Development of Compartment Models for Diagnostic Purposes
DOI:
https://doi.org/10.33927/hjic-2021-07Keywords:
Compartment Model, Computational Fluid Dynamics, expert system, fuzzy logicAbstract
The importance of recognizing the presence of process faults and resolving these faults is continuously increasing parallel to the development of industrial processes.
Fault detection methods which are both robust and sensitive help to recognize the presence of faults in time to avoid malfunctions, financial loss, environmental damage or loss of human life.
In the literature, the use of various model-based fault detection methods has gained a considerable degree of popularity.
Methods usually based on black-box models, data-based techniques or models using symbolic logic, e.g.\ expert systems, have become widespread.
White-box models, on the other hand, have been applied less despite their considerable robustness because of multiple reasons.
Firstly, their complexity and the relatively vast amount of technological and modelling knowledge needed to construct them for industrial systems.
Secondly, their large computational demand which makes them less suitable for online fault detection.
In this study, the aim was to resolve these problems by developing a method to simplify the complex Computational Fluid Dynamics models employed to describe the equipment used in the chemical industry into less complex model structures.
These simpler structures are Compartment Models, a type of white-box model which breaks down a complex system into smaller units with idealized behaviour.
In the case of a small number of compartments, the computational load of such models is not significant, therefore, they can be employed for the purposes of online fault detection while providing an accurate representation of the system.
For the purpose of identifying the compartmental structure, fuzzy logic was employed to create a model which approximates the real behaviour of the system as accurately as possible.
Our future objective is to explore the possibility of combining this model with various diagnostic methods (expert systems, Bayesian networks, parity relations, etc.) and derive robust tools for the purpose of fault detection.