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A multi-objective optimization and analysis model of the sintering process based on BP neural network is presented. Genetic algorithms are combined to simplify the BP neural network, which can reduce the learning time and increase the forecasting accuracy of the network model. This model has been experimented in the sintering process, and the production cost, the energy consumption, the quality (revolving intensity), and the output are considered at the same time. Moreover, the relation between some factors and the multi-objectives has been analyzed, and the results are consistent with the process. Different objectives are emphasized at different practical periods, and this can provide a theoretical basis for the manager.

参考文献

[1] LIU Hong-lin;BAO Hong.Artificial Intelligence Optimization in Chemical and Metallurgical Process[M].北京:冶金工业出版社,1999
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[3] FAN Xiao-hui;HUANG Tian-fei .Application of Adaptive Forecasting in Sintering Process[J].Journal of Sinter and Pellet,1996,8(07):5-8.
[4] WEN Xin.Application Design of MATLAB Neural Network[M].北京:科学出版社,2000
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