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Diagnosability Analysis Based on Component-Supported Analytical Redundancy Relations

机译:基于组件支持的解析冗余关系的可诊断性分析

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摘要

It is commonly accepted that the requirements for maintenance and diagnosis should be considered at the earliest stages of design. For this reason, methods for analyzing the diagnosability of a system and determining which sensors are needed to achieve the desired degree of diagnosability are highly valued. This paper clarifies the different diagnosability properties of a system and proposes a model-based method for: 1) assessing the level of discriminability of a system, i.e., given a set of sensors, the number of faults that can be discriminated, and its degree of diagnosability, i.e., the discriminability level related to the total number of anticipated faults; and 2) characterizing and determining the minimal additional sensors that guarantee a specified degree of diagnosability. The method takes advantage of the concept of component-supported analytical redundancy relation, which considers recent results crossing over the fault detection and isolation and diagnosis communities. It uses a model of the system to analyze in an exhaustive manner the analytical redundancies associated with the availability of sensors and performs from that a full diagnosability assessment. The method is applied to an industrial smart actuator that was used as a benchmark in the Development and Application of Methods for Actuator Diagnosis in Industrial Control Systems European project
机译:公认的是,应在设计的最早阶段就考虑维护和诊断的要求。由于这个原因,用于分析系统的可诊断性并确定需要哪些传感器来实现所需的可诊断性的方法的价值很高。本文阐明了系统的不同可诊断性,并提出了一种基于模型的方法,用于:1)评估系统的可分辨性,即给定一组传感器,可区分的故障数及其程度可诊断性,即与预期故障总数相关的可分辨性水平; 2)表征并确定可确保指定程度可诊断性的最少附加传感器。该方法利用了组件支持的分析冗余关系的概念,该关系考虑了跨越故障检测,隔离和诊断社区的最新结果。它使用系统模型来详尽分析与传感器可用性相关的分析冗余,并从中进行全面的可诊断性评估。该方法适用于工业智能执行器,在工业控制系统欧洲项目执行器诊断方法的开发和应用中用作基准

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