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Judging the States of Blast Furnace by ART2 Neural Network

机译:利用ART2神经网络判断高炉状态

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An improved unsupervised neural network of ART2 is proposed to judge the pattern of blast furnace states. In this method six variables viz. charging speed, air flow, air temperature, air pressure, permeability indices and Si composition of liquid iron are determined to express the blast furnace states in a smelting process. The values of these variables are gained from the slide windows in order to overcome their time-varying difficulty. The pattern of blast furnace states is classified by ART2's competition learning and self steady mechanics. The simulation shows this method is effective.
机译:提出了一种改进的ART2无监督神经网络来判断高炉状态模式。在该方法中,六个变量即。确定装料速度,空气流量,空气温度,气压,铁水的磁导率指数和Si组成,以表示冶炼过程中的高炉状态。这些变量的值是从滑动窗口获取的,以克服其随时间变化的困难。高炉状态的模式根据ART2的竞争学习和自我稳定机制进行分类。仿真表明该方法是有效的。

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