Correcting Domain Shifts in Electric Motor Vibration Data for Unseen Operating Conditions
Abstract
This paper addresses the problem of domain shifts in electric motor vibration
data created by new operating conditions in testing scenarios, focusing on
bearing fault detection and diagnosis (FDD). The proposed method combines the
Harmonic Feature Space (HFS) with regression to correct for frequency and
energy differentials in steady-state data, enabling accurate FDD on unseen
operating conditions within the range of the training conditions. The HFS
aligns harmonics across different operating frequencies, while regression
compensates for energy variations, preserving the relative magnitude of
vibrations critical for fault detection. The proposed approach is evaluated on
a detection problem using experimental data from a Belt-Starter Generator (BSG)
electric motor, with test conditions having a minimum 1000 RPM and 5 Nm
difference from training conditions. Results demonstrate that the method
outperforms traditional analysis techniques, achieving high classification
accuracy at a 94% detection rate and effectively reducing domain shifts. The
approach is computationally efficient, requires only healthy data for training,
and is well-suited for real-world applications where the exact application
operating conditions cannot be predetermined.