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Using BP Neural Network to Predict the Sinter Comprehensive Performance: Tfe and Fuel Consumption

机译:使用BP神经网络预测烧结综合性能:TFE和燃料消耗

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The principal objective of blast furnace is to produce high quality molten iron at a high rate with a low consumption. It is very important to control sinter chemical composition and comprehensive performance. This is because the sinter is the main raw material for ironmaking. In this paper, a predictive system for sinter chemical composition TFe and the solid fuel consumption was established based on BP neural network, which was trained by actual production data. The MATLAB m file editor was used to write code directly in this paper. Practical application shows the applications of the system not only can reduce the work difficulty of technical personnel, but also can improve the hit ratio of production index and the productivity.
机译:高炉的主要目的是以低消耗量的高速率生产高质量的铁水。控制烧结化学成分和综合性能非常重要。这是因为烧结是炼铁的主要原料。本文基于BP神经网络建立了一种用于烧结化学成分TFE的预测系统,由BP神经网络建立,由实际生产数据训练。 MATLAB M文件编辑器用于直接在本文中编写代码。实际应用表明,系统的应用不仅可以减少技术人员的工作难度,还可以提高生产指数的命中率和生产力。

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