Evaluation of two Algorithms for Change Detection Based on Vibration Signals Processing
Resumen
Change detection and diagnosis are important activities and research
directions, in the field of system engineering and conditional maintenance of the
equipment and industrial processes. The processed signals are coming from vibration
generated by incipient faults in mechanical structures, e.g. bearings. Classical
algorithms based on various version of CUSUM do not have enough performances to
use intensively in real industrial application. The present work considers two new
algorithms for change detection working on real industrial data of radial bearings. One
is based on classical CUSUM criterion applied to the Renyi entropy. The second one is
based on energy processing distributed over time-frequency region. The algorithms are
tested on real recorded data. The results indicate good behavior and performance of the
proposed algorithms, and define the rationale to implement them in commercial
software product for change detection and diagnosis.