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Online Prediction Method of Molten Aluminium Height in Electrolytic Cell Based on Extreme Learning Machine with Kernel Function

Author

Listed:
  • Bin Cao
  • Jiarui Cui
  • Qing Li
  • Minggang Wang
  • Xiangquan Li
  • Qun Yan

Abstract

An online prediction method of molten aluminium height is proposed based on extreme learning machine with kernel function (K-ELM). Firstly, relevant variables that can be measured online related to aluminium liquid fluctuations were obtained by analyzing the mechanism model of aluminium liquid fluctuations. Then, the online prediction method of molten aluminium height is proposed based on kernel function and ELM, which just use the anode-cathode voltage and the anode rod current data. Finally, the data collection and experiment of 3 sets of anode rods in the 200 kA series aluminium electrolytic cells are carried out on-site. The results show that the maximum absolute error is only 0.25 cm and relative error is less than 1.4%, which satisfied the production site requirements. Compared with existing methods, it has certain advantages in real-time and prediction accuracy and meets the real-time and accuracy requirements of the actual production process on-site.

Suggested Citation

  • Bin Cao & Jiarui Cui & Qing Li & Minggang Wang & Xiangquan Li & Qun Yan, 2021. "Online Prediction Method of Molten Aluminium Height in Electrolytic Cell Based on Extreme Learning Machine with Kernel Function," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-10, June.
  • Handle: RePEc:hin:jnlmpe:9980194
    DOI: 10.1155/2021/9980194
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