Poster
in
Workshop: Tackling Climate Change with Machine Learning
Curriculum Based Reinforcement Learning to Avert Cascading Failures in the Electric Grid
Amarsagar Reddy Ramapuram Matavalam · Kishan Prudhvi Guddanti · Yang Weng
We present an approach to integrate the domain knowledge of the electric power grid operations into reinforcement learning (RL) frameworks for effectively learning RL agents to prevent cascading failures. A curriculum-based approach with reward tuning is incorporated into the training procedure by modifying the environment using the network physics. Our procedure is tested on an actor-critic-based agent on the IEEE 14-bus test system using the RL environment developed by RTE, the French transmission system operator (TSO). We observed that naively training the RL agent without the curriculum approach failed to prevent cascading for most test scenarios, while the curriculum based RL agents succeeded in most test scenarios, illustrating the importance of properly integrating domain knowledge of physical systems for real-world RL applications.