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When You Adopt a Non‐
                       convention Reliability 
                            Metric …
                    (当你采用自定义的可靠性度
                              量 …)

                     Dr. Wendai Wang (汪文岱)
                             ©2011 ASQ & Presentation Wang
                             Presented live on Mar 09th, 2011




http://reliabilitycalendar.org/The_Reli
ability_Calendar/Webinars_‐
_Chinese/Webinars_‐_Chinese.html
ASQ Reliability Division 
                    Chinese Webinar 
                          Series
                   One of the monthly webinars 
                     on topics of interest to 
                       reliability engineers.
                     To view recorded webinar (available to ASQ Reliability 
                         Division members only) visit asq.org/reliability

                      To sign up for the free and available to anyone live 
                     webinars visit reliabilitycalendar.org and select English 
                     Webinars to find links to register for upcoming events


http://reliabilitycalendar.org/The_Reli
ability_Calendar/Webinars_‐
_Chinese/Webinars_‐_Chinese.html
When You Adopt a Non-convention
                 Reliability Metric …
当你采用自定义的可靠性度量 …

        汪文岱博士
      可靠性工程总监
       GreenVolts, Inc.
     Fremont, California
    wendaiw@gmail.com
   Case Study: 案例研究
   Failure Data Analysis: 失效数据分析
   Field Reliability: 应用可靠性
   Lesson Learned: 经验教训
   Reliability Measures: 可靠性度量
   Warranty Period: 保修期

Key Words/Terminologies
关键词/术语
    Reliability Metrics – theoretically & practically
      • define / represent;
      • be able to be designed in;
      • report out

    the reliability of your systems, subsystems and parts.




Design in and Report out
   Some well-defined, commonly-used reliability
    indices
    • Reliability
    • Failure Rate
    • MTTF / MTBF
    • …




Convention Reliability Metrics
   Annualized Failure Rate (AFR) to measure the parts
    reliability – What ?




Annual Failure Rate ?
   Have been used in high-tech industries.
   Could be just a Failure Rate? But confused with the
    word “annualized”.




Failure Rate ?
   Some studies / publications
    • “AFR: Problems of Definition, Calculation and
       Measurement in a Commercial Environment” by Jon
       Elerath
    • “The iFR Method for Early Prediction of Annualized
       Failure Rate in Fielded Products” by Bill Lycette




Research
   It’s unconventional
    • Different definitions (self defined)
    • No standard calculation method
    • Likely result in significantly different estimates by
       customers and supplies

   It could be
     • a failure percentage based or
     • a time based rate.


Non-convention Metric
   The AFR definition we used:

               Total Failures from Units in the Denominator
       AFR =
               Total Units Shipped in past Warranty Period




Definition
   Apparently it’s simple
    • Easy to obtain (from data)
    • Seems easy to understand
        o Failure percentage based

   Seems meaningful for business process
   Seems well defined (in calculation)
   Not a failure rate !



Good for Business
   Lack of theoretical base
    • What does it really mean?
    • How to convert the AFR to other reliability quantities?
    • How to quantify the confidence bounds?

   Confusion in calculations
     How difference between methods?

   Lots of misunderstanding
    • Failure rate

Disadvantages
   Always see reliability (in term of AFR) improvement
    for design changes
    •   Not always match with reality
    •   Not see reliability improvement in whole parts pool


   Discrepancy in an AFR value between our estimate
    supplier’s estimate.


Case Study
   The AFR value highly depends on the interval over
    which the data is collected.
    • Warranty period is in the definition.
    • It may take as much as whole period before the
       improvement (or degradation) is observed.

   Someone couldn’t wait and reported out AFR values
    based on a short period (available data) !


Misunderstand in Calculation
   The AFR we defined is not the Failure Rate !
   BUT suppliers thought: our AFR = the Failure Rate.
   AFR numbers arrived at widely different figures
    even using the same data.




Misunderstand in Terminology
   What’s the term we really defined?
                  Tota lFa i l ures
                                  fromUni tsi nthe Denomi na to
                                                              r
          AFR 
                  Tota lUni tsShpi ppednPa s tWa rra ntyPeri od
                                       i
                        N

                n       F t    i
                     i 1
                N             N

   Theoretically, it’s an average value of the
    unreliability function over the warranty period *.
               1 T
          AFR   F (t )dt
               T 0

The Language of Engineering is Math.

                                              * Depends on the real calculation method.
   Precisely, it’s an estimator of an average value of the
    unreliability function over the period.

                    Probability of Failure



        AFR Value
        with 2-
                                                 Part’s
        year data
                                                 unreliability
                                                 curve

        AFR Value
        with 1-                                                  Years
        year data            0          1    2   3          4




Different Data Intervals
   Numerical example*
    • Failure Rate (constant) = 0.1 failures/year
    • New Order = 1,000 parts/year




    • AFR = 5.25% (using Year 2010 data only)
    • AFR = 9.56% (using 2-year data)


Simple Explanation
   A percentage based metric
   A non-parametric estimate
    • matching moment estimation (MME)

   A better estimate (MLE) could be introduced
    • fully use information from the data
    • independent of data interval
    • be able to establish the confidence bounds


Build up Theoretical Base
   Be able to establish relationship between AFR and
    other reliability quantities.
   Example: Part - PN 123456
    • 489 units shipped in past 2 years.
    • There were 56 failures among them.
    • AFR_MME = 56 / 489 = 11.5%, which can be converted to
    • FR = 13.47 FPMH



Converted to Other Quantities
   Different estimate methods
    • AFR_MME = 11.5%            FR = 13.47 FPMH
    • AFR_MLE = 14.1%            FR = 17.69 FPMH

   Failure Rate directly from data
    • FR = 17.88 FPMH

   Confidence bounds for AFR (at 90% CL)
    • AFR_LL = 10.9%
    • AFR_UL = 17.8%

Converted to Other Quantities
   Non-conventional reliability metrics were wisely
    defined for good reasons.
   A thorough study is often needed to make good
    sense out of it.
   Communication is imperative.
   Education still is a crucial task for
    reliability engineering.


Summary

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When you adopt a non convention reliability metric

  • 1. When You Adopt a Non‐ convention Reliability  Metric … (当你采用自定义的可靠性度 量 …) Dr. Wendai Wang (汪文岱) ©2011 ASQ & Presentation Wang Presented live on Mar 09th, 2011 http://reliabilitycalendar.org/The_Reli ability_Calendar/Webinars_‐ _Chinese/Webinars_‐_Chinese.html
  • 2. ASQ Reliability Division  Chinese Webinar  Series One of the monthly webinars  on topics of interest to  reliability engineers. To view recorded webinar (available to ASQ Reliability  Division members only) visit asq.org/reliability To sign up for the free and available to anyone live  webinars visit reliabilitycalendar.org and select English  Webinars to find links to register for upcoming events http://reliabilitycalendar.org/The_Reli ability_Calendar/Webinars_‐ _Chinese/Webinars_‐_Chinese.html
  • 3. When You Adopt a Non-convention Reliability Metric … 当你采用自定义的可靠性度量 … 汪文岱博士 可靠性工程总监 GreenVolts, Inc. Fremont, California wendaiw@gmail.com
  • 4. Case Study: 案例研究  Failure Data Analysis: 失效数据分析  Field Reliability: 应用可靠性  Lesson Learned: 经验教训  Reliability Measures: 可靠性度量  Warranty Period: 保修期 Key Words/Terminologies 关键词/术语
  • 5. Reliability Metrics – theoretically & practically • define / represent; • be able to be designed in; • report out the reliability of your systems, subsystems and parts. Design in and Report out
  • 6. Some well-defined, commonly-used reliability indices • Reliability • Failure Rate • MTTF / MTBF • … Convention Reliability Metrics
  • 7. Annualized Failure Rate (AFR) to measure the parts reliability – What ? Annual Failure Rate ?
  • 8. Have been used in high-tech industries.  Could be just a Failure Rate? But confused with the word “annualized”. Failure Rate ?
  • 9. Some studies / publications • “AFR: Problems of Definition, Calculation and Measurement in a Commercial Environment” by Jon Elerath • “The iFR Method for Early Prediction of Annualized Failure Rate in Fielded Products” by Bill Lycette Research
  • 10. It’s unconventional • Different definitions (self defined) • No standard calculation method • Likely result in significantly different estimates by customers and supplies  It could be • a failure percentage based or • a time based rate. Non-convention Metric
  • 11. The AFR definition we used: Total Failures from Units in the Denominator AFR = Total Units Shipped in past Warranty Period Definition
  • 12. Apparently it’s simple • Easy to obtain (from data) • Seems easy to understand o Failure percentage based  Seems meaningful for business process  Seems well defined (in calculation)  Not a failure rate ! Good for Business
  • 13. Lack of theoretical base • What does it really mean? • How to convert the AFR to other reliability quantities? • How to quantify the confidence bounds?  Confusion in calculations  How difference between methods?  Lots of misunderstanding • Failure rate Disadvantages
  • 14. Always see reliability (in term of AFR) improvement for design changes • Not always match with reality • Not see reliability improvement in whole parts pool  Discrepancy in an AFR value between our estimate supplier’s estimate. Case Study
  • 15. The AFR value highly depends on the interval over which the data is collected. • Warranty period is in the definition. • It may take as much as whole period before the improvement (or degradation) is observed.  Someone couldn’t wait and reported out AFR values based on a short period (available data) ! Misunderstand in Calculation
  • 16. The AFR we defined is not the Failure Rate !  BUT suppliers thought: our AFR = the Failure Rate.  AFR numbers arrived at widely different figures even using the same data. Misunderstand in Terminology
  • 17. What’s the term we really defined? Tota lFa i l ures fromUni tsi nthe Denomi na to r AFR  Tota lUni tsShpi ppednPa s tWa rra ntyPeri od i N n  F t  i   i 1 N N  Theoretically, it’s an average value of the unreliability function over the warranty period *. 1 T AFR   F (t )dt T 0 The Language of Engineering is Math. * Depends on the real calculation method.
  • 18. Precisely, it’s an estimator of an average value of the unreliability function over the period. Probability of Failure AFR Value with 2- Part’s year data unreliability curve AFR Value with 1- Years year data 0 1 2 3 4 Different Data Intervals
  • 19. Numerical example* • Failure Rate (constant) = 0.1 failures/year • New Order = 1,000 parts/year • AFR = 5.25% (using Year 2010 data only) • AFR = 9.56% (using 2-year data) Simple Explanation
  • 20. A percentage based metric  A non-parametric estimate • matching moment estimation (MME)  A better estimate (MLE) could be introduced • fully use information from the data • independent of data interval • be able to establish the confidence bounds Build up Theoretical Base
  • 21. Be able to establish relationship between AFR and other reliability quantities.  Example: Part - PN 123456 • 489 units shipped in past 2 years. • There were 56 failures among them. • AFR_MME = 56 / 489 = 11.5%, which can be converted to • FR = 13.47 FPMH Converted to Other Quantities
  • 22. Different estimate methods • AFR_MME = 11.5%  FR = 13.47 FPMH • AFR_MLE = 14.1%  FR = 17.69 FPMH  Failure Rate directly from data • FR = 17.88 FPMH  Confidence bounds for AFR (at 90% CL) • AFR_LL = 10.9% • AFR_UL = 17.8% Converted to Other Quantities
  • 23. Non-conventional reliability metrics were wisely defined for good reasons.  A thorough study is often needed to make good sense out of it.  Communication is imperative.  Education still is a crucial task for reliability engineering. Summary