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arxiv: 2507.00278 · v1 · pith:BOIAQXC7new · submitted 2025-06-30 · 🧮 math.NA · cs.NA

Automatic discovery of optimal meta-solvers for time-dependent nonlinear PDEs

classification 🧮 math.NA cs.NA
keywords discoverymeta-solversmethodsoptimalsolvernonlinearproblemresulting
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We present a general and scalable framework for the automated discovery of optimal meta-solvers for the solution of time-dependent nonlinear partial differential equations after appropriate discretization. By integrating classical numerical methods (e.g., Krylov-based methods) with modern deep learning components, such as neural operators, our approach enables flexible, on-demand solver design tailored to specific problem classes and objectives. The fast solvers tackle the large linear system resulting from the Newton--Raphson iteration or by using an implicit-explicit (IMEX) time integration scheme. Specifically, we formulate solver discovery as a multi-objective optimization problem, balancing various performance criteria such as accuracy, speed, and memory usage. The resulting Pareto optimal set provides a principled foundation for solver selection based on user-defined preference functions. When applied to problems in reaction--diffusion, fluid dynamics, and solid mechanics, the discovered meta-solvers consistently outperform conventional iterative methods, demonstrating both practical efficiency and broad applicability.

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Cited by 3 Pith papers

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