Research Article

Rolling Bearing Fault Diagnosis Based on Sensitive Feature Transfer Learning and Local Maximum Margin Criterion under Variable Working Condition

Figure 16

The curve representation of diagnosis results obtained by OFS-TSFRS-LMMC-SVM using DTCWPT with different dimension sizes for LMMC. The LMMC (5) represents that the number of dimension size is 5.
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