主成分分析
支持向量机
故障检测与隔离
核主成分分析
人工智能
模式识别(心理学)
计算机科学
子空间拓扑
核(代数)
特征提取
残余物
梳理
断层(地质)
核方法
数学
算法
地图学
组合数学
地震学
地质学
执行机构
地理
作者
Chun Yang,Lujing Tao,Jian Zhang,Xingtai Gui,Jiyang Zhang,Jianxiao Zou,Shicai Fan
标识
DOI:10.23919/acc50511.2021.9482824
摘要
With the stable and safe requirement in the industrial technology, the fault detection, has attracted more and more attention from both scholars and companies. To make full use of the linear and non-linear features for fault detection, a method named deep extended principal component analysis - support vector machine (Deep EPCA-SVM) was proposed by combing the PCA and kernel PCA with the deep structure. Both the PCA and kernel PCA were iteratively implemented in the principle subspace and residual subspace for the extraction of linear and non-linear features. The offline model was built and applied to monitor the fault of Tennessee-Eastman process. The validation performances indicated that our proposed model outperformed the traditional PCA and PCA-SVM model, and showed higher fault detection rate than the deep DPCA-SVM.
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