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An Improved Artificial Neural Network Model for Predicting Silicon Content of Blast Furnace Hot Metal 被引量:2

An Improved Artificial Neural Network Model for Predicting Silicon Content of Blast Furnace Hot Metal
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摘要 Based on the skills of initializing weight distribution, adding an impulse in a neural network and expanding the ideal of plural weights, an artificial neural network model with three connection weights between one and another neural unit was established to predict silicon content of blast furnace hot metal. After the neural network was trained in the off-line state on the basis of a large number of practical data of a commercial blast furnace and making many learning patterns, satisfactory testing and simulating results of the model were obtained. Based on the skills of initializing weight distribution, adding an impulse in a neural network and expanding the ideal of plural weights, an artificial neural network model with three connection weights between one and another neural unit was established to predict silicon content of blast furnace hot metal. After the neural network was trained in the off-line state on the basis of a large number of practical data of a commercial blast furnace and making many learning patterns, satisfactory testing and simulating results of the model were obtained.
出处 《International Journal of Minerals,Metallurgy and Materials》 SCIE EI CAS CSCD 2000年第4期269-272,共4页 矿物冶金与材料学报(英文版)
关键词 blast furnace silicon content neural network Metallurgy blast furnace silicon content neural network Metallurgy
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