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Optimization for NOx Prediction Model from Boilers Based on GSA-PELM |
NIU Pei-feng,SHI Chun-jian,LIU Nan,CHANG Ling-fang,ZHANG Xian-chen |
Key Lab of Industrial Computer Control Engineering of Hebei Province, Yanshan University, Qinhuangdao, Hebei 066004, China |
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Abstract As to precisely predict the NOx emission from boiler,an integrated modeling method was establisbcd based on gravitation search algorithm (GSA) and parallel extreme learning machine (PELM),and used the model to forecast the power plant boiler NOx emission concentration.As the generalization ability and accuracy of PELM rely on the choice of weight,using the gravitation search algorithm optimization PELM weights.Test sample data were collected in a coal-fired power plant 300 MW circulating fluidized bed boiler under different conditions,the simulation consequences showed that compared with PELM model,ELM model,GSA-LSSVM and GSA-ELM model,GSA-PELM model the accuracy could be improved by more than 9 orders of magnitude and can be used more effectively and accurately to predict NOx emission concentration of boilers in thermal power plants.
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Received: 26 May 2017
Published: 05 September 2018
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Fund:the National Natural Science Foundation of China |
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