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Original Articles

Binomial Reliability Demonstration Tests with Dependent Data

Pages 253-266 | Published online: 24 Apr 2015
 

ABSTRACT

Binomial reliability demonstration tests are a way to demonstrate the product or process capability where binary data are available. It is easy to compute the sample size for a binomial reliability demonstration test (BDRT) when the assumption of independent samples holds. However, the assumption of independence may not always be valid; thus, it is desirable to account for this dependence in a sample size calculation. We show how a Markov dependence model can be used to calculate the sample size. We provide tables of sample sizes and give an example for which a BRDT can be performed with dependent data.

APPENDIX: ADDITIONAL SAMPLE SIZE CALCULATIONS

This Appendix describes how sample sizes can be determined for values of . Klotz (Citation1973, eq. [3.1]) gave the joint distribution in terms of the random variables , , and , which is

[A1]

where , , , and . is the value of the joint distribution when all of the values of are equal to zero as shown earlier in Eq. [Equation2]. The values of , , and were defined earlier in the section on the estimators of . This joint distribution in terms of and is given by summing the joint distribution across the possible combinations of , and that result in values of and .

For some value of , the BRDT will be successful when . Thus, we have to sum the probabilities for all values of in that range. The possible values of are limited by the value of . For example, if there are failures in a data set, then possible values of are 0 or 1. The possible values of are also limited by the values of . For example, if there is a single failure () in a data set, then possible values of are 0 or 1. Regardless of the value of , the maximum value of is 2, because there are only two total locations at the beginning and end. We also add the restriction that to avoid challenges in computation when and the impossible situation where .

Given these limitations, we can now define the joint distribution across all values of , , and for a given value for and . This joint distribution is given as

[A2]

where as defined in [Equation2] for the case where there are no failures and where for the impossible case where and .

To illustrate this joint distribution, if the maximum allowable number of failures is , then this joint distribution simplifies to .

This joint distribution can then be used to find the sample size. For a given value of , , and , we find the value of such that

[A3]

This equation was used to calculate the sample sizes shown in for , , and , respectively. The format is similar to that of shown earlier for .

TABLE A1 Required Sample Sizes for BRDT with Dependent Samples for Different Values of Where

TABLE A2 Required Sample Sizes for BRDT with Dependent Samples for Different Values of Where

TABLE A3 Required Sample Sizes for BRDT with Dependent Samples for Different Values of Where

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