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RHYME-XT: A Neural Operator for Spatiotemporal Control Systems

arXiv cs.LG / 3/19/2026

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Key Points

  • RHYME-XT is introduced as an operator-learning framework for surrogate modeling of spatiotemporal control systems governed by input-affine nonlinear partial integro-differential equations with localized rhythmic behavior.
  • The method uses a Galerkin projection to approximate the infinite-dimensional PIDE on a neural-network-parameterized finite basis, producing a projected system of ODEs driven by projected inputs.
  • Instead of integrating the non-autonomous projected system, RHYME-XT directly learns its flow map with a dedicated architecture for flow functions, enabling continuous-time and discretization-invariant representations while reducing computation.
  • Experiments on a neural field PIDE show RHYME-XT outperforms a state-of-the-art neural operator and can transfer knowledge across models via fine-tuning.

Abstract

We propose RHYME-XT, an operator-learning framework for surrogate modeling of spatiotemporal control systems governed by input-affine nonlinear partial integro-differential equations (PIDEs) with localized rhythmic behavior. RHYME-XT uses a Galerkin projection to approximate the infinite-dimensional PIDE on a learned finite-dimensional subspace with spatial basis functions parameterized by a neural network. This yields a projected system of ODEs driven by projected inputs. Instead of integrating this non-autonomous system, we directly learn its flow map using an architecture for learning flow functions, avoiding costly computations while obtaining a continuous-time and discretization-invariant representation. Experiments on a neural field PIDE show that RHYME-XT outperforms a state-of-the-art neural operator and is able to transfer knowledge effectively across models trained on different datasets, through a fine-tuning process.