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ASFC-based DNN Modeling for Prediction of Silicon Content in Blast Furnace Ironmaking

机译:基于ASFC的DNN建模预测高炉炼铁中的硅含量

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The real-time and accurate prediction of the silicon content in the blast furnace (BF) plays an important role in controlling the temperature of the BF and stabilizing the BF condition. As the BF system model continuously changes during the smelting process, a single model may not be able to fully represent the complex operating conditions of the BF. For this reason, this paper establishes a distributed neural network model based on online adaptive semi-fuzzy clustering algorithm (ASFC-DNN) to predict the silicon content in molten iron in hope of reasonable BF control guidance. The model adopts an online self-adaptive semi-fuzzy clustering learning algorithm (ASFC) which can reflect the fuzzy clustering characteristics of BF production data. Through the hybrid clustering of production data, a distributed neural network sub-model is established for the decomposition of complex conditions. ASFC also updates the production data category to update the network parameters of the distributed neural network, and the reliable network structure for the current input production data is obtained to predict the silicon content. The performance of the ASFC-DNN is compared with the BPNN and ordinary elmanNN, and the ASF C-DNN's hit rate and RMSE are better than that of other models. The study found that the ASFC-DNN model has more stable prediction errors and higher prediction accuracy than the above models. On-site experiments demonstrate that the ASFC-DNN model has higher accuracy and better tracking performance and it provides reliable silicon content for operators.
机译:高炉(BF)中硅含量的实时,准确预测在控制高炉温度和稳定高炉条件方面起着重要作用。由于高炉系统模型在冶炼过程中不断变化,因此单个模型可能无法完全代表高炉的复杂运行条件。因此,本文建立了基于在线自适应半模糊聚类算法(ASFC-DNN)的分布式神经网络模型,以预测铁水中的硅含量,以期有合理的高炉控制指导。该模型采用在线自适应半模糊聚类学习算法(ASFC),可以反映高炉生产数据的模糊聚类特征。通过生产数据的混合聚类,建立了用于分解复杂条件的分布式神经网络子模型。 ASFC还更新生产数据类别以更新分布式神经网络的网络参数,并获得当前输入生产数据的可靠网络结构以预测硅含量。将ASFC-DNN的性能与BPNN和普通elmanNN进行了比较,并且ASF C-DNN的命中率和RMSE优于其他模型。研究发现,与上述模型相比,ASFC-DNN模型具有更稳定的预测误差和更高的预测精度。现场实验表明,ASFC-DNN模型具有更高的精度和更好的跟踪性能,并且为操作员提供了可靠的硅含量。

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