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Research on Overvoltage Identification Method of EMUs High Voltage Electrical System Based on Deep Learning

机译:基于深度学习的鸸高压电气系统过电压识别方法研究

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To solve the problem that it is difficult to identify the overvoltage in high-voltage electrical system of EMUs, a method for identifying overvoltage types of high-voltage electrical system of multiple units based on ShuffleNet lightweight convolutional neural network (CNN) is proposed. Six overvoltage types are mapped into gray images by B2G algorithm, which is input into ShuffleNet network to identify all kinds of gray images, and different overvoltages are classified into their families by training. This method analyzes the accuracy of the model under different parameters, and obtains the optimal parameter combination of the model through the training of the model under different parameters. Six shallow machine learning models are built and compared. Experimental results show that this method has higher accuracy in small sample data sets. Compared with traditional machine learning, it avoids the complexity of manual feature extraction, improves the generalization ability of the model, and verifies that this method has better recognition and classification performance.
机译:为了解决难以识别EMU的高压电气系统的过电压的问题,提出了一种基于Shuffleenet轻质卷积神经网络(CNN)的多单元的高压电气系统的过电压类型的方法。通过B2G算法将六种过压类型映射到灰色图像中,该算法被输入到Shuffleenet网络中以识别各种灰色图像,并且通过训练将不同的过电压分为其家庭。该方法分析了不同参数下模型的准确性,并通过在不同参数下通过模型的训练获得模型的最佳参数组合。建立并比较了六种浅机器学习模型。实验结果表明,该方法在小型样本数据集中具有更高的准确性。与传统机器学习相比,它避免了手动特征提取的复杂性,提高了模型的泛化能力,并验证了该方法具有更好的识别和分类性能。

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