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A Sliding-Window T-S Fuzzy Neural Network Model for Prediction of Silicon Content in Hot Metal

机译:一种滑动窗口T-S模糊神经网络模型,用于预测热金属中的硅含量

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Iron making in blast furnace is one of the most complicated industrial processes, especially in its dynamics, inertial properties and multi-scale availabilities. Over the years, researchers have been using silicon content to judge the temperature and the conditions within the blast furnace due to the complexity in measuring the actual status that results from extreme temperatures and intricate environment. Addressing these limitations, a sliding-window Takagi-Sugeno fuzzy neural network (SW-TS FNN) model is proposed to predict the silicon content in hot metal. Through the sliding of a proper width of the sliding-window, the train data for T-S fuzzy neural network (FNN) model can be updated at desired time increments, giving the latest prediction of silicon content. Compared to a simple T-S FNN model on the prediction of silicon content, this SW-TS FNN model shows great improvement at hit rate and mean-square error.
机译:高炉中的铁制造是最复杂的工业过程之一,尤其是其动态,惯性性能和多种尺度可用性。多年来,研究人员一直在使用硅含量来判断高炉内的温度和条件由于测量来自极端温度和复杂环境产生的实际状态的复杂性。解决这些限制,提出了一种滑动窗口Takagi-Sugeno模糊神经网络(SW-TS FNN)模型,以预测热金属中的硅含量。通过滑动窗口的适当宽度的滑动,可以以所需的时间增量更新T-S模糊神经网络(FNN)模型的列车数据,以期望的时间增量,提供硅内容的最新预测。与在硅含量预测的简单T-S FNN模型相比,该SW-TS FNN模型在命中率和平均误差时显示出很大的改善。

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