Building knowledge from plant operating data for process improvement applications

M. , Ramasamy and H., Zabiri and T. D. , Lemma and R. B., Totok and M., Osman (2009) Building knowledge from plant operating data for process improvement applications. In: 3rd International R & D Forum on Oil, Gas and Petrochemical, 25-27 May 2009, KL.

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Abstract

Large amounts of data collected and stored in process control computers are rich in information but poor in knowledge. Careful and systematic selection and analysis of data can provide more insight (knowledge) into the equipment/process. This knowledge in the form of mathematical models (empirical or semi-empirical) provide the basis for the process improvement applications such as system identification for control, process monitoring, fault detection, soft sensor development, etc. In this paper, four case studies have been presented to illustrate the potential for building knowledge from plant operating data using multivariate statistical analysis and neural networks. In the first case study, a MIMO parsimonious orthonormal basis filter based prediction model has been developed for a pilot scale distillation column. The second example illustrates the detection of control valve stiction using nonlinear principal component analysis (NLPCA) using data collected from an operating plant. In the third example, data from a refinery crude preheat train is analyzed for monitoring the thermal efficiency of the heat exchangers and a fouling prediction model was developed. The last case study illustrates the development of a soft sensor in a pilot scale distillation column. In conclusion, the potential of historical operating data in providing information to build knowledge which in turn can be used for the process operational excellence has been demonstrated.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: Megavariate data, prediction model, fault detection, process monitoring, soft sensor, neural networks
Subjects: T Technology > TP Chemical technology
Departments / MOR / COE: Departments > Chemical Engineering
Depositing User: Haslinda Zabiri
Date Deposited: 28 Dec 2010 07:06
Last Modified: 20 Mar 2017 01:56
URI: http://scholars.utp.edu.my/id/eprint/3761

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