Title of article :
Prediction of Endpoint Phosphorus Content of Molten Steel in BOF Using Weighted K-Means and GMDH Neural Network Original Research Article
Author/Authors :
Hong-bing WANG، نويسنده , , An-jun XU، نويسنده , , Li-xiang AI، نويسنده , , Nai-yuan TIAN، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Pages :
6
From page :
11
To page :
16
Abstract :
The hybrid method composed of clustering and predicting stages is proposed to predict the endpoint phosphorus content of molten steel in BOF (Basic Oxygen Furnace). At the clustering stage, the weighted K-means is performed to generate some clusters with homogeneous data. The weights of factors influencing the target are calculated using EWM (Entropy Weight Method). At the predicting stage, one GMDH (Group Method of Data Handling) polynomial neural network is built for each cluster. And the predictive results from all the GMDH polynomial neural networks are integrated into a whole to be the result for the hybrid method. The hybrid method, GMDH polynomial neural network and BP neural network are employed for a comparison. The results show that the proposed hybrid method is effective in predicting the endpoint phosphorus content of molten steel in BOF. Furthermore, the hybrid method outperforms BP neural network and GMDH polynomial neural network.
Keywords :
endpoint phosphorus content , k-means , neural network , basic oxygen furnace , GMDH
Journal title :
Journal of Iron and Steel Research
Serial Year :
2012
Journal title :
Journal of Iron and Steel Research
Record number :
1239117
Link To Document :
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