Radar echo extrapolation is a core technique for 0–2 h nowcasting, yet existing deep learning models often struggle with non-linear atmospheric motion and intensity attenuation due to insufficient feature decoupling. To address these limitations, this paper proposes AFTA-Net, a novel encoder–decoder architecture. The model introduces an Axial Fusion Block (AFB) that employs a parallel decomposition strategy to explicitly separate temporal evolution from spatial morphology, preserving structural integrity while capturing motion trends. Furthermore, a Tri-Axis Factorized Attention (TAFA) mechanism is designed to sequentially recalibrate feature representations across Time, Channel, and Spatial dimensions, thereby enhancing sensitivity to high-frequency convective signals and suppressing background noise. Extensive experiments on the Jiangsu radar dataset demonstrate that AFTA-Net significantly outperforms representative baselines. Notably, at the critical 30 dBZ threshold for severe weather, the model achieves a CSI of 0.2506 and an HSS of 0.3430.
Geng et al. (Tue,) studied this question.
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