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A Machine Learning Approach to Detection of Geomagnetically Induced Currents in Power Grids

机译:机器学习方法检测电网中的地磁感应电流

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摘要

Geomagnetically induced currents (GICs) in power grids are mainly caused by geomagnetic disturbances especially during solar storms. Such currents can potentially cause negative impacts on power grid equipment and even damage the power transformers resulting in a significant risk of blackouts. Therefore, monitoring GICs in power systems and developing solutions to mitigate their impacts before rising to a certain threatening level is urgently in need. Monitoring GICs is, however, quite a challenge and costly, as they usually appear in forms of dc components in the high voltage transmission lines, which are barely accessible through transformers. By examining the measured currents from the current transformers, this article proposes a framework to detect GICs in power transmission systems through a hybrid time-frequency analysis combined with machine learning technology. Simulated results verify that the proposed approach can promisingly estimate GICs in power systems during a variety of grid operating conditions.
机译:电网中的地磁感应电流(GIC)主要由地磁干扰引起,尤其是在太阳风暴期间。这样的电流可能会对电网设备造成负面影响,甚至损坏电力变压器,从而导致严重的停电风险。因此,迫切需要监控电力系统中的GIC,并开发解决方案以在其上升到一定威胁水平之前减轻其影响。但是,监视GIC确实是一项挑战,而且成本很高,因为它们通常以高压传输线中直流成分的形式出现,而这些成分几乎无法通过变压器访问。通过检查来自电流互感器的测量电流,本文提出了一种通过混合时频分析与机器学习技术相结合的方法来检测输电系统中的GIC。仿真结果验证了所提出的方法有望在各种电网运行条件下估计电力系统中的GIC。

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