会议专题

Fault Prognosis of Wind Turbine Gearbox Based on Dual Wavelet Neural Network

The gearbox is one of the critical components in a wind turbine, which is responsible for about 15~20% of its maintenance costs. It?ˉs very necessary to predict gear degradation development and judge the fault type which can help us to make a maintenance program previously. As a common spectrum analysis method, Fourier transform can extract the useful fault information of wind turbine gearbox. Wavelet Neural Network (WNN) has been proposed as a strategy for the non-stationary signal processing and represents powerful ability in fault prediction. In this paper, the relation matrix between critical gearbox fault and vibration frequency is summarized. Based on the relation matrix, three faults and normal condition of gearbox are simulated as the experimental sample. Then, amplitudes of main frequency are extracted by spectrum analysis. The amplitudefrequency data are not stationary and Dual Wavelet Neural Network (DWNN) is applied for prognosis based on these data. Finally, DWNN is compared with WNN and the prognosis result is presented.

Gearbox Spectrum Dwnn Prognosis

Yongshan Ding Dongxiang Jiang Qian Huang Liangyou Hong

Department of Thermal Engineering, Tsinghua University, Beijing 100084, China.

国际会议

the 3rd World Congress on Engineering Asset Management andIntelligent Maintenance Systems(第三届世界工程资产管理及智能维修学术大会)

北京

英文

413-420

2008-10-27(万方平台首次上网日期,不代表论文的发表时间)