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Prediction of Blast Furnace Temperature Based on Multi-information Fusion of Image and Data

机译:基于图像和数据多信息融合的高炉温度预测

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Tuyere CCD images reflect the thermal state of Blast Furnace (BF) hearth and represent its temperature change. It is the most direct and timely information when blast furnace operators judge the furnace temperature. However, early furnace temperature prediction models have not considered the tuyere images, whose prediction precision is lower. This paper collects a steel mill's 2500 m3 blast furnace online data and its tuyere images, establishes time series neural network models based on multi-information fusion, which compares with other three different models only based on BF data. The simulation results prove that tuyere images can effectively improve the realtime and the precision of the hearth temperature prediction model.
机译:风口CCD图像反映了高炉炉膛的热状态并表示其温度变化。这是高炉操作员判断炉温时最直接,最及时的信息。但是,早期的炉温预测模型并未考虑风口图像,而风口图像的预测精度较低。本文收集了一家钢铁厂的2500 m 3 高炉在线数据及其风口图像,建立了基于多信息融合的时间序列神经网络模型,并与仅基于高炉数据的其他三种不同模型进行了比较。仿真结果表明,风口图像可以有效提高炉膛温度预测模型的实时性和准确性。

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