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Transcript
DESIGN OF A PARAMETRIC
OUTLIER
DETECTION SYSTEM
Ronald J. Erickson
Masters Project Thesis
Background Information
•
By utilizing a fab-less manufacturing system it allows the company stay
price competitive. However by using different suppliers many differing failure
mechanisms can be introduced into the final integrated circuits.
•
Integrated circuit defects are discovered during the electrical test of the
integrated circuit. These tests are performed on wafers and packaged
devices
•
Radiation tolerant and specialty integrated circuits typically are only built in
small quantities.
•
Radiation tolerant circuits require nonstandard materials, incorporating
epitaxial layers, insulating substrates, annular transistors, and doped
trenches in the silicon that enhance radiation tolerance
Example Test Floor
Wafer Test Structure
•
Using differing wafer fabs, most companies have begun inserting
standardized transistor cell structures in the streets of the wafer.
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This type of testing is only available at wafer probe test. High reliability
devices require testing at different intervals of the manufacturing
process.
Wafer Die Street
Wafer Die Street Sawn
High Reliability
• Fab-less companies have the potential of large
deviations in material parametrics that must be
screened for out of family measurements .
• Generally because it cheaper to replace the device
than it is to electrically test the device at package
level. Most commercial manufacturers have been
willing to trade reliability for economics.
• Typical service life tends to be longer for military
systems and aerospace applications, high reliability
devices must be tested at higher level at package to
ensure compliance.
Circuit Failure Causes
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Wafer fabrication defects
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Potential device assembly defects
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Continuity, power shorts, input leakage, output tri-state leakage
quiescent power, active power, input and output thresholds
minimum voltage operation
High Reliability circuit measurements usually include the AC electrical parameters
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temperature cycle, temperature shock, mechanical vibration
centrifuge, high humidity, salt environment
accelerated and dynamic electrical burn-in causing infant mortality
total ionizing dose (TID), gamma radiation effects on gate oxides, Single Effects SEU, SEL
As a minimum the digital circuit DC parametric tests performed at electrical test are
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wafer back-grind, wafer saw, die preparation
device package defects including trace length, & integrity, package leads
solder ball integrity, die attach, wire bond, hermetic lid seal
Environmental defects on the package and die are caused by simulating
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transistor doping, oxide breakdown, interconnect and poly stringers
opens, shorts, resistive metals, bridging materials
metallization stability issues, dissimilar metals like AL & CU.
data propagation, input set-up, output/input hold
input rise, input fall, clock duty cycle
Space & High Altitude
• Devices are generally placed in service on a system that is in a high
altitude or a space. They also impact national security when placed
in airport scanners
• Expensive and risky to send an astronaut to replace a small faulty
integrated circuit or subsystem in space.
• 2009 repair of the Hubble space telescope was valued at 1.1 billion
dollars.
• It is highly visible when a space system fails, the potential
government fines and lost business can easily drive a small
company into bankruptcy and out of business
Astronaut Repairing the Hubble
Telescope
Motivations
• Design a tool that processes small lots of
device parametric data. Performs a robust
statistical analysis of the parametric data
to screen out of family parametrics within a
lot, product line, technology, or fab.
• In the real world the need to make
decisions and then get on to other
business matters is incredibly important.
Project Design Brainstorming
SYSTEM DESIGN &
ARCHITECTURE
•
Requirements were based on brainstorming discussions with stakeholders.
•
Input distribution of data, analyze the data for a normal Gaussian bell curve
distribution,
•
Perform outlier 75% percentile analysis
•
Present to the user as a histogram without outliers
•
Outliers are shown are clipped by the 12.5% percentile and 87.5%
percentile
•
Non-normal distributions are presented in a histogram format so the user
can set the lower and upper fences of the data-set before outlier 75%
percentile analysis .
Software Engineering
• The basic stages
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Software requirements
Design
Construction
Testing
Maintenance
• CMMI Capability Maturity Model Integration a
measure of the software process maturity.
• Advanced stages
– Software configuration management , tools, quality, process, and
knowledge areas
Requirements
• Platform base code would be C# used to as the prototype test
vehicle, was originally F#.
• SQL server supported database implemented relatively easily
because of .NET framework.
• Differing architecture of the integrated circuit. Some parametric
values will correlate can used to detect parametric trending within
the wafer fab.
• This project implemented a 75% percentile analysis of the
normalized data identified by the Anderson-Darling test as the basic
default operation.
Normal Distributions
75% percentile analysis of normalized data
Bimodal Distributions
Requires User Intervention
Outlier Application Tool Outputs
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Min, Max, Median, Mean, Std Deviation
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75% percentile with 12.5% lower & upper 87.5% 75QRange = 87.5% 12.5%
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Q1 = 25% quartile, Q3 = 75% quartile,
IQR = Interquartile Range delta Q1 and Q3,
MadSigma= Median Absolute Deviation
Norm1 = Jarque–Bera test a goodness-of-fit measure from normality, based
on kurtosis and skewness
Skew = is a measure of the asymmetry, is distribution weighted left or right?
Kurtosis = measure of peakedness, the higher the value the more extreme
the outliers.
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•
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Anderson-Darling test p-value > 0.05 for comparison to published critical
values
Anderson-Darling
• The Anderson-Darling test while having excellent theoretical
properties has limitations.
• Severely affected by ties in the data. Ties are data points or
values that match exactly other data
• Anderson-Darling will frequently reject the data as non-normal
Future Implementations
• Overcome the limitation of AndersonDarling on data ties
• Investigated clustering the data by using a
hybrid format with the standard deviation.
Future Implementations
• Mathematical equation k-sample
Anderson-Darling test
Conclusions
• Integrated circuits designs defects of are only discovered
during the electrical test of the device.
• Fab-less company introduces even more risk to the
development of quality product
• Radiation tolerant circuits are built in small quantities.
• The use of non-standard materials makes out of family
detection much more difficult
• Small lot data being used to guarantee a very high FIT rate.
high reliable products that provide service within a mission
critical sub system.
Lessons Learned
• Anderson-Darling limitations on ties in data
– Loss of automated functionality, required user intervention
• The requirements phase of this project evidenced a lack of
appreciation for the true complexity of the project
• The problem domain was documented as a set of
requirements by managerial stakeholders only.
• Design phase a significant amount of additional methods that
became more complex to implement as important algorithms
of the system
Lessons Learned (continued)
• Required additional research to indentify
future enhancements to the system.
– K-means clustering, Std Deviation, AndersonDarling hybrid
– k-sample Anderson-Darling testing
• These methodologies require research before
implementation
• More robust test modules for testing these
complex algorithms