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首页> 外文期刊>Cybernetics, IEEE Transactions on >Fault Diagnosis in Discrete-Event Systems with Incomplete Models: Learnability and Diagnosability
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Fault Diagnosis in Discrete-Event Systems with Incomplete Models: Learnability and Diagnosability

机译:具有不完整模型的离散事件系统中的故障诊断:易学性和可诊断性

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摘要

Most model-based approaches to fault diagnosis of discrete-event systems require a complete and accurate model of the system to be diagnosed. However, the discrete-event model may have arisen from abstraction and simplification of a continuous time system, or through model building from input-output data. As such, it may not capture the dynamic behavior of the system completely. In a previous paper, we addressed the problem of diagnosing faults given an incomplete model of the discrete-event system. We presented the learning diagnoser which not only diagnoses faults, but also attempts to learn missing model information through parsimonious hypothesis generation. In this paper, we study the properties of learnability and diagnosability. Learnability deals with the issue of whether the missing model information can be learned, while diagnosability corresponds to the ability to detect and isolate a fault after it has occurred. We provide conditions under which the learning diagnoser can learn missing model information. We define the notions of weak and strong diagnosability and also give conditions under which they hold.
机译:离散事件系统故障诊断的大多数基于模型的方法都需要要诊断的系统的完整而准确的模型。但是,离散事件模型可能来自连续时间系统的抽象和简化,或者来自输入输出数据的模型构建。因此,它可能无法完全捕获系统的动态行为。在先前的论文中,我们解决了在离散事件系统模型不完整的情况下诊断故障的问题。我们提出了一种学习诊断器,它不仅可以诊断故障,而且还尝试通过简化的假设生成来学习缺失的模型信息。在本文中,我们研究了可学习性和可诊断性的属性。可学习性涉及是否可以学习丢失的模型信息的问题,而可诊断性则对应于故障发生后对其进行检测和隔离的能力。我们提供学习诊断者可以学习缺少的模型信息的条件。我们定义了弱可诊断性和强可诊断性的概念,并给出了它们所适用的条件。

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