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Crucial Power Transfer Interface Identification Based on Deep Learning and Bagging Strategy

机译:基于深度学习和装袋策略的关键电源传输接口识别

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摘要

With the promotion of renewable energy, it has become a more challenging task to keep power systems in secure and stable conditions. In real applications, power transfer interfaces are usually used by operators to monitor and control power systems more efficiently. Therefore, this paper proposes a data-driven approach to identify real-time crucial power transfer interfaces whose security margins are relatively low. First, a deep learning framework is designed as deep features perform better in classification tasks. Then, a new loss function is developed to enhance the data-driven model's generalization ability. Furthermore, bagging strategy is adopted to balance the effect of the missing alarm and the false alarm. Finally, the proposed model is evaluated by the Guangdong Power Grid in China and the simulation results demonstrate that: (1) three corresponding improvements above have been proved, compared with existing methods; (2) the proposed model can identify crucial power transfer interfaces quickly and accurately, and reach the requirements for online applications.
机译:随着可再生能源的推广,使电力系统处于安全和稳定的状态已成为更具挑战性的任务。在实际应用中,操作员通常使用电源传输接口来更有效地监视和控制电源系统。因此,本文提出了一种数据驱动的方法来识别安全裕度相对较低的实时关键电力传输接口。首先,设计深度学习框架是因为深度功能在分类任务中表现更好。然后,开发了新的损失函数以增强数据驱动模型的泛化能力。此外,采用套袋策略来平衡遗漏警报和虚假警报的影响。最后,通过广东省电网对提出的模型进行了评估,仿真结果表明:(1)与现有方法相比,上述三个方面的改进得到了证明; (2)所提出的模型可以快速,准确地识别关键的电力传输接口,并达到在线应用的要求。

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