High Impact Weather Research Department, National Institute of Meteorological Sciences, 33 Seohobuk-ro, Seogwipo-si, Jeju-do, 63568, South Korea.
Int J Biometeorol. 2022 Jul;66(7):1429-1443. doi: 10.1007/s00484-022-02287-1. Epub 2022 Apr 21.
Forecasting wind speed near the surface with high-spatial resolution is beneficial in agricultural management. There is a discrepancy between the wind speed information required for agricultural management and that produced by weather agencies. To improve crop yield and increase farmers' incomes, wind speed prediction systems must be developed that are customized for agricultural needs. The current study developed a high-resolution wind speed forecast system for agricultural purposes in South Korea. The system produces a wind speed forecast at 3 m aboveground with 100-m spatial resolution across South Korea. Logarithmic wind profile, power law, random forests, support vector regression, and extreme learning machine were tested as candidate methods for the downscaling wind speed data. The wind speed forecast system developed in this study provides good performance, particularly in inland areas. The machine learning-based methods give the better performance than traditional methods for downscaling wind speed data. Overall, the random forests are considered the best downscaling method in this study. Root mean square error and mean absolute error of wind speed prediction for 48 h using random forests are approximately 0.8 m/s and 0.5 m/s, respectively.
高空间分辨率的近地表风速预测对农业管理非常有益。农业管理所需的风速信息与气象机构提供的信息之间存在差异。为了提高作物产量和增加农民收入,必须开发针对农业需求的风速预测系统。本研究在韩国开发了一个用于农业目的的高分辨率风速预测系统。该系统可在韩国全境生成离地 3 米处的 100 米空间分辨率的风速预测。对数风速廓线、幂律、随机森林、支持向量回归和极限学习机被测试为降尺度风速数据的候选方法。本研究开发的风速预测系统性能良好,特别是在内陆地区。基于机器学习的方法在降尺度风速数据方面的性能优于传统方法。总的来说,随机森林被认为是本研究中最好的降尺度方法。使用随机森林对 48 小时的风速进行预测,其均方根误差和平均绝对误差分别约为 0.8 m/s 和 0.5 m/s。