Efficient Extreme Operating Condition Search for Online Relay Setting Calculation in Renewable Power Systems Based on Parallel Graph Neural Network
Yan Li, Zengli Yang, Youhuai Wang, Jing Wang, Xiaoyu Han, Jingyu Wang, and Dongyuan Shi

TL;DR
This paper introduces a novel parallel graph neural network approach for rapid and accurate extreme operating condition search in renewable power systems, enhancing online relay setting calculations amid volatile operating conditions.
Contribution
It proposes the first deep learning-based EOCS method using PGNN for online relay setting, effectively handling renewable energy variability and improving computational efficiency.
Findings
Higher accuracy than existing methods in EOCS tasks.
Significant reduction in online computation time.
Validated on IEEE test systems with renewable integration.
Abstract
The Extreme Operating Conditions Search (EOCS) problem is one of the key problems in relay setting calculation, which is used to ensure that the setting values of protection relays can adapt to the changing operating conditions of power systems over a period of time after deployment. The high penetration of renewable energy and the wide application of inverter-based resources make the operating conditions of renewable power systems more volatile, which urges the adoption of the online relay setting calculation strategy. However, the computation speed of existing EOCS methods based on local enumeration, heuristic algorithms, and mathematical programming cannot meet the efficiency requirement of online relay setting calculation. To reduce the time overhead, this paper, for the first time, proposes an efficient deep learning-based EOCS method suitable for online relay setting calculation.…
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Taxonomy
TopicsPower Systems and Technologies · Smart Grid and Power Systems · Power Systems and Renewable Energy
