INCORPORATING PRODUCT ROBUSTNESS LEVEL IN FIELD RETURN RATE PREDICTIONS

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Date

2012

Authors

A. Tarkan Tekcan
Gurmen Kahramanoglu
Mustafa Gunduzalp

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Publisher

POLISH MAINTENANCE SOC

Open Access Color

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Abstract

Reliability and return rate prediction of products are traditionally achieved by using stress based standards and/or applying accelerated life tests. But frequently predicted reliability and return rate values by using these methods differ from the field values. The primary reason for this is that products do not only fail due to the stress factors mentioned in the standards and/or used in accelerated life tests. There are additional failure factors such as ESD thermal shocks voltage dips interruptions and variations quality factors etc. These factors should also be considered in some way when predictions are made during the R&D phase. Therefore a method should be used which considers such factors thus increasing the accuracy of the reliability and return rate prediction. In this paper we developed a parameter which we call Robustness Level Factor to incorporate such factors and then we combined this parameter with traditional reliability prediction methods. Specifically the approach takes into account qualitative reliability tests performed during the R&D stage and combines them with life tests by using Artificial Neural Networks (ANN). As a result the approach gives more accurate predictions compared with traditional prediction methods. With this prediction model we believe that analysts can determine the reliability and return rate of their products more accurately.

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Keywords

reliability and return rate estimation, artificial neural networks, defining different failure types, product maturity level, product robustness level, field failures, product level testing, board level testing, design quality, ACCELERATED LIFE TESTS, RELIABILITY-PREDICTION, SYSTEM RELIABILITY, MODELS, Artificial Neural Networks, Product Robustness Level, Defining Different Failure Types, Design Quality, Product Level Testing, Product Maturity Level, Reliability and Return Rate Estimation, Field Failures, Board Level Testing

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Source

Eksploatacja i Niezawodnosc

Volume

14

Issue

4

Start Page

327

End Page

332
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