...
首页> 外文期刊>Procedia Computer Science >Temporal-Fault Diagnosis for Critical-Decision Making in Discrete-Event Systems
【24h】

Temporal-Fault Diagnosis for Critical-Decision Making in Discrete-Event Systems

机译:在离散事件系统中关键决策的时间故障诊断

获取原文
           

摘要

Since its appearance in AI, model-based diagnosis is intrinsically set-oriented. Given a sequence of observations, the diagnosis task generates a set of diagnoses, or candidates, each candidate complying with the observations. What all the approaches in the literature have in common is that a candidate is invariably a set of faulty elements (components, events, or otherwise). In this paper, we consider a posteriori diagnosis of discrete-event systems (DESs), which are described by networks of components that are modeled as communicating automata. The diagnosis problem consists in generating the candidates involved in the trajectories of the DES that conform with a given temporal observation. Oddly, in the literature on diagnosis of DESs, a candidate is still a set of faulty events, despite the temporal dimension of trajectories. In our view, when dealing with critical domains, such as power networks or nuclear plants, set-oriented diagnosis may be less than optimal in explaining the supposedly abnormal behavior of the DES, owing to the lack of any temporal information relevant to faults, along with the inability to discriminate between single and multiple occurrences of the same fault. Embedding temporal information in candidates may be essential for critical-decision making. This is why a temporal-oriented approach is proposed for diagnosis of DESs, where candidates are sequences of faults. This novel perspective comes with the burden of unbounded candidates and infinite collections of candidates, though. To cope with, a notation based on regular expressions on faults is adopted. The diagnosis task is supported by a temporal diagnoser, a flexible data structure that can grow over time based on new observations and domain-dependent scenarios.
机译:自II外观以来,基于模型的诊断是内在的设置。鉴于一系列观察结果,诊断任务产生一组诊断或候选者,每个候选者符合观察结果。文献中的所有方法都是共同的,即候选者总是一组错误的元素(组件,事件或其他)。在本文中,我们考虑了对离散事件系统(DESS)的后验诊断,这些系统被建模为通信自动机的组件网络描述。诊断问题包括生成涉及DES轨迹的候选者,该候选者符合给定的时间观察。奇怪的是,在暗示Dess的诊断的文献中,尽管轨迹的时间尺寸,候选人仍然是一组错误的事件。在我们看来,在处理电力网络或核电站之类的关键域时,由于缺乏与故障相关的任何时间信息,所以面向导向的诊断可能会小于最佳的诊断。无法区分单一和多个相同故障的发生。在候选人中嵌入时间信息可能对关键决策产生至关重要。这就是为什么提出了临时患者的诊断,候选人是故障序列的原因。然而,这部小说的观点伴随着无限的候选人和无限候选人收藏品的负担。为了应对,采用了基于正则表达式对故障的表示法。诊断任务由时间诊断器支持,这是一种灵活的数据结构,可以基于新的观察和域依赖方案随时间延长。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号