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Fundamentals of Reliability 
              Fundamentals of Reliability
             Engineering and Applications
                      Part 3 of 3

                               E. A. Elsayed
                           ©2011 ASQ & Presentation Elsayed
                            Presented live on Dec 14th, 2010




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ASQ Reliability Division 
                 ASQ Reliability Division
                  Short Course Series
                  Short Course Series
                     The ASQ Reliability Division is pleased to 
                     present a regular series of short courses 
                   featuring leading international practitioners, 
                           academics, and consultants.
                           academics and consultants

                  The goal is to provide a forum for the basic and 
                  The goal is to provide a forum for the basic and
                        continuing education of reliability 
                                    professionals.




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Fundamentals of Reliability Engineering and
              Applications



                 E. A. Elsayed
            elsayed@rci.rutgers.edu
               Rutgers University




              December 14, 2010
                                          1
Outline
       Part 1.    Reliability Definitions

   Reliability Definition…Time dependent
    characteristics
   Failure Rate
   Availability
   MTTF and MTBF
   Time to First Failure
   Mean Residual Life
   Conclusions


                                            2
Outline
  Part 2.    Reliability Calculations


1. Use of failure data
2. Density functions
3. Reliability function
4. Hazard and failure rates




                                        3
Outline
  Part 2.    Reliability Calculations


1. Use of failure data
2. Density functions
3. Reliability function
4. Hazard and failure rates




                                        4
Outline
Part 3.    Failure Time Distributions


1. Constant failure rate distributions
2. Increasing failure rate distributions
3. Decreasing failure rate distributions
4. Weibull Analysis – Why use Weibull?




                                           5
Empirical Estimate of F(t) and R(t)
When the exact failure times of units is known, we
use an empirical approach to estimate the reliability
metrics. The most common approach is the Rank
Estimator. Order the failure time observations (failure
times) in an ascending order:


   t 1 ≤ t 2 ≤ ... ≤ t i −1 ≤ t i ≤ t i +1 ≤ ... ≤ t n −1 ≤ t n




                                                                  6
Empirical Estimate of F(t) and R(t)
F (ti )    is obtained by several methods

                                       i
1. Uniform “naive” estimator
                                       n
                                i
2. Mean rank estimator        n +1
                                           i − 0.3
3. Median rank estimator (Bernard)         n + 0. 4
                                        i −3/8
4. Median rank estimator (Blom)
                                        n +1/ 4

                                                      7
Exponential Distribution
 F (t ) = R(t ) = exp [ −λt ]
        1−      1−
 1- F (t ) exp [ −λt ]
     =
    1
           = exp [ λt ]
1 − F (t )
       1
ln            = λt
   1 − F (t )
                1
⇒ ln ln                 ln t + ln λ
                        =
            1 − F (t )
= ln λ + ln t
y
y= a + bx                             8
Median Rank Calculations


i   t (i)   t(i+1)   F=(i-0.3)/(n+0.4)       R=1-F       f(t)     h(t)
0    0       70                          0           1   0.0014   0.0014
1    70     150           0.067307692        0.9327      0.0013   0.0014
2   150     250           0.163461538        0.8365       0.001   0.0013
3   250     360           0.259615385        0.7404      0.0009   0.0013
4   360     485           0.355769231        0.6442      0.0008   0.0013
5   485     650           0.451923077        0.5481      0.0006   0.0012
6   650     855           0.548076923        0.4519      0.0005   0.0012
7   855     1130          0.644230769        0.3558      0.0004   0.0012
8   1130    1540          0.740384615        0.2596      0.0002   0.0012
9   1540      -           0.836538462        0.1635                  9
Failure Rate

                                    Failure Rate


                0.002



               0.0016
Failure Rate




               0.0012



               0.0008



               0.0004



                   0
                        0   1   2   3    4          5   6   7   8   9
                                             Time


                                                                        10
Probability Density Function

                                                 Probability Density Function
                               0.0016


                               0.0014


                               0.0012
Probability Density Function




                                0.001


                               0.0008


                               0.0006


                               0.0004


                               0.0002


                                   0
                                        0    1      2    3     4          5   6   7   8   9
                                                                   Time
                                                                                              11
Reliability Function

                                Reliability Function
              1.2



               1



              0.8
Reliability




              0.6



              0.4



              0.2



               0
                    0   1   2   3     4     5    6     7   8   9   10
                                          Time
                                                                        12
Exponential Distribution: Another Example

Given failure data:

Plot the hazard rate, if constant then use the
exponential distribution with f(t), R(t) and h(t) as
defined before.

We use a software to demonstrate these steps.



                                                       13
Input Data




             14
Plot of the Data




                   15
Exponential Fit




                  16
Exponential Analysis
Weibull Model

  • Definition
                 β −1
        βt                  t β 
=                       exp  −        β > 0, η > 0, t ≥ 0
        η η 
 f (t )
                           η  
                                    

                                                                     β −1
              t       β
                                                           βt
                              =(t ) λ (t )
                               1− F =         f=
                                                            η η 
   R(t ) =−  
         exp                                  (t ) / R(t )
              η 
                            
                                                              



                                                                       18
Weibull Model Cont.

• Statistical properties

                      ∞                           1
      MTTF = η      ∫0    t1/ β e−t dt = ηΓ(1 +
                                                  β
                                                      )


                     
                                  2
           2    2           1  
      Var η Γ(1 + ) −  Γ(1 + ) 
        =             
                β          β  
                                 
            
                                  


      Median life = η ((ln 2)1/ β )

                                                          19
Versatility of Weibull Model
                                                          β −1
                                                 βt
Hazard rate: =λ (t )             f=
                                                 η η 
                                  (t ) / R(t )
                                                    
Hazard Rate




                           Constant Failure Rate
                                 Region
                                                                   β >1

               0 < β <1


              Early Life                                         Wear-Out
               Region                                             Region
                                  β =1

        0                                                             Time t
                                                                               20
Weibull Model




                21
Weibull Analysis: Shape Parameter




                                    22
Weibull Analysis: Shape Parameter




                                    23
Weibull Analysis: Shape Parameter




                                    24
Normal Distribution




                      25
Failure Data

                  Table 1: Failure Data

       Design A                         Design B
Sample #       Cycles             Sample #      Cycles
   1           726,044              11          529,082
   2           615,432              12          729,957
   3           508,077              13          650,570
   4           807,863              14          445,834
   5           755,223              15          343,280
   6           848,953              16          959,903
   7           384,558              17          730,049
   8           666,686              18          730,640
   9           515,201              19          973,224
  10           483,331              20          258,006
                                                          26
Linearization of the Weibull Model
                       t β 
 F (t ) =R (t ) =exp  −   
        1−      1−
                      η  
                             
                t β 
 1- F = exp  −   
      (t )
               η  
                      
 Taking the log
                    t β 
 ln (1- F (t )) =  −   
                   η  
                          
                1
 ⇒ ln ln               = ln η
                        β ln t − β
            1 − F (t )               27
Linearization of the Weibull Model
              1
⇒ ln ln              = ln η
                     β ln t − β
          1 − F (t )
This is an equation of straight line
y = a + bx
Use linear regression , obtain a and b by solving
∑= n a + b ∑ x
  y
∑ xy a ∑ x + b ∑ x
=                      2




or by using Excel                              28
Calculations using Excel

• Weibull Plot
                           t β 
F (t ) = R(t ) =exp  −   
       1−         1−
                          η  
                                 
              1
⇒ ln ln              = ln η
                     β ln t − β       is linear function of ln(time).
          1 − F (t )

           ˆ
• Estimate F (ti ) at ti using Bernard’s Formula
   For n observed failure time data (t1 , t2 ,..., ti ,...tn )
                      ˆ (t ) = i − 0.3
                      F i
                               n + 0.4                           29
Linearization of the Weibull Model


Design A            Median
 Cycles    Rank     Ranks       1/(1-Median Rank) ln(ln(1/(1-Median Rank))) ln(Design A Cycles)
384,558     1     0.067307692 1.072164948              -2.663843085           12.8598499
483,331     2     0.163461538 1.195402299              -1.72326315             13.088457
508,077     3     0.259615385 1.350649351              -1.202023115           13.13838829
515,201     4     0.355769231 1.552238806              -0.821666515           13.15231239
615,432     5     0.451923077 1.824561404              -0.508595394           13.33007974
666,686     6     0.548076923 2.212765957              -0.230365445           13.41007445
726,044     7     0.644230769    2.810810811           0.032924962            13.4953659
755,223     8     0.740384615 3.851851852              0.299032932            13.53476835
807,863     9     0.836538462    6.117647059           0.593977217            13.60214777
848,953    10 0.932692308 14.85714286                  0.992688929            13.6517591

                                                                                        30
Linearization of the Weibull Model

                                              Line Fit Plot
                             1.5
                               1
ln(ln(1/(1-Median Rank)))




                             0.5
                               0
                            -0.5
                              -1
                            -1.5
                              -2
                            -2.5
                              -3
                                12.8     13         13.2        13.4     13.6   13.8
                                                   ln(Design A Cycles)
                                                                                  31
Linearization of the Weibull Model
SUMMARY OUTPUT

               Regression Statistics
Multiple R                              0.98538223
R Square                                0.97097815
Adjusted R Square                       0.96735041
Standard Error                          0.20147761
Observations                                    10

ANOVA
                                           df             SS
Regression                                 1            10.86495309
Residual                                   8            0.324745817
Total                                      9            11.18969891
                                                                        β ln η
                                          Coefficients Standard Error
Intercept                                  -57.1930531    3.464488033
ln(Design A Cycles)                          4.2524822    0.259929377
          Beta (or Shape Parameter) = 4.25
       Alpha (or Characteristic Life) = 693,380
                                                                           32
Reliability Plot

                       1.0000


                        .9000


                        .8000
Survival Probability




                        .7000


                        .6000


                        .5000


                        .4000


                        .3000


                        .2000


                        .1000


                        .0000
                                0   200,000   400,000   600,000   800,000   1,000,000   1,200,000   1,400,000
                                                        Cycles
Input Data
Plots of the Data
Weibull Fit
Test for Weibull Fit
Parameters for Weibull
Weibull Analysis
Example 2: Input Data
Example 2: Plots of the Data
Example 2: Weibull Fit
Example 2:Test for Weibull Fit
Example 2: Parameters for Weibull
Weibull Analysis
Versatility of Weibull Model
                                                          β −1
                                                 βt
Hazard rate: =λ (t )             f=
                                                 η η 
                                  (t ) / R(t )
                                                    
Hazard Rate




                           Constant Failure Rate
                                 Region
                                                                   β >1

               0 < β <1


              Early Life                                         Wear-Out
               Region                                             Region
                                  β =1

        0                                                             Time t
                                                                               46
Graphical Model Validation

• Weibull Plot
                           t β 
F (t ) = R(t ) =exp  −   
       1−         1−
                          η  
                                 
              1
⇒ ln ln              = ln η
                     β ln t − β       is linear function of ln(time).
          1 − F (t )

           ˆ
• Estimate F (ti ) at ti using Bernard’s Formula
   For n observed failure time data (t1 , t2 ,..., ti ,...tn )
                      ˆ (t ) = i − 0.3
                      F i
                               n + 0.4                           47
Example - Weibull Plot

              • T~Weibull(1, 4000) Generate 50 data
                               Weibull Probability Plot
              0.99
              0.96
              0.90
              0.75
              0.50   0.632
Probability




              0.25
                                                              If the straight line fits
              0.10
                                                 β            the data, Weibull
                                                              distribution is a good
              0.05
                                                              model for the data
              0.02
              0.01

                               10
                                 -5
                                                 10
                                                     0
                                                          η          10
                                                                        5
                                                                                   48
                                        Data

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Fundamentals of reliability engineering and applications part3of3

  • 1. Fundamentals of Reliability  Fundamentals of Reliability Engineering and Applications Part 3 of 3 E. A. Elsayed ©2011 ASQ & Presentation Elsayed Presented live on Dec 14th, 2010 http://reliabilitycalendar.org/The_Re liability_Calendar/Short_Courses/Sh liability Calendar/Short Courses/Sh ort_Courses.html
  • 2. ASQ Reliability Division  ASQ Reliability Division Short Course Series Short Course Series The ASQ Reliability Division is pleased to  present a regular series of short courses  featuring leading international practitioners,  academics, and consultants. academics and consultants The goal is to provide a forum for the basic and  The goal is to provide a forum for the basic and continuing education of reliability  professionals. http://reliabilitycalendar.org/The_Re liability_Calendar/Short_Courses/Sh liability Calendar/Short Courses/Sh ort_Courses.html
  • 3. Fundamentals of Reliability Engineering and Applications E. A. Elsayed elsayed@rci.rutgers.edu Rutgers University December 14, 2010 1
  • 4. Outline Part 1. Reliability Definitions  Reliability Definition…Time dependent characteristics  Failure Rate  Availability  MTTF and MTBF  Time to First Failure  Mean Residual Life  Conclusions 2
  • 5. Outline Part 2. Reliability Calculations 1. Use of failure data 2. Density functions 3. Reliability function 4. Hazard and failure rates 3
  • 6. Outline Part 2. Reliability Calculations 1. Use of failure data 2. Density functions 3. Reliability function 4. Hazard and failure rates 4
  • 7. Outline Part 3. Failure Time Distributions 1. Constant failure rate distributions 2. Increasing failure rate distributions 3. Decreasing failure rate distributions 4. Weibull Analysis – Why use Weibull? 5
  • 8. Empirical Estimate of F(t) and R(t) When the exact failure times of units is known, we use an empirical approach to estimate the reliability metrics. The most common approach is the Rank Estimator. Order the failure time observations (failure times) in an ascending order: t 1 ≤ t 2 ≤ ... ≤ t i −1 ≤ t i ≤ t i +1 ≤ ... ≤ t n −1 ≤ t n 6
  • 9. Empirical Estimate of F(t) and R(t) F (ti ) is obtained by several methods i 1. Uniform “naive” estimator n i 2. Mean rank estimator n +1 i − 0.3 3. Median rank estimator (Bernard) n + 0. 4 i −3/8 4. Median rank estimator (Blom) n +1/ 4 7
  • 10. Exponential Distribution F (t ) = R(t ) = exp [ −λt ] 1− 1− 1- F (t ) exp [ −λt ] = 1 = exp [ λt ] 1 − F (t ) 1 ln = λt 1 − F (t ) 1 ⇒ ln ln ln t + ln λ = 1 − F (t ) = ln λ + ln t y y= a + bx 8
  • 11. Median Rank Calculations i t (i) t(i+1) F=(i-0.3)/(n+0.4) R=1-F f(t) h(t) 0 0 70 0 1 0.0014 0.0014 1 70 150 0.067307692 0.9327 0.0013 0.0014 2 150 250 0.163461538 0.8365 0.001 0.0013 3 250 360 0.259615385 0.7404 0.0009 0.0013 4 360 485 0.355769231 0.6442 0.0008 0.0013 5 485 650 0.451923077 0.5481 0.0006 0.0012 6 650 855 0.548076923 0.4519 0.0005 0.0012 7 855 1130 0.644230769 0.3558 0.0004 0.0012 8 1130 1540 0.740384615 0.2596 0.0002 0.0012 9 1540 - 0.836538462 0.1635 9
  • 12. Failure Rate Failure Rate 0.002 0.0016 Failure Rate 0.0012 0.0008 0.0004 0 0 1 2 3 4 5 6 7 8 9 Time 10
  • 13. Probability Density Function Probability Density Function 0.0016 0.0014 0.0012 Probability Density Function 0.001 0.0008 0.0006 0.0004 0.0002 0 0 1 2 3 4 5 6 7 8 9 Time 11
  • 14. Reliability Function Reliability Function 1.2 1 0.8 Reliability 0.6 0.4 0.2 0 0 1 2 3 4 5 6 7 8 9 10 Time 12
  • 15. Exponential Distribution: Another Example Given failure data: Plot the hazard rate, if constant then use the exponential distribution with f(t), R(t) and h(t) as defined before. We use a software to demonstrate these steps. 13
  • 17. Plot of the Data 15
  • 20. Weibull Model • Definition β −1 βt   t β  = exp  −    β > 0, η > 0, t ≥ 0 η η  f (t )    η     β −1  t β  βt  =(t ) λ (t ) 1− F = f= η η  R(t ) =−   exp  (t ) / R(t )  η       18
  • 21. Weibull Model Cont. • Statistical properties ∞ 1 MTTF = η ∫0 t1/ β e−t dt = ηΓ(1 + β )   2 2 2 1   Var η Γ(1 + ) −  Γ(1 + )  =   β  β        Median life = η ((ln 2)1/ β ) 19
  • 22. Versatility of Weibull Model β −1 βt Hazard rate: =λ (t ) f= η η  (t ) / R(t )   Hazard Rate Constant Failure Rate Region β >1 0 < β <1 Early Life Wear-Out Region Region β =1 0 Time t 20
  • 24. Weibull Analysis: Shape Parameter 22
  • 25. Weibull Analysis: Shape Parameter 23
  • 26. Weibull Analysis: Shape Parameter 24
  • 28. Failure Data Table 1: Failure Data Design A Design B Sample # Cycles Sample # Cycles 1 726,044 11 529,082 2 615,432 12 729,957 3 508,077 13 650,570 4 807,863 14 445,834 5 755,223 15 343,280 6 848,953 16 959,903 7 384,558 17 730,049 8 666,686 18 730,640 9 515,201 19 973,224 10 483,331 20 258,006 26
  • 29. Linearization of the Weibull Model   t β  F (t ) =R (t ) =exp  −    1− 1−  η       t β  1- F = exp  −    (t )  η     Taking the log   t β  ln (1- F (t )) =  −     η     1 ⇒ ln ln = ln η β ln t − β 1 − F (t ) 27
  • 30. Linearization of the Weibull Model 1 ⇒ ln ln = ln η β ln t − β 1 − F (t ) This is an equation of straight line y = a + bx Use linear regression , obtain a and b by solving ∑= n a + b ∑ x y ∑ xy a ∑ x + b ∑ x = 2 or by using Excel 28
  • 31. Calculations using Excel • Weibull Plot   t β  F (t ) = R(t ) =exp  −    1− 1−  η     1 ⇒ ln ln = ln η β ln t − β is linear function of ln(time). 1 − F (t ) ˆ • Estimate F (ti ) at ti using Bernard’s Formula For n observed failure time data (t1 , t2 ,..., ti ,...tn ) ˆ (t ) = i − 0.3 F i n + 0.4 29
  • 32. Linearization of the Weibull Model Design A Median Cycles Rank Ranks 1/(1-Median Rank) ln(ln(1/(1-Median Rank))) ln(Design A Cycles) 384,558 1 0.067307692 1.072164948 -2.663843085 12.8598499 483,331 2 0.163461538 1.195402299 -1.72326315 13.088457 508,077 3 0.259615385 1.350649351 -1.202023115 13.13838829 515,201 4 0.355769231 1.552238806 -0.821666515 13.15231239 615,432 5 0.451923077 1.824561404 -0.508595394 13.33007974 666,686 6 0.548076923 2.212765957 -0.230365445 13.41007445 726,044 7 0.644230769 2.810810811 0.032924962 13.4953659 755,223 8 0.740384615 3.851851852 0.299032932 13.53476835 807,863 9 0.836538462 6.117647059 0.593977217 13.60214777 848,953 10 0.932692308 14.85714286 0.992688929 13.6517591 30
  • 33. Linearization of the Weibull Model Line Fit Plot 1.5 1 ln(ln(1/(1-Median Rank))) 0.5 0 -0.5 -1 -1.5 -2 -2.5 -3 12.8 13 13.2 13.4 13.6 13.8 ln(Design A Cycles) 31
  • 34. Linearization of the Weibull Model SUMMARY OUTPUT Regression Statistics Multiple R 0.98538223 R Square 0.97097815 Adjusted R Square 0.96735041 Standard Error 0.20147761 Observations 10 ANOVA df SS Regression 1 10.86495309 Residual 8 0.324745817 Total 9 11.18969891 β ln η Coefficients Standard Error Intercept -57.1930531 3.464488033 ln(Design A Cycles) 4.2524822 0.259929377 Beta (or Shape Parameter) = 4.25 Alpha (or Characteristic Life) = 693,380 32
  • 35. Reliability Plot 1.0000 .9000 .8000 Survival Probability .7000 .6000 .5000 .4000 .3000 .2000 .1000 .0000 0 200,000 400,000 600,000 800,000 1,000,000 1,200,000 1,400,000 Cycles
  • 37. Plots of the Data
  • 43. Example 2: Plots of the Data
  • 45. Example 2:Test for Weibull Fit
  • 46. Example 2: Parameters for Weibull
  • 48. Versatility of Weibull Model β −1 βt Hazard rate: =λ (t ) f= η η  (t ) / R(t )   Hazard Rate Constant Failure Rate Region β >1 0 < β <1 Early Life Wear-Out Region Region β =1 0 Time t 46
  • 49. Graphical Model Validation • Weibull Plot   t β  F (t ) = R(t ) =exp  −    1− 1−  η     1 ⇒ ln ln = ln η β ln t − β is linear function of ln(time). 1 − F (t ) ˆ • Estimate F (ti ) at ti using Bernard’s Formula For n observed failure time data (t1 , t2 ,..., ti ,...tn ) ˆ (t ) = i − 0.3 F i n + 0.4 47
  • 50. Example - Weibull Plot • T~Weibull(1, 4000) Generate 50 data Weibull Probability Plot 0.99 0.96 0.90 0.75 0.50 0.632 Probability 0.25 If the straight line fits 0.10 β the data, Weibull distribution is a good 0.05 model for the data 0.02 0.01 10 -5 10 0 η 10 5 48 Data