This paper proposes a spatio-temporal model for wind speed prediction which can be run at different resolutions. The model assumes that the wind prediction of a cluster is correlated to its upstream influences in recent history, and the correlation between clusters is represented by a directed dynamic graph. A Bayesian approach is also described in which prior beliefs about the predictive errors at different data resolutions are represented in a form of Gaussian processes. The joint framework enhances the predictive performance by combining results from predictions at different data resolution and provides reasonable uncertainty quantification. The model is evaluated on actual wind data from the Midwest U.S. and shows a superior performance compared to traditional baselines.
翻译:本文提出了一个可按不同分辨率运行的时速风速预测spatio-时空模型。模型假定对一个集群的风预测与其近代历史的上游影响相关,而各集群之间的关联则由定向动态图表示。还描述了一种巴伊西亚办法,其中先前对不同数据分辨率预测错误的信念以高斯进程的形式表示。联合框架将不同数据分辨率预测的结果结合起来,提供了合理的不确定性量化,从而增强了预测性能。模型根据中西美国的实际风数据进行了评估,并显示与传统基线相比业绩优于业绩。