Considerable research has been devoted to deep learning-based predictive models for system prognostics and health management in the reliability and safety community. However, there is limited study on the utilization of deep learning for system reliability assessment. This paper aims to bridge this gap and explore this new interface between deep learning and system reliability assessment by exploiting the recent advances of physics-informed deep learning. Particularly, we present an approach to frame system reliability assessment in the context of physics-informed deep learning and discuss the potential value of physics-informed generative adversarial networks for the uncertainty quantification and measurement data incorporation in system reliability assessment. The proposed approach is demonstrated by three numerical examples involving a dual-processor computing system. The results indicate the potential value of physics-informed deep learning to alleviate computational challenges and combine measurement data and mathematical models for system reliability assessment.
翻译:对可靠和安全界系统预测和健康管理的深层次基于学习的预测模型进行了大量研究,但是,关于利用深层学习进行系统可靠性评估的研究有限,本文件旨在弥合这一差距,并探索深层学习和系统可靠性评估之间的这种新界面,利用物理学知识深层学习的最新进展,特别是,我们提出一种办法,结合物理学知识深厚的深层学习,制定系统可靠性评估的框架,并讨论物理学知识化基因对立网络在不确定性量化和计量数据纳入系统可靠性评估方面的潜在价值,提议的方法是三个数字实例,其中涉及双重处理计算机系统,显示了物理学知识深层学习的潜在价值,以缓解计算方面的挑战,并将测量数据和数学模型结合起来,用于系统可靠性评估。