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Establishment and Optimization of Gas Flow Prediction Model for Annealing Furnace Based on GA-SVM

机译:基于GA-SVM的退火炉燃气流量预测模型的建立与优化

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T0616. The temperature accuracy of the steel coil is directly affected the production quality of the steel plate. In the annealing furnace temperature control system, strip temperature control is mainly decided by various furnace annealing furnace gas flow in the area, so setting up a precise model between gas flow and temperature has become an important problem of the control system of annealing furnace. In this paper, SVM is applied to the prediction model of the gas flow in the annealing furnace since it's suitable for nonlinear and high dimensional problems as a machine learning method. In view of that the choice of C, G and the model parameters of the SVM directly affect the prediction precision of the model, this paper uses GA to optimize these two parameters. Finally, we use the data of field production as training and testing samples to establish and verify the model. The experimental results showed that the established model well achieved the requirements of the accuracy of the target.
机译:T0616。钢卷的温度精度直接影响钢板的生产质量。在退火炉温度控制系统中,带钢温度控制主要取决于该区域内各种炉型退火炉的气体流量,因此建立精确的气体流量和温度模型已成为退火炉控制系统的重要问题。本文将SVM应用于退火炉中气流的预测模型,因为它适合作为机器学习方法来解决非线性和高维问题。鉴于C,G和支持向量机模型参数的选择直接影响模型的预测精度,本文采用遗传算法对这两个参数进行优化。最后,我们使用现场生产的数据作为训练和测试样本来建立和验证模型。实验结果表明,所建立的模型很好地满足了目标精度的要求。

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