基于DA-LSTM神经网络的铝电解过热趋势识别

Ye Zhu, Shiwen Xie, Yongfang Xie, Xiaofang Chen
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引用次数: 0

摘要

过热度是铝电解生产中电解液温度与初晶温度之差,关系到生产中的物理场、电流效率和电解槽寿命等重要指标。因此,通过对过热度的监测和识别,可以合理调整铝电解过程中的各种参数和下料,使过热度保持在合理稳定的范围内,对整个铝电解槽的高效运行具有重要意义。目前,已有不少学者对过热度的识别进行了研究,并取得了一定的准确性,但对过热度变化趋势的识别研究还很少。因此,本文通过挖掘铝电解生产过程中各种数据的时间序列信息,采用具有双阶段注意机制的长短期记忆(LSTM)算法(DA-LSTM)对过热趋势进行分类识别。DA-LSTM的第一阶段引入输入特征关注,以增加更多相关特征的权重。第二阶段引入时间步长关注,对不同的时间步长进行加权。最后,通过与其他方法的比较,验证了该方法的有效性,具有较高的精度。
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Recognition of aluminum electrolysis overheat trend based on DA-LSTM Neural Network
Superheat is the difference between the temperature of electrolyte and the temperature of primary crystal in aluminum electrolysis production, which is related to the physical field, current efficiency and electrolytic cell life and other important indicators in production. Therefore, by monitoring and identifying the degree of superheat, various parameters and blanking in the aluminum electrolysis process can be reasonably adjusted to keep the degree of superheat within a reasonable and stable range, which is of great significance to the efficient operation of the entire aluminum electrolysis cell. At present, many scholars have studied the identification of superheat and achieved a certain accuracy, but there are stiff few studies on the identification of the trend of superheat change. Therefore, in this paper, by mining the time sequence information of various data in the production process of aluminum electrolysis, the Long Short Term Memory (LSTM) algorithm with dual-stage attention mechanism (DA-LSTM) is used to classify and identify the superheat trend. The first stage of DA-LSTM introduces input feature attention to increase the weight of more relevant features. In the second stage, time step attention is introduced, and different time steps are weighted. Finally, the effectiveness of this method is verified by comparing with other methods, and it has higher accuracy.
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