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一种基于改进堆叠式信息传播网络的数据驱动的长时间序列输电线路跳闸故障预测方法。

A Data-Driven Long Time-Series Electrical Line Trip Fault Prediction Method Using an Improved Stacked-Informer Network.

作者信息

Guo Li, Li Runze, Jiang Bin

机构信息

College of Information Engineering, Hubei Minzu University, Enshi 445000, China.

College of Automation Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 211106, China.

出版信息

Sensors (Basel). 2021 Jun 29;21(13):4466. doi: 10.3390/s21134466.

Abstract

The monitoring of electrical equipment and power grid systems is very essential and important for power transmission and distribution. It has great significances for predicting faults based on monitoring a long sequence in advance, so as to ensure the safe operation of the power system. Many studies such as recurrent neural network (RNN) and long short-term memory (LSTM) network have shown an outstanding ability in increasing the prediction accuracy. However, there still exist some limitations preventing those methods from predicting long time-series sequences in real-world applications. To address these issues, a data-driven method using an improved stacked-Informer network is proposed, and it is used for electrical line trip faults sequence prediction in this paper. This method constructs a stacked-Informer network to extract underlying features of long sequence time-series data well, and combines the gradient centralized (GC) technology with the optimizer to replace the previously used Adam optimizer in the original Informer network. It has a superior generalization ability and faster training efficiency. Data sequences used for the experimental validation are collected from the wind and solar hybrid substation located in Zhangjiakou city, China. The experimental results and concrete analysis prove that the presented method can improve fault sequence prediction accuracy and achieve fast training in real scenarios.

摘要

电气设备和电网系统的监测对于输配电至关重要。提前对长序列进行监测以预测故障,从而确保电力系统的安全运行,具有重大意义。许多研究,如递归神经网络(RNN)和长短期记忆(LSTM)网络,在提高预测精度方面表现出卓越能力。然而,在实际应用中,仍存在一些限制使得这些方法无法预测长时间序列。为解决这些问题,本文提出一种使用改进的堆叠式Informer网络的数据驱动方法,并将其用于电力线路跳闸故障序列预测。该方法构建堆叠式Informer网络以很好地提取长序列时间序列数据的潜在特征,并将梯度集中(GC)技术与优化器相结合,取代原始Informer网络中先前使用的Adam优化器。它具有卓越的泛化能力和更快的训练效率。用于实验验证的数据序列是从位于中国张家口市的风光混合变电站收集的。实验结果和具体分析证明,所提出的方法能够提高故障序列预测精度,并在实际场景中实现快速训练。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0706/8272100/e681d05d979b/sensors-21-04466-g001.jpg

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