Optimization of distribution control system in oil refinery by applying hybrid machine learning techniques
In this research, prediction of crude oil cuts from the first stage of refining process field is laid out using rough set theory (RST) based adaptive neuro-fuzzy inference system (ANFIS) soft sensor model to enhance the performance of oil refinery process. The RST was used to reduce the fuzzy rule...
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Main Authors: | , , , , |
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Format: | Article |
Published: |
Institute of Electrical and Electronics Engineers
2021
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Online Access: | http://psasir.upm.edu.my/id/eprint/94458/ https://ieeexplore.ieee.org/document/9646957 |
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Summary: | In this research, prediction of crude oil cuts from the first stage of refining process field is
laid out using rough set theory (RST) based adaptive neuro-fuzzy inference system (ANFIS) soft sensor
model to enhance the performance of oil refinery process. The RST was used to reduce the fuzzy rule sets
of ANFIS model, and its features in the decision table. Also, discretisation methods were used to optimise
the continuous data’s discretisation. This helps to predict the two critical variables of light naphtha product:
Reid Vapor Pressure (RVP) and American Petroleum Institute gravity (API gravity), which detect the cut’s
quality. Hence, a real-time process of Al Doura oil refinery is examined and the process data of refining crude
oil from these two sources improve the knowledge provided by the data. The response variables represent
the feedback measured value of cascade controller in the top of the splitter in crude distillation unit (CDU)
in the rectifying section, which controls the reflux liquid’s flow towards the splitter’s head. The proposed
adaptive soft sensor model succeeded to fit the results from laboratory tests, and a steady-state control system
was achieved through an embedded virtual sensor. The predictive control system has been employed using
cascade ANFIS controller in parallel with the soft sensor model to keep the purity of the distillate product
in the stated range of the quality control of oil refinery. The results obtained from the proposed ANFIS
based cascade control have no over/undershoots, and the rise time and settling time are improved by 26.65%
and 84.63%, respectively than the conventional proportional-integral-derivative (PID) based cascade control.
Furthermore, the results of prediction and control model are compared with those of other machine learning
techniques. |
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