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首页> 外文期刊>Journal of Process Control >Fault diagnosis using contribution plots without smearing effect on non-faulty variables
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Fault diagnosis using contribution plots without smearing effect on non-faulty variables

机译:使用贡献图进行故障诊断,不会对非故障变量产生拖尾效应

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摘要

Isolating faulty variables to provide additional information about a process fault is a crucial step in the diagnosis of a process fault. There are two types of data-driven approaches for isolating faulty variables. One is the supervised method, which requires the datasets of known faults to define a fault subspace or an abnormal operating region for each faulty mode. This type of approach is not practical for an industrial process, since the known event lists might not exist for some industrial processes. The counterpart is to isolate faulty variables without a priori knowledge, using, for example, a contribution plot, which is a popular tool in the unsupervised category. However, it is well known that this approach suffers from the smearing effect, which may mislead the faulty variables of the detected faults. In the presented work, a contribution plot without the smearing effect on non-faulty variables was derived based on missing data analysis. Two benchmark examples, the continuous stirred tank reactor (CSTR) and the Tennessee Eastman (TE) process, were provided to compare the fault isolation performances of the alternatives using the missing data approach.
机译:隔离故障变量以提供有关过程故障的其他信息是诊断过程故障的关键步骤。隔离故障变量有两种类型的数据驱动方法。一种是监督方法,它要求已知故障的数据集为每种故障模式定义故障子空间或异常操作区域。这种类型的方法不适用于工业过程,因为对于某些工业过程可能不存在已知事件列表。对应的方法是使用例如贡献图来隔离没有先验知识的故障变量,这是无监督类别中的一种流行工具。但是,众所周知,这种方法具有拖尾效应,这可能会误导检测到的故障的故障变量。在提出的工作中,基于缺失数据分析,得出了对非故障变量没有拖尾影响的贡献图。提供了两个基准示例,即连续搅拌釜反应器(CSTR)和田纳西伊士曼(TE)工艺,以使用缺失数据方法比较替代方案的故障隔离性能。

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