Thermal control of coke furnace by data-driven approach

•A net coking time (NCT) control using locally weighted regression was developed.•The NCT control algorithm was validated by simulation using 1D transient model.•An operation guidance system using the developed control algorithm was implemented.•In a real plant, the variance of NCT was reduced by th...

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Bibliographic Details
Published inDigital Chemical Engineering Vol. 2; p. 100010
Main Authors Hashimoto, Yoshinari, Kase, Hiroto
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.03.2022
Elsevier
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Summary:•A net coking time (NCT) control using locally weighted regression was developed.•The NCT control algorithm was validated by simulation using 1D transient model.•An operation guidance system using the developed control algorithm was implemented.•In a real plant, the variance of NCT was reduced by the developed guidance system.•The operation guidance system reduced the fuel consumption and CO2 emissions. To achieve efficient and stable coke furnace operation, we developed an operation guidance system to reduce the variance of net coking time (NCT). A control algorithm that predicts the future NCT by locally weighted regression using the individual chamber database and adjusts the fuel gas flow rate was constructed. After a simulation validation using a newly developed one-dimensional transient model, the operation guidance system based on the developed control algorithm was implemented in a real plant. As a result, the root mean square (RMS) of the control error of NCT was reduced by 0.12 h, and the combustion chamber temperature was reduced by 28.8°C. The developed operation guidance system contributed to the reduction of fuel consumption and CO2 emission of the coke furnace.
ISSN:2772-5081
2772-5081
DOI:10.1016/j.dche.2022.100010