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Analyze Wise, LLC
Forecasting Warranty Returns
Weibull Analysis
2
Reasons for Warranty Analysis
 Actual warranty return data can be analyzed to forecast:
– The number of units that are expected to be returned at any given time
during the warranty period
 This forecast is useful to:
– Plan for repair center resources
– Manage customer communications/relationships
– Validate assumptions on Warranty Expenses/Reserves
– Facilitate decisions on currently deployed products
 This forecast is NOT useful to:
– Measure the “quality” of recent months of product shipments
3
Question: How Many RMA Returns?
 Theory: Past return history can be used to
predict future returns (for a population or
failure mode(s))
– Methodology: Statistical Warranty Forecasting
using a failure time distribution
1. Regress time to failure data to find an model w/
good fit
2. Use the model to predict out future time periods
– Assumptions:
• Failure Rate is not constant over time
• Past customer behavior is representative of future
behavior
• Failed units are replaced with new units with similar
field quality
• Lag time to install & use is negligible
0.00%
0.05%
0.10%
0.15%
0.20%
0.25%
0 50 100 150 200 250 300 350
P(Failure)
Time
Probability of Failure at a given value of Time
0%
10%
20%
30%
40%
50%
60%
70%
80%
90%
100%
0 50 100 150 200 250 300 350
%Failed
Time
Cummulative % of Failures over Time
4
Why use a forecasting model?
 Smooth-out warranty return time distributions for easy/accurate
comparison with a goal curve
 Results in an equation that will allow forecast of future warranty
costs
 The failure distribution, f(t), can be described with a few
parameters
– i.e.
• a normal distribution can be described with mean & standard deviation
• a exponential distribution can be described with a rate
• a Weibull distribution can be described with shape & scale
5
Failure distribution & prediction terms
 Typically, “Return Rate” or “Failure Rate” is used as a
parameter to describe failure distributions
– Often these terms imply constant failure rate
– Most products do NOT have constant failure rates
 “Hazard Rate”, h(t) is the Function that describes the
“instantaneous failure rate over time”
– Represents the likelihood to fail in the next instant given that it hasn’t
failed yet
h(t) = Hazard Rate
f(t) = PDF or Failure Function. Likelihood of a failure at this point in time (t)
F(t) = Cumulative Failure Distribution. Probability of failure before time t
R(t) = Reliability Function. Probability of no failure before time t
6
Typical Warranty Forecasting Models
 Regression Distribution options
– Constant Hazard Rate: F(t) = Exponential Distribution
– Linear Hazard Rate: F(t) = Rayleigh Distribution
– Variable Hazard Rate: F(t)= Weibull Distribution
• Weibull is a flexible life model that can be used to characterize failure
distributions in all three phases of the bathtub curve
7
Life Data Analysis – 2 easy steps
1. Obtain Time-To-Failure Data
2. Perform regression to choose best fit model & estimate
parameters (Using a statistical software package of your choice)
Common Distributions in Reliability
– Weibull
– Exponential
– Gamma
– Loglogistic
8
Step 1: Obtain Time-To-Failure Data
Historical data is formatted in a standard “Nevada” Chart
 “2435 units shipped in May-10; 1 returned in Jun-10, 1 in Jul-10, 0 in Aug-10...
 “1113 units shipped in Jun-10; 8 returned in Jul-10, 1 in Aug-10, 4 in Sep-10…”
Return Month
9
Time-To-Failure Diagonals
 Lowest diagonal = Units That Failed after 1 month in field
– 1+8+1+1+33+0+0+0 = 44
 Next diagonal = Units That Failed after 2 months in field
– 1+1+1+1+51+1+3+0 = 59
 Etc….
10
Censored Data
Assuming the most recent data includes up to Jan-11
 Units That Survived 8 Months
– 2435-1-1-0-0-0-1-0-0= 2432
 Units That Survived 7 months
– 1113-8-1-4-1-2-1-0= 1096
 Etc….
#
Shipped
11
Step 2: Using a statistical package…
Input historical data for Time-To-Failure and total surviving (Censored)
for each time frame. Then find best fit distribution.
12
Weibull Distribution Functions
 pdf = probability density function.
– Likelihood of a failure at this point in time (t)
 cdf= cumulative distribution function.
– Probability of failure before time t
– “Area Under the curve” of the pdf
 β = shape parameter
 ŋ = scale parameter
13
Using the Weibull cdf & conditional
probability to forecast future returns
From Ship
Month May
2010
F(1/8) = 1 - R( 1+ 8)
R(8)
F(1/8) = 1 - R(9)
R(8)
= 1- e-(9/459)1.2
e-(8/459)1.2
2432*.001054= 2 Returns
Forecast for
Feb 2011
“We expect 2 returns during Feb-11 that were manufactured in May-10”
14
Repeat for the next month of manufacture…
For Ship Month
Jun 2010
F(1/7) = 1 - R( 1+ 7)
R(7)
F(1/7) = 1 - R(8)
R(7)
= 1- e-(8/459)1.2
e-(7/459)1.2
1096*.001025 = 1 ReturnForecast for
Feb 2011
“We expect 1 return during Feb-11 that was manufactured in Jun-10”
15
Repeat for each Ship Month & Return Month
Return Month
Ship Month Jan-11 Feb-11 Mar-11 Apr-11 May-11 Jun-11 Jul-11 Aug-11 Sep-11
May-10 2 3 3 3 3 3 3 3 3
Jun-10 1 1 1 1 1 1 1 1 1
Jul-10 5 5 5 5 5 5 5 5 6
Aug-10 13 13 14 14 15 15 15 16 16
Sep-10 14 15 15 16 16 17 17 17 18
Oct-10 9 10 11 11 11 12 12 12 13
Nov-10 7 8 8 9 9 9 10 10 10
Dec-10 10 12 13 13 14 15 15 16 16
62 66 69 72 74 76 78 80 82
16
How good is the forecast?
 In this real-world case, within +/- 1%; enabling sound assessment of
warrant reserve and supporting the investment in corrective action*
*counts on vertical axis hidden per client request
17
Q&A
 Weibull is one of the most popular distribution for reliability testing, but there are
others. Did we review analysis using other distributions?
– Yes – A two-parameter Weibull is the simplest distribution that fits this data, but Minitab checks a
dozen by default.
 For Weibull, how did we derive the parameters we are using.
– Distribution ID & regression using Minitab analysis for all return data history for this product.
 For analysis, what is confidence level around the results.
– Confidence Interval around each forecast point is provided in the Minitab analysis. R-square value
for the previous chart was .98 --- this is an unusually good fit. Your results may vary due to failure
mode(s), manufacturing variability and use characteristics of your product.
 What does this data mean?
– The return pattern is higher than the planned target of .x% per year failure goal.
 How can this be used?
– The equation will predict the number of returns across any given time period; so resource needs,
such as those for analysis & repair, can be forecast.
– Any proposed actions to address returns can be evaluated based on trustworthy forecast numbers.

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Forecasting warranty returns with Wiebull Fit

  • 1. Analyze Wise, LLC Forecasting Warranty Returns Weibull Analysis
  • 2. 2 Reasons for Warranty Analysis  Actual warranty return data can be analyzed to forecast: – The number of units that are expected to be returned at any given time during the warranty period  This forecast is useful to: – Plan for repair center resources – Manage customer communications/relationships – Validate assumptions on Warranty Expenses/Reserves – Facilitate decisions on currently deployed products  This forecast is NOT useful to: – Measure the “quality” of recent months of product shipments
  • 3. 3 Question: How Many RMA Returns?  Theory: Past return history can be used to predict future returns (for a population or failure mode(s)) – Methodology: Statistical Warranty Forecasting using a failure time distribution 1. Regress time to failure data to find an model w/ good fit 2. Use the model to predict out future time periods – Assumptions: • Failure Rate is not constant over time • Past customer behavior is representative of future behavior • Failed units are replaced with new units with similar field quality • Lag time to install & use is negligible 0.00% 0.05% 0.10% 0.15% 0.20% 0.25% 0 50 100 150 200 250 300 350 P(Failure) Time Probability of Failure at a given value of Time 0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100% 0 50 100 150 200 250 300 350 %Failed Time Cummulative % of Failures over Time
  • 4. 4 Why use a forecasting model?  Smooth-out warranty return time distributions for easy/accurate comparison with a goal curve  Results in an equation that will allow forecast of future warranty costs  The failure distribution, f(t), can be described with a few parameters – i.e. • a normal distribution can be described with mean & standard deviation • a exponential distribution can be described with a rate • a Weibull distribution can be described with shape & scale
  • 5. 5 Failure distribution & prediction terms  Typically, “Return Rate” or “Failure Rate” is used as a parameter to describe failure distributions – Often these terms imply constant failure rate – Most products do NOT have constant failure rates  “Hazard Rate”, h(t) is the Function that describes the “instantaneous failure rate over time” – Represents the likelihood to fail in the next instant given that it hasn’t failed yet h(t) = Hazard Rate f(t) = PDF or Failure Function. Likelihood of a failure at this point in time (t) F(t) = Cumulative Failure Distribution. Probability of failure before time t R(t) = Reliability Function. Probability of no failure before time t
  • 6. 6 Typical Warranty Forecasting Models  Regression Distribution options – Constant Hazard Rate: F(t) = Exponential Distribution – Linear Hazard Rate: F(t) = Rayleigh Distribution – Variable Hazard Rate: F(t)= Weibull Distribution • Weibull is a flexible life model that can be used to characterize failure distributions in all three phases of the bathtub curve
  • 7. 7 Life Data Analysis – 2 easy steps 1. Obtain Time-To-Failure Data 2. Perform regression to choose best fit model & estimate parameters (Using a statistical software package of your choice) Common Distributions in Reliability – Weibull – Exponential – Gamma – Loglogistic
  • 8. 8 Step 1: Obtain Time-To-Failure Data Historical data is formatted in a standard “Nevada” Chart  “2435 units shipped in May-10; 1 returned in Jun-10, 1 in Jul-10, 0 in Aug-10...  “1113 units shipped in Jun-10; 8 returned in Jul-10, 1 in Aug-10, 4 in Sep-10…” Return Month
  • 9. 9 Time-To-Failure Diagonals  Lowest diagonal = Units That Failed after 1 month in field – 1+8+1+1+33+0+0+0 = 44  Next diagonal = Units That Failed after 2 months in field – 1+1+1+1+51+1+3+0 = 59  Etc….
  • 10. 10 Censored Data Assuming the most recent data includes up to Jan-11  Units That Survived 8 Months – 2435-1-1-0-0-0-1-0-0= 2432  Units That Survived 7 months – 1113-8-1-4-1-2-1-0= 1096  Etc…. # Shipped
  • 11. 11 Step 2: Using a statistical package… Input historical data for Time-To-Failure and total surviving (Censored) for each time frame. Then find best fit distribution.
  • 12. 12 Weibull Distribution Functions  pdf = probability density function. – Likelihood of a failure at this point in time (t)  cdf= cumulative distribution function. – Probability of failure before time t – “Area Under the curve” of the pdf  β = shape parameter  ŋ = scale parameter
  • 13. 13 Using the Weibull cdf & conditional probability to forecast future returns From Ship Month May 2010 F(1/8) = 1 - R( 1+ 8) R(8) F(1/8) = 1 - R(9) R(8) = 1- e-(9/459)1.2 e-(8/459)1.2 2432*.001054= 2 Returns Forecast for Feb 2011 “We expect 2 returns during Feb-11 that were manufactured in May-10”
  • 14. 14 Repeat for the next month of manufacture… For Ship Month Jun 2010 F(1/7) = 1 - R( 1+ 7) R(7) F(1/7) = 1 - R(8) R(7) = 1- e-(8/459)1.2 e-(7/459)1.2 1096*.001025 = 1 ReturnForecast for Feb 2011 “We expect 1 return during Feb-11 that was manufactured in Jun-10”
  • 15. 15 Repeat for each Ship Month & Return Month Return Month Ship Month Jan-11 Feb-11 Mar-11 Apr-11 May-11 Jun-11 Jul-11 Aug-11 Sep-11 May-10 2 3 3 3 3 3 3 3 3 Jun-10 1 1 1 1 1 1 1 1 1 Jul-10 5 5 5 5 5 5 5 5 6 Aug-10 13 13 14 14 15 15 15 16 16 Sep-10 14 15 15 16 16 17 17 17 18 Oct-10 9 10 11 11 11 12 12 12 13 Nov-10 7 8 8 9 9 9 10 10 10 Dec-10 10 12 13 13 14 15 15 16 16 62 66 69 72 74 76 78 80 82
  • 16. 16 How good is the forecast?  In this real-world case, within +/- 1%; enabling sound assessment of warrant reserve and supporting the investment in corrective action* *counts on vertical axis hidden per client request
  • 17. 17 Q&A  Weibull is one of the most popular distribution for reliability testing, but there are others. Did we review analysis using other distributions? – Yes – A two-parameter Weibull is the simplest distribution that fits this data, but Minitab checks a dozen by default.  For Weibull, how did we derive the parameters we are using. – Distribution ID & regression using Minitab analysis for all return data history for this product.  For analysis, what is confidence level around the results. – Confidence Interval around each forecast point is provided in the Minitab analysis. R-square value for the previous chart was .98 --- this is an unusually good fit. Your results may vary due to failure mode(s), manufacturing variability and use characteristics of your product.  What does this data mean? – The return pattern is higher than the planned target of .x% per year failure goal.  How can this be used? – The equation will predict the number of returns across any given time period; so resource needs, such as those for analysis & repair, can be forecast. – Any proposed actions to address returns can be evaluated based on trustworthy forecast numbers.