Integrated Approach of Gearbox Fault Diagnosis
This work addresses gearbox maintenance to prevent failures and financial losses in industrial systems, but it appears incremental as it builds on existing methods like support vector machines with a new preprocessing step.
The paper tackles gearbox fault diagnosis by introducing a nonparametric data preprocessing technique called calculus enhanced energy operator (CEEO) to handle noisy vibration signals, and uses a multiclass support vector machine for fault classification, showing promising results for online condition monitoring.
Gearbox fault diagnosis is one of the most important parts in any industrial systems. Failure of components inside gearbox can lead to a catastrophic failure, uneven breakdown, and financial losses in industrial organization. In that case intelligent maintenance of the gearbox comes into context. This paper presents an integrated gearbox fault diagnosis approach which can easily deploy in online condition monitoring. This work introduces a nonparametric data preprocessing technique i.e., calculus enhanced energy operator (CEEO) to preserve the characteristics frequencies in the noisy and inferred vibrational signal. A set of time domain and spectral domain features are calculated from the raw and CEEO vibration signal and inputted to the multiclass support vector machine (MCSVM) to diagnose the faults on the system. An effective comparison between raw signal and CEEO signal are presented to show the impact of CEEO in gearbox fault diagnosis. The obtained results of this work look very promising and can be implemented in any type of industrial system due to its nonparametric nature.