会议专题

Fault Pattern Classification of Turbine-generator Set Based on Artificial Neural Network

By combining wavelet analysis and fuzzy theory, a new approach is presented for vibration fault diagnosis of rotating machine. The wavelet transform has become a powerful alternative for the analysis of nonstationary signals whose spectral characteristics are changing over time, since the widely used spectral analysis method provides only the frequency contents of the signals without providing the time localizations of the observed frequency components. A novel method based on the statistic rule is brought forward to determine the threshold of each order of wavelet space and the decomposition level adaptively, increasing the signal-noise-ratio and improving the performance of a traditional fault diagnosis method. The fuzzy wavelet basis functions can be specified by experts as traditional fuzzy systems. Furthermore, the architecture of wavelet fuzzy network can provide at least the same order of approximation error as neural networks. The improved least squares algorithm is employed to achieve the network parameters and the robustness of neural network is discussed. The practical diagnosis process for rotor vibration demonstrates that the wavelet fuzzy network can provide an effective way to diagnosis faults for turbo-generator set in power system, increasing the accuracy of the fault diagnosis for rotating machinery.

wavelet transform fuzzy theory fault diagnosis rotating machine statistic rule approximation error network robustness

Yan Li Baohe Yang Zhian Wang Xuhui Wang

Handan College, Handan, China Tianjin University of Technology, Tianjin, China

国际会议

The 2010 International Conference on Computer Application and System Modeling(2010计算机应用与系统建模国际会议 ICCASM 2010)

太原

英文

157-159

2010-10-22(万方平台首次上网日期,不代表论文的发表时间)