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Frequency Security Assessment for Receiving-end System Based on Deep Learning Method

机译:基于深度学习方法的终端系统频率安全评估

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For hours-ahead assessment of power systems with a high penetration level of renewable generation, a large number of uncertain scenarios should be checked to ensure the frequency security of the system after the severe power disturbance following HVDC blocking. In this situation, the full time-domain simulation is unsuitable as a result of the heavy calculation burden. To fulfill the quick assessment of the frequency security, the online frequency security assessment framework based on deep learning is proposed in this paper. The Deep Belief Network (DBN) method is used to establish the framework. The sample generation method is researched to generate representative samples for the purposed of higher assessment accuracy. A large-scale AC-DC interconnected power grid is adopted to verify the validity of the proposed assessment method.
机译:对于具有较高可再生能源渗透水平的电力系统的提前小时评估,应检查大量不确定的情况,以确保在高压直流输电之后严重的电力干扰后,系统的频率安全。在这种情况下,由于繁重的计算负担,因此不适合进行完整的时域仿真。为了实现对频率安全性的快速评估,提出了一种基于深度学习的在线频率安全性评估框架。深度信仰网络(DBN)方法用于建立框架。为了提高评估的准确性,研究了样本生成方法来生成代表性样本。采用大型交直流互联电网,验证了该评估方法的有效性。

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