The content discusses the introduction of DynAMO, a reinforcement learning approach for mesh optimization in hyperbolic conservation laws. It focuses on anticipatory refinement strategies to enhance accuracy and efficiency while reducing computational costs.
The methodology includes multi-agent reinforcement learning, observation space formulation, action space definition, transition function description, and reward function design. The goal is to optimize mesh refinement policies based on error indicators and spatio-temporal evolution predictions.
Key points include the challenges of traditional adaptive mesh refinement approaches, the importance of anticipatory refinement strategies, and the utilization of reinforcement learning for dynamic mesh optimization.
The proposed approach aims to generalize to different problems and meshes while allowing user-controlled error/cost targets at evaluation time.
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arxiv.org
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