Real-time Monitoring Technology of Voltage Sag Disturbance in Distribution Network Based on TCN-Attention Neural Network and Flink Flow Computing

Zexi Chen, Li Yang, J. Tian, Zeng Chen, Xiaoye Xu, E. Zhao
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Abstract

In the face of the challenges brought by the complexity of power grid, diversification of disturbance factors, isolation of monitoring points and other issues to the cause identification of voltage sag disturbance, this paper proposes a real-time monitoring technology for voltage sag disturbance in distribution network based on TCN-Attention neural network and Flink flow calculation, which has important practical significance for controlling voltage sag and reducing economic losses. This method uses Temporal Convolutional Network (TCN) to extract the cross time nonlinear characteristics of voltage sag time series data, which effectively solves the problems of long-term dependence on time series and low training output efficiency of existing time series models. In order to further improve the recognition accuracy of the model, Attention mechanism is introduced to mine the duration relationship in voltage sag data. At the same time, the method also constructs a parallel real-time monitoring platform based on Flink streaming computing framework, embeds the TCN-Attention voltage sag cause identification model generated by training, so as to realize real-time identification and monitoring analysis of voltage sag disturbances at each monitoring point of the distribution network. In this paper, various voltage sags are simulated on IEEE 14 bus system using PSCAD software, and the proposed method is verified and tested. The deep learning fusion model has high recognition accuracy for the cause of voltage sag, and the flow computing platform has excellent performance in time delay and throughput indicators, and can realize the parallel real-time monitoring and analysis of voltage sag causes in distribution network.
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基于tcn -注意力神经网络和Flink流计算的配电网电压暂降扰动实时监测技术
面对电网复杂性、干扰因素多样化、监测点隔离等问题给电压暂降扰动原因识别带来的挑战,本文提出了一种基于TCN-Attention神经网络和Flink潮流计算的配电网电压暂降扰动实时监测技术,对控制电压暂降、减少经济损失具有重要的现实意义。该方法利用时序卷积网络(TCN)提取电压暂降时间序列数据的跨时间非线性特征,有效解决了现有时间序列模型对时间序列的长期依赖和训练输出效率低的问题。为了进一步提高模型的识别精度,引入注意机制挖掘电压暂降数据中的持续时间关系。同时,该方法还构建了基于Flink流计算框架的并行实时监测平台,嵌入训练生成的TCN-Attention电压暂降原因识别模型,实现对配电网各监测点电压暂降扰动的实时识别和监测分析。本文利用PSCAD软件在IEEE 14总线系统上对各种电压跌落进行了仿真,并对所提出的方法进行了验证和测试。深度学习融合模型对电压暂降原因的识别精度高,流量计算平台在时延和吞吐量指标上具有优异的性能,可实现配电网电压暂降原因的并行实时监测与分析。
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