首页|Prediction for permeability index of blast furnace based on VMD-PSO-BP model

Prediction for permeability index of blast furnace based on VMD-PSO-BP model

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The permeability index is one of the important production indicators to monitor the operation of blast furnace.It is crucial to grasp the trends of changes in the new permeability index in time.For the complex vibration spectrum of the permeability index,a prediction model of the permeability index based on the VMD-PSO-BP(variational mode decomposition-particle swarm optimization-back propagation)method was proposed.Firstly,the key factors that affect the permeability index of blast furnace were studied from multiple perspectives.Then,the permeability index was divided into multiple sub-modes based on the difference of frequency bands by the VMD algorithm,and a PSO-BP prediction model was established for each sub-mode.Finally,the prediction results of each sub-mode were summed to obtain the final one.The results show that the composite prediction accuracy by using the VMD algorithm is 3%higher than that of the traditional prediction method,which has better applicability.

Big dataBlast furnaceAir permeabilityVariational mode decompositionParticle swarm optimizationBack propagationModel prediction

Xiao-jie Liu、Yu-jie Zhang、Xin Li、Zhi-feng Zhang、Hong-yang Li、Ran Liu、Shu-jun Chen

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School of Metallurgy and Energy,North China University of Science and Technology,Tangshan 063210,Hebei,China

Chengde Branch,HBIS Group Co.,Ltd.,Chengde 067000,Hebei,China

National Natural Science Foundation of China Youth Fund Project

52004096

2024

钢铁研究学报(英文版)
钢铁研究总院

钢铁研究学报(英文版)

CSTPCD
影响因子:0.584
ISSN:1006-706X
年,卷(期):2024.31(3)
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