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Data-driven fault diagnosis and prognosis for process faults using principal component analysis and extreme learning machine

机译:使用主成分分析和极限学习机的流程故障的数据驱动故障诊断和预后

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This paper presents a data-driven fault diagnosis and prognosis method for multi-dimensional process faults. Fault detection is carried out using a principal component analysis (PCA) model of the normal process operation data. Fault diagnosis is carried out using the fault reconstruction approach. A method for formulating the fault direction matrix for process faults is proposed. The first loading vector from the PCA model of the fault data is used to construct the fault direction matrix. The reconstructed fault magnitudes are then used to develop data-driven fault prognosis models. Both linear autoregressive models and extreme learning machine (ELM) models are developed for fault prognosis. However, linear autoregressive models fail to give acceptable long range prediction. ELM models can give accurate long range predictions of fault magnitudes and can be used in process fault prognosis. The proposed methods are demonstrated on a simulated continuous stirred tank reactor process.
机译:本文介绍了多维过程故障的数据驱动故障诊断和预后方法。 使用正常过程操作数据的主成分分析(PCA)模型进行故障检测。 使用故障重建方法进行故障诊断。 提出了一种用于制定用于过程故障的故障方向矩阵的方法。 来自故障数据的PCA模型的第一装载矢量用于构造故障方向矩阵。 然后使用重建的故障幅度来开发数据驱动的故障预后模型。 线性自回归模型和极端学习机(ELM)模型是用于故障预后的。 但是,线性自回归模型不能给予可接受的长距离预测。 ELM模型可以提供最大的故障大小的长距离预测,可用于工艺故障预后。 所提出的方法在模拟的连续搅拌釜反应器工艺上证明。

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