Aiming at the difficulty of features extraction of rotating mechanical equipments, a fault diagnosis method based on the entropy-manifold feature and salp swarm optimization support vector machine (SSO-SVM) was proposed.First, the improved multiscale weighted permutation entropy (IMWPE) was utilized to extract fault features of the mechanical equipment under different working conditions.Then, the S-Isomap, as a manifold learning method, was employed to reduce the dimension, and obtain the low-dimensional entropy-manifold feature set.Finally, the entropy-manifold features were input into a SSO-SVM multi-fault classifier for identification and diagnosis.The experimental results of the planetary gearbox fault diagnosis show that the IMWPE+S-Isomap entropy-manifold feature extraction method is superior to the existing entropy-based feature extraction methods of multiscale permutation entropy (MPE), multiscale weighted permutation entropy (MWPE) and IMWPE.It is also more advantageous than the existing entropy-manifold feature extraction methods of IMWPE+isometric mapping (Isomap) and IMWPE+linear local tangent space alignment (LLTSA).The salp swarm algorithm is better than the particle swarm algorithm, gray wolf algorithm, artificial bee colony algorithm and bat algorithm for the optimization of support vector machine parameters.The proposed fault diagnosis method has a diagnostic accuracy of 100%, which can effectively examine the types of working conditions of planetary gearboxes.
王振亚,姚立纲,蔡永武,张俊. 基于熵-流特征和樽海鞘群优化支持向量机的故障诊断方法[J]. 振动与冲击, 2021, 40(6): 107-114.
WANG Zhenya,YAO Ligang,CAI Yongwu,ZHANG Jun. Fault diagnosis method based on the entropy-manifold feature and SSO-SVM. JOURNAL OF VIBRATION AND SHOCK, 2021, 40(6): 107-114.
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