Section 01
Introduction: Cascaded Reinforcement Learning Framework—A New Path for Intelligent Prevention and Control of Power Grid Cascading Failures
This paper explores a hybrid reinforcement learning framework that integrates the Proximal Policy Optimization (PPO) algorithm, Graph Neural Networks (GNNs), and optimized safety constraints, aiming to address the intelligent prevention and mitigation of cascading failures in power systems. Targeting the limitations of traditional relay protection methods, this framework enables active prevention and control of cascading failures by having AI agents learn optimal control strategies. Its effectiveness has been verified using IEEE benchmark systems, and its application prospects and future development directions are also discussed.