A Novel Fault Diagnosis Approach Integrated LRKPCA with AdaBoost.M2 for Industrial Process

Yuan Xu, Xue Jiang, Qun Zhu, Yanlin He, Yang Zhang, Mingqing Zhang
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Abstract

Facing the safety problems in industrial process, how to effectively diagnose process faults has become quite necessary and important. In this paper, a novel fault diagnosis approach integrated local reconstructed kernel principal component analysis(LRKPCA) with AdaBoost.M2 is proposed. Firstly, kernel principal component analysis(KPCA) is adopted to extract the global features through non-linear projection transformation. And local feature extraction based on t-distributed stochastic neighbor embedding(TSNE) is realized by minimizing the similarity of probability distribution of samples in high-dimensional space and low-dimensional space. Secondly, LRKPCA-based feature extraction method is proposed, in which the reconstruction error is calculated based on local features and mapped to the global feature space so that data dimension is reduced through coordinate reconstruction. Thirdly, AdaBoost.M2 is adopted to establish multi-classification model to realize fault diagnosis. Finally, the experimental results based on Tennessee Eastman process(TEP) show that the proposed method has higher diagnosis accuracy.
一种集成LRKPCA和AdaBoost的故障诊断方法。工业过程M2
面对工业过程中的安全问题,如何有效地诊断过程故障变得十分必要和重要。本文将局部重构核主成分分析(LRKPCA)与AdaBoost相结合,提出了一种新的故障诊断方法。提出了M2。首先,采用核主成分分析(KPCA),通过非线性投影变换提取全局特征;通过最小化样本在高维空间和低维空间的概率分布的相似性,实现基于t分布随机邻居嵌入(TSNE)的局部特征提取。其次,提出了基于lrkpca的特征提取方法,该方法基于局部特征计算重构误差,并映射到全局特征空间,通过坐标重构降低数据维数;第三,演算法。采用M2建立多分类模型,实现故障诊断。最后,基于田纳西伊士曼过程(Tennessee Eastman process, TEP)的实验结果表明,该方法具有较高的诊断准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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