基于主成分分析的过程故障检测与重构

Ruosen Qi, Jie Zhang
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引用次数: 2

摘要

现有的故障重建方法在处理不涉及控制回路的传感器故障时非常有效,因为传感器故障的方向通常很容易确定。然而,对于包含控制回路的过程故障或传感器故障,由于故障方向向量通常难以确定,因此实现故障重建方法非常具有挑战性。过程故障通常会对多个过程变量产生不同程度的影响。介绍了一种基于主成分分析(PCA)的过程故障重构方法。采用主成分分析法对历史过程数据进行故障分析,提取故障方向,用于故障重建。在模拟连续搅拌槽式反应器上进行了验证。
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Process Fault Detection and Reconstruction by Principal Component Analysis
Existing fault reconstruction methods are very effective in dealing with sensor faults not involved in control loops where the fault direction is usually easy to determine. However, implementing fault reconstruction methods for process faults or sensor faults involved with control loops is quite challenging as the fault direction vectors are usually difficult to specify. Process faults usually affect a number of process variables with various extents. This paper introduces a principal component analysis (PCA) based fault reconstruction method for process faults. PCA is used to analyze historical process data with faults to extract fault directions, which are then used for fault reconstruction. The proposed method is demonstrated on a simulated continuous stirred tank reactor.
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