Abstract:For spiral bevel gears widely used in various fields of industrial engineering, the vibration signal is greatly disturbed by environmental noise. When the fault occurs, the signal exhibits nonlinear, nonstationary characteristics, the fault feature information is weak, the fault feature extraction is difficult, and the diagnostic efficiency is low. Therefore, a spiral bevel gear state recognition method based on MPELPP and ELM is proposed. Firstly, construct multiscale entropy values as the original highdimensional feature vectors, then use LPP to obtain the optimal lowdimensional sensitive feature vectors by reducing the original highdimensional feature vectors, which can mine and preserve the nonlinear structural features of the original highdimensional features. The obtained sensitive feature quantity is input into the ELM for recognition diagnosis. The method is applied to the diagnosis of four kinds of fault state spiral bevel gears under three kinds of speeds, and compared with MPEPCAELM and MPEELM. The results prove the accuracy and superiority of the proposed method.