Hybrid Fourier Neural Operator for Surrogate Modeling of Laser Processing with a Quantum-Circuit Mixer
Mateusz Papierz, Asel Sagingalieva, Alix Benoit, Toni Ivas, Elia Iseli, Alexey Melnikov

TL;DR
This paper introduces a hybrid quantum-classical Fourier Neural Operator that reduces parameters and improves accuracy in 3D surrogate modeling of laser processing, demonstrating the potential of quantum circuits in neural operators.
Contribution
It proposes a novel hybrid quantum-classical spectral mixing approach for neural operators, reducing parameter count and enhancing accuracy for complex 3D PDE surrogate modeling.
Findings
Reduces trainable parameters by 15.6% compared to classical baseline.
Lowers phase-fraction mean absolute error by 26%.
Identifies optimal quantum-classical partitioning for best temperature metrics.
Abstract
Data-driven surrogates can replace expensive multiphysics solvers for parametric PDEs, yet building compact, accurate neural operators for three-dimensional problems remains challenging: in Fourier Neural Operators, dense mode-wise spectral channel mixing scales linearly with the number of retained Fourier modes, inflating parameter counts and limiting real-time deployability. We introduce HQ-LP-FNO, a hybrid quantum-classical FNO that replaces a configurable fraction of these dense spectral blocks with a compact, mode-shared variational quantum circuit mixer whose parameter count is independent of the Fourier mode budget. A parameter-matched classical bottleneck control is co-designed to provide a rigorous evaluation framework. Evaluated on three-dimensional surrogate modeling of high-energy laser processing, coupling heat transfer, melt-pool convection, free-surface deformation, and…
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