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Decentralized Monitoring of Dynamic Processes Based on Dynamic Feature Selection and Informative Fault Pattern Dissimilarity

机译:基于动态特征选择和信息故障模式相异性的动态过程分散监控

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摘要

Although decentralized modeling has been widely employed in monitoring large-scale processes, the dynamic property in process data is rarely investigated. Meanwhile, fault diagnosis in a way similar to pattern recognition is still challenging. To handle these issues, a dynamic decentralized fault detection and diagnosis framework based on dynamic feature selection and informative fault pattern (IFP) dissimilarity is presented. The proposed method accounts explicitly for the dynamic property in process data, while handling the challenging fault diagnosis task at the same time. First, a dynamic feature selection method is proposed to interpret the dynamic relations through characterizing the auto- and cross-correlation for each variable individually. As a consequence, multiblocks are derived for decentralized modeling and monitoring purposes. Second, a novel classification-based fault diagnosis approach on the basis of the dissimilarity analysis and filtered monitoring statistics (termed as IFP) is formulated. This sort of method can be feasible even in a condition that the training samples for each reference fault class are insufficient and also overlapped with each other. Finally, the salient performance in terms of fault detection and recognition capabilities that can be achieved is validated by two simulated examples. The comparisons clearly demonstrate the superiority and feasibility of the proposed monitoring scheme.
机译:尽管分散建模已广泛用于监视大型过程,但很少研究过程数据中的动态特性。同时,以类似于模式识别的方式进行故障诊断仍然具有挑战性。为了解决这些问题,提出了一种基于动态特征选择和信息故障模式(IFP)差异性的动态分散式故障检测与诊断框架。所提出的方法明确地考虑了过程数据中的动态特性,同时处理了具有挑战性的故障诊断任务。首先,提出了一种动态特征选择方法,通过表征每个变量的自相关和互相关来解释动态关系。结果,导出多块以用于分散建模和监视目的。其次,在差异分析和过滤后的监测统计数据(称为IFP)的基础上,提出了一种基于分类的故障诊断新方法。即使在每个参考故障类别的训练样本不足并且彼此重叠的情况下,这种方法也是可行的。最后,通过两个仿真示例验证了可以实现的故障检测和识别能力方面的显着性能。比较清楚地表明了所提出的监测方案的优越性和可行性。

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