论文标题

使用图神经网络对动力网格拓扑的动态稳定性评估

Toward Dynamic Stability Assessment of Power Grid Topologies using Graph Neural Networks

论文作者

Nauck, Christian, Lindner, Michael, Schürholt, Konstantin, Hellmann, Frank

论文摘要

为了减轻气候变化,需要增加可再生能源在电力生产中的份额。可再生能源对电网引入了有关由于权力下放,减少惯性和生产波动性引起的动态稳定性的新挑战。由于动态稳定性模拟对于大网格而言非常棘手,而且非常昂贵,因此图神经网络(GNN)是减少分析电网动态稳定性的计算工作的有前途方法。作为GNN模型的测试台,我们生成了合成功率网格动态稳定性的新的大型数据集,并将其作为研究社区的开源资源。我们发现,GNN在仅从拓扑信息中预测高度非线性目标方面非常有效。首次实现适合实际用例的性能。此外,我们演示了这些模型准确识别功率网格中特定脆弱节点的能力,即所谓的麻烦制造商。最后,我们发现接受小网格训练的GNN会在德克萨斯功率网格的大型合成模型上产生准确的预测,这说明了实际应用的潜力。

To mitigate climate change, the share of renewable energies in power production needs to be increased. Renewables introduce new challenges to power grids regarding the dynamic stability due to decentralization, reduced inertia, and volatility in production. Since dynamic stability simulations are intractable and exceedingly expensive for large grids, graph neural networks (GNNs) are a promising method to reduce the computational effort of analyzing the dynamic stability of power grids. As a testbed for GNN models, we generate new, large datasets of dynamic stability of synthetic power grids, and provide them as an open-source resource to the research community. We find that GNNs are surprisingly effective at predicting the highly non-linear targets from topological information only. For the first time, performance that is suitable for practical use cases is achieved. Furthermore, we demonstrate the ability of these models to accurately identify particular vulnerable nodes in power grids, so-called troublemakers. Last, we find that GNNs trained on small grids generate accurate predictions on a large synthetic model of the Texan power grid, which illustrates the potential for real-world applications.

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