TY - JOUR T1 - A Data-Driven Random Subfeature Ensemble Learning Algorithm for Weather Forecasting AU - Yu , Chen AU - Li , Haochen AU - Xia , Jiangjiang AU - Wen , Hanqiuzi AU - Zhang , Pingwen JO - Communications in Computational Physics VL - 4 SP - 1305 EP - 1320 PY - 2020 DA - 2020/08 SN - 28 DO - http://doi.org/ 10.4208/cicp.OA-2020-0006 UR - https://global-sci.org/intro/article_detail/cicp/18099.html KW - Weather forecasting, ensemble learning, machine learning, feature engineering. AB -

In this paper, the RSEL (Random Subfeature Ensemble Learning) algorithm is proposed to improve the forecast results of weather forecasting. Based on the classical machine learning algorithms, RSEL algorithm integrates random subfeature selection and ensemble learning combination strategy to enhance the diversity of the features and avoid the influence of a small number of unstable outliers generated randomly. Furthermore, the feature engineering schemes are designed for the weather forecast data to make full use of spatial or temporal context. RSEL algorithm is tested by forecasting the wind speed and direction, and it improves the forecast accuracy of traditional methods and has good robustness.