We develop a subseasonal forecasting toolkit of simple learned benchmark models that outperform both operational practice and state-of-the-art machine learning and deep learning methods. Our new models include (a) Climatology++, an adaptive alternative to climatology that, for precipitation, is 9% more accurate and 250% more skillful than the United States operational Climate Forecasting System (CFSv2); (b) CFSv2++, a learned CFSv2 correction that improves temperature and precipitation accuracy by 7-8% and skill by 50-275%; and (c) Persistence++, an augmented persistence model that combines CFSv2 forecasts with lagged measurements to improve temperature and precipitation accuracy by 6-9% and skill by 40-130%. Across the contiguous U.S., our Climatology++, CFSv2++, and Persistence++ toolkit consistently outperforms standard meteorological baselines, state-of-the-art machine and deep learning methods, and the European Centre for Medium-Range Weather Forecasts ensemble. Overall, we find that augmenting traditional forecasting approaches with learned enhancements yields an effective and computationally inexpensive strategy for building the next generation of subseasonal forecasting benchmarks.
翻译:我们开发了一个由简单学习的基准模型构成的次季节预测工具包,该工具优于操作实践和最先进的机器学习和深层学习方法。我们的新模型包括:(a) 气候学+++,这是一个适应气候学的替代方法,对于降水而言,它比美国运行的气候预报系统(CFSvv2);(b) CFSv2++,一个学习的CFSv2校正,它使温度和降水的精确度提高7-8%,使降水的精确度提高50-275%;以及(c) 常温+,一个强化的持久性模型,将CFSv2的预测与滞后的测量结合起来,提高温度和降水的精确度6-9%,技能提高40-130%。横跨毗连的美国,我们的气候学++、CFSv2++和Persantence+工具包始终超越标准气象基线、最新机器和深层学习方法,以及欧洲中层气象预报中心。总体而言,我们发现,将传统预报方法与传统预测方法的预测方法扩大,将可实现有效的海量测算。