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Combustion Characteristic Prediction of a Supercritical CO Circulating Fluidized Bed Boiler Based on Adaptive GWO-SVM. | LitMetric

Combustion Characteristic Prediction of a Supercritical CO Circulating Fluidized Bed Boiler Based on Adaptive GWO-SVM.

ACS Omega

Key Laboratory of Energy Conversion and Process Measurement and Control Ministry of Education, School of Energy and Environment, Southeast University, Xuanwu District, Nanjing, Jiangsu Province 210096, P.R. China.

Published: March 2023

The development of a new and efficient supercritical carbon dioxide (S-CO) power cycle system is one of the important technical ways to break through the bottleneck of coal power development, improve the efficiency of power generation, and realize energy saving and emission reduction. In order to simplify the complicated workload and save the huge time cost of numerical simulations on combustion characteristics, it is of great significance to accurately make the combustion characteristic prediction according to the operating performance of the S-CO CFB boiler. This study proposed a combustion characteristic prediction model corresponding to the S-CO CFB boiler based on the adaptive gray wolf optimizer support vector machine (AGWO-SVM). The parameters of the gray wolf optimizer algorithm were processed adaptively first combined with the boiler characteristics, and then the adaptive gray wolf optimizer algorithm was integrated with the support vector machine to solve the imbalance of local and global search problems of particles being easy to gather in a certain position in the process of pattern recognition. The novel method effectively predicts the boiler in the scaling process from the aspect of boiler capacity, optimizes the combustion characteristic expression by numerical simulations, greatly saves time cost and applicability of enlarged design by altering complex numerical simulations, and lays the application foundation of the S-CO CFB boiler in the industrial field with acceptable operation accuracy.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10034981PMC
http://dx.doi.org/10.1021/acsomega.2c07483DOI Listing

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