For the complex industrial process, it has become increasingly challenging to effectively diagnose complicated faults. In this paper, a combined measure of the original Support Vector Machine (SVM) and Principal Component Analysis (PCA) is provided to carry out the fault classification, and compare its result with what is based on SVM-RFE (Recursive Feature Elimination) method. RFE is used for feature extraction, and PCA is utilized to project the original data onto a lower dimensional space. PCA<mml:math xmlns:mml="http://www.w3.org/1998/Math/MathML" id="M1"><mml:mrow><mml:msup><mml:mi>T</mml:mi><mml:mn>2</mml:mn></mml:msup></mml:mrow></mml:math>, SPE statistics, and original SVM are proposed to detect the faults. Some common faults of the Tennessee Eastman Process (TEP) are analyzed in terms of the practical system and reflections of the dataset. PCA-SVM and SVM-RFE can effectively detect and diagnose these common faults. In RFE algorithm, all variables are decreasingly ordered according to their contributions. The classification accuracy rate is improved by choosing a reasonable number of features.
Viraj Karambelkar, M. M. Kasliwal, N. Blagorodnova, J. Sollerman, Robert Aloisi, Shreya Anand, Igor Andreoni, Thomas G. Brink, R. Bruch, D. Cook, Kaustav K. Das, Kishalay De, A. J. Drake, Alexei V Filippenko, C. Fremling, G. Hélou, Anna Y. Q. Ho, J. Jencson, David Jones, Russ R. Laher, Frank J. Masci, Kishore C. Patra, Josiah Purdum, Alexander Reedy, Tawny Sit, Y. Sharma, Anastasios Tzanidakis, Stéfan van der Walt, Yuhan Yao, Chaoran Zhang
Jehyun Kim, Himanshu Dev, Amit Shaer, Ravi Kumar, Alexey Ilin, A. Haug, Shelly Iskoz, Kenji Watanabe, Takashi Taniguchi, David F. Mross, Ady Stern, Yuval Ronen
Discussion(0)
No comments yet. Be the first to comment.