A hybrid kernel PCA, hypersphere SVM and extreme learning machine approach for nonlinear process online fault detection

Mengqi Ni, Jingjing Dong, Tianzhen Wang, Diju Gao, Jingang Han, M. Benbouzid
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引用次数: 1

Abstract

This paper presents a hybrid approach for online fault detection in nonlinear processes. To solve the possible monitoring difficulties caused by nonlinear characteristics of industrial process data, two applications of the Kernel Method: Hypersphere Support Vector Machine (HSSVM) and Kernel Principal Component Analysis (KPCA) are used as fault detection methods. On top of that, to obtain the adaptive models for online monitoring and fault detection in unsteady-stage conditions, instead of the static ones established by traditional HSSVM and KPCA, multiple methods are adopted, including Recursive KPCA, Adaptive Control Limit (ACL) and Online Sequential Extreme Learning Machine (OS-ELM), all of which update the detection model in real time with dynamically adjusting. The T2 control limit of Recursive KPCA, the classification hyperspheres of HSSVM and the single hidden layer feedforward network (SLFN) trained with OS-ELM work collaboratively in monitoring the real time process data to detect the possible faults. The proposed approach was tested and validated via a set of experimental data collected from a bearing test rig. Experimental results show that this approach is adequate for fault detection while meets the needs of real time performance.
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一种混合核主成分分析、超球支持向量机和极限学习机的非线性过程在线故障检测方法
提出了一种用于非线性过程在线故障检测的混合方法。为了解决工业过程数据的非线性特性可能带来的监测困难,采用核方法的两种应用:超球支持向量机(HSSVM)和核主成分分析(KPCA)作为故障检测方法。在此基础上,采用递归KPCA、自适应控制极限(ACL)和在线顺序极限学习机(OS-ELM)等多种方法,对检测模型进行实时更新和动态调整,获得了非稳态状态下在线监测和故障检测的自适应模型,取代了传统HSSVM和KPCA建立的静态模型。递归KPCA的T2控制极限、HSSVM的分类超球和OS-ELM训练的单隐层前馈网络(SLFN)协同工作,实时监测过程数据,检测可能出现的故障。通过从轴承试验台收集的一组实验数据对所提出的方法进行了测试和验证。实验结果表明,该方法在满足实时性要求的前提下,能够很好地进行故障检测。
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