Accurate weather prediction is essential for many aspects of life, notably the early warning of extreme weather events such as rainstorms. Short-term predictions of these events rely on forecasts from numerical weather models, in which, despite much improvement in the past decades, outstanding issues remain concerning model uncertainties, and increasing demands for computation and storage resources. In recent years, the advance of deep learning offers a viable alternative approach. Here, we show that a 3D convolutional neural network using a single frame of meteorology fields as input is capable of predicting the precipitation spatial distribution. The network is developed based on 39-years (1980-2018) data of meteorology and daily precipitation over the contiguous United States. The results bring fundamental advancements in weather prediction. First, the trained network alone outperforms the state-of-the-art weather models in predicting daily total precipitation, and the superiority of the network extends to forecast leads up to 5 days. Second, combining the network predictions with the weather-model forecasts significantly improves the accuracy of model forecasts, especially for heavy-precipitation events. Third, the millisecond-scale inference time of the network facilitates large ensemble predictions for further accuracy improvement. These findings strongly support the use of deep-learning in short-term weather predictions.
翻译:准确的天气预测对生活的许多方面至关重要,特别是极端天气事件如暴雨的预警。对这些事件的短期预测依赖于数字天气模型的预测,尽管在过去几十年里情况大有改进,但模型不确定性和对计算和储存资源的日益需求方面仍然存在未决问题。近年来,深层学习的推进提供了可行的替代方法。在这里,我们表明,使用单一气象场框架作为投入的3D进化神经网络能够预测降水空间分布。该网络是根据39年(1980-2018年)美国毗连地区的气象数据和每日降水量数据建立的。其结果为天气预测带来根本性进展。首先,经过培训的网络本身就超过了预测每日总降水量的最先进的天气模型,而网络的优势延伸到预测,可达5天。第二,将网络预测与天气模型预测相结合,大大提高模型预报的准确性,特别是严重降水事件。第三,对深度预测的二次大规模推论期支持,使深度天气预测的准确性得到大幅改进。