Research Article

A Condition Monitoring Method of Hydraulic Gear Pumps Based on Multilevel Mechanism-Data Fusion

Table 6

Results of cross-validation of SVC models.

KernelChannelHyperparametersAccuracyPrecisionRecallF1-scoreSuccessful proportion

SVC1 linear kernel0.85190.90.750.818225/27
0.88890.84620.91670.8800
0.88890.84620.91670.8800
Voted/0.92590.91670.91670.9167

SVC2 polynomial kernel
0.74070.72730.66670.695722/27

0.88890.84620.91670.8800

0.85190.78570.91670.8462
Voted/0.81480.76920.83330.8

SVC3 Gaussian kernel
0.85191.00.66670.823/27

0.88890.84620.91670.8800

0.85190.83330.83330.8333
Voted/0.85190.83330.83330.8333

SVC4 sigmoid kernel
0.85190.83330.83330.833323/27

0.92591.00.83330.9091

0.85190.83330.83330.8333
Voted/0.85190.83330.83330.8333

SVC5 Laplacian kernel
0.81480.88890.66670.761923/27

0.85190.83330.83330.8333

0.88890.84620.91670.8800
Voted/0.85190.83330.83330.8333