Quantum Neural Physics: Solving Partial Differential Equations on Quantum Simulators using Quantum Convolutional Neural Networks
Jucai Zhai, Muhammad Abdullah, Boyang Chen, Fazal Chaudry, Paul N. Smith, Claire E. Heaney, Yanghua Wang, Jiansheng Xiang, Christopher C. Pain

TL;DR
This paper introduces Quantum Neural Physics, a hybrid quantum-classical multigrid solver that leverages quantum convolutional operators to efficiently solve PDEs, promising exponential memory compression and acceleration on future quantum computers.
Contribution
It develops a novel framework integrating quantum convolutional kernels into multigrid solvers for PDEs, enabling scalable quantum circuit implementations with preserved classical convergence properties.
Findings
Quantum operators implemented with O(log K) circuit depth.
Solutions closely match traditional PDE solvers.
Demonstrated on multiple PDEs including Navier-Stokes.
Abstract
In scientific computing, the formulation of numerical discretisations of partial differential equations (PDEs) as untrained convolutional layers within Convolutional Neural Networks (CNNs), referred to by some as Neural Physics, has demonstrated good efficiency for executing physics-based solvers on GPUs. However, classical grid-based methods still face computational bottlenecks when solving problems involving billions of degrees of freedom. To address this challenge, this paper proposes a novel framework called 'Quantum Neural Physics' and develops a Hybrid Quantum-Classical CNN Multigrid Solver (HQC-CNNMG). This approach maps analytically-determined stencils of discretised differential operators into parameter-free or untrained quantum convolutional kernels. By leveraging amplitude encoding, the Linear Combination of Unitaries technique and the Quantum Fourier Transform, the resulting…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Model Reduction and Neural Networks · Quantum many-body systems
