The Weather4cast 2021 competition gave the participants a task of predicting the time evolution of two-dimensional fields of satellite-based meteorological data. This paper describes the author's efforts, after initial success in the first stage of the competition, to improve the model further in the second stage. The improvements consisted of a shallower model variant that is competitive against the deeper version, adoption of the AdaBelief optimizer, improved handling of one of the predicted variables where the training set was found not to represent the validation set well, and ensembling multiple models to improve the results further. The largest quantitative improvements to the competition metrics can be attributed to the increased amount of training data available in the second stage of the competition, followed by the effects of model ensembling. Qualitative results show that the model can predict the time evolution of the fields, including the motion of the fields over time, starting with sharp predictions for the immediate future and blurring of the outputs in later frames to account for the increased uncertainty.
翻译:2021年的天气预报竞赛使参加者承担了预测卫星气象数据二维领域时间演变的任务,本文件介绍了作者在竞争第一阶段取得初步成功后为在第二阶段进一步改进模型所作的努力,改进包括一个较浅的模型变异,与更深的版本相比具有竞争力,采用了Adabelief优化器,改进了对一个预测变量的处理,而培训数据集被认为不能很好地代表验证数据集的预测变量之一的处理,并汇集了多种模型,以进一步改进结果。竞争计量指标在数量上的最大改进可归因于竞争第二阶段可获得的培训数据数量增多,随后是模型组合效应。定性结果显示,模型可以预测字段的时间演变,包括场随时间变化,从对近期的预测开始,并在以后的框架中模糊产出,以考虑到不确定性的增加。