论文标题

使用机器学习从电网模型中的静态特征预测动态稳定性

Predicting Dynamic Stability from Static Features in Power Grid Models using Machine Learning

论文作者

Titz, Maurizio, Kaiser, Franz, Kruse, Johannes, Witthaut, Dirk

论文摘要

用电力的可靠供应对我们的社会至关重要。传输线故障是电网稳定性的最大威胁之一,因为它们可能导致将网格分为相互的异步片段。需要新的概念方法来评估与现有模拟模型相辅相成的系统稳定性。在本文中,我们提出了网络科学指标和机器学习模型的组合,以预测异步事件的风险。网络科学为传输线的基本属性(例如其冗余或中心性)提供了指标。机器学习模型执行固有的特征选择,从而揭示了决定网络鲁棒性和脆弱性的关键因素。作为案例研究,我们对来自几个合成测试网格的模拟数据进行训练和测试。我们发现,当在所有数据集上平均时,集成模型能够预测线路故障后的不同步事件,其平均精度大于0.996美元。通常可以在预测性能的情况下略有损失,在不同的数据集之间学习转移。我们的结果表明,功率电网对同步基本上仅受少数网络指标的控制,这些网络指标可以量化网络重新路由流量而不会产生极高的静态线路载荷的能力。

A reliable supply with electric power is vital for our society. Transmission line failures are among the biggest threats for power grid stability as they may lead to a splitting of the grid into mutual asynchronous fragments. New conceptual methods are needed to assess system stability that complement existing simulation models. In this article we propose a combination of network science metrics and machine learning models to predict the risk of desynchronisation events. Network science provides metrics for essential properties of transmission lines such as their redundancy or centrality. Machine learning models perform inherent feature selection and thus reveal key factors that determine network robustness and vulnerability. As a case study, we train and test such models on simulated data from several synthetic test grids. We find that the integrated models are capable of predicting desynchronisation events after line failures with an average precision greater than $0.996$ when averaging over all data sets. Learning transfer between different data sets is generally possible, at a slight loss of prediction performance. Our results suggest that power grid desynchronisation is essentially governed by only a few network metrics that quantify the networks ability to reroute flow without creating exceedingly high static line loadings.

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