MONITORING OF AN INDUSTRIAL DEAROMATISATION PROCESS
S. Bergman1, M. Sourander1, S-L. Jämsä-Jounela2
1 Neste Engineering Oy, P.O. Box 310, FIN-06101 Porvoo, Finland
2 Laboratory of Process Control and Automation, Helsinki University of Technology, P.O. Box 6100, FIN-02015 HUT, Finland
Process monitoring methods have been studied widely in recent years, and several industrial applications have been published. Early detection and identification of abnormal and undesired process states and equipment failures are essential requirements for safe and reliable processes. This helps to reduce the amount of production losses during abnormal events. In this paper, statistical multivariate methods and neural networks applied in monitoring of an industrial dearomatisation process are compared. No appriori process knowledge for the methods were assumed. The data for the comparison were generated with a dynamic simulator model of the process. Special emphasis was put on a case of internal leak in a heat exchanger.
Keywords: Fault diagnosis, Neural networks, Statistical process control, Chemical industry
Session slot T-Mo-M21: Posters of Industrial Applications/Area code 7a : Chemical Process Control

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