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'''Weibull Distribution Complete Data Example'''
'''Weibull Distribution Complete Data Example'''


Assume that ten identical units (N = 10) are being reliability tested at the same application and operation stress levels. Six of these units fail during this test after operating the following numbers of hours, <math>{T}_{j}<\math>: 150, 105, 83, 123, 64 and 46. The test is stopped at the sixth failure. Find the parameters of the Weibull ''pdf'' that represents these data.
Assume that ten identical units (N = 10) are being reliability tested at the same application and operation stress levels. Six of these units fail during this test after operating the following numbers of hours, <math>{T}_{j}</math>: 150, 105, 83, 123, 64 and 46. The test is stopped at the sixth failure. Find the parameters of the Weibull ''pdf'' that represents these data.


===Solution to Weibull Distribution Example 11===
===Solution to Weibull Distribution Example 11===

Revision as of 22:30, 29 February 2012

Weibull Distribution Complete Data Example

Assume that ten identical units (N = 10) are being reliability tested at the same application and operation stress levels. Six of these units fail during this test after operating the following numbers of hours, [math]\displaystyle{ {T}_{j} }[/math]: 150, 105, 83, 123, 64 and 46. The test is stopped at the sixth failure. Find the parameters of the Weibull pdf that represents these data.

Solution to Weibull Distribution Example 11

Open a new Data Folio choosing Times-to-failure data, My data set contains suspensions (right censored data) and I want to enter data in groups.


Enter the data in the appropriate columns. Note that there are four suspensions, as only six of the ten units were tested to failure (the next figure shows the data as entered). Use the three-parameter Weibull and MLE for the calculations.


Plot the data.


Note that the original data points, on the curved line, were adjusted by subtracting 30.92 hours to yield a straight line as shown above.