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首页> 外文期刊>International Journal of Reliability, Quality and Safety Engineering >Synthetic Reliability Assessment Model Involving Temperature-Humidity Step-Stress Based on Wiener Process
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Synthetic Reliability Assessment Model Involving Temperature-Humidity Step-Stress Based on Wiener Process

机译:基于维纳工艺的温度湿度降低综合可靠性评估模型

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摘要

There are always some difficulties in storage reliability evaluation of high-reliability, long-life, and high-value products, such as the test sample being small, degradation speed being slow, and failure data being inadequate. Temperature-humidity step-stress accelerated degradation test (THSS-ADT) is an effective method to evaluate the reliabil-ity of this type of products, but the test data processing is an extremely complex work. The motivation of this paper is to provide a clear, effective, and convenient method to evaluate the reliability on the basis of THSS-ADT data. Considering the stochas-tic volatility in degradation process, Wiener process is used to modeling the accelerated degradation process. The methods to estimate the parameters of Peck accelerated model and degradation model are discussed under temperature-humidity step-stress. As ordi-nary optimization algorithms (such as Newton Iteration Method and impelling function method) find it difficult to get the solutions, particle swarm optimization (PSO) method is used to solve the problem of maximum-likelihood estimation. Finally, the proposed methods are demonstrated for two examples, in which one is a numerical simulation, and another is an engineering practice of a microwave power amplifier.
机译:高可靠性,长寿命和高价值产品等储存可靠性评估总始终存在一些困难,例如测试样品较小,降低速度慢,并且失效数据不足。温度湿度步进胁迫加速降解试验(THSS-ADT)是评估这种类型产品的可靠性ITY的有效方法,但测试数据处理是一个非常复杂的工作。本文的动机是提供一种清晰,有效,方便的方法,用于评估基于THS-ADT数据的可靠性。考虑到劣化过程中的随机性波动率,Wiener工艺用于建模加速降解过程。在温度湿度静态应力下讨论了估计啄次加速模型和降解模型的参数的方法。正如ORDI-NARY优化算法(如牛顿迭代方法和推动功能方法)发现难以获取解决方案,粒子群优化(PSO)方法用于解决最大似然估计的问题。最后,对两个示例进行了证明所提出的方法,其中一个是数值模拟,另一个是微波功率放大器的工程实践。

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