Hybrid Quantum-Classical Spatiotemporal Forecasting for 3D Cloud Fields
Fu Wang, Qifeng Lu, Xinyu Long, Meng Zhang, Xiaofei Yang, Weijia Cao, Xiaowen Chu

TL;DR
The paper introduces QENO, a hybrid quantum-inspired framework that improves 3D cloud field forecasting by modeling nonlocal interactions and multiscale dynamics more effectively than existing methods.
Contribution
It proposes a novel hybrid quantum-classical architecture with topology-aware quantum enhancement for volumetric cloud prediction, outperforming state-of-the-art models.
Findings
QENO achieves lower MSE, RMSE, and higher SSIM than baselines.
QENO maintains a compact parameter size while improving accuracy.
Topology-aware quantum features enhance nonlocal coupling modeling.
Abstract
Accurate forecasting of three-dimensional (3D) cloud fields is important for atmospheric analysis and short-range numerical weather prediction, yet it remains challenging because cloud evolution involves cross-layer interactions, nonlocal dependencies, and multiscale spatiotemporal dynamics. Existing spatiotemporal prediction models based on convolutions, recurrence, or attention often rely on locality-biased representations and therefore struggle to preserve fine cloud structures in volumetric forecasting tasks. To address this issue, we propose QENO, a hybrid quantum-inspired spatiotemporal forecasting framework for 3D cloud fields. The proposed architecture consists of four components: a classical spatiotemporal encoder for compact latent representation, a topology-aware quantum enhancement block for modeling nonlocal couplings in latent space, a dynamic fusion temporal unit for…
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