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Application of Signed Directed Graph Based Fault Diagnosis of Atmospheric Distillation Unit

机译:基于符号有向图的常压蒸馏装置故障诊断应用

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Significant research has been done in the past 30 years to use signed directed graph (SDG) for process fault diagnosis. However, due to non-unified SDG models for control loops, highly complex and integrated nature of chemical processes, few of SDG based methods has been applied in the real chemical processes. In this paper, SDG based deep knowledge modeling and bidirectional inference algorithms are introduced. With the algorithms a SDG based fault diagnosis and decision support system is developed and applied in fault diagnosis for an atmospheric distillation unit of a large-scale refining plant in China. The results prove that the SDG based fault diagnosis and decision support system can not only arrive at the fundamental requirement of diagnosis: correctness, completeness and real-timed, but also provide decision support for operators to decrease the possibility of unscheduled shut-down or more serious accident due to abnormal situation.
机译:在过去的30年中,已经进行了大量研究来使用带符号有向图(SDG)进行过程故障诊断。但是,由于用于控制回路的非统一SDG模型,化学过程的高度复杂性和集成性,因此很少将基于SDG的方法应用于实际化学过程。本文介绍了基于SDG的深度知识建模和双向推理算法。利用该算法,开发了基于SDG的故障诊断与决策支持系统,并将其应用于中国大型炼油厂常压蒸馏装置的故障诊断中。结果证明,基于SDG的故障诊断和决策支持系统不仅可以达到诊断的基本要求:正确性,完整性和实时性,还可以为操作员提供决策支持,以减少意外停机或更多停机的可能性。因异常情况造成的严重事故。

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