Arc fault detection data under different loads

Citation Author(s):
Qiwei
Lu
Submitted by:
Qiwei Lu
Last updated:
Tue, 10/08/2024 - 10:09
DOI:
10.21227/f6d2-8272
License:
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Abstract 

To deal with the issue of insignificant series arc fault characteristics in disturbing loads, this paper proposes a voltage-type series arc fault detection technique that utilizes a convolutional bidirectional long- and short-term memory neural network (CNN-BiLSTM) combined with the Keplerian optimization algorithm (KOA) and Attention Mechanism (AM).  Moreover, through experimental verifications, the accuracy of detecting experimental loads during the formation of series arc faults can exceed 99%, which demonstrate the effectiveness of the proposed method.

Instructions: 

该数据集是在正常条件和交流电弧故障条件的不同负载下收集的。

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