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冗余传感器架构中的降级检测。

Degradation Detection in a Redundant Sensor Architecture.

机构信息

Pro2Future GmbH, 8010 Graz, Austria.

Institute of Technical Informatics, Graz University of Technology, 8010 Graz, Austria.

出版信息

Sensors (Basel). 2022 Jun 20;22(12):4649. doi: 10.3390/s22124649.

Abstract

Safety-critical automation often requires redundancy to enable reliable system operation. In the context of integrating sensors into such systems, the one-out-of-two (1oo2) sensor architecture is one of the common used methods used to ensure the reliability and traceability of sensor readings. In taking such an approach, readings from two redundant sensors are continuously checked and compared. As soon as the discrepancy between two redundant lines deviates by a certain threshold, the 1oo2 voter (comparator) assumes that there is a fault in the system and immediately activates the safe state. In this work, we propose a novel fault prognosis algorithm based on the discrepancy signal. We analyzed the discrepancy changes in the 1oo2 sensor configuration caused by degradation processes. Several publicly available databases were checked, and the discrepancy between redundant sensors was analyzed. An initial analysis showed that the discrepancy between sensor values changes (increases or decreases) over time. To detect an increase or decrease in discrepancy data, two trend detection methods are suggested, and the evaluation of their performance is presented. Moreover, several models were trained on the discrepancy data. The models were then compared to determine which of the models can be best used to describe the dynamics of the discrepancy changes. In addition, the best-fitting models were used to predict the future behavior of the discrepancy and to detect if, and when, the discrepancy in sensor readings will reach a critical point. Based on the prediction of the failure date, the customer can schedule the maintenance system accordingly and prevent its entry into the safe state-or being shut down.

摘要

安全关键型自动化通常需要冗余以实现可靠的系统运行。在将传感器集成到此类系统的上下文中,二取二(1oo2)传感器架构是确保传感器读数的可靠性和可追溯性的常用方法之一。在采用这种方法时,两个冗余传感器的读数会持续进行检查和比较。只要两个冗余线路之间的差异超过一定的阈值,1oo2 投票器(比较器)就会假定系统出现故障,并立即激活安全状态。在这项工作中,我们提出了一种基于差异信号的新型故障预测算法。我们分析了退化过程对 1oo2 传感器配置中差异的影响。我们检查了几个公开可用的数据库,并分析了冗余传感器之间的差异。初步分析表明,传感器值差异(增加或减少)随时间而变化。为了检测差异数据的增加或减少,我们提出了两种趋势检测方法,并对其性能进行了评估。此外,我们还在差异数据上训练了几个模型。然后比较这些模型,以确定哪种模型最适合描述差异变化的动态。此外,我们还使用最佳拟合模型来预测差异的未来行为,并检测传感器读数的差异何时以及何时会达到临界点。基于对失效日期的预测,客户可以相应地安排维护系统,防止其进入安全状态或被关闭。

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