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Dynamic Uncertain Causality Graph Applied to Dynamic Fault Diagnoses and Predictions With Negative Feedbacks

机译:动态不确定因果图应用于带有负反馈的动态故障诊断和预测

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摘要

Intelligent systems are desired in dynamic fault diagnoses for large and complex systems such as nuclear power plants. Dynamic uncertain causality graph (DUCG) is such a system presented previously. This paper extends the DUCG methodology to deal with negative feedbacks, which is one of the most difficult problems in fault diagnosis, and predicts the fault development online. Two methods are presented. One does not involve causality propagation across time slices. Another involves causality propagation through time slices. A nuclear power plant simulator located at Tsinghua University is used to test the DUCG methodology. A typical experiment involving negative feedback is given, which jointly applies the methods separately presented in different papers, such as how to deal with dynamic fault diagnosis and directed cyclic graphs (DCGs), and the methods presented in this paper. Results show that DUCG is powerful in knowledge representation, diagnosing possible faults, and predicting developments of faults. It also demonstrates that DUCG is robust, which means that the DUCG inference does not rely much on the accuracy of probability parameters. The logics of diagnoses and predictions are graphically displayed, so that users know not only inference results, but also why they are correct.
机译:对于大型复杂系统(例如核电站)的动态故障诊断,需要智能系统。动态不确定因果图(DUCG)是先前提出的这种系统。本文扩展了DUCG方法来处理负反馈,这是故障诊断中最困难的问题之一,并且可以在线预测故障的发展。介绍了两种方法。一个不涉及因果关系跨时间片的传播。另一个涉及因果关系通过时间片的传播。位于清华大学的核电站模拟器用于测试DUCG方法。给出了一个涉及负反馈的典型实验,该实验联合应用了不同论文中分别介绍的方法,例如如何处理动态故障诊断和有向循环图(DCG),以及本文中介绍的方法。结果表明,DUCG在知识表示,诊断可能的故障以及预测故障的发展方面具有强大的功能。它也证明了DUCG是鲁棒的,这意味着DUCG推断并不太依赖概率参数的准确性。诊断和预测的逻辑以图形方式显示,以便用户不仅知道推断结果,而且知道为什么正确。

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