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Prognostics Using an Adaptive Self-Cognizant Dynamic System Approach

机译:使用自适应自我认知动态系统方法的预测

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摘要

Prognostics and health management is an emerging engineering technology that has been applied to a large variety of engineering systems to improve system's reliability. However, existing prognostics approaches have been developed largely based upon specific applications and system models, thus possess limited general applicability. This paper presents a generic data-driven prognostics method, namely an adaptive self-cognizant dynamic system (ASDS) approach, that integrates adaptive system recognition with a general state space-based dynamic system model for remaining useful life (RUL) prediction. The developed approach formulates a statistical learning framework with three core attributes: 1) a state-space-based dynamic system approach for the system performance modeling in general, 2) a data-driven method to learn time-series degradation performance of an engineering system, and 3) a Bayesian technique for self-updating of data-driven models to adapt to the operational or environmental changes. With the developed ASDS approach, the prognostics technique can eliminate the dependence on system specific models and be adaptive to system performance changes due to degradation or variation of system operational conditions, thereby yielding accurate RUL predictions. The developed methodology is applied to two engineering case studies to demonstrate its effectiveness.
机译:预测和健康管理是一种新兴的工程技术,已应用于多种工程系统以提高系统的可靠性。但是,现有的预测方法主要是基于特定的应用程序和系统模型开发的,因此具有有限的通用性。本文提出了一种通用的数据驱动的预测方法,即自适应自我认知动态系统(ASDS)方法,该方法将自适应系统识别与基于状态空间的一般状态动态系统模型集成在一起,以预测剩余使用寿命(RUL)。所开发的方法制定了具有三个核心属性的统计学习框架:1)通常用于系统性能建模的基于状态空间的动态系统方法,2)一种用于学习工程系统的时序退化性能的数据驱动方法,以及3)贝叶斯技术,该技术可自我更新数据驱动模型以适应运营或环境变化。利用已开发的ASDS方法,预后技术可以消除对系统特定模型的依赖性,并且可以适应由于系统运行状况的下降或变化而导致的系统性能变化,从而产生准确的RUL预测。所开发的方法应用于两个工程案例研究,以证明其有效性。

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