Optimal performance of controllers and control loops is crucial for process
economy, quality and safety in chemical plants. Industrial statistics show
that often a significant percentage of them are performing sub-optimally a
t any given time. Effective realtime monitoring of control loops is a diffi
cult task as there may be dozens of loops to monitor in a typical process.
In addition, abnormal or suboptimal performance is often not apparent under
cursory inspection. Hence, automated approaches for the realtime monitorin
g of control loop performance is of considerable interest. In this paper. w
e propose an automated qualitative shape analysis (QSA) formalism for detec
ting and diagnosing different kinds of oscillations in control loops. We ex
tend our earlier QSA methodology to make it more robust by developing an al
gorithm for automatic identification of the appropriate global time-scales.
We demonstrate this formalism on three case studies to detect and diagnose
control loop oscillations. (C) 2001 Published by Elsevier Science Ltd.