Understanding and predicting the Madden-Julian Oscillation (MJO) is fundamental for precipitation forecasting and disaster prevention. To date, long-term and accurate MJO prediction has remained a challenge for researchers. Conventional MJO prediction methods using Numerical Weather Prediction (NWP) are resource-intensive, time-consuming, and highly unstable (most NWP methods are sensitive to seasons, with better MJO forecast results in winter). While existing Artificial Neural Network (ANN) methods save resources and speed forecasting, their accuracy never reaches the 28 days predicted by the state-of-the-art NWP method, i.e., the operational forecasts from ECMWF, since neural networks cannot handle climate data effectively. In this paper, we present a Domain Knowledge Embedded Spatio-Temporal Network (DK-STN), a stable neural network model for accurate and efficient MJO forecasting. It combines the benefits of NWP and ANN methods and successfully improves the forecast accuracy of ANN methods while maintaining a high level of efficiency and stability. We begin with a spatial-temporal network (STN) and embed domain knowledge in it using two key methods: (i) applying a domain knowledge enhancement method and (ii) integrating a domain knowledge processing method into network training. We evaluated DK-STN with the 5th generation of ECMWF reanalysis (ERA5) data and compared it with ECMWF. Given 7 days of climate data as input, DK-STN can generate reliable forecasts for the following 28 days in 1-2 seconds, with an error of only 2-3 days in different seasons. DK-STN significantly exceeds ECMWF in that its forecast accuracy is equivalent to ECMWF's, while its efficiency and stability are significantly superior.
翻译:理解和预测马登-朱利安振荡(MJO)对于降水预报和灾害防治至关重要。迄今为止,长期且准确的MJO预测仍是研究者面临的挑战。使用数值天气预报(NWP)的传统MJO预测方法资源消耗大、耗时长且极不稳定(大多数NWP方法对季节敏感,冬季的MJO预报效果较好)。虽然现有的人工神经网络(ANN)方法节省资源并加快预测速度,但由于神经网络无法有效处理气候数据,其准确性从未达到最先进的NWP方法(即ECMWF的业务预报)所预测的28天水平。本文提出一种领域知识嵌入时空网络(DK-STN),这是一种用于准确高效MJO预报的稳定神经网络模型。它结合了NWP和ANN方法的优势,在保持高效率和高稳定性的同时,成功提升了ANN方法的预报精度。我们以时空网络(STN)为基础,通过两种关键方法嵌入领域知识:(i)应用领域知识增强方法;(ii)将领域知识处理方法整合到网络训练中。我们使用ECMWF第五代再分析(ERA5)数据评估DK-STN,并将其与ECMWF进行对比。以7天的气候数据作为输入,DK-STN可在1-2秒内生成后续28天的可靠预报,在不同季节的误差仅为2-3天。DK-STN显著优于ECMWF,其预报精度与ECMWF相当,而效率和稳定性则显著更优。