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Comparative Assessment of Various Machine Learning‐Based Bias Correction Methods for Numerical Weather Prediction Model Forecasts of Extreme Air Temperatures in Urban Areas

机译:基于机器学习的偏差校正方法对城市地区极端空气温度的数值天气预报模型预测的比较评估

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Forecasts of maximum and minimum air temperatures are essential to mitigate the damage of extreme weather events such as heat waves and tropical nights. The Numerical Weather Prediction (NWP) model has been widely used for forecasting air temperature, but generally it has a systematic bias due to its coarse grid resolution and lack of parametrizations. This study used random forest (RF), support vector regression (SVR), artificial neural network (ANN) and a multi‐model ensemble (MME) to correct the Local Data Assimilation and Prediction System (LDAPS; a local NWP model over Korea) model outputs of next‐day maximum and minimum air temperatures ( and ) in Seoul, South Korea. A total of 14 LDAPS model forecast data, the daily maximum and minimum air temperatures of in‐situ observations, and five auxiliary data were used as input variables. The results showed that the LDAPS model had an R2 of 0.69, a bias of ?0.85?°C and an RMSE of 2.08?°C for forecast, whereas the proposed models resulted in the improvement with R2 from 0.75 to 0.78, bias from ?0.16 to ?0.07?°C and RMSE from 1.55 to 1.66?°C by hindcast validation. For forecasting , the LDAPS model had an R2 of 0.77, a bias of 0.51?°C and an RMSE of 1.43?°C by hindcast, while the bias correction models showed R2 values ranging from 0.86 to 0.87, biases from ?0.03 to 0.03?°C, and RMSEs from 0.98 to 1.02?°C. The MME model had better generalization performance than the three single machine learning models by hindcast validation and leave‐one‐station‐out cross‐validation.
机译:最大和最小空气温度的预测对于减轻热浪和热带夜晚的极端天气事件的损害至关重要。数值天气预报(NWP)模型已广泛用于预测空气温度,但通常由于其粗网分辨率和缺乏参数化而具有系统偏差。本研究使用随机森林(RF),支持向量回归(SVR),人工神经网络(ANN)和多模型集合(MME)来纠正本地数据同化和预测系统(LDAPS;韩国的本地NWP模型)韩国首尔的第二天最大和最小空气温度(和)模型输出。总共14个LDAPS模型预测数据,原位观测的每日最大和最小空气温度,以及五个辅助数据被用作输入变量。结果表明,LDAPS模型的R2为0.69,偏差为0.85Ω°C和预测的RMSE,而拟议的模型导致R2从0.75升至0.78,偏差0.16至?0.07?°C,并通过Hindcast验证从1.55到1.66?°C的RMSE。对于预测,LDAPS模型的R2为0.77,偏置0.51Ω°C,并通过Hindcast的RMSE为1.43Ω·℃,而偏置模型显示R2​​值从0.86到0.87,偏差为0.03〜0.03 ?°C,和RMSE为0.98至1.02°C。 MME模型具有比Hindcast验证的三种单机学习模型更好的泛化性能,并留出一站式交叉验证。

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