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Evaluation of Scheme Design of Blast Furnace Based on Artificial Neural Network 被引量:3

Evaluation of Scheme Design of Blast Furnace Based on Artificial Neural Network
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摘要 Blast furnace scheme design is very important, since it directly affects the performance, cost and configuration of the blast furnace. An evaluation approach to furnace scheme design was brought forward based on artificial neural network. Ten independent parameters which determined a scheme design were proposed. The improved threelayer BP network algorithm was used to build the evaluation model in which the 10 independent parameters were taken as input evaluation indexes and the degree to which the scheme design satisfies the requirements of the blast furnace as output. It was trained by the existing samples of the scheme design and the experts' experience, and then tested by the other samples so as to develop the evaluation model. As an example, it is found that a good scheme design of blast furnace can be chosen by using the evaluation model proposed. Blast furnace scheme design is very important, since it directly affects the performance, cost and configuration of the blast furnace. An evaluation approach to furnace scheme design was brought forward based on artificial neural network. Ten independent parameters which determined a scheme design were proposed. The improved threelayer BP network algorithm was used to build the evaluation model in which the 10 independent parameters were taken as input evaluation indexes and the degree to which the scheme design satisfies the requirements of the blast furnace as output. It was trained by the existing samples of the scheme design and the experts' experience, and then tested by the other samples so as to develop the evaluation model. As an example, it is found that a good scheme design of blast furnace can be chosen by using the evaluation model proposed.
出处 《Journal of Iron and Steel Research(International)》 SCIE EI CAS CSCD 2008年第3期1-4,36,共5页 钢铁研究学报(英文版)
基金 Provincial Natural Science Foundation of Sichuan Province of China (04JY029-003-2)
关键词 blast furnace artificial neural network scheme design blast furnace artificial neural network scheme design
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