非平稳过程根源定位的时变参数稀疏因果分析方法

Pengyu Song, Chunhui Zhao, Biao Huang, Jinliang Ding
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引用次数: 0

摘要

根本原因诊断(RCD)是维持工业过程安全运行的一项重要技术。传统的RCD方法通常需要平稳性假设。但由于工况的切换等因素,过程不可避免地呈现出非平稳性。虽然以前有一些研究试图克服非平稳性的挑战,但这些方法不能保证提取的因果关系的显著性,并导致冗余关系。针对上述问题,本研究提取了一个参数时变的稀疏因果分析模型。首先,我们提出了一个端到端的信息融合和预测任务,以表征变量之间的预测关系,避免重复建模。其次,为信息融合机制设计时变参数,以应对非平稳性,并通过稀疏参数更新自动识别显著因果关系。我们设计了一种约束梯度信息的更新策略以保证稀疏性。最后,对时变预测关系构建因果度量,全面获得整体因果关系,进一步保证因果显著性。通过某火电厂的实际工业实例,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse Causality Analysis Approach with Time-varying Parameters for Root Cause Localization of Nonstationary Process
Root cause diagnosis (RCD) is an important technique for maintaining the safe operation of industrial processes. Traditional RCD methods usually require stationarity assumptions. However, the process inevitably shows nonstationarity due to factors such as switching of operating conditions. Although there have been some previous studies trying to overcome the challenge of nonstationarity, these methods fail to guarantee the significance of the extracted causalities and lead to redundant relationships. To address the above issues, a sparse causal analysis model with time-varying parameters is extracted in this study. First, we propose an end-to-end information fusion and prediction task to characterize predictive relationships between variables and avoid repeated modeling. Second, we design time-varying parameters for the information fusion mechanism to cope with nonstationarity and automatically identify significant causality through sparse parameter updates. We design an update strategy that constrains the gradient information to guarantee sparsity. Finally, a causal metric is constructed for the time-varying predictive relationship to comprehensively obtain the overall causal relationship, which further guarantees causal significance. The validity of the proposed method is illustrated through a real industrial example collected from a thermal power plant.
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