基于加速寿命试验的系统可靠性分析资源分配

Kassem Moustafa, Zhen Hu, Z. Mourelatos, Igor Baseski, Monica Majcher
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摘要

加速寿命试验(ALT)已被广泛应用于通过在高于标称应力条件下测试产品来加速产品可靠性评估过程。对于具有多个组件的系统,可以在组件级或系统级执行测试。这两个层次的数据需要不同的资源来收集和承载不同的信息价值来进行系统可靠性评估。尽管组件级测试的执行成本很低,但它们不能解释不同组件的故障时间分布之间的相关性。虽然系统级测试可以很自然地解释组件故障时间分布之间复杂的依赖关系,但所需的测试工作要比组件级测试高得多。本文提出了一种新的基于alt的系统可靠性评估资源分配框架。首先使用物理负载模型来弥合组件级测试和系统级测试之间的差距。然后开发一个优化框架,以有效地将测试资源分配给不同类型的测试。组件级和系统级测试的信息融合,使我们能够在对测试资源需求最小的情况下,准确地估计系统的可靠性。一个算例的结果验证了该框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resource Allocation for System Reliability Analysis Using Accelerated Life Testing
Accelerated life test (ALT) has been widely used to accelerate the product reliability assessment process by testing product at higher than nominal stress conditions. For a system with multiple components, the tests can be performed at component-level or system-level. The data at these two levels require different amount of resources to collect and carry different values of information for system reliability assessment. Even though component-level tests are cheap to perform, they cannot account for the correlations between the failure time distributions of different components. While system-level tests can naturally account for the complicated dependence between component failure time distributions, the required testing efforts are much higher than that of component-level tests. This research proposes a novel resource allocation framework for ALT-based system reliability assessment. A physics-informed load model is first employed to bridge the gap between component-level tests and system-level tests. An optimization framework is then developed to effectively allocate testing resources to different types of tests. The information fusion of component-level and system-level tests allows us to accurately estimate the system reliability with a minimized requirement on the testing resources. Results of one numerical example demonstrate the effectiveness of the proposed framework.
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