Multiple faults diagnosability of Hybrid Systems

G. Fourlas
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引用次数: 6

Abstract

Many diagnosis approaches are based in the assumption of single faults. This assumption may result to erroneous diagnosis statement in case where multiple faults occurs. Thereby multiple fault diagnosis is a challenging task especially in the control of large scale complex systems that can be viewed as hybrid systems. This owed to the fact that multiple faults are hard to detect because there consequences can mask or compensate to each other. The goal is to detect multiple faults as early as possible and provide a timely warning. A key issue is to prevent local faults to be developed into system failures that may cause safety hazards, stop temporarily the production and possible detrimental environment impact. In this work we introduce the notion of multiple faults diagnosability of Hybrid Systems in the framework of Hybrid Input Output Automata (HIOA). We present a methodology for detection of multiple faults imposing the condition for a Hybrid System to be diagnosable. This approach is applicable to a wide rage of systems since Hybrid Systems involve both continuous and discrete dynamics. The proposed method is tested via a simple application to a two tank system.
混合动力系统的多故障可诊断性
许多诊断方法都是基于单一故障的假设。这种假设可能会导致多故障情况下的错误诊断陈述。因此,多故障诊断是一项具有挑战性的任务,特别是在可视为混合系统的大型复杂系统的控制中。这是因为多个错误很难检测到,因为它们的后果可以相互掩盖或补偿。目标是尽可能早地检测多个故障并提供及时的警告。一个关键的问题是防止局部故障发展为系统故障,可能造成安全隐患,暂时停止生产和可能的有害环境影响。本文在混合输入输出自动机(HIOA)框架下引入了混合系统多故障可诊断性的概念。我们提出了一种检测多重故障的方法,这些故障是混合系统可诊断的条件。这种方法适用于广泛的系统,因为混合系统既包括连续动力学也包括离散动力学。通过对双罐系统的简单应用验证了所提出的方法。
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