STAA: Spatio-Temporal Alignment Attention for Short-Term Precipitation Forecasting

Min Chen, Hao Yang, Shaohan Li, Xiaolin Qin
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Abstract

There is a great need to accurately predict short-term precipitation, which has socioeconomic effects such as agriculture and disaster prevention. Recently, the forecasting models have employed multi-source data as the multi-modality input, thus improving the prediction accuracy. However, the prevailing methods usually suffer from the desynchronization of multi-source variables, the insufficient capability of capturing spatio-temporal dependency, and unsatisfactory performance in predicting extreme precipitation events. To fix these problems, we propose a short-term precipitation forecasting model based on spatio-temporal alignment attention, with SATA as the temporal alignment module and STAU as the spatio-temporal feature extractor to filter high-pass features from precipitation signals and capture multi-term temporal dependencies. Based on satellite and ERA5 data from the southwestern region of China, our model achieves improvements of 12.61\% in terms of RMSE, in comparison with the state-of-the-art methods.
STAA:用于短期降水预报的时空对齐注意力
短期降水对农业和防灾等社会经济影响巨大,因此亟需准确预测短期降水。近年来,预报模式采用多源数据作为多模态输入,从而提高了预报精度。然而,现有方法通常存在多源变量不同步、捕捉时空依赖性的能力不足以及预测极端降水事件的性能不理想等问题。为了解决这些问题,我们提出了一种基于时空配准注意力的短期降水预报模型,以 SATA 作为时空配准模块,以 STAU 作为时空特征提取器,从降水信号中过滤高通特征并捕捉多期时空依赖性。基于中国西南地区的卫星和ERA5数据,我们的模型在均方根误差(RMSE)方面与最先进的方法相比提高了12.61%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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