Aiming at the new challenges in efficiency and reliability in the field of fault diagnosis in recent years
a coarsefine fault diagnosis method for induction motors based on the symmetrized dot pattern(SDP)was proposed.In this method
firstly
the vibration signals of each faulty motor were converted into snowflake images by SDP method
and then a two-stage fault diagnosis framework of coarse-fine classification was designed for image feature extraction and classification.In the coarse classification stage
the color histogram features and the support vector machine(SVM)were used to diagnose the samples
and a threshold was selected to determine the samples for the coarse classification.In the fine classification stage
Gist features that can extract image details and SVM were used to diagnose the remaining samples.Experimental results show that the proposed method combines the advantages of color histogram features and Gist features
can achieve the most reliable diagnosis with relatively high efficiency