Novel Statistical Techniques for Conducting Accelerated Life Test to Demonstrate Product Reliability

Pub Date : 2022-11-01 DOI:10.14429/dsj.72.17838
M. Basha, Nliesh R Ware
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Abstract

In Reliability Demonstration Testing (RDT), finding the right sample size is very important since the cost of the prototypes is high and difficult to make. If the sample size for the RDT is test is less, the amount of information obtained from the test will be insufficient, and the conclusion will be meaningless; on contrary, if the sample size is big/huge, the amount of information obtained from the test will be in excess of what is required, resulting in unnecessary costs. Most of the time, the required sample size and test time are decided based on the RDT test design. Resources required for RDT in terms of batch size and long testing-time is practically not feasible, due to limitation of the project schedule and budget. The reliability engineers must have a sound knowledge of type challenge/risk that is allowed for conducting RDT. The research paper with a case study provides the required information about the modern techniques adopted in reducing the sample-size and testing time with the help of accelerated test models such as Arrhenius, Erying etc., for conducting accelerated life test to demonstrate the product reliability.
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进行加速寿命试验以证明产品可靠性的新统计技术
在可靠性验证测试(RDT)中,由于原型的成本高且难以制造,因此找到合适的样本量非常重要。如果RDT的样本量较小,则从测试中获得的信息量将不足,结论将毫无意义;相反,如果样本量很大,那么从测试中获得的信息量将超过所需的数量,从而导致不必要的成本。大多数情况下,所需的样本量和测试时间是根据RDT测试设计决定的。由于项目进度和预算的限制,RDT在批量大小和长测试时间方面所需的资源实际上是不可行的。可靠性工程师必须对进行RDT所允许的类型挑战/风险有充分的了解。该研究论文通过案例研究,提供了所需的信息,说明在Arrhenius、Erying等加速测试模型的帮助下,采用现代技术来减少样本量和测试时间,以进行加速寿命测试,从而证明产品的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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