System and method for product yield prediction

Information

  • Patent Grant
  • 6449749
  • Patent Number
    6,449,749
  • Date Filed
    Thursday, November 18, 1999
    25 years ago
  • Date Issued
    Tuesday, September 10, 2002
    22 years ago
Abstract
A system and method for predicting yield of integrated circuits includes at least one type of characterization vehicle which incorporates at least one feature which is representative of at least one type of feature to be incorporated in the final integrated circuit product. The characterization vehicle is subjected to at least one of the process operations making up the fabrication cycle to be used in fabricating the integrated circuit product in order to produce a yield model. The yield model embodies a layout as defined by the characterization vehicle and preferably includes features which facilitate the gathering of electrical test data and testing of prototype sections at operating speeds. An extraction engine extracts predetermined layout attributes from a proposed product layout. Operating on the yield model, the extraction engine produces yield predictions as a function of layout attributes and broken down by layers or steps in the fabrication process. These yield predictions are then used to determine which areas in the fabrication process require the most improvement.
Description




BACKGROUND OF THE INVENTION




The present invention pertains to fabrication of integrated circuits and more particularly to systems and methods for improving fabrication yields.




The fabrication of integrated circuits is an extremely complex process that may involve hundreds of individual operations. Basically, the process includes the diffusion of precisely predetermined amounts of dopant material into precisely predetermined areas of a silicon wafer to produce active devices such as transistors. This is typically done by forming a layer of silicon dioxide on the wafer, then utilizing a photomask and photoresist to define a pattern of areas into which diffusion is to occur through a silicon dioxide mask. Openings are then etched through the silicon dioxide layer to define the pattern of precisely sized and located openings through which diffusion will take place. After a predetermined number of such diffusion operations have been carried out to produce the desired number of transistors in the wafer, they are interconnected as required by interconnection lines. These interconnection lines, or interconnects as they are also known, are typically formed by deposition of an electrically conductive material which is defined into the desired interconnect pattern by a photomask, photoresist and etching process. A typical completed integrated circuit may have millions of transistors contained with a 0.1 inch by 0.1 inch silicon chip and interconnects of submicron dimensions.




In view of the device and interconnect densities required in present day integrated circuits, it is imperative that the manufacturing processes be carried out with utmost precision and in a way that minimizes defects. For reliable operation, the electrical characteristics of the circuits must be kept within carefully controlled limits, which implies a high degree of control over the myriad of operations and fabrication processes. For example, in the photoresist and photomask operations, the presence of contaminants such as dust, minute scratches and other imperfections in the patterns on the photomasks can produce defective patterns on the semiconductor wafers, resulting in defective integrated circuits. Further, defects can be introduced in the circuits during the diffusion operations themselves. Defective circuits may be identified both by visual inspection under high magnification and by electrical tests. Once defective integrated circuits have been identified, it is desired to take steps to decrease the number of defective integrated circuits produced in the manufacturing process, thus increasing the yield of the integrated circuits meeting specifications.




In the past, many of the defects which caused poor yield in integrated circuits were caused by particulate contaminants or other random sources. Increasingly, many of the defects seen in modern integrated circuit processes are not sourced from particulates or random contaminants, especially in the earlier stages of process development or yield ramping, but rather stem from very systematic sources. Examples of these systematic defect sources include printability problems from using aggressive lithography tools, poly stringers from poorly formed silicides, gate length variation from density driven and optical proximity effects.




In attempting to decrease the number of defective integrated circuits produced in the manufacturing process, thus increasing the yield, one is faced with the fact that any one or more of possibly several hundred processing steps may have caused a particular circuit to be defective. With such a large number of variables to work with, it can be extremely difficult to determine the exact cause or causes of the defect or defects in a particular circuit thereby making it extraordinarily difficult to identify and correct the yield detracting process operations. Detailed inspection of the completed integrated circuits may provide some indication of which process operation may have caused the circuits to be defective. However, inspection equipment often does not capture many of the systematic defect sources and/or the tools can be difficult to tune, optimize, or use effectively and reliably. Furthermore, inspection equipment, especially in recent technologies is often plagued with many false alarms or nuisance defects, as they are known, which serve to frustrate any attempts to reliably observe true defects or sources of defects.




It is typically discovered that, once a particular problem has been identified at final test after completion of the fabrication cycle, it can be confirmed that a problem in a particular process operation did exist at the time that operation was carried out, which could have been weeks or even months earlier. Thus the problem might be corrected well after the fact. At this time, different process operations may be causing problems. Thus, after the fact analysis of defective integrated circuits and identification of process operations causing these defective products is severely limited as a means for improving the overall yield of integrated circuits.




A number of attempts to predict yields instead of conducting unsatisfactory after the fact analysis have been made with varying degrees of success. Thus, there is a need for an improved system and method for integrated circuit product yield prediction.




SUMMARY OF THE INVENTION




A system and method for predicting yield of integrated circuits includes at least one type of characterization vehicle which incorporates at least one feature which is representative of at least one type of feature to be incorporated in the final integrated circuit product. The characterization vehicle is subjected to at least one of the process operations making up the fabrication cycle to be used in fabricating the integrated circuit product in order to produce a yield model. The yield model embodies a layout as defined by the characterization vehicle and preferably includes features which facilitate the gathering of electrical test data and testing of prototype sections at operating speeds. An extraction engine extracts predetermined layout attributes from a proposed product layout. Operating on the yield model, the extraction engine produces yield predictions as a function of layout attributes and broken down by layers or steps in the fabrication process. These yield predictions are then used to determine which areas in the fabrication process require the most improvement.











BRIEF DESCRIPTION OF THE DRAWINGS





FIG. 1

is a block diagram depicting the steps performed by a preferred embodiment of the system of the present invention.





FIG. 2

is a block diagram depicting additional steps performed by the system of the present invention to effect a feedback loop.





FIG. 3

is an image of an illustrative short flow mask comprising a single lithographic layer.





FIG. 4

depicts pad frames on an exemplary metal short flow chip.





FIG. 5

depicts pads within each pad frame depicted in FIG.


4


.





FIG. 6

depicts two types of pad frame structures which contain van der Pauw structures.





FIG. 7

depicts locations, on the exemplary chip, of the pad frames containing the van der Pauw structures.





FIG. 8

depicts an exemplary van der Pauw structure.





FIG. 9

depicts exemplary locations of nest defect size distribution structures on an exemplary metal short flow chip.





FIG. 10

depicts an exemplary nest defect size distribution structure.





FIG. 11

depicts an exemplary Kelvin critical dimension structure.





FIG. 12

depicts exemplary locations of Kelvin structures on an exemplary metal short flow chip.





FIG. 13

depicts exemplary locations of snakes and combs on an exemplary meal short flow chip.





FIG. 14

depicts exemplary snake and comb structures used in an exemplary metal short flow chip.





FIG. 15

depicts examples of variations of border structures used in an exemplary metal short flow chip.





FIG. 16

depicts exemplary locations of border structures on an exemplary metal short flow chip.





FIG. 17

depicts exemplary locations of scanning electron microscope structures on an exemplary metal short flow chip.





FIG. 18

depicts an exemplary test structure illustrating a shortable area.





FIG. 19

depicts an exemplary test pattern for examining the yield of T-shaped endings at the ends of lines.





FIG. 20

depicts an exemplary nest structure for extracting defect size distributions.





FIG. 21

depicts a plot for determining the rate at which defects decay over size.




FIGS.


22


(


a


),


22


(


b


) and


22


(


c


) depict, respectively, linewidth, linespace and pattern density distributions for a metal-


1


layer of a sample product layout.











DETAILED DESCRIPTION




Referring now to

FIG. 1

, there is shown a block diagram depicting the steps performed by a system, generally designated


10


, for predicting integrated circuit yields in accordance with the present invention. The system


10


utilizes at least one type of characterization vehicle


12


. The characterization vehicle


12


preferably is in the form of software containing information required to build an integrated circuit structure which incorporates at least one specific feature representative of at least one type of feature to be incorporated into the final product. For example, the characterization vehicle


12


might define a short flow test vehicle of a single lithographic layer for probing the health and manufacturability of the metal interconnection module of the process flow under consideration. The structures need to be large enough and similar enough to the actual product or type of products running in the fabrication process to enable a reliable capture or fingerprint of the various maladies that are likely to affect the product during the manufacturing. More specific examples and descriptions of short flows and the structures embodied in them are described below.




Short flow is defined as encompassing only a specific subset of the total number of process steps in the integrated circuit fabrication cycle. For example, while the total fabrication cycle might contain up to 450 or more process steps, a characterization vehicle such as one designed to investigate manufacturability of a single interconnection layer would only need to include a small number, for example 10 to 25 process steps, since active devices and multiple interconnection layers are not required to obtain a yield model or allow accurate diagnosis of the maladies afflicting these steps associated with a single interconnection layer in the process flows.




The characterization vehicle


12


defines features which match one or more attributes of the proposed product layout. For example, the characterization vehicle


12


might define a short flow test vehicle having a partial layout which includes features which are representative of the proposed product layout (e.g. examples of line size, spacing and periodicity; line bends and runs: etc.) in order to determine the maladies likely afflicting those specific design types and causing yield loss.




The characterization vehicle


12


might also define one or more active regions and neighboring features of the proposed design in order to explore impact of layout neighborhood on device performance and process parameters; model device parameters as a function of layout attributes; and determine which device correlate best with product performance. Furthermore, by constructing and analyzing a sufficient number of short flow vehicles such that the range of all possible or a major subset of all the modular components of the entire process is exercised, a full evaluation of many if not all of the yield problems which will afflict the specific product manufactured can be uncovered, modeled, and/or diagnosed.




In addition to providing information for assessing and diagnosing yield problems likely to be seen by the product(s) under manufacture, the characterization vehicle is designed to produce yield models


16


which can be used for accurate yield prediction. These yield models


16


can be used for purposes including, but not limited to, product planning, prioritizing yield improvement activities across the entire process, and modifying the original design of the product itself to make it more manufacturable.




The majority of the test structures in the characterization vehicle


12


contemplated in the invention are designed for electrical testing. To this end, the reliability of detecting faults and defects in the modules evaluated by each characterization vehicle is very high. Inspection equipment cannot deliver or promise this high degree of reliability. Furthermore, the speed and volume of data collection is very fast and large respectively since electrical testing is fast and cheap. In this way, statistically valid diagnosis and/or yield models can be realized.




The characterization vehicle


12


is preferably in the form of a GDS


2


layout on a tape or disc which is then used to produce a reticle set. The reticle set is used during the selected portions of the fabrication cycle


14


to produce the yield model


16


. Thus the yield model


16


is preferably constructed from data measured from at least a portion of a wafer which has undergone the selected fabrication process steps using the reticle set defined by the characterization vehicle


12


.




The yield model


16


not only embodies the layout as defined by the characterization vehicle, it also includes artifacts introduced by the fabrication process operations themselves. The yield model


16


may also include prototype architecture and layout patterns as well as features which facilitate the gathering of electrical test data and testing prototype sections at operating speeds which enhances the accuracy and reliability of yield predictions.




An extraction engine


18


is a tool for extracting layout attributes from a proposed product layout


20


and plugging this information into the yield model


16


to obtain a product yield prediction


22


. Such layout attributes might include, for example, via redundancy, critical area, net length distribution, and line width/space distribution. Then, given layout attributes from the proposed product layout


20


and data from yield models


16


which have been fabricated based upon information from the characterization vehicles


12


, product yield


22


is predicted. Using the system and method of the present invention, the predictable product yield obtainable can be that associated with each defined attribute, functional block, or layer, or the resultant yield prediction for the entire product layout.




Referring now to

FIG. 2

, there is shown a block diagram of the system for predicting integrated circuit yields


10


in accordance with the present invention additionally comprising a feedback loop, generally designated


24


, for extracting design attributes


26


from product layout by means of extraction engine


28


. In accordance with this feature of the present invention, the characterization vehicle


12


is developed using attributes of the product layout


20


. In this case, attributes of the product layout are extracted, making sure that the range of attributes are spanned in the characterization vehicle


12


. For example, the product layout is analyzed to determine line space distribution, width distribution, density distribution, the number of island patterns, in effect developing a subset of the entire set of design rules of the fabrication process, which subset is applicable to the particular product layout under consideration. With respect to patterns, the product layout analysis would determine the most common pattern, the second most common pattern, and so forth. These would be extracted by the extraction engine


28


yielding design attributes


26


encompassing all of these patterns for inclusion into the characterization vehicle


12


. With respect to densities, if the analysis of the product layout reveals that the density of a first metal is from 10% to 50%, then the characterization vehicle would include the entire range of 10% to 50% for the first metal.




One type of characterization vehicle is a metal short flow characterization vehicle. The purpose of the metal short flow characterization vehicle is to quantify the printability and manufacturability of a single interconnect layer. Usually a metal short flow is run very early in the process since metal yield is crucial for high product yield, is often very difficult to obtain, and consists of only a few independent processing steps. Conducting short flow experiments using a metal short flow mask, enables experiments and analysis to be carried out in rapid succession to eliminate or minimize any systematic yield or random defect yield issue that is detected without having to wait for complete flow runs to finish.




Referring to

FIG. 3

, there is shown an image of a typical and illustrative metal short flow mask, generally designated


30


, which consists of a single lithographic layer. The mask


30


is used to define a single metal layer on a chip, and the exemplary chip


32


depicted in

FIG. 3

is as large as the stepper can accomodate which is, in this example, approximately 22 mm×22 mm in size. It is divided into four quadrants,


42


,


44


,


46


and


48


as shown in

FIG. 4

, each containing one or more of six basic structures: (i) Kelvin metal critical dimension structures; (ii) snake and comb structures; (iii) nest defect size distribution structures; (iv) van der Pauw structures; (v) OPC evaluation structures; and (vi) classical scanning electron microscopy (SEMI) structures.




Approximately 50% of the chip area is devoted to nest structures for extraction of defect size distribution while 40% of the chip area is devoted to detecting systematic yield loss mechanisms and measuring parametric variation.

FIG. 3

also depicts the location of pad frames


34


on the chip. In the embodiment described herein, there are 131 pad frames on the chip, with each pad frame


34


comprising thirty-two pads as shown in FIG.


5


. The pads within each pad frame


34


provide electrical connection points which are contacted by external test equipment as required by a test program to be described later.




The van der Pauw test structures


82


used in this chip (see

FIG. 8

) are four terminal square structures which take advantage of the symmetry of the structure for direct determination of the sheet resistance. Accurate determination of sheet resistance is a requirement for measurement of linewidth variation. The van der Pauw structures


82


are arranged in two different frame types: mixed


62


(see

FIG. 6A

) and VDP 1 64 (see FIG.


6


B).

FIG. 7

depicts the location of the pad frames


72


containing the van der Pauw structures in the exemplary metal short flow chip described herein. In this exemplary chip, the van der Pauw structures occupy less than 1% of the chip area. In the van der Pauw structures the line width (LW) and the LW tap (see

FIG. 8

) arc the parameters that are varied. Table I shows the variations in the van der Pauw structures in the exemplary metal short flow chip described herein.















TABLE I











LW (μm)




LW tap (μm)













1 (DR)




1 (DR)














1.1




1.1







5




1







10




2







25




5







35




7







35




3.5







50




5















The nest defect size distribution structures are arrays of nested continuous lines designed for opens and shorts detection and for the extraction of defect size distribution. Line width and space between the line are the parameters that are varied to facilitate the extraction of defect size distribution. In the embodiment described herein, these structures occupy 50% of the chip area at locations


92


and


94


shown in FIG.


9


and have fourteen variants in a total of ten cells


96


. The amount of area these structures can occupy needs to be large enough to accurately detect less than 0.25 defects/cm


2


for one wafer. The number of variants typically include the design rule (DR), slightly below DR, slightly above DR and substantially above DR. Therefore, for example, if DR is 1.0 μm for line spacing, the plots might be for 0.9, 1.1, 1.3 and 2.5 as shown in Table II.















TABLE II











Line Width =




Length







Space (μm)




(cm)



























0.9




39.6














1.0 (DR)




36














1.1




33







1.3




28.2







2.5




24.6















Each cell is split into six sub-cells to reduce the line resistance to reasonable levels (less than 250 kΩ) and to minimize the incidence of multiple defects per cell. In this embodiment, there are sixteen snakes per cell. An exemplary nest defect size distribution structure itself, generally designated


1002


, is depicted in FIG.


10


. The nest defect size distribution structures are designed such that the line width (LW) is equal to the spacing (S) between the lines to simplify subsequent analysis of data.




The Kelvin metal critical dimension (CD) structures are made up of a continuous straight line with terminal connections at each end. These structures allow for precise line resistance measurements which, in conjunction with the sheet resistance determined from the van der Pauw structures, allow for the determination of Kelvin line width. These structures are designed primarily to determine the variation in the electrical critical dimension. An exemplary Kelvin critical dimension structure, generally designated


110


, is depicted in FIG.


11


. To study the impact of optical proximity effect on the variability in the electrical critical dimension, local neighborhood structures are varied. The parameters varied for the local neighborhood are the number


112


, line width


114


and space


116


of the lines. The global environment


118


around the Kelvin structures is also varied, primarily to study etch related effects on the electrical critical dimension (see FIG.


11


). Parameters varied for global neighborhood are the density and area. The global neighborhood structures can also serve other electrical measurement needs. For example, the yield of these structures can be measured so that not only metal critical dimension as a function of environment is obtained, but also yield as a function of environment.

FIG. 12

depicts the location of Kelvin structures


122


in the metal short flow chip described herein. These locations are chosen to cover available area. Tables III through IX describe the variations in the Kelvin structures used in the metal short flow chip described herein. These values were chosen to cover the space identified in FIGS.


22


(


a


) through


22


(


b


). For example, the pattern density is centered around 45% and the line width and spaces are in the range of 1.0 to 3.3 μm since this is where most of an exemplary product layout is centered.















TABLE III











Number of







Line Width (μm)




Spacing (μm)




Local Lines




Fixed Parameters


























0.75




0.75




6




Local line width =









1 μm






0.9




0.9





Density = 45%






1 μm (DR)




1.0 (DR)





Line width of comb =









1.3 μm






1.1




1.1





Dx max = 400 (μm)






1.3




1.3





Dy max = 400 (μm)






2.5




2.5






3.3




3.0






10




3.3







10







50

























TABLE IV











Number of




Fixed






Line Width (μm)




Space ratio




Local Lines




Parameters


























0.75




2 to 1




6




Local line width =









1 μm






0.9




3 to 1




2




Density = 45%






1 (DR)






Line width of









comb =









1.3 μm






1.1






Dx max = 400 (μm)






1.3






Dy max = 400 (μm)






2.5






3.3






10

























TABLE IV











Number of




Fixed






Line Width (μm)




Space ratio




Local Lines




Parameters


























0.75




2 to 1




6




Local line width =









1 μm






0.9




3 to 1




2




Density = 45%






1 (DR)






Line width of









comb =









1.3 μm






1.1






Dx max = 400 (μm)






1.3






Dy max = 400 (μm)






2.5






3.3






10



























TABLE VI









Line Width




Spacing




Number of





LW comb




Fixed






(μm)




(μm)




local lines




Density




(μm)




Parameters




























1.0 (DR)




1.0 (DR)




6




0




1.3




Dx max =











400 (μm)






1.3




1.3




2




0.2




10




Dy max =











400 (μm)









0.40









0.45









0.50



























TABLE VI









Line Width




Spacing




Number of





LW comb




Fixed






(μm)




(μm)




local lines




Density




(μm)




Parameters




























1.0 (DR)




1.0 (DR)




6




0




1.3




Dx max =











400 (μm)






1.3




1.3




2




0.2




10




Dy max =











400 (μm)









0.40









0.45









0.50


























TABLE VIII











Line Width




Spacing








(μm)




(μm)




Fixed Parameters













1.0 (DR)




1.0 (DR)




Number of local lines 6







1.1




1.1




Density - 0.45







1.3




1.3




Line width comb 1.3







2.5




2.5




Dx_max = 400 (μm)















10




3.0




Dy_max = 400 (μm)








5.3




Line width local 1.3




























TABLE IX











Line Width (μm)




Spacing (μm)




Local density




Dx_max




Fixed Parameters




Comments









 0.75







Number of local lines 0




Isolate Kelvins






0.9







Density 0






1.0 (DR)







Line width comb 0






1.1







Line width local 0






1.3







Dx_max = 400(μm)






2.5







Dy_max = 400(μm)




Local






3.3








neighborhood






10








size







10




2.5





Line width = 1.0(μm)







20




3.5





Local line width = 1.0










(μm)







30




4.5





Number of local lines 2







40




5.5





Density 0.45







50




6.5





Comb line width 1.3







60




7.5





Dx_max = 400(μm)







70




8.5





Dy_max = 400(μm)







80




9.5









 25




Line width 1.0




Global









 50




Line width local 1.0




neighborhood









100




Space 1.0




size









150




Number of local lines 6









200




Density 0.45









250




Line width comb 1.3









300




Dy_max 400(μm)









Line Width




Spacing




N_local




Dx_max




Fixed Parameters




Comments









1.0 (DR)




1.0 (DR)




6





D_local 5




Standards






1.3




1.3




6





Line width comb 1.3






1.0




40




2





0.45






1.3




40




2














The snake, comb and snake & comb structures are designed primarily for the detection of short and opens across a wide variety of patterns. Snakes are used primarily for the detection of opens and can also be used for monitoring resistance variation. Combs are used for monitoring shorts. Shorts and opens are fundamental yield loss mechanisms and both need to be minimized to obtain high product yield.

FIG. 13

shows the location of snakes and combs


1302


in the metal short flow chip described herein. Quadrant one


1304


also contains snakes


1402


and combs


1404


nested within the Kelvin structures as shown, for example in FIG.


14


. Line width (LW) and space (S), see

FIG. 14

, are the parameters varied on these structures to study their impact on shorts and opens. Tables X through XIII describe the variations of snake and comb structures used in the metal short flow chip described herein. Again, the parameters were chosen such that the space covered in line width, line space, and density is similar to that seen in the example product layout, as shown in FIG.


22


(


a


) through


22


(


c


).















TABLE X









LW_comb (μm)




Space (μm)




LW_snake (μm)




Fixed Parameters


























20




0.9




1.0 (DR)




Dx_max = 200 μm






50




1.0 (DR)




Dy_max = 400 μm






100




1.1






200







300




2.5







3.0







3.3







10






20




1.3




1.3






50




3.1






100




3.3






200




3.5






300




10


























TABLE XI











LW_comb (μm)




Space (μm)




Fixed Parameters




























0.75




0.75




Dx_max = 200 μm







0.9




0.9




Dy_max = 400 μm







1.0 (DR)




1.0 (DR)







1.1




1.1







1.3




1.2







2.0




1.3







3.3




2.5







10




3.0








3.3








10



























TABLE XI











LW_comb (μm)




Space (μm)




Fixed Parameters




























0.75




0.75




Dx_max = 200 μm







0.9




0.9




Dy_max = 400 μm







1.0 (DR)




1.0 (DR)







1.1




1.1







1.3




1.2







2.0




1.3







3.3




2.5







10




3.0








3.3








10



























TABLE XIII











LW (μm)




Space (μm)




Fixed Parameters




























20




0.7




Dx_max = 400 μm







50




1.0 (DR)




Dy_max = 200 μm







100




1.1







200




1.3







500




2.5








2.7








3.0








3.3








5








10















Border and fringe structures are designed to study the impact of optical proximity correction (OPC) structures on shorts. These optical proximity corrections are usually added to improve via yields. However, it is necessary to check metal short yield with and without these borders to ensure that there is no detrimental impact to short yield. Borders


1502


are placed both at the end of the comb lines and in the interior of comb structures, generally designated


1504


, as shown in FIG.


15


.

FIG. 16

shows the location of border structures, generally designated


1602


, in the metal short flow chip described herein.




Scanning electron microscopy (SEM) structures are used for non-electrical measurements of line width through top down or cross sectional SEM. For the SEM bars in the metal short flow chip described herein the line width is the same as the spacing between the lines in accordance with traditional SEM techniques.

FIG. 17

depicts the location of the SEM structures


1702


in the metal short flow chip described herein. The structures are placed at the bottom of each quadrant


1704


,


1706


,


1708


and


1710


of the embodiment depicted since this is where space was available.




In

FIGS. 3 through 17

, and accompanying text, an example characterization vehicle for metal yield improvement has been described. Other characterization vehicles for via, device, silicides, poly, el al, are often designed and utilized. However, the procedure and techniques for designing them are the same. For purposes of illustration, the example metal characterization vehicle will be carried through on extraction engines and yield models.




The extraction engine


18


has two main purposes: (1) it is used in determining the range of levels (e.g. linewidth, linespace, density) to use when designing a characterization vehicle. (2) It is used to extract the attributes of a product layout which are then subsequently used in the yield models to predict yield. (1) has already been described above with reference to how the line width, space and density of the snake, comb and Kelvin structures were chosen in the example characterization vehicle. Thus, most of the following discussion focuses on (2).




Since there are nearly infinite numbers of attributes that can be extracted from the product layout, it is impossible to list or extract all of them for each product. Thus, a procedure is required to guide which attributes should be extracted. Usually, the characterization vehicle drives which attributes to extract. The process consists of:




1. List all structures in the characterization vehicle




2. Classify each structure into groups or families such that all structures in the family form an experiment over a particular attribute. For example, in the metal characterization vehicle discussed above, a table of family classifications might be:
















Family




Attributes Explored











Nest structures




Basic defectivity over a few linewidths and spaces






Snakes and Combs




Yield over wide range of linewidths and spaces







including very large widths next to small spaces







and very large spaces next to small widths.






Kelvin-CD +




CD variation across density, linewidth, and






van der Pauws




linespace.






Border structures




Effect of different OPC schemes on yield.














3. For each family, determine which attributes must be extracted from the product layout. The exact attributes to choose are driven from which attributes are explored. For example, if a particular family explores yield over different ranges of space, then either a histogram of spaces or the shortable area for each space must be extracted. For the above example, the required list of attributes might be:



















Attributes to Extract from






Family




Attributes Explored




Product Layout











(A) Nest structures




Basic defectivity




Critical area curves.







over a few line-







widths and spaces.






(B) Snakes and combs




Yield over wide




Shortable area and/or







range of linewidths




instance counts for each







and spaces




linewidth and space ex-







including . . .




plored in the character-







ization vehicle.






(C) Kelvin-CD and




CD variation across




Histograms of pattern






van der Pauws




density, linewidth,




density, linewidth, and







and space




linespace (similar to








example shown in FIG.








22)






(D) Border structures




Effect of different




For each OPC scheme







OPC schemes on




selected to use on pro-







yield




duct layout,the shortable








area or instance count.














4. Use the attributes extracted in the appropriate yield models as previously described.




For other characterization vehicles the families and required attributes will obviously be different. However, the procedure and implementation is similar to the example described above.




As previously stated, the yield model


16


is preferably constructed from data measured from at least a portion of a wafer which has undergone the selected fabrication process steps using the reticle set defined by the characterization vehicle


12


. In the preferred embodiment, the yield is modeled as a product of random and systematic components:






Y
=


(




t
=
1

n







Ys
i


)



(




j
=
1

m







Yr
j


)












The methods and techniques for determining Ys


i


and Yr


j


are as follows.




Systematic Yield Modeling




Since there are so many types of systematic yield loss mechanisms and they vary from fab to fab, it is not practicable to list every possible systematic yield model. However, the following describes two very general techniques and gives an example of their use especially within the context of characterization vehicles and the methodology described herein.




Area Based Models




The area based model can be written as:







Ys
i

=


[



Y
o



(
q
)




Y
r



(
q
)



]



A


(
q
)


/


A
o



(
q
)














Where q is a design factor explored in the characterization vehicle such as line width, line space, length, ratio of width/space, density, etc. Y


o


(q) is the yield of a structure with design factor q from the characterization vehicle. A


o


(q) is the shortable area of this structure and A(q) is the shortable area of all instances of type q on the product layout. Y


r


(q) is the predicted yield of this structure assuming random defects were the only yield loss mechanism. The procedure for calculating this quantity is described below in connection with random yield modeling.




The definition of shortable area is best illustrated with the example shown in FIG.


18


. This type of test structure can be used to determine if the fab is capable of yielding wide lines that have a bend with a spacing of s. In this sample test structure, a short is measured by applying a voltage between terminal (1) and (2) and measuring the current flowing from terminal (1) to (2). If this current is larger than a specified threshold (usually 1-100 nA), a short is detected. The shortable area is defined to be the area where if a bridging occurs, a short will be measured. In the example of

FIG. 18

, the shortable area is approximately x*s). The A(q) term is the shortable area of all occurrences of the exact or nearly exact pattern (i.e. a large line with a spacing of s and a bend of 45 degrees) shown in

FIG. 18

in a product layout. The Yr(q) term is extracted by predicting the random yield limit of this particular structure using the critical area method described below.




It is important to realize that the effectiveness of this model is only as good as the number of structures and size of structures placed on the characterization vehicle. For example, if the angled bend test structure shown in

FIG. 18

were never put on the characterization vehicle or was not placed frequently enough to get a meaningful yield number, then there would be no hope of modeling the yield loss of wide line bends on the product layout. While it is difficult to define exactly how many of how big the test structure should be on the characterization vehicle, practical experience has shown that the total shortable area of each test structure on the characterization vehicle should ideally be such that A(q)/Ao(q)<10.




The above discussion has concentrated on shorts since they generally tend to dominate over open yield loss mechanisms. However, open yield loss mechanisms can be modeled equally well with this yield model so long as shortable area is replaced by open causing area.




Instance Based Yield Model




The general form of the instance based yield model is:







Ys
i

=


[



Y
o



(
q
)




Y
r



(
q
)



]




N
i



(
q
)




N
o



(
q
)














Where Yo(q) and Yr(q) are exactly the same as in the area based yield model. Ni(q) is the number of times the unit cell pattern or very similar unit cell pattern to the test pattern on the characterization vehicle appears on the product layout. No(q) is the number of times the unit cell pattern appears on the characterization vehicle.




For example,

FIG. 19

shows a simple test pattern for examining the yield of T-shaped endings at the ends of lines near a space of s. This test pattern is measured by applying a voltage across terminals (1) and (2) and measuring the shorting current. If this pattern was repeated 25 times somewhere on the characterization vehicle, then No(q) would be 25×5=125 since there are five unit cells per each test structure.




If the number of times this unit cell occurs with a spacing of s near it is extracted from the product layout, the systematic yield of this type of structure can be predicted. For example, if there are five structures with 500 unit cells in each structure then No(q)=2500. If Ni(q) from some product was 10,000 and a yield of the test structures on the characterization vehicle of 98.20% was measured. Using the techniques described below, Yr(q) can be estimated as 99.67%. Using these numbers in the equation:







Ys
i

=



[

0.9820
0.9967

]


10000
2500


=

92.84

%












Random Yield Modeling




The random component can be written as:







Y
r

=



-




x
0






CA


(
x
)


×

DSD


(
x
)









x















Where CA(x) is the critical area of defect size x and DSD(x) is the defective size distribution, as also described in “Modeling of Lithography Related Yield Losses for CAD of VSLI Circuits”, W. Maly, IEEE Trans. on CAD, July 1985, pp161-177, which is incorporated by reference as if fully set forth herein. Xo is the smallest defect size which can be confidently observed or measured. This is usually set at the minimum line space design rule. The critical area is the area where if a defect of size x landed, a short would occur. For very small x, the critical area is near 0 while very large defect sizes have a critical area approaching the entire area of the chip. Additional description of critical area and extraction techniques can be found in P. K. Nag and W. Maly, “Yield Estimation of VLSI Circuits,” Techcon90, Oct. 16-18, 1990. San Jose; P. K. Nag and W. Maly, “Hierarchical Extraction of Critical Area for Shorts in Very Large ICs,” in Proceedings of The IEEE International Workshop on Detect and Fault Tolerance in VLSI Systems, IEEE Computer Society Press 1995, pp. 10-18; I. Bubel, W. Maly, T. Waas, P. K. Nag, H. Hartmann, D. Schmitt-Landsiedel and S. Griep, “AFFCCA: A Tool for Critical Area Analysis with Circular Defects and Lithography Deformed Layout,” in Proceedings of The IEEE International Workshop on Detect and Fault Tolerance in VLSI Systems, IEEE Computer Society Press 1995, pp. 19-27; C. Ouyang and W. Maly, “Efficient Extraction of Critical Area in Large VLSI ICs,” Proc. IEEE International Symposium on Semiconductor Manufacturing, 1996, pp. 301-304; C. Ouyang, W. Pleskacz, and W. Maly, “Extraction of Critical Area for Opens in Large VLSI Circuits,” Proc. IEEE International Workshop on Defect and Fault Tolerance of VLSI Systems. 1996, pp. 21-29, all of which references are incorporated in this detailed description as if fully set forth herein.




The defect size distribution represents the defect density of defects of size x. There are many proposed models for defect size distributions (see, for example, “Yield Models—Comparative Study”, W. Maly, Defect and Fault Tolerance in VLSI Systems, Ed. by C. Stapper, et al, Plenum Press, New York, 1990; and “Modeling of Integrated Circuit Defect Sensitivities”, C. H. Stapper, IBM J. Res. Develop., Vol. 27, No. 6, November, 1983, both of which are incorporated by reference as if fully set forth herein), but for purposes of illustrations, the most common distribution:







DSD


(
x
)


=



D
o

×
k


x
p












will be used where Do represent the total number of defects/cm


2


greater than x


o


observed. P is a unitless value which represent the rate at which defects decay over size. Typically, p is between 2 and 4. K is a normalization factor such that










x
0






k

x
p









x



=
1










The following two section describe techniques for extracting defect size distributions from characterization vehicles.




The Nest Structure Technique




The structure is designed for extracting defect size distributions. It is composed of N lines of width w and space s as shown in FIG.


20


. This structure is tested by measuring the shorting current between lines 1 and 2, 2 and 3, 3 and 4, . . . , and N−1 and N. Any current above a given spec limit is deemed a short. In addition, opens can be testing by measuring the resistance of lines 1, 2, 3, . . . , N−1, and N. Any resistance above a certain spec limit is deemed to be an open line. B examining how many lines are shorted together the defect size distribution can be determined.




If only two lines are shorted then the defect size must be greater than s and no larger than 3w+2s. Any defects smaller than s will not cause a short at all while defects larger than 3w+2s are guaranteed to cause a short of at least 3 lines. For each number of lines shorted, an interval of sizes can be created:
















Number Lines Shorted




Size Interval











2




s to 3w + 2s






3




2s + w to 3s + 4w






4




3s + 2w to 4s + 5w






.




.






.




.






.




.






N




(N − 1)s + (N − 2)w to (N)s + (N + 1)w














It should be noted that the intervals overlap; thus, a defect size distribution cannot be directly computed. This restriction only places a limit on p extraction. Thus, in order to estimate p, a p estimate is computed from the distribution from all the even number lines and then from all the odd number lines. Finally, the two values are averaged together to estimate p. To extract p, the In (number of faults for x lines shorted) vs log ([x−1]s+[x−2]w) is plotted. It can be shown that the slope of this line is -p. The Do term is extracted by counting the number of failures at each grouping of lines and dividing by the area of the structure. However, for very large Do, this estimate will be too optimistic. Additional information on extracting defect size distribution from structures similar to the test structures can be found, for example, in “Extraction of Defect Size Distribution in an IC Layer Using Test Structure Data”, J. Khare, W. Maly and M. E. Thomas, IEEE Transactions on Semiconductor Manufacturing, pp. 354-368, Vol. 7, No. 3, August, 1994, which is incorporated by reference as if fully set forth herein.




As an example, consider the following data taken from 1 wafer of 100 dies:



















Number Lines Shorted




Number of Failures



























2




98







3




11







4




4







5




2







6




1







7




0







8




0















If the structure size is 1 cm


2


the Do would be 98+11+4+2+1=133/(100 * 1)=1.33 defects/cm


2


. Also, the plot of log (number of failures) vs log ([x−1]s+[x−2]w) (see

FIG. 21

) shows that p=2.05.




The Comb Structure Technique




Assuming a comb of width=space=s, it can be shown that the yield of this structure can be written as:







ln




[

&LeftBracketingBar;

ln






(
Y
)


&RightBracketingBar;

]

=


ln




[

-




x
0






DSD


(
x
)


×

CA


(
x
)









x




]




(

1
-
p

)

×
ln






(
s
)













Thus, from the slope of the plot of In[|ln(Y)|] vs. ln(s), p can be estimated. The Do extraction technique is the same technique as mentioned above.




Yield Impact and Assessment




Once a sufficient number of characterization vehicles has been run and yield estimates are made for each characterization vehicle, the results are placed in a spread sheet to enable prioritization of yield activities. Tables XIV through XVI are examples of information contained in such a spread sheet. It has been divided into sections of metal yield, poly and active area (AA) yield (Table XIV), contact and via yield (Table XV), and device yield (Table XVI). The columns on the left indicate systematic yield loss mechanisms while the columns on the right indicate random yield loss mechanisms. Although the exact type of systematic failure mechanisms vary from product to product, and technology by technology, examples are shown in Tables XIV through XVI.




Usually, targets are ascribed to each module listed in the spread sheet. The further a module yield is away from a target, the more emphasis and resources are devoted to fixing the problem. For example, if the target was set artificially at 95 percent for each module in the example shown in Tables XIV through XVI, then clearly (M


2→


M


3


) vias (75.12%) followed by similar vias (M


1→


M


2


) (81.92%), M, shorts (82.25%), and contacts to poly (87.22%) are below target and, with vias (M


2→


M


3


) needing the most amount of work and contacts to poly needing the least amount of work.




Within each module, it is also possible to tell where the greatest yield loss is situated. That is, is it one particular systematic mechanism being the yield down or is it merely a random defectivity problem, or is it some combination of the two? For example, as shown in Table XV, via (M


2→


M


3


) yield loss is clearly dominated by a systematic problem affecting vias connected to long metal runners on the M


3


level (77.40%). Vias from (M


1→


M


2


) are affected by the same problems (91.52%) in addition to a random defectivity problem (92.49%). Solving vias (M


1→


M


2


) yield problems would require fixing both of these problems.




As shown in Table XIV, M


1


yield loss is also dominated by a random defectivity issue (85.23%) in addition to a systematic problem affecting wide lines near small spaces (96.66%). Fixing both of these problems would be required for improving Metal 1. Similar conclusions can be made for other modules in the spread sheet.




For the worst yielding modules, frequent running of further characterization vehicles for this module would be required. Usually, splits will be done on these characterization vehicles to try and improve and validate those improvements in module yield. For the modules which are within target, routine monitoring of short flow characterization vehicles would still be required to validate that there has been no down turn or other movement in module yield. However, these characterization vehicles can be run less frequently than for those modules with known problems.
















TABLE XIV













Systematic Yield Loss Mechanisms




Random Yield Loss Mechanism




















Shortable




Instant




Estimated






Estimated








Ares (cm{circumflex over ( )}2)




Count




Yield




Do




P




Yield















Opens and Shorts (Metal Layers)


















Metal-1













Random Yield







0.7 defects/cm{circumflex over ( )}2




2.3




85.23%






Wide lines near small space




0.034





96.66%






Wide space near small lines




0.00014





99.99%






Yield for OPC structures










72,341




99.86%






Bent lines





  492




100.00%






Total for M1









82.25%






Metal-2






Random Yield







0.35 defects/cm{circumflex over ( )}:




1.92




97.45%






Wide lines near small space




0.00079





99.92%






Wide space near small lines




0.000042





100.00%






Yield for OPC structures





1040372




97.94%






Bent lines





  103




100.00%






Total for M2









95.36%






Metal-3






Random Yield







0.25 defects/cm{circumflex over ( )}:




2.02




96.92%






Wide lines near small space




0.0000034





100.00%






Wide space near small lines




0





100.00%






Yield for OPC structures





  352




100.00%






Bent lines





  7942




99.92%






Total for M3









96.84%











Open and Shorts (Poly and AA layer)


















Poly













Random Yield (without silicide)







0.17 defects/cm{circumflex over ( )}:




2.03




99.81%




89.71%






Random Yield (with silicide)







4.34 defects/cm{circumflex over ( )}:




4.56




89.54%




from silicide






Wide lines near small space




0





100.00%






Wide space near small lines




0.01203





98.80%






Yield for OPC structures





   0




100.00%






Bent lines





 786541




92.44%






Over wide AA




0.034





96.66%






Over narrow AA




0.101





99.00%






Total for Poly









87.22%






AA






Random Yield (without silicide)







1.3




3.45




99.12%




99.60%






Random Yield (with silicide)







1.7




3.02




98.72%




from silicide






Wide lines near small space





 10952




99.96%






Wide space near small lines





   0




100.00%






Total for AA









98.70






















TABLE XV











Contacts and Vias















Systematic Yield Loss Mechanisms




Random Yield Loss Mechanism




















Shortable




Instant




Estimated






Estimated








Area (cm{circumflex over ( )}2)




Count




Yield




Fault Rate




Number




Yield






















Contact to Poly













Random Yield (without silicide)







2.20E−09




3270432




99.28%




99.71%






Random Yield (with silicide)







3.10E−09




3270432




98.99%






Yield for Long Runners (on M1)







  


11,921




100.00%






Yield for Long Runners (on Poly)





    0




100.00%






Yield for Redundant Vias





  39421




100.00%






Yield for very isolated contacts





  7200




96.46%






Total for Contact to Poly









94.80%






Contact to n + AA






Random Yield (without silicide)







2.20E−09




5270432




98.85%




99.53%






Random Yield (with silicide)







3.10E−09




5270532




98.38%






Yield for Long Runners (on M1)







  


75,324




99.99%






Yield for Long Runners (on n + AA)





    0




100.00%






Yield for Redundant Vias





 4032007




99.60%






Yield for very isolated contacts





  7200




99.93%






Total for Contact to AA (n+)









96.78%






Contact to p + AA






Random Yield (without silicide)







2.20E−09




6093450




98.67%






Random Yield (with silicide)







3.10E−09




6093450




98.13%






Yield for Long Runners (on M1)







  


96,732




99.99%






Yield for Long Runners (on p + AA)





    0




100.00%






Yield for Redundant Vias





  39421




100.00%






Yield for very isolated contacts





  7200




99.93%






Total for Contact to AA (p+)









96.74%






Vias M1 −> M2






Random Yield (single vias)







1.10E−08




7093210




92.49%






Yield for Long Runners (M2)





  88640




91.52%






Yield for Long Runners (M1)





  97645




99.03%






Yield for Redundant Vias





11003456




96.91%






Yield for Isolated Vias





 119582




96.8i%






Total for Via M1-M2









81.92%






Vias M2 −> M3






Random Yield (single vias)







3.10E−09




4002063




98.77%






Yield for Long Runners (M3)





 256128




77.40%






Yield for Long Runners (M2)





 103432




96.97%






Yield for Redundant Vias





 7096230




99.29%






Yield for Isolated Vias





  1024




99.99%






Total for Via M2-M3









75.12%






















TABLE XVI











Devices














Systematic Yield Loss Mechanisms




Random Yield Loss Mechanism


















Shortable




Instant




Estimated






Estimated







Area (cm{circumflex over ( )}2)




Count




Yield




Fault Rate




Number




Yield





















MMOS












Random Yield (Logic Xtor)







2.90E−09




1395228




99.60%






Random Yield (SRAM Xtor)







2.80E−09




2226720




99.38%






S/D Shorts







1.00E−09




3621948




99.64%






Bent Transistors





1113360




99.89%






Near Large AA





 754000




99.92%






Near Small AA





1023452




99.90%






Total for NMOS Transistors









98.33%






PMOS






Random Yield (Logic Xtor)







1.80E−09




1491003




99.73%






Random Yield (SRAM Xtor)







3.10E−09




1113360




99.66%






S/D Shorts







9.00E.10




2604363




99.77%






Bent Transistors





 556680




99.94%






Near Large AA





 789092




99.92%






Near Small AA





1309970




99.87%






Total for PMOS Transistors









98.89%













Claims
  • 1. A method for predicting a yield for integrated circuits comprising:a) providing information for fabricating at least one type of characterization vehicle having at least one feature which is representative of at least one type of feature to be incorporated into a final integrated circuit product; b) fabricating a characterization vehicle which embodies layout features representative of the product employing at least one of the process operations making up the fabrication cycle to be used in fabricating the integrated circuit product; c) providing a product layout; d) extracting layout characteristics from the product layout, comprising: 1) listing all structures in the characterization vehicle; 2) classifying each structure into families such that all structures in each family form an experiment over a particular attribute; and 3) for each family, determining which attributes are to be extracted for the product layout; and e) using the extracted layout characteristics in connection with a yield model to produce a yield prediction.
  • 2. A method in accordance with claim 1 wherein the families include a family comprising nest structures for exploring basic defectivity over a selected number of line widths and spaces.
  • 3. A method in accordance with claim 1 wherein the families include a family comprising snake and comb structures for exploring yield over a predetermined range of line widths and spaces.
  • 4. A method in accordance with claim 3, wherein the predetermined range of line widths and spaces include relatively large line widths next to relatively small spaces and relatively large interline spaces next to relatively small line widths.
  • 5. A method in accordance with claim 1 wherein the families include a family comprising Kelvin critical dimension and van der Pauw structures for exploring critical dimension variation across line density, width and spacing.
  • 6. A method in accordance with claim 1 wherein the families include a family comprising border structures for exploring the effect of various optical proximity correction schemes on yield.
  • 7. A method according to claim 1, further comprising determining and ranking yield loss mechanisms given characterization vehicle data and extracted layout attributes.
  • 8. A method for predicting a yield for an integrated circuit comprising:a) providing a characterization vehicle having structures representative of structures to be incorporated into a final integrated circuit product; b) providing a product layout; c) extracting attributes of the product layout, comprising: classifying the structures in the characterization vehicle into families of structures, wherein each family of structures corresponds to an experiment for a particular attribute of the product layout; for each family of structures, determining which attributes are to be extracted from the product layout; and d) using the extracted attributes in connection with a yield model to produce a yield prediction.
  • 9. A method in accordance with claim 8 wherein the families of structures includes a family of structures comprising nest structures for exploring basic defectivity over a selected number of line widths and spaces.
  • 10. A method in accordance with claim 8 wherein the families of structures include a family of structures comprising snake and comb structures for exploring yield over a predetermined range of line widths and spaces.
  • 11. A method in accordance with claim 10 wherein the predetermined range of line widths and spaces include relatively large line widths next to relatively small spaces and relatively large interline spaces next to relatively small line widths.
  • 12. A method in accordance with claim 8 wherein the families of structures include a family of structures comprising Kelvin critical dimension and van der Pauw structures for exploring critical dimension variation across line density, width and spacing.
  • 13. A method in accordance with claim 8 wherein the families of structures include a family of structures comprising border structures for exploring the effect of various optical proximity correction schemes on yield.
  • 14. A system for predicting yield of integrated circuits comprising:a) a characterization vehicle having structures representative of features to be incorporated into a final integrated circuit product; b) a product layout; and c) an extraction engine configured to; classify the structures in the characterization vehicle into families of structures, wherein each family of structures corresponds to an experiment for an attribute of the product layout, for each family of structures, determine which attributes are to be extracted from the product layout; and produce a yield prediction using the extracted attributes in connection with a yield model.
  • 15. A system in accordance with claim 14 wherein the structures in the characterization vehicle are selected from the family consisting of:a) Kelvin metal critical dimension structure; b) snake structure; c) comb structure; d) snake and comb structures; e) nest defect size distribution structure; f) van der Pauw structure; g) optical proximity correction structure; and h) scanning electron microscopy structures.
  • 16. A system in accordance with claim 14 wherein the extraction engine is also used when designing a characterization vehicle.
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