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Research on GIS Partial Discharge Pattern Recognition Based on Deep Residual Network and Transfer Learning in Ubiquitous Power Internet of Things Context

机译:普适电力物联网环境下基于深度残差网络和转移学习的GIS局部放电模式识别研究

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As an important part of the power system, gas insulated switchgear (GIS) will cause serious failures once they break down, threatening the safety of the entire power grid. In the construction of the Ubiquitous Power Internet of Things (UPIoT), the intelligent terminal taking online monitoring as the means keeps the equipment fault samples and forms the sample database, which is of great significance to discover the latent insulation defects of GIS and take necessary measures in advance to ensure the safe and reliable operation of power grid. Aiming at the sample database provided by the intelligent terminal of the Internet of things, this paper proposes a method of GIS partial discharge (PD) using the depth residual network, which effectively improves the accuracy of model recognition. Although the comprehensiveness of the sample has been solved, as a transitional stage, the sample size is relatively small. Therefore, this paper uses transfer learning to solve the problem of high accuracy under the sample. In order to compare the state of art performance of the proposed method, some traditional convolutional networks such as LeNet, AlexNet, and VGG16 are used for comparison. After verification, the recognition accuracy of the deep residual network proposed in this paper is 94.6%, which is significantly higher than other models. At the same time, the parameter amount and storage space of the deep residual network are also significantly lower than those of other networks, further verifying that the model has a broad application space in the UPIoT context.
机译:气体绝缘开关设备(GIS)作为电力系统的重要组成部分,一旦发生故障将引起严重的故障,威胁到整个电网的安全。在建设通用电力物联网(UPIoT)中,以在线监控为手段的智能终端可以保存设备故障样本并形成样本数据库,对于发现GIS的潜在绝缘缺陷并采取必要的措施具有重要意义提前采取措施,确保电网安全可靠运行。针对物联网智能终端提供的样本数据库,提出了一种基于深度残差网络的GIS局部放电(PD)方法,有效地提高了模型识别的准确性。尽管样本的全面性已得到解决,但作为过渡阶段,样本规模相对较小。因此,本文采用转移学习来解决样本下的高精度问题。为了比较所提出方法的最新技术性能,使用了一些传统的卷积网络(例如LeNet,AlexNet和VGG16)进行比较。经过验证,本文提出的深层残差网络的识别精度为94.6%,明显高于其他模型。同时,深度残差网络的参数数量和存储空间也明显低于其他网络,进一步验证了该模型在UPIoT环境中具有广阔的应用空间。

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