as well as breakage, are typically monitored to maximize efficiency and minimize production cost.
Typically, substrates are tracked through the production process in “lots”. This may be suboptimal, since tracking large lots does not always give sufficient visibility to understand the specific causes for poor quality and defects. Furthermore, once a cell is separated from its lot, its traceability has been lost.
There are many methods for marking and tracking substrates that are currently available (laser etching, etc), primarily though various semiconductor chip manufacturing processes. The application of these marking methods to the solar cell process however is problematic. Many of the marking and tracking processes add to the production cost by requiring additional operations, increasing the overall production time.
In addition, most solar cell designs do not have a convenient surface that can be marked. The front of the cell, as shown in
A low cost method to identify and track individual solar cells through the production process would be beneficial. Ideally, the method would maintain traceability of the cell through the entire product lifespan.
A method of identifying individual silicon substrates, and particularly solar cells, is disclosed. Every solar cell possesses a unique set of optical properties. The method identifies these properties and stores them in a database, where they can be associated to a particular solar cell. Unlike conventional tracking techniques, the present method requires no dedicated space on the surface of the silicon substrate. This method allows substrates to be tracked through the manufacturing process, as well as throughout the life of the substrate.
For a better understanding of the present disclosure, reference is made to the accompanying drawings, which are incorporated herein by reference and in which:
Embodiments of this system are described herein in connection with solar cells. However, the embodiments of this system can be used with, for example, semiconductor substrates or flat panels. Thus, the invention is not limited to the specific embodiments described below.
Thus, one can exploit this uniqueness to create an identification method within needed to dedicate space on the surface of the substrate to add markings or etchings.
The angle of incidence, or tilt angle (θ), between the incoming light beam and the surface 310 can be varied to insure the best reflectance. If the light source 300 and the lens 330 are coaxial, as shown in
If the light source 300 and the lens 330 are not coaxial, as shown in
In addition, it may be advantageous to adjust the twist angle (Φ) to optimize the reflected pattern. The twist angle (Φ) is the angle about twist axis 350, which is perpendicular to the surface 310. As seen in
By varying the tilt angle and the twist angle, the reflected image can be optimized.
One representation of the raw captured image 600 is shown in
The detection and identification system includes the light source 300 and lens 330 (see
In one embodiment, the processing unit captures an image. It then creates a representation of this image. It then searches the previously stored representations for one that matches the representation of the recently captured image. In some embodiments, the pattern matching algorithm is able to tolerate some number of discrepancies or offset. For example, during the processing of the substrate, it is possible that one or more of the exposed “pyramids” may be damaged or altered, thereby changing the reflectance pattern. For example, the deposition of an anti-reflection coating (ARC) may affect one or more of the contours. If exact pattern matching is required, a processed substrate may not be properly associated with its previously captured image, which was made before the processing step that caused the damage.
In another embodiment, the captured image is stored in the memory element as a set of coordinate locations, where these coordinates correspond to particular features in the image.
For purposes of this disclosure, the term “representation” is used to denote any means for encoding and saving the captured raw image. Representations may include the raw image, a filtered version of the raw image; a subset of the raw image; a subset of the filtered version; a set of coordinate locations representing particular features in the surface. Other means of representing the raw image are also within the scope of the disclosure.
In another embodiment, the system may monitor and track the changes in the reflectance pattern caused by substrate processing. For example,
After the substrate has been identified, it undergoes Process 1. In some embodiments, a second identification process is performed following the completion of Process 1. For example, knowing that the surface of the substrate may become slightly altered as a result of certain processes, the system may capture a new reflected image from the substrate after Process 1 is completed. In some embodiments, the system uses this updated reflected image, or a representation thereof, to replace the existing image being used for identification, as this is now the more accurate representation of the substrate surface. Thus, the identification key for the solar cell can be updated based on its altered characteristics. In other embodiments, the original captured image is maintained and the pattern-matching algorithm is designed to compensate for changed in reflectance based on processing. In some embodiments, the database contains information about the substrate, such as the process steps that it underwent, the process parameters used for those steps, and other unique parameters.
As the substrate is moved to Process 2, a new reflected image of the surface of the substrate is acquired. As described above, this recently acquired image is compared to that stored in the database. As noted above, the image or representation thereof stored in the database may be the image acquired originally, or may be an image that was updated based on changed in reflectance due to a previous process step. In the case of an updated stored image, it may be more likely that the new reflected image is identical to the stored image, as the substrate has not undergone any processing between the two identification cycles.
Once the substrate has been identified, Process 2 can be performed. As described above, after the process is completed, a new image may be obtained and saved. In addition, information concerning the parameters of Process 2 may be stored in the database associated with the substrate.
This process can be repeated for any number of process steps, as shown in
In some embodiments, the database is configured to store various types of information about the substrate. This information may include, but is not limited to:
Such information can be used for a number of purposes. For example, the information can be used for quality control purposes. In other embodiments, it may be used for process control, process assurance, troubleshooting or other purposes.
In another embodiment, the identification key may be used as a fiducial for subsequent process steps. For example, as described above, the general location of the identification key may be referenced to the edges 501, 502 of the substrate. The light source 300 and lens 330 then proceed from the corner of the substrate 500 toward the center of the substrate, using the edges 501, 502 to determine the approximate location of the identification. As the lens 330 captures the reflected image, it is compared to those stored in a database. When a match is found, the system determines the relative location of the identification key (see
The present disclosure is not to be limited in scope by the specific embodiments described herein. Indeed, other various embodiments of and modifications to the present disclosure, in addition to those described herein, will be apparent to those of ordinary skill in the art from the foregoing description and accompanying drawings. Thus, such other embodiments and modifications are intended to fall within the scope of the present disclosure. Furthermore, although the present disclosure has been described herein in the context of a particular implementation in a particular environment for a particular purpose, those of ordinary skill in the art will recognize that its usefulness is not limited thereto and that the present disclosure may be beneficially implemented in any number of environments for any number of purposes. Accordingly, the claims set forth below should be construed in view of the full breadth and spirit of the present disclosure as described herein.
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