电池电阻斜率结合LVQ神经网络预测阳极效应

Kaibo Zhou, Zhikai Lin, Deng Yu, Bin Cao, Ziqian Wang, Sihai Guo
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引用次数: 11

摘要

阳极效应的控制是铝电解生产中的一个重要环节。针对铝电解中阳极效应预测的传统方法存在的不足,本文结合电解槽电阻斜率和学习向量量化(LVQ)神经网络两种方法对阳极效应进行预测。首先,根据电池电阻的斜率进行阳极效应的第一次预测。之后,不准确的数据应该被重新预测。第二次预测分为两步,一是利用周期图从细胞电阻信号中估计功率谱,二是利用LVQ神经网络对阳极效应进行重新预测,因为频带的能量作为神经网络的输入特征变量,从而提高了预测的精度。结果表明,仅对电池电阻信号进行研究,提前10分钟预测阳极效应的成功率可达85%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cell resistance slope combined with LVQ neural network for prediction of anode effect
It is an important part in aluminum electrolysis production to control the anode effect (AE). Since there are some shortcomings in traditional methods of anode effect prediction in aluminum electrolysis, this paper combined two methods, the slope of cell resistance and learning vector quantization (LVQ) neural network, to predict anode effect. First of all, the first prediction of anode effect will be conducted based on the slope of cell resistance. Afterwards, the inaccurate data are supposed to be re-predicted. The second prediction consists of two steps, one is to estimate the power spectrum from the signal of cell resistance by means of periodogram, the other is to re-predict the anode effect with the LVQ neural network, since the energy of frequency bands are served as the input feature variables of neural network, so as to raise the accuracy of prediction. It turned out that the success rate of ten-minute in advance prediction for anode effect can be above 85%, though just cell resistance signal is studied.
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