基于改进NSGA-II算法的铝电解工艺参数优化
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1.贵州大学 大数据与信息工程学院, 贵州 贵阳 550025 ;2.中铝智能科技发展有限公司, 浙江 杭州 311100

作者简介:

叶娇(1999—),女,苗族,贵州遵义人,硕士研究生,研究方向为铝工业大数据。

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中图分类号:

TF821;TP391

基金项目:

贵州省科技计划项目(黔科合支撑[2023]一般326)


Optimisation of aluminium electrolysis process parameters based on improved NSGA-II algorithm
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1.College of Big Data and Information Engineering, Guizhou University, Guiyang 550025 , China ;2.Chalco Intelligent Technology Development Co., Ltd., Hangzhou 311100 , China

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    摘要:

    为提高电能的利用效率,降低铝电解的能耗,根据贵州某铝厂真实的生产数据,通过灰色关联分析法来选取影响铝电解能耗较大的7个参数(槽电压U、电解温度Tb、下料间隔tNB、铝水平hm、电解质水平hg、分子比rm和出铝量q),构建了以最大电流效率和最小吨铝能耗为多目标的铝电解工艺参数优化模型。采用改进非支配排序遗传算法(NSGA-II),对比分析了60组实际值与传统NSGA-II算法及改进NSGA-II算法理论值的差异,使用30组实际生产数据验证了算法性能,利用MATLAB软件迭代计算得到了帕累托前沿。结果表明,改进NSGA-II算法最优的一组电流效率为95.66%,吨铝能耗为 12424.54kWh;与传统NSGA-II算法相比,电流效率提升了0.31%,吨铝能耗降低了22.11kWh,达到节能降耗效果,验证了改进NSGA-II算法在提高铝电解工艺参数优化方面的有效性和适用性,可为铝电解节能优化和生产设计等提供参考。

    Abstract:

    To improve the utilization efficiency of electric energy and reduce the energy consumption of aluminium electrolysis,according to the real production data of an aluminium plant in Guizhou, the optimization model of aluminium electrolysis process parameters was constructed with the multi-objective of maximum current efficiency and minimum tonne of aluminium energy consumption by using the grey correlation analysis method to select the seven parameterswith significant impact, including cell voltage (U), electrolysis temperature (Tb), feed interval (tNB), aluminium level (hm), electrolyte level (hg), molecular ratio (rm) and out aluminum (q). The improved Non-dominated Sorting Genetic Algorithm (NSGA-II) was used to compare and analyse the differences between 60 sets of actual values and the theoretical values of the traditionaland improved NSGA-II algorithm, the performance of the algorithm was verified using 30 sets of actual production data, and the Pareto front was obtained by iterative calculations using MATLAB software. The results show that the optimal set of current efficiency of the improved NSGA-II algorithm is 95.66%, and the energy consumption of tonnes of aluminium is 12424.54kW·h; compared with the traditional NSGA-II algorithm, the current efficiency is improved by 0.31%, and the energy consumption of tonnes aluminium is reduced by 22.11kW·h, which achieves the effect of energy saving and consumption reduction, and verifies the effectiveness and applicability of the improved NSGA-II algorithm in improving the optimization of the process parameters of aluminium electrolysis. It verifies the effectiveness and applicability of the improved NSGA-II algorithm in improving the optimization of aluminium electrolysis process parameters, and can provide reference suggestions for the optimization of aluminium electrolysis energy saving and production design.

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叶娇,徐杨,曹斌. 基于改进NSGA-II算法的铝电解工艺参数优化[J].中国有色冶金,2024,53(5):8-16.

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  • 收稿日期:2024-09-25
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  • 在线发布日期: 2025-12-21
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