Probabilistic Analysis of Power Network Susceptibility to GICs

M. Heyns, S. Lotz, C. Gaunt
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Abstract

As reliance on power networks has increased over the last century, the risk of damage from geomagnetically induced currents (GICs) has become a concern to utilities. The current state of the art in GIC modelling requires significant geophysical modelling and a theoretically derived network response, but has limited empirical validation. In this work, we introduce a probabilistic engineering step between the measured geomagnetic field and GICs, without needing data about the power system topology or the ground conductivity profiles. The resulting empirical ensembles are used to analyse the TVA network (southeastern USA) in terms of peak and cumulative exposure to 5 moderate to intense geomagnetic storms. Multiple nodes are ranked according to susceptibility and the measured response of the total TVA network is further calibrated to existing extreme value models. The probabilistic engineering step presented can complement present approaches, being particularly useful for risk assessment of existing transformers and power systems.
电网对GICs易损性的概率分析
随着对电网的依赖在上个世纪的增加,地磁感应电流(gic)的损坏风险已经成为公用事业公司关注的问题。目前的GIC建模技术需要重要的地球物理建模和理论推导的网络响应,但经验验证有限。在这项工作中,我们在测量的地磁场和地磁之间引入了一个概率工程步骤,而不需要关于电力系统拓扑或接地电导率剖面的数据。所得的经验集合用于分析TVA网(美国东南部)在5次中强地磁风暴中的峰值和累积暴露。根据敏感性对多个节点进行排序,并将总TVA网络的实测响应进一步校准为现有的极值模型。所提出的概率工程步骤可以补充现有的方法,对现有变压器和电力系统的风险评估特别有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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