Enhancing Electrical Grid Reliability through Predictive Cycle Detection with Graph Neural Networks
Abstract
This paper represents end-end study focused on
improving the grid reliability with the application of Graph
Neural Networks (GNNs). Graph Representation of the
electrical grid which yields the model of nodes of
substations and transformers interconnection of power
lines constructed by the data from the National Grid
Electricity System Operator (ESO) Data Portal. Based on
their connections, node feature updating and encoding by
predict grid reliability with multi-layered Graph Attention
Network (GAT) was employed. In predicting failure
regions, proposed model with rigorously trained and tested
state shows higher accuracy compared to existing methods.
Results of the model signifies the model capability to
efficiently manage large-scale data with actionable insight
generation for specific usecases such as predictive
maintanance, which ensure the resilience of modern power
systems and integrating renewable energy in the modern
power system.
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