Author/Authors :
Sanders, D. School of Mechanical & Design Engineering - University of Portsmouth, Portsmouth, PO1 2UP, UK. , Thabet,M. School of Mechanical & Design Engineering - University of Portsmouth, Portsmouth, PO1 2UP, UK , Becerra, V. School of Energy & Electronic Engineering - University of Portsmouth, Portsmouth, PO1 2UP, UK
Abstract :
This paper investigates the design of a classifier that effectively identifies undesired events by detecting patterns in the pressure
signal of a compressed air system using a continuous wavelet transform. The pressure signal of a compressed air system carries
useful information about operational events. These events form patterns that can be used as ‘signatures’ for event detection. Such
patterns are not always apparent in the time domain and hence the signal was transformed to the time-frequency domain. Data was
collected using an industrial compressed air system with load/unload control. Three different operating modes were considered: idle,
tool activation , and faulty. The wavelet transforms of the pressure signal revealed unique features to identify events within each
mode. A neural network classifier was created to detect faulty compressed air system behaviourbehaviour. Future work will
investigate the detection of more faults and using other classification algorithms.