2021
DOI: 10.1109/tcns.2021.3063333
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Searching for Critical Power System Cascading Failures With Graph Convolutional Network

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Cited by 34 publications
(12 citation statements)
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“…Ref. [127] used graph convolutional network (GCN), which can efficiently exploit power system topology, to construct a search model for critical cascading faults. They explain the diagnostic results by LRP and give the contribution of different fault features.…”
Section: Fault Diagnosismentioning
confidence: 99%
“…Ref. [127] used graph convolutional network (GCN), which can efficiently exploit power system topology, to construct a search model for critical cascading faults. They explain the diagnostic results by LRP and give the contribution of different fault features.…”
Section: Fault Diagnosismentioning
confidence: 99%
“…Related work on power grid property prediction Since power grids have an underlying graph structure, the recent development of graph representation learning [Bronstein et al, 2021, Hamilton, 2020 makes it possible to use machine learning for analyzing power grids. There are a number of applications using Graph Neural Networks (GNNs) for different power flow-related tasks [Donon et al, 2019, Kim et al, 2019, Bolz et al, 2019, Retiére et al, 2020, Wang et al, 2020, Owerko et al, 2020, Misyris et al, 2020, Liu et al, 2021 and to predict transient dynamics in microgrids Yu et al [2022]. In [Nauck et al, 2022] small GNNs are used to predict the dynamic stability on small datasets.…”
Section: Introductionmentioning
confidence: 99%
“…GCN demonstrates good classification and prediction capability with the graphstructured data in power systems [19], [20]. For example, Yuxiao Liu et al [21] developed an interpretable GCN to guide cascading failure search efficiently. Nevertheless, the GCN is not adept at capturing the sequential characteristics, i.e., the temporal information of time series of power system dynamics.…”
Section: Introductionmentioning
confidence: 99%
“…ACC increases sharply to 98% within 20 epochs.TableIshows the performance of the transient prediction under the single-node perturbations for the IEEE 39-bus and IEEE 118-bus power systems. The test performance under the single-node test dataset shows that the TTEDNN model outperforms all the existing deep learning methods including CNN[44], Attention-CNN[45], GCN[21], Graph Attention Network (GAT)[46] and Node-Level GCN (NGCN)[47]. The TTEDNN model has the best performance in terms of the ACC of 99.38% and the AUC of 0.9994 for the IEEE 39bus power system, and the ACC of 99.88% and the AUC of 0.9999 for IEEE 118-bus power system.…”
mentioning
confidence: 97%