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A Trend Prediction Method Based on Fusion Model and its Application

机译:基于融合模型的趋势预测方法及其应用

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The change trend of silicon content in molten iron is one of the important indexes for evaluating the condition of blast furnace. An accurate is necessary to realize fine control. However, due to the closed smelting process, high temperature and other harsh environments, which makes the silicon content cannot be detected online in real time, the accurate prediction change trend is more difficult. This paper proposes a fusion model to predict the change trend of silicon content, which integrates extreme gradient boosting (XGboost) with long short-term memory (LSTM) model. Firstly, the XGboost is designed to capture the feature representation of input data, and the trend of silicon content is extracted by regression fitting in sliding window data. Then, the processed data is inputted to the two models in the first stage, and the output results as new features are inputted to the second stage to complete the training of the fusion model. The fusion model is applied to predict the change trend of silicon content in blast furnace molten iron. The validity and feasibility of the proposed model are verified by field data, and the prediction results can provide reliable reference for the blast furnace operator to judge the varying trend of furnace condition and the direction and amplitude of regulation.
机译:铁水中硅含量的变化趋势是评价高炉状态的重要指标之一。要实现精细控制,必须具有精确度。然而,由于封闭的冶炼工艺,高温等恶劣环境,使得硅含量无法实时在线检测,因此准确的预测变化趋势更加困难。本文提出了一种融合模型来预测硅含量的变化趋势,该模型将极限梯度增强(XGboost)与长短期记忆(LSTM)模型集成在一起。首先,将XGboost设计为捕获输入数据的特征表示,并通过对滑动窗口数据进行回归拟合来提取硅含量的趋势。然后,在第一阶段将处理后的数据输入到两个模型,并将作为新特征的输出结果输入到第二阶段,以完成融合模型的训练。该融合模型用于预测高炉铁水中硅含量的变化趋势。现场数据验证了该模型的有效性和可行性,预测结果可为高炉作业人员判断炉况的变化趋势以及调节的方向和幅度提供可靠的参考。

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