会议专题

Information Fusion Fault Prediction Method Based on Multi-Class Support Vector Machines

In this paper, a novel fault prediction method is proposed for complicated equipments, which extracts features by energy comparing method and realizes pattern recognition by multi-class support vector machines (SVM). Firstly, signal features are extracted by energy comparing method, which combines multi-resolution analysis of wavelet packets and energy spectrum. Through three scales wavelet packet decomposition, it takes energy as the feature vector of element, and establishes corresponding relations between feature and fault state. Then, using the experimental data and Riemannian geometry analysis of kernel function, an improved RBF is obtained as a new kernel function for the multi-class SVM. Conformal function of the kernel function is expressed by Euclidean distance in improved RBF, which can decrease the number of support vectors and reduces the workload, and it can fit the actual problems nicely. Finally, the multi-class SVM is adopted to realize fault information character-level fusion and pattern recognition for complicated equipments. Samples of some kinds of engine fault prediction are verified, and the result proves this method is effective and commendable.

SVM feature extraction information fusion fault prediction

Kang Jian Zuo Xianzhang Tang Liwei Wang Changlong

Ordnance Engineering College,Shijiazhuang 050003 China

国际会议

第八届国际电子测量与仪器学术会议(Proceedings of 2007 8th International Conference on Electronic Measurement & Instruments)

西安

英文

2007-08-16(万方平台首次上网日期,不代表论文的发表时间)