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The Research on Finish Rolling Temperature Prediction Based on Deep Belief Network

机译:基于深度信仰网络的结束轧制温度预测研究

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A method based on deep belief network (DBN) is proposed in this paper to improve the accuracy of finish rolling temperature prediction in the finish rolling temperature control system. DBN is composed of a plurality of restricted Boltzmann machines (RBM) and a top-level BP neural network. Taking into account the factors affecting the finish rolling temperature and the practical production requirements, 10 input layer parameters are set in this model, and the output layer parameter is the finish rolling temperature. Unsupervised training for restricted Boltzmann machines and the reversed fine-tuning of the entire network is obtained by 1300 sets of finishing data. After simulation, the absolute error fluctuation range of the predicted temperature is less than 8°C, and its prediction accuracy is higher than that obtained from the traditional temperature calculation formula, thus the proposed method can be used for the finish rolling temperature prediction.
机译:本文提出了一种基于深度信仰网络(DBN)的方法,提高了轧辊温度控制系统中结束轧制温度预测的精度。 DBN由多个受限Boltzmann机器(RBM)和顶级BP神经网络组成。考虑到影响结束轧制温度的因素和实际生产要求,在该型号中设置了10个输入层参数,输出层参数是结束轧制温度。通过1300组精加工数据获得无限制的Boltzmann机器和逆转微调的无监督培训和整个网络的反转微调。在模拟之后,预测温度的绝对误差波动范围小于8°C,其预测精度高于传统温度计算公式获得的预测精度,因此该方法可用于结束轧制温度预测。

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