Title :
Fault Isolation of Nonlinear Processes Based on Fault Directions and Features
Author :
Yingwei Zhang ; Nan Yang ; Shipeng Li
Author_Institution :
State Lab. of Synthesis Autom. of Process Ind., Northeastern Univ., Shenyang, China
Abstract :
In this brief, a new fault isolation method is proposed. The disadvantages of the conventional contribution plot method are: 1) the fault cannot be identified accurately due to process control and recycle loops in process flowsheets. To overcome this disadvantage, the fault-relevant-independent components (ICs) are extracted in this brief, which clearly represent different fault feature and 2) the conventional fault identification method is not available for the nonlinear process. In this brief, the nonlinear fault direction information is extracted. Then, the fault isolation method in the nonlinear process is proposed, where the historical fault information is used to build the model. The proposed method is applied to a simple nonlinear process and the electro-fused magnesia process. Compared with IC analysis (ICA) method and kernel ICA method, the results clearly show the effectiveness of the proposed method.
Keywords :
fault diagnosis; independent component analysis; state estimation; IC analysis; conventional contribution plot method; electro-fused magnesia process; fault features; fault identification method; fault-relevant-independent component extraction; historical fault information; kernel ICA method; kernel-independent component analysis; nonlinear fault direction information extraction; nonlinear process fault isolation method; process control; process flowsheets; recycle loops; Data mining; Feature extraction; Furnaces; Kernel; Matrix decomposition; Monitoring; Principal component analysis; Fault detection; fault isolation; kernel-independent component analysis (KICA); nonlinear process; reconstruction; reconstruction.;
Journal_Title :
Control Systems Technology, IEEE Transactions on
DOI :
10.1109/TCST.2013.2283925