基于联合深度学习的变压器保护研究

Qiyue Huang, Yapeng Wang, S. Im
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引用次数: 0

摘要

随着中国电力负荷总量和可再生能源比重的不断上升,电网规模不断扩大,结构日益复杂。变压器作为电力系统中最重要的设备,其运行状态直接影响到系统的安全稳定运行。一旦发生故障,将带来严重的经济损失和危害。提出了一种基于联合深度学习方法的变压器保护方案。首先通过变压器两侧的断路器采集信号,完成实时数据采集。然后,采用门控递归神经网络实现短期和超短期状态识别。另外,加入自监督学习任务进行联合训练。实现了变压器的故障诊断与保护。最后,利用PSCAD软件构建典型变压器模型结构,并利用Jupyter Lab进行仿真验证。结果表明,该保护方案在不同采样周期、噪声干扰和数据丢失情况下均具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research of Transformer Protection Based on Joint Deep Learning
As the total electricity load and the proportion of renewable energy sources continue to rise in China, the power grid is experiencing an expansion in scale and an increasing complexity in its structure. As the most important equipment in the power system, the operation status of transformers directly affects the safety and stability of the system. Once a malfunction occurs, it will bring serious economic losses and harm. This paper proposes a transformer protection scheme based on joint deep learning method. Firstly, collect signals through the circuit breakers on both sides of the transformer to complete real-time data collection. Then, a gated recurrent neural network is used to achieve short-term and ultra short-term state recognition. In addition, self supervised learning task is added for joint training. Then the transformer fault diagnosis and protection are realized. Finally, using PSCAD software to construct a typical transformer model structure and conduct simulation verification using Jupyter Lab. The results show that the protection scheme has good performance in different sampling period lengths, noise interference, and data loss situations.
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