Research on Evaluation Method of Small Sample Conditions of Ammunition Packaging Reliability

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Abstract:

With the rapid development of high-tech ammunition, its value and costmore and more high, the reliability of its packaging is also put forward higher requirements. Small sample theory can greatly reduce the test sample, save test cost greatly, so it has wide application in many fields.This paper will use the small sample theory to study the reliability of ammunition packaging, through theoretical analysis and simple derivation, proved the feasibility of small sample theory in ammunition packaging reliability, and made use of the generality of the approach,which lays a foundation for future small sample theory in this field.

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4502-4506

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March 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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DOI: 10.1002/int.10107

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