Numerical weather prediction (NWP) and machine learning (ML) methods are popular for solar forecasting. However, NWP models have multiple possible physical parameterizations, which requires site-specific NWP optimization. This is further complicated when regional NWP models are used with global climate models with different possible parameterizations. In this study, an alternative approach is proposed and evaluated for four radiation models. Weather Research and Forecasting (WRF) model is run in both global and regional mode to provide an estimate for solar irradiance. This estimate is then post-processed using ML to provide a final prediction. Normalized root-mean-square error from WRF is reduced by up to 40-50% with this ML error correction model. Results obtained using CAM, GFDL, New Goddard and RRTMG radiation models were comparable after this correction, negating the need for WRF parameterization tuning. Other models incorporating nearby locations and sensor data are also evaluated, with the latter being particularly promising.
翻译:数字天气预测(NWP)和机器学习(ML)方法在太阳预报方面很受欢迎。然而,NWP模型具有多种可能的物理参数化,这需要具体地点的NWP优化。当区域NWP模型与具有不同参数化的全球气候模型一起使用时,情况就更加复杂了。在这项研究中,为四种辐射模型提出了替代方法并进行评估。天气研究和预报(WRF)模型以全球和区域模式运行,以提供太阳辐照估计。然后,利用ML进行后处理,以提供最后预测。WRF的正常根平均值方差与ML错误校正模型减少40-50 % 。在进行校正后,使用CAM、GDDL、New Goddard和RRTMG辐射模型得出的结果是可比的,排除了WRF参数化调整的需要。还评估了其他包括附近地点和传感器数据的模型,后者特别有希望。