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| '''Weibull Distribution Interval Data Example'''
| | #REDIRECT [[Weibull Distribution Examples]] |
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| Suppose that we have run an experiment with eight units being tested and the following is a table of their last inspection times and times-to-failure:
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| Table 6.5 - The test data for Example 16
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| Data point index
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| Last Inspection
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| Time-to-failure
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| 1
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| 30
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| 32
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| 2
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| 32
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| 35
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| 3
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| 35
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| 37
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| 4
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| 37
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| 40
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| 5
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| 42
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| 42
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| 6
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| 45
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| 45
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| 7
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| 50
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| 50
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| 8
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| 55
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| 55
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| Analyze the data using several different parameter estimation techniques and compare the results.
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| ===Solution to Weibull Distribution Example 12===
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| This data set can be entered into Weibull++ by opening a new Data Folio and choosing Times-to-failure and My data set contains interval and/or left censored data.
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| The data is entered as follows,
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| The computed parameters using maximum likelihood are:
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| using RRX or rank regression on X:
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| and using RRY or rank regression on Y:
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| The plot of the MLE solution with the two-sided 90% confidence bounds is:
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