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Data-Driven Dynamic Security Assessment and Control of Power Systems: An Online Sequential Learning Method

机译:数据驱动的电力系统动态安全评估与控制:一种在线顺序学习方法

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摘要

Intelligent systems (IS) have gained popularity in facilitating very fast dynamic security assessment (DSA). However, conventional IS methods are limited in their ability to be updated with current system operation conditions online due to the excessive training time and complex parameters tuning required for updates. In this paper, an online sequential extreme learning machine (ELM) based method is proposed to enable efficient real-time DSA and online model updating. To enhance the performance of ELMs, feature selection using single-feature estimation is conducted and the results are utilized to design generation shifting as a preventive control. The proposed methods are examined based on the New England 39-bus test system and compared with popular IS methods. The simulation results show that the ELM-based DSA method possesses significant superior computation speed while high, competitive accuracy is maintained. The derived generation shifting is also valid to restore system security.
机译:智能系统(IS)在促进非常快速的动态安全评估(DSA)中获得了普及。然而,由于过多的训练时间和更新所需的复杂参数调整,常规的IS方法在当前系统操作条件下在线更新的能力受到限制。本文提出了一种基于在线顺序极限学习机(ELM)的方法,以实现高效的实时DSA和在线模型更新。为了增强ELM的性能,进行了使用单特征估计的特征选择,并将结果用于设计世代移位作为预防性控制。基于新英格兰39总线测试系统对提出的方法进行了检查,并与流行的IS方法进行了比较。仿真结果表明,基于ELM的DSA方法具有显着的优越计算速度,同时保持了较高的竞争精度。派生的世代转移对恢复系统安全性也是有效的。

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