基于LMD与PSO-ELM的铜电解槽极板短路故障诊断研究
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沈阳工业大学 电气工程学院, 辽宁 沈阳 110870

作者简介:

郭志伟(2000—),男,硕士,研究领域为在线监测与故障诊断。

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中图分类号:

TF811

基金项目:

辽宁省“揭榜挂帅”科技重大专项项目(2022JH1/10400045)


Research on Short Circuit Faults Diagnosis of Copper Electrolytic Cell Plates Based on LMD and PSO-ELM
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School of Electrical Engineering, Shenyang University of Technology,Shenyang 110870 ,China

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    摘要:

    铜电解过程中频繁发生由阴阳极板短接引起的短路故障,导致大量电能损失。针对此问题,选取电解槽电压信号作为分析对象,通过深入分析短路发生前后电解槽电压信号的变化特征,提出了一种结合局部均值分解(LMD)算法和粒子群优化极限学习机(PSO-ELM)的短路故障诊断方法。首先,利用局域均值分解(LMD)技术将原始信号分解为多个纯调幅调频分量(PF),基于皮尔逊相关系数选取前3个PF分量作为主分量,并计算主分量的相对能量和总能量作为能量特征。针对极限学习机(ELM)在隐含层节点数量方面需求较多的局限性,采用粒子群优化算法(PSO)进行参数优化。随后,将提取的特征值输入优化后的PSO-ELM模型中,以实现对短路故障的识别,并通过现场采集数据进行实验验证。研究结果表明,采用局部均值分解(LMD)与粒子群优化(PSO)相结合的极限学习机(ELM)模型,在电解槽短路故障诊断中的准确率可达91.09%,相对于单一ELM诊断模型提高了6.98%,且具备良好的稳定性。因此,该模型具备应用于工业生产中短路故障识别的潜力。

    Abstract:

    To address the frequent short circuit faults caused by the shorting of anode and cathode plates during the copper electrolysis process, which leads to significant energy loss, this study selected the electrolytic cell voltage signal as the object of analysis. By deeply analyzing the changes in the voltage signal of the electrolytic cell before and after the occurrence of short circuits, a short circuit fault diagnosis method combining Local Mean Decomposition (LMD) and Particle Swarm Optimization Extreme Learning Machine (PSO-ELM) was proposed. First, the Local Mean Decomposition (LMD) technique was used to decompose the original signal into several pure amplitude modulation frequency modulation components (PF), and the relative energy and total energy of each component were calculated, with the first three PF components selected as feature values. To overcome the limitation of the Extreme Learning Machine (ELM) requiring a large number of hidden layer nodes, this study employed the Particle Swarm Optimization (PSO) algorithm for parameter optimization. Subsequently, the extracted feature values were input into the optimized PSO-ELM model to achieve identification of short circuit faults. Experimental verification using field collected data showed that the accuracy of the Extreme Learning Machine (ELM) model combined with Local Mean Decomposition (LMD) and Particle Swarm Optimization (PSO) in the diagnosis of short circuit faults in the electrolytic cell can reach 91.09%, an increase of 6.98% compared to the single ELM diagnostic model and with good stability. Therefore, this model has the potential to be applied in industrial production for short circuit fault identification.

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郭志伟,侯春光,高有华.基于LMD与PSO-ELM的铜电解槽极板短路故障诊断研究[J].绿色矿冶,2025,41(4):63-71.

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  • 收稿日期:2024-11-21
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  • 在线发布日期: 2025-11-13
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