Fleet Matching Of Semiconductor Metrology Tools Without Dedicated Quality Control Wafers
20210375651 · 2021-12-02
Inventors
Cpc classification
G05B19/401
PHYSICS
Y02P90/02
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
Y02P90/80
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
International classification
H01L21/67
ELECTRICITY
G01N21/95
PHYSICS
Abstract
Methods and systems for calibrating metrology tool offset values to match measurement results across a fleet of metrology tools are presented herein. The calibration of offset values is based on measurements of inline, production wafers and does not require the use of specially fabricated and characterized quality control (QC) wafers. In this manner, the entire process flow to calibrate metrology tool offset values is automated and fully integrated within a high volume semiconductor fabrication process flow. In a further aspect, the implementation of a new offset value is regulated by one or more predetermined control limit values. In another further aspect, the measured values of a parameter of interest are adjusted to compensate for the effects of measurement time on the wafer under measurement.
Claims
1. A method comprising: receiving a plurality of measurements of a parameter of interest characterizing one or more structures disposed on a plurality of inline, production wafers, wherein each of the plurality of inline, production wafers are measured at the same process step of a semiconductor manufacturing process flow, wherein the plurality of measurements of the parameter of interest are associated with measurements of each of the plurality of wafers by two or more metrology systems of a fleet of metrology systems; determining a first measurement bias associated with a metrology system of the fleet of metrology systems with respect to an average measurement value across each of the one or more metrology systems employed to measure a first inline, production wafer of the plurality of inline production wafers; determining an updated offset value for the metrology system of the fleet of metrology systems based at least in part on the first measurement bias; and estimating corrected values of measurements of the parameter of interest by the metrology system based on the updated offset value.
2. The method of claim 1, further comprising: determining a second measurement bias associated with the metrology system of the fleet of metrology systems with respect to an average measurement value across each of the two or more metrology systems employed to measure a second inline, production wafer of the plurality of inline production wafers; and determining an average value of the measurement bias associated with the metrology system based at least in part on the first measurement bias and the second measurement bias, wherein the updated offset value is based on the average value of the measurement bias.
3. The method of claim 2, wherein the average value of the measurement bias is determined as a mean value or a median value.
4. The method of claim 1, wherein the estimating of the corrected values of measurements of the parameter of interest by the metrology system is determined by adding a correction term to the values of measurements of the parameter of interest by the metrology system, wherein the correction term is a product of the updated offset value and a scaling factor.
5. The method of claim 4, wherein the scaling factor has a positive value less than or equal to one.
6. The method of claim 1, further comprising: adjusting the measured values of the parameter of interest associated with measurements of an inline, production wafer of the plurality of inline production wafers by a first metrology system of the fleet of metrology systems based on a time elapsed between measurements of the inline, production wafer by the first metrology system and a second metrology system of the fleet of metrology systems.
7. The method of claim 1, further comprising: adjusting the measured values of the parameter of interest associated with measurements of an inline, production wafer of the plurality of inline production wafers by a first metrology system of the fleet of metrology systems based on a duration of time measurements of the inline, production wafer are performed by the first metrology system and a second metrology system of the fleet of metrology systems.
8. The method of claim 1, further comprising: comparing the updated offset value for the metrology system of the fleet of metrology systems with an upper bound predetermined threshold and a lower bound predetermined threshold value; substituting the upper bound predetermined threshold value for the updated offset value if the updated offset value exceeds the upper bound predetermined threshold value; and substituting the lower bound predetermined threshold value for the updated offset value if the updated offset value is less than the lower bound predetermined threshold value.
9. The method of claim 1, further comprising: determining a difference between the updated offset value for the metrology system of the fleet of metrology systems and a current offset value for the metrology system; substituting an upper bound predetermined threshold value for the updated offset value if the difference exceeds the upper bound predetermined threshold value; and substituting a upper bound predetermined threshold value for the updated offset value if the difference is less than the lower bound predetermined threshold value.
10. A system comprising: a plurality of measurement systems each comprising: an illumination source configured to provide an amount of illumination radiation to one or more structures disposed on an inline, production wafer; a detector configured to receive an amount of collected radiation from the one or more structures in response to the amount of illumination radiation and generate measurement signals indicative of the collected radiation; and one or more computer systems configured to: receive a plurality of measurements from the plurality of measurement systems, wherein each of the plurality of measurements is a value of a parameter of interest characterizing the one or more structures disposed on each of a plurality of inline, production wafers, wherein each of the plurality of inline, production wafers are measured at the same process step of a semiconductor manufacturing process flow, wherein the plurality of measurements of the parameter of interest are associated with measurements of each of the plurality of inline, production wafers by two or more measurement systems of the plurality of measurement systems; determine a first measurement bias associated with a measurement system of the plurality of measurement systems with respect to an average measurement value across each of the one or more measurement systems employed to measure a first inline, production wafer of the plurality of inline production wafers; determine an updated offset value for the measurement system of the plurality of measurement systems based at least in part on the first measurement bias; and estimate corrected values of measurements of the parameter of interest by the measurement system based on the updated offset value.
11. The system of claim 10, the one or more computing systems further configured to: determine a second measurement bias associated with the measurement system of the plurality of measurement systems with respect to an average measurement value across each of the two or more measurement systems employed to measure a second inline, production wafer of the plurality of inline, production wafers; and determine an average value of the measurement bias associated with the measurement system based at least in part on the first measurement bias and the second measurement bias, wherein the updated offset value is based on the average value of the measurement bias.
12. The system of claim 11, wherein the average value of the measurement bias is determined as a mean value or a median value.
13. The system of claim 10, wherein the estimating of the corrected values of measurements of the parameter of interest by the measurement system is determined by adding a correction term to the values of measurements of the parameter of interest by the measurement system, wherein the correction term is a product of the updated offset value and a scaling factor.
14. The system of claim 13, wherein the scaling factor has a positive value less than or equal to one.
15. The system of claim 10, the one or more computing systems further configured to: adjust the measured values of the parameter of interest associated with measurements of an inline, production wafer of the plurality of inline production wafers by a first measurement system of the plurality of measurement systems based on a time elapsed between measurements of the inline, production wafer by the first measurement system and a second measurement system of the plurality of metrology systems.
16. The system of claim 10, the one or more computing systems further configured to: adjust the measured values of the parameter of interest associated with measurements of an inline, production wafer of the plurality of inline production wafers by a first measurement system of the plurality of measurement systems based on a duration of time measurements of the inline, production wafer are performed by the first measurement system and a second measurement system of the plurality of measurement systems.
17. The system of claim 10, the computing system further configured to: compare the updated offset value for the measurement system of the plurality of measurement systems with an upper bound predetermined threshold and a lower bound predetermined threshold value; substitute the upper bound predetermined threshold value for the updated offset value if the updated offset value exceeds the upper bound predetermined threshold value; and substitute the lower bound predetermined threshold value for the updated offset value if the updated offset value is less than the lower bound predetermined threshold value.
18. The system of claim 10, the computing system further configured to: determine a difference between the updated offset value for the measurement system of the plurality of measurement systems and a current offset value for the measurement system; substitute an upper bound predetermined threshold value for the updated offset value if the difference exceeds the upper bound predetermined threshold value; and substitute a upper bound predetermined threshold value for the updated offset value if the difference is less than the lower bound predetermined threshold value.
19. An offset calibration tool comprising: one or more processors of a computing system; and a non-transitory, computer-readable medium storing computer-readable instructions, the computer-readable instructions, when executed by the one or more processors, cause the computing system to: receive a plurality of measurements of a parameter of interest characterizing one or more structures disposed on a plurality of inline, production wafers, wherein each of the plurality of inline, production wafers are measured at the same process step of a semiconductor manufacturing process flow, wherein the plurality of measurements of the parameter of interest are associated with measurements of each of the plurality of wafers by two or more metrology systems of a fleet of metrology systems; determine a first measurement bias associated with a metrology system of the fleet of metrology systems with respect to an average measurement value across each of the one or more metrology systems employed to measure a first inline, production wafer of the plurality of inline production wafers; determine an updated offset value for the metrology system of the fleet of metrology systems based at least in part on the first measurement bias; and estimate corrected values of measurements of the parameter of interest by the metrology system based on the updated offset value.
20. The offset calibration tool of claim 19, the computer-readable instructions, when executed by the one or more processors of the computing system, further cause the computing system to: determine a second measurement bias associated with the metrology system of the fleet of metrology systems with respect to an average measurement value across each of the two or more metrology systems employed to measure a second inline, production wafer of the plurality of inline production wafers; and determine an average value of the measurement bias associated with the metrology system based at least in part on the first measurement bias and the second measurement bias, wherein the updated offset value is based on the average value of the measurement bias.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0021]
[0022]
[0023]
[0024]
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[0026]
[0027]
DETAILED DESCRIPTION
[0028] Reference will now be made in detail to background examples and some embodiments of the invention, examples of which are illustrated in the accompanying drawings.
[0029] In a high volume semiconductor manufacturing setting, a fleet of nominally identical metrology tools is employed to perform measurements of structural and material characteristics (e.g., material composition, dimensional characteristics of structures and films, etc.) at a particular step of a semiconductor fabrication process flow. Calibration of offset values associated with each metrology tool ensures that measurement results from each metrology tool are comparable across the fleet. In other words, if a particular production wafer is measured by two different metrology tools within the fleet, the measurement results should be very close to the same value and free from systematic errors associated with any particular tool.
[0030] Methods and systems for calibrating metrology tool offset values to match measurement results across a fleet of metrology tools are presented herein. In particular, the methods and systems for calibrating metrology tool offset values described herein employ inline production wafers and do not require the use of specially fabricated and characterized quality control (QC) wafers. By eliminating the use of dedicated QC wafers the operational constraints and cost of maintaining tool-to-tool matching in a semiconductor manufacturing setting is dramatically reduced, particularly when tool-to-tool matching is required between different fabrication plants.
[0031] The use of inline production wafers to calibrate metrology tool offset values allows for a high degree of flexibility in wafer selection and measurement sequence because the calibration data is derived from measurements of inline production wafers, rather than inserting dedicated QC wafers into the production flow. For example, calibration of metrology tool offset values may be based on a significantly larger set of wafers when the calibration is based on measurements of inline production wafers.
[0032] Furthermore, the entire process flow to calibrate metrology tool offset values is automated and fully integrated with the high volume semiconductor fabrication process flow. This enables seamless updating of metrology tool offset values without manual intervention and interruption of the high volume semiconductor fabrication process flow.
[0033] In this manner, tool-to-tool matching of metrology tools is automatically maintained at low operational cost by eliminating the requirement of dedicated quality control wafers and reducing the utilization of human operators.
[0034]
[0035] In a further embodiment, measurement system 100 includes one or more computing systems 130 configured to execute an automated measurement tool to estimate a value 115 of a parameter of interest associated with the one or more structures 114 under measurement. In the preferred embodiment, the measurement tool is a set of program instructions 134 stored in a memory (e.g., memory 132 or an external memory). The program instructions 134 are read and executed by one or more processors 131 of computing system 130 to estimate the value of the parameter of interest. Computing system 130 may be communicatively coupled to the spectrometer 104. In one aspect, computing system 130 is configured to receive measurement data 111 associated with a measurement (e.g., critical dimension, film thickness, composition, process, etc.) of the structure 114 of specimen 112. In one example, the measurement data 111 includes an indication of the measured spectral response of the specimen by measurement system 100 based on the one or more sampling processes from the spectrometer 104. In some embodiments, computing system 130 is further configured to determine specimen parameter values 115 of structure 114 from measurement data 111. In one example, the computing system 130 is configured to access one or more measurement libraries of pre-computed models for determining a value of at least one specimen parameter value associated with the target structure 114. In some examples, the measurement libraries are stored in memory 132.
[0036]
[0037] As depicted in
[0038] Offset calibration server 170 includes one or more computing systems configured to execute an offset calibration tool to estimate offset values 118 communicated to each of the metrology tools 151-154. In the preferred embodiment, the offset calibration tool is a set of program instructions 174 stored in a memory (e.g., memory 172 or an external memory). The program instructions 174 are read and executed by one or more processors 171 of computing system 130 to estimate offset values. Offset calibration server 170 may be communicatively coupled to metrology tools 151-154. In one aspect, offset calibration server 170 is configured to receive measurement data 161-164 associated with a measurement of a parameter of interest (e.g., critical dimension, film thickness, composition, process, etc.) of one or more structures disposed on wafers 141-143, respectively. In one example, the measurement data 161-164 include an indication of a measured critical dimension of a structure disposed on wafers 141-143, respectively.
[0039] In the embodiment depicted in
{Δ.sub.1,Δ.sub.2,Δ.sub.3, . . . Δ.sub.m} (1)
[0040] As depicted in
[0041] Measurement records meeting the task requirements defined by offset calibration task configuration information 117 are loaded from each of the metrology tools or memory 175. In some examples, the measurement records are reviewed against a set of predefined mandatory criteria to verify their validity. In some examples, the criteria are defined in the offset calibration task configuration information 117. By way of non-limiting example, the validity criteria include the goodness of the measurement, measurement status (e.g., normal vs. abnormal measurement), and data within the measurement time frame.
[0042] After the appropriate measurement data is loaded onto offset calibration server 170, the measurement records are organized into two parts: 1) measured values of the parameter of interest, and 2) values of the current offset associated with each parameter. The measured values are grouped by wafers. For each wafer, the measurement time and measurement values from one or more metrology tools are included.
[0043] As depicted in
[0044] In one example, a fleet of five metrology tools are to be matched. A first wafer is measured on metrology tools #1, #2, and #4 of the fleet of five metrology tools. The bias associated with each of these tools is determined by offset calibration server 170 in accordance with equation (2),
δ.sub.11=
δ.sub.21=
δ.sub.41=
where, p.sub.mn is the value of the measured parameter of interest from the n-th wafer as measured by the m-th tool,
[0045] In addition, offset calibration server 170 determines an average of the bias for each metrology tool of the fleet to be matched across all of the wafers measured by each of the metrology tools. The average bias is determined by offset calibration server 170 in accordance with equation (3),
where,
[0046] For m tools, the average bias associated with each metrology tool of the fleet of metrology tools to be matched is illustrated by equation (4).
{
[0047] Offset calibration server 170 determines a new offset value based on the average bias associated with each metrology tool in accordance with equation (5),
Δ.sub.m′=Δ.sub.m+r*
[0048] where, Δ.sub.m′ is the new offset value associated with the parameter of interest measured by the m-th tool; and r is a scaling ratio having a positive value of one or less. The value of scaling ratio, r, is selected by a user as part of the configuration information 117 to moderate the changes made to the offset value due to the offset calibration process. For m tools, the new offset value associated with each metrology tool of the fleet of metrology tools to be matched is illustrated by equation (6).
{Δ.sub.1′,Δ.sub.2′Δ.sub.3′, . . . Δ.sub.m′} (6)
[0049] As depicted in
[0050] In a further aspect, the implementation of a new offset value is regulated by one or more predetermined control limit values. In some embodiments, the one or more predetermined control limit values are determined by a user as part of offset calibration task configuration information 117.
[0051] In some embodiments, average bias associated with each metrology tool is compared to one or more predetermined threshold values to determine whether the average bias is within a range of values. If the average bias value exceeds an upper bound predetermined threshold value, the average bias is limited to the upper bound predetermined value, or set to zero. In addition, if the average bias value is less than a lower bound predetermined threshold value, the average bias is limited to the lower bound predetermined value, or set to zero.
[0052] In some embodiments, the new offset value is compared to one or more predetermined threshold values to determine whether the new offset value is within a range of values. If the new offset value exceeds an upper bound predetermined threshold value, the new offset value is limited to the upper bound predetermined value, or set to zero. In addition, if the new offset value is less than a lower bound predetermined threshold value, the new offset value is limited to the lower bound predetermined value, or set to zero.
[0053] In another further aspect, the measured values of the parameter of interest are adjusted to compensate for measurement time.
[0054] In some examples, the measured values characterizing structures fabricated on a wafer drift as a function of time, measurement time, or both. For example, Airborne Molecular Contamination (AMC) is a time dependent accumulation of contaminants that shifts measurement values. In another example, the power and duration of incident radiation employed to perform a measurement induces material changes on the wafer that shift measurement values as a function of measurement time. As result, the value of a parameter of interest determined from measurements of a particular structure trends upward or downward as a function of time or measurement time.
[0055] The magnitude of measurement error induced by time dependent or measurement time dependent phenomena is exacerbated by the use of dedicated QC wafers due to the fact that QC wafers are employed for relatively long periods of time and subjected to significantly more measurement time compared to inline, production wafers as described herein. Thus, there is a risk that QC wafers may not represent current production wafers after significant time has elapsed.
[0056] Although the risk of time dependent or measurement time dependent measurement drift is significantly reduced by using inline, production wafers, additional steps are described to adjust the measured values of a parameter of interest to compensate for measurement time.
[0057] In one example, at least one wafer is measured by the same metrology tool at two different times. For each measurement, the time the measurement is performed is saved in memory (e.g., memory 175). The additional measurement of a wafer on the same tool at different times enables the calculation of the trend in value of the measured parameter as a function of time elapsed between measurements. In this manner, the trending effect due to airborne molecular contamination, for example, may be compensated. In some embodiments, the trend behavior is assumed to be a linear function of time. In these embodiments, the difference in value of the measured parameter divided by the difference in time between measurements quantifies the trend as illustrated in equation (7),
where k is the slope of the trending measurement parameter, p.sub.1, is the value of the measured parameter at the first measurement by a first metrology tool, T.sub.1, is the time of the first measurement by the first metrology tool, p.sub.1′, is the value of the measured parameter at the subsequent measurement by the first metrology tool, and T.sub.1′ is the time of the subsequent measurement by the first metrology tool.
[0058] In one example, the de-trended value of the measured parameter by any other metrology tool of the fleet of metrology tools is determined in accordance with equation (8),
p.sub.x′=p.sub.x−k(T.sub.x−T.sub.1) (8)
where p.sub.x is the value of the measured parameter as measured by the x-th metrology tool, T.sub.x is the time of the measurement by the x-th metrology tool, and p.sub.x′ is the value of the detrended measured parameter value associated with the measurement of parameter by the x-th tool.
[0059] In general, the measured parameter value associated with every measurement of this wafer may be detrended as described hereinbefore. For example, a set of detrended measurements of a particular wafer by m metrology tools of a fleet of metrology tools can be expressed by equation (9).
{p.sub.1′,p.sub.2′,p.sub.3′, . . . p.sub.m′} (9)
[0060] By detrending measurement data in the manner described herein, the influence on measurement mismatch caused by wafer trending is diminished significantly. In some examples, offset calibration server 170 determines a bias value for each metrology tool with respect to the average over all the metrology tools as described with reference to equation (2) using detrended measurement data determined in accordance with equation (8).
[0061] In some embodiments, time as described with reference to equations (7) and (8) is replaced by measurement count in a sequence of measurements performed on the wafer. In this manner, the trending effect due to radiation dosage, for example, which scales as a function of the number of times the wafer is measured, may be compensated.
[0062] An exemplary calibration of offset parameter values across a fleet of metrology tools is illustrated with reference to
[0063]
[0064]
[0065]
[0066]
[0067] It should be recognized that the various steps described throughout the present disclosure may be carried out by a single computer system 170 or, alternatively, a multiple computer system 170. Moreover, different subsystems of the system 100, such as the spectroscopic ellipsometer 101, may include a computer system suitable for carrying out at least a portion of the steps described herein. Therefore, the aforementioned description should not be interpreted as a limitation on the present invention but merely an illustration. Further, computing system 170 may be configured to perform any other step(s) of any of the method embodiments described herein.
[0068] The computing system 170 may include, but is not limited to, a personal computer system, mainframe computer system, workstation, image computer, parallel processor, or any other device known in the art. In general, the term “computing system” may be broadly defined to encompass any device having one or more processors, which execute instructions from a memory medium. In general, computing system 170 may be integrated with a measurement system such as measurement system 100, or alternatively, may be separate from any measurement system. In this sense, computing system 170 may be remotely located and receive measurement data and user input 117 from any measurement source and user input source, respectively.
[0069] Program instructions 174 implementing methods such as those described herein may be transmitted over a transmission medium such as a wire, cable, or wireless transmission link. Memory 172 storing program instructions 174 may include a computer-readable medium such as a read-only memory, a random access memory, a magnetic or optical disk, or a magnetic tape.
[0070] In addition, the computer system 170 may be communicatively coupled to metrology tool, or the user input source 116 in any manner known in the art.
[0071] The computing system 170 may be configured to receive and/or acquire data or information from the user input source 116 and subsystems of a metrology system (e.g., spectrometer 104, illuminator 102, and the like) by a transmission medium that may include wireline and/or wireless portions. In this manner, the transmission medium may serve as a data link between the computer system 170, user input source 116, and a metrology system, such as metrology system 100. Further, the computing system 170 may be configured to receive measurement data via a storage medium (i.e., memory). For instance, the spectral results obtained using a spectrometer of ellipsometer 101 may be stored in a permanent or semi-permanent memory device (not shown). In this regard, the spectral results may be imported from an external system. Moreover, the computer system 170 may send data to external systems via a transmission medium.
[0072] The embodiments of the offset calibration server 170 illustrated in
[0073] In general, any number of parameters of interest may be selected and provide the basis for offset value calibration. Exemplary parameters of interest include geometric parameters such as a shape parameter such as a critical dimension (CD), sidewall angle (SWA), height (H), etc., composition, film thickness, bandgap, electrical properties, lithography focus, lithography dosage, overlay, and other process parameters (e.g., resist state, partial pressure, temperature, focusing model).
[0074]
[0075] In block 201, a plurality of measurements of a parameter of interest characterizing one or more structures disposed on a plurality of inline, production wafers are received. Each of the plurality of inline, production wafers are measured at the same process step of a semiconductor manufacturing process flow. The plurality of measurements of the parameter of interest are associated with measurements of each of the plurality of wafers by two or more metrology systems of a fleet of metrology systems.
[0076] In block 202, a first measurement bias associated with a metrology system of the fleet of metrology systems is determined with respect to an average measurement value across each of the one or more metrology systems employed to measure a first inline, production wafer of the plurality of inline production wafers.
[0077] In block 203, an updated offset value for the metrology system of the fleet of metrology systems is determined based at least in part on the first measurement bias.
[0078] In block 204, corrected values of measurements of the parameter of interest by the metrology system are estimated based on the updated offset value.
[0079] In an optional block (not shown), the updated offset value is stored in a memory of a computing system (e.g., memory 172 of computing system 170 or an external memory).
[0080] Although the methods discussed herein are explained with reference to metrology systems such as metrology system 100, any metrology system configured to illuminate and detect radiation reflected, transmitted, or diffracted from a specimen may be employed to implement the exemplary methods described herein, including optical and x-ray based metrology systems. Exemplary systems include an angle-resolved reflectometer, a scatterometer, a reflectometer, an ellipsometer, a spectroscopic reflectometer or ellipsometer, a beam profile reflectometer, a multi-wavelength, two-dimensional beam profile reflectometer, a multi-wavelength, two-dimensional beam profile ellipsometer, a rotating compensator spectroscopic ellipsometer, etc. By way of non-limiting example, an ellipsometer may include a single rotating compensator, multiple rotating compensators, a rotating polarizer, a rotating analyzer, a modulating element, multiple modulating elements, or no modulating element.
[0081] It is noted that the output from a metrology system may be configured in such a way that the metrology system uses more than one technology. In fact, an application may be configured to employ any combination of available metrology sub-systems within a single tool, or across a number of different tools.
[0082] A system implementing the methods described herein may also be configured in a number of different ways. For example, a wide range of wavelengths (including visible, ultraviolet, infrared, and X-ray), angles of incidence, states of polarization, and states of coherence may be contemplated. In another example, the system may include any of a number of different light sources (e.g., a directly coupled light source, a laser-sustained plasma light source, etc.). In another example, the system may include elements to condition light directed to or collected from the specimen (e.g., apodizers, filters, etc.).
[0083] In the field of semiconductor metrology, a metrology system may comprise an illumination system which illuminates a target, a collection system which captures relevant information provided by the illumination system's interaction (or lack thereof) with a target, device or feature, and a processing system which analyzes the information collected using one or more algorithms. Metrology tools can be used to measure structural and material characteristics (e.g, material composition, dimensional characteristics of structures and films such as film thickness and/or critical dimensions of structures, overlay, etc.) associated with various semiconductor fabrication processes. These measurements are used to facilitate process controls and/or yield efficiencies in the manufacture of semiconductor dies.
[0084] A metrology system can comprise one or more hardware configurations which may be used in conjunction with certain embodiments of this invention to, e.g., measure the various aforementioned semiconductor structural and material characteristics. Examples of such hardware configurations include, but are not limited to, the following: a spectroscopic ellipsometer (SE), a SE with multiple angles of illumination, a SE measuring Mueller matrix elements (e.g. using rotating compensator(s)), a single-wavelength ellipsometer, a beam profile ellipsometer (angle-resolved ellipsometer), a beam profile reflectometer (angle-resolved reflectometer), a broadband reflective spectrometer (spectroscopic reflectometer), a single-wavelength reflectometer, an angle-resolved reflectometer, an imaging system, and a scatterometer (e.g. speckle analyzer).
[0085] The hardware configurations can be separated into discrete operational systems. On the other hand, one or more hardware configurations can be combined into a single tool. One example of such a combination of multiple hardware configurations into a single tool is described in U.S. Pat. No. 7,933,026, which is hereby incorporated by reference in its entirety for all purposes. In many cases, multiple metrology tools are used for measurements on single or multiple metrology targets. This is described, e.g. in by Zangooie et al., in U.S. Pat. No. 7,478,019, which is hereby incorporated by reference in its entirety for all purposes.
[0086] As described herein, the term “critical dimension” includes any critical dimension of a structure (e.g., bottom critical dimension, middle critical dimension, top critical dimension, sidewall angle, grating height, etc.), a critical dimension between any two or more structures (e.g., distance between two structures), a displacement between two or more structures (e.g., overlay displacement between overlaying grating structures, etc.), and a dispersion property value of a material used in the structure or part of the structure. Structures may include three dimensional structures, patterned structures, overlay structures, etc.
[0087] As described herein, the term “critical dimension application” or “critical dimension measurement application” includes any critical dimension measurement.
[0088] As described herein, the term “metrology system” includes any measurement system employed at least in part to characterize a specimen in any aspect, including systems that may be referred to as “inspection” systems. Such terms of art do not limit the scope of the term “metrology system” as described herein. In addition, the metrology system 100 may be configured for measurement of patterned wafers and/or unpatterned wafers. The metrology system may be configured as a LED inspection tool, edge inspection tool, backside inspection tool, macro-inspection tool, or multi-mode inspection tool (involving data from one or more platforms simultaneously), and any other metrology or inspection tool that benefits from the calibration of system parameters based on critical dimension data.
[0089] Various embodiments are described herein for a semiconductor processing system (e.g., a metrology system or a lithography system) that may be used for processing a specimen. The term “specimen” is used herein to refer to a site, or sites, on a wafer, a reticle, or any other sample that may be processed (e.g., printed or inspected for defects) by means known in the art. In some examples, the specimen includes a single site having one or more measurement targets whose simultaneous, combined measurement is treated as a single specimen measurement or reference measurement. In some other examples, the specimen is an aggregation of sites where the measurement data associated with the aggregated measurement site is a statistical aggregation of data associated with each of the multiple sites. Moreover, each of these multiple sites may include one or more measurement targets associated with a specimen or reference measurement.
[0090] As used herein, the term “wafer” generally refers to substrates formed of a semiconductor or non-semiconductor material. Examples include, but are not limited to, monocrystalline silicon, gallium arsenide, and indium phosphide. Such substrates may be commonly found and/or processed in semiconductor fabrication facilities. In some cases, a wafer may include only the substrate (i.e., bare wafer). Alternatively, a wafer may include one or more layers of different materials formed upon a substrate. One or more layers formed on a wafer may be “patterned” or “unpatterned”. For example, a wafer may include a plurality of dies having repeatable pattern features.
[0091] A “reticle” may be a reticle at any stage of a reticle fabrication process, or a completed reticle that may or may not be released for use in a semiconductor fabrication facility. A reticle, or a “mask,” is generally defined as a substantially transparent substrate having substantially opaque regions formed thereon and configured in a pattern. The substrate may include, for example, a glass material such as amorphous SiO.sub.2. A reticle may be disposed above a resist-covered wafer during an exposure step of a lithography process such that the pattern on the reticle may be transferred to the resist.
[0092] One or more layers formed on a wafer may be patterned or unpatterned. For example, a wafer may include a plurality of dies, each having repeatable pattern features. Formation and processing of such layers of material may ultimately result in completed devices. Many different types of devices may be formed on a wafer, and the term wafer as used herein is intended to encompass a wafer on which any type of device known in the art is being fabricated.
[0093] In one or more exemplary embodiments, the functions described may be implemented in hardware, software, firmware, or any combination thereof. If implemented in software, the functions may be stored on or transmitted over as one or more instructions or code on a computer-readable medium. Computer-readable media includes both computer storage media and communication media including any medium that facilitates transfer of a computer program from one place to another. A storage media may be any available media that can be accessed by a general purpose or special purpose computer. By way of example, and not limitation, such computer-readable media can comprise RAM, ROM, EEPROM, CD-ROM or other optical disk storage, magnetic disk storage or other magnetic storage devices, or any other medium that can be used to carry or store desired program code means in the form of instructions or data structures and that can be accessed by a general-purpose or special-purpose computer, or a general-purpose or special-purpose processor. Also, any connection is properly termed a computer-readable medium. For example, if the software is transmitted from a website, server, or other remote source using a coaxial cable, fiber optic cable, twisted pair, digital subscriber line (DSL), or wireless technologies such as infrared, radio, and microwave, then the coaxial cable, fiber optic cable, twisted pair, DSL, or wireless technologies such as infrared, radio, and microwave are included in the definition of medium. Disk and disc, as used herein, includes compact disc (CD), laser disc, optical disc, digital versatile disc (DVD), floppy disk and blu-ray disc where disks usually reproduce data magnetically, while discs reproduce data optically with lasers. Combinations of the above should also be included within the scope of computer-readable media.
[0094] Although certain specific embodiments are described above for instructional purposes, the teachings of this patent document have general applicability and are not limited to the specific embodiments described above. Accordingly, various modifications, adaptations, and combinations of various features of the described embodiments can be practiced without departing from the scope of the invention as set forth in the claims.