MALGNAApr 3, 2023

Swarm Reinforcement Learning For Adaptive Mesh Refinement

arXiv:2304.00818v324 citationsh-index: 44
Originality Incremental advance
AI Analysis

This addresses the scalability limitations of learning-based AMR methods for complex engineering simulations, though it is incremental as it builds on existing learning approaches.

The paper tackles the problem of Adaptive Mesh Refinement (AMR) in engineering simulations by formulating it as an Adaptive Swarm Markov Decision Process, achieving a speedup of up to 2 orders of magnitude compared to uniform refinements and matching the quality of costly error-based oracle strategies.

Adaptive Mesh Refinement (AMR) enhances the Finite Element Method, an important technique for simulating complex problems in engineering, by dynamically refining mesh regions, enabling a favorable trade-off between computational speed and simulation accuracy. Classical methods for AMR depend on heuristics or expensive error estimators, hindering their use for complex simulations. Recent learning-based AMR methods tackle these issues, but so far scale only to simple toy examples. We formulate AMR as a novel Adaptive Swarm Markov Decision Process in which a mesh is modeled as a system of simple collaborating agents that may split into multiple new agents. This framework allows for a spatial reward formulation that simplifies the credit assignment problem, which we combine with Message Passing Networks to propagate information between neighboring mesh elements. We experimentally validate our approach, Adaptive Swarm Mesh Refinement (ASMR), on challenging refinement tasks. Our approach learns reliable and efficient refinement strategies that can robustly generalize to different domains during inference. Additionally, it achieves a speedup of up to $2$ orders of magnitude compared to uniform refinements in more demanding simulations. We outperform learned baselines and heuristics, achieving a refinement quality that is on par with costly error-based oracle AMR strategies.

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