Identification of Abnormal Electrical Phenomena in Train-grid System in Open Set Environment

Fulin Zhou, Tengyu Tian,Feifan Liu

IEEE Transactions on Transportation Electrification(2024)

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摘要
Rapid and accurate identification of abnormal electrical phenomena (AEP) in electrified railway plays an vital role in the safe and smooth operation of electric locomotive.In the actual electrified railway operation scenario, due to the randomness and uncertainty of the occurrence of AEP, there are also unknown AEP, which also endanger the safe operation of the electrified railway and the power supply quality of the traction power supply system. Most of the traditional methods for identification of AEP are based on the closed-set assumption, i.e., the classification results can only be selected from the given known categories and cannot identify unknown electrical abnormalities. Therefore, this paper proposes an openmax-based method for identifying AEP, which can identify unknown AEP along with normal data and typical known AEP correctly. The proposed method mainly includes data preprocessing, one-dimensional convolutional neural network and openmax. In addition, to further improve the recognition accuracy of the proposed algorithm, different hyperparameters are set for different known classes in the tail fitting process and an activation function is applied to the activation vector used to calculate openmax. The experimental results show that the method can identify typical AEP with 98.5% accuracy and unknown AEP with 91.7% accuracy.
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关键词
Abnormal electrical phenomena (AEP),Train-grid electrical coupling system,Open set recognition,Convolutional neural network (CNN),Unknown anomalies
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