School of Marine and Atmospheric Sciences, Stony Brook University, New York, NY, USA.
Department of Oceanography, Chonnam National University, Gwangju, South Korea.
Nat Commun. 2021 May 25;12(1):3087. doi: 10.1038/s41467-021-23406-3.
Producing accurate weather prediction beyond two weeks is an urgent challenge due to its ever-increasing socioeconomic value. The Madden-Julian Oscillation (MJO), a planetary-scale tropical convective system, serves as a primary source of global subseasonal (i.e., targeting three to four weeks) predictability. During the past decades, operational forecasting systems have improved substantially, while the MJO prediction skill has not yet reached its potential predictability, partly due to the systematic errors caused by imperfect numerical models. Here, to improve the MJO prediction skill, we blend the state-of-the-art dynamical forecasts and observations with a Deep Learning bias correction method. With Deep Learning bias correction, multi-model forecast errors in MJO amplitude and phase averaged over four weeks are significantly reduced by about 90% and 77%, respectively. Most models show the greatest improvement for MJO events starting from the Indian Ocean and crossing the Maritime Continent.
由于其日益增长的社会经济价值,制作精确的两周以上天气预报是一个紧迫的挑战。Madden-Julian 震荡(MJO)是一种行星尺度的热带对流系统,是全球亚季节(即三到四周)可预测性的主要来源。在过去的几十年中,业务预报系统有了很大的改进,而 MJO 的预测能力尚未达到其潜在的可预测性,部分原因是不完善的数值模型造成的系统误差。在这里,为了提高 MJO 的预测能力,我们将最先进的动力预报和观测与深度学习偏差校正方法相结合。通过深度学习偏差校正,MJO 幅度和相位的多模式预测误差在四周内分别显著降低了约 90%和 77%。对于从印度洋开始并穿过马六甲海峡的 MJO 事件,大多数模型的改进最大。