Industrial & Engineering Chemistry Research | 2019

Improving Root Cause Analysis by Detecting and Removing Transient Changes in Oscillatory Time Series with Application to a 1,3-Butadiene Process

 
 
 
 
 

Abstract


Oscillations occurring in industrial process plants often reflect the presence of severe disturbances affecting process operations. Accurate detection and root-cause analysis of oscillations is of great interest for the economic viability of the process operation. Standard oscillation detection and root cause analysis methods require a large enough number of data samples. Unrelated transient changes superimposed on the oscillation pattern reduce the number of useful data samples. The present paper proposes simple heuristic methods to effectively detect and remove two types of transient changes from oscillatory signals, namely step changes and spikes. The proposed methods are used to preprocess oscillatory time series. The accuracy gained when using autocorrelation function method for oscillation detection (Thornhill, N. F.; Huang, B.; Zhang, H. J. Process Control 2003, 13, 91–100) and transfer entropy method for oscillation propagation (Bauer, M.; Cox, J. W.; Caveness, M. H.; Downs, J. J.; Thornhill, N. F...

Volume 58
Pages 11234-11250
DOI 10.1021/ACS.IECR.8B06138
Language English
Journal Industrial & Engineering Chemistry Research

Full Text