Lesinger Kyle, Tian Di
Department of Crop, Soil, and Environmental Sciences, Auburn University, Auburn, AL, USA.
Earth System Science Center, The University of Alabama in Huntsville, Huntsville, AL, USA.
Nat Commun. 2025 Aug 12;16(1):7461. doi: 10.1038/s41467-025-62761-3.
Deep neural networks that learn from climate reanalysis data have produced skillful weather forecasts within ten days. However, it is still a great challenge for dynamic models to predict soil moisture, droughts, and other extreme events with lead times beyond two weeks. Here, we combine a recursive deep learning model (namely RISE-UNet) and subseasonal forecasts from dynamic models and achieve skillful forecasts of root zone soil moisture up to four weeks in advance. Our hybrid model, combining RISE-UNet and dynamic model forecasts, outperforms reanalysis-driven RISE-UNet models, while both methods show significantly higher performance than the latest European Centre for Medium-Range Weather Forecasts (ECMWF) and Global Ensemble Forecast System (GEFS) dynamic models, the postprocessed ECMWF or GEFS subseasonal forecasts by RISE-UNet, or ensemble model output statistics. The hybrid model shows skill in predicting flash droughts, which is higher than ECMWF and GEFS models in most cases, as demonstrated for major events in the United States, China, and Australia. The forecast skill of the hybrid modeling approach from weeks three to four is mainly due to the inclusion of the first two-week dynamic model forecasts and antecedent root zone soil moisture reanalysis. Our results indicate that combining deep learning with dynamic model forecasts can substantially improve the skill of subseasonal predictions beyond two weeks, particularly for root zone soil moisture and flash drought events.
从气候再分析数据中学习的深度神经网络已经能够在十天内做出准确的天气预报。然而,对于动态模型来说,预测两周以上提前期的土壤湿度、干旱和其他极端事件仍然是一个巨大的挑战。在此,我们将递归深度学习模型(即RISE-UNet)与动态模型的次季节预测相结合,实现了提前四周对根区土壤湿度的准确预测。我们将RISE-UNet与动态模型预测相结合的混合模型,优于再分析驱动的RISE-UNet模型,而这两种方法的性能都显著高于最新的欧洲中期天气预报中心(ECMWF)和全球集合预报系统(GEFS)动态模型、RISE-UNet对ECMWF或GEFS次季节预报进行后处理的结果,或集合模型输出统计结果。混合模型在预测突发性干旱方面表现出技巧,在大多数情况下高于ECMWF和GEFS模型,美国、中国和澳大利亚的重大事件就证明了这一点。混合建模方法在第三至四周的预报技巧主要归功于纳入了前两周的动态模型预测和前期根区土壤湿度再分析。我们的结果表明,将深度学习与动态模型预测相结合可以大幅提高两周以上次季节预测的技巧,特别是对于根区土壤湿度和突发性干旱事件。