Magenetic Tile Fault Detecion of High Voltage Electitric Machine: A
consistent soft-label-based Multi-view feature selection Method
Abstract
The detection of high voltage permanent magnet motors has always been a
big problem due to the interference of high voltage and magnetic field
on the diagnosis. Especially the magenetic tile of the motor, the
failure of the magenetic tile will directly lead to the operation
failure of the motor. We propose Multi-view Unsupervised Consistent
Soft-label Feature Selection(MUCSFS). This method constructed consistent
pseudo-labels through soft labels of clustering affinity of each view
sample and constructed the model by integrating selection constraints
into the mapping model. This model is used to filter the fault data set
to get the feature subset, and the feature subset is used to cluster. We
verify the effectiveness of the method by simulating multi-view data and
through the fault clustering experiment of the magnetic tile fault data
set of high voltage motor, it is confirmed that our method can
effectively cluster the fault categories.