生成物理系统健康指标的通用方法的框架

M. Sekkal, N. Berrached, K. Medjaher, C. Varnier
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引用次数: 1

摘要

物理系统的预测性维护只能通过监测其最关键的元素来跟踪其运行期间的健康评估来实现。对获取的数据进行处理,提取相关特征,用于随时估计系统的状态,并检测由于关键因素可能导致的任何性能损失。在这项工作中,我们提出了一个通用方法的架构来监督这个关键元素,并为物理系统生成一个健康指标(HI)。生成的HI考虑了物理系统健康状态随时间的变化。该方法基于传感器数据,通过多次HI获取测试,可以实时提取构成HI构建块输入的特征值。制作了该方法的框图,然后使用取自“NASA数据存储库预测”的基准数据对不同操作条件下使用的元素进行检查。这种方法被归类为数据驱动方法,它使用传感器数据来告诉我们特征的实时值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Skeleton of a generic approach for the generation of health indicators of physical systems
Predictive maintenance of physical systems can only be achieved by monitoring their most critical elements to track their health assessment during operation. The acquired data is processed to extract relevant features, which are used to estimate the state of the system at any time and detect any loss of performance that may occur due to the critical element. We propose in this work an architecture of generic method to supervise this critical element and generate a Health Indicator (HI) for the physical system. The generated HI takes into account the evolution in time of the healthy status of the physical systems. The proposed method is based on sensors data that allow us to extract in real time the values of features constituting themselves the HI construction bloc input, through several HI obtaining test. Block diagram of the approach is made, then checked using benchmark data taken from “NASA data repository prognosis” associated to an element used in different operating conditions are checked. This approach is classified as data driven method which use sensors data that inform us about the real-time values of features.
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