基于VMD-WOA-ELM的电缆外力破坏振动信号在线识别
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1.湖北省输电线路工程技术研究中心 宜昌 443002; 2.三峡大学电气与新能源学院 宜昌 443002

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TM757

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国家自然科学基金(51807110)项目资助


Online identification of cable external force damage vibration signal based on VMD-WOA-ELM
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1.Hubei Transmission Line Engineering Technology Research Center,Yichang 443002, China; 2.College of Electricity and New Energy, China Three Gorges University,Yichang 443002, China

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    摘要:

    保障电力电缆的安全运行是建设新型智能电力系统的基础,为实现对外力破坏事件的数字化预警,提出基于VMD-WOA-ELM的外力破坏振动信号在线识别方法。首先,利用VMD将采集到的异常振动信号分解为若干本征模量函数分量(IMF),然后提取各IMF分量的时、频域特征值组成特征向量,最后采用极限学习机(ELM)进行振动信号类型识别,为解决ELM模型随机性选取初始权值和阈值导致的分类稳定性较差的问题,将鲸鱼优化算法(WOA)应用于ELM的参数寻优,从而获得最优分类模型。将该方法应用于施工振动信号类型识别实验,分别采集四种典型外破事件的振动信号各100组,将其中80%作为训练集,20%作为测试集检验算法的识别性能,并与传统ELM、PSO-ELM、GA-ELM进行了对比。结果表明:在相同计算机运行条件下,WOA-ELM对外破振动信号的分类准确度达98.75%,相比传统ELM识别精度提高了5%,且整体运行时间仅为4.10 s。与另外两种算法相比,该算法识别精度最高、收敛速度最快,具有最优综合性能。

    Abstract:

    Ensuring the safe operation of power cables is the basis of building a new intelligent power system. In order to realize the digital early warning of external force damage events, an online identification method of external force damage vibration signals based on VMD-WOA-ELM is proposed. Firstly, the collected abnormal vibration signal is decomposed into several intrinsic modulus function components (IMF) by VMD, then the time and frequency domain eigenvalues of each IMF component are extracted to form the eigenvector, and finally the extreme learning machine (ELM) is used to identify the type of vibration signal. In order to solve the problem of poor classification stability caused by the random selection of initial weights and thresholds of ELM model, whale optimization algorithm (WOA) is used to optimize the parameters of ELM to obtain the optimal classification model. This method is applied to the identification experiment of construction vibration signal type. The vibration signals of four typical breaking events were collected, and each signal has 100 groups. 80% of them were used as the training set and 20% as the test set to test the recognition performance of the algorithm. The algorithm is compared with traditional ELM, PSO-ELM and GA-ELM. The results show that under the same computer operating conditions, the classification accuracy of WOA-ELM is 98.75%, which is 5% higher than that of traditional ELM, and the overall running time is only 4.10 s. Compared with the other two algorithms, this algorithm has the highest recognition accuracy, the fastest convergence speed and the best comprehensive performance.

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崔岩,方春华,文中,许瑶,张云杰,侯正宇.基于VMD-WOA-ELM的电缆外力破坏振动信号在线识别[J].电子测量技术,2023,46(2):121-129

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  • 在线发布日期: 2024-03-11
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