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Real-Time Identification of Power Fluctuations Based on LSTM Recurrent Neural Network: A Case Study on Singapore Power System

机译:基于LSTM递归神经网络的电力波动实时识别:以新加坡电力系统为例

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摘要

Fast and stochastic power fluctuations caused by renewable energy sources and flexible loads have significantly deteriorated the frequency performance of modern power systems. Power system frequency control aims to achieve real-time power balance between generations and loads. In practice, it is much more difficult to exactly acquire the values of unbalance power in both transmission and distribution systems, especially when there is a high penetration level of renewable energies. This paper explores a deep learning approach to identify active power fluctuations in real-time, which is based on a long short-term memory recurrent neural network. The developed method provides a more accurate and faster estimation of the value of power fluctuations from the real-time measured frequency signal. The identified power fluctuations can serve as control reference so that the system frequency can be better maintained by automatic generation control, as well as emerging frequency control elements, such as energy storage system. A detailed model of Singapore power system integrated with distributed energy storage systems is used to verify the proposed method and to compare with various classical methods. The simulation results clearly demonstrate the necessity for power fluctuation identification, and the advantages of the proposed method.
机译:由可再生能源和灵活的负载引起的快速而随机的电源波动极大地恶化了现代电力系统的频率性能。电力系统频率控制旨在实现发电和负荷之间的实时电力平衡。实际上,要在输配电系统中准确获取不平衡功率的值要困难得多,尤其是在可再生能源渗透率很高的情况下。本文探索了一种基于长短期记忆递归神经网络的实时识别有功功率波动的深度学习方法。所开发的方法可从实时测量的频率信号中更准确,更快速地估算功率波动值。识别出的功率波动可以用作控制参考,因此可以通过自动发电控制以及新兴的频率控制元素(例如储能系统)更好地保持系统频率。将新加坡电力系统与分布式能量存储系统集成在一起的详细模型用于验证所提出的方法,并与各种经典方法进行比较。仿真结果清楚地表明了功率波动识别的必要性,以及该方法的优点。

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