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Model Development for On-line Predicting Final Carbon Content of 0Cr18Ni9 Stainless Steel |
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Abstract An on-line predicting model used to predicting final carbon oontent of 0Cr18Ni9 stainless steel has been developed based on artificial neural network technology. 58 heats were on-line predicted by this model, the result show that the hitting rate within a tolerance of ±0.015% carbon content can reach 89.66%.
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Received: 04 November 2009
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