A new model is presented for multisite statistical downscaling of temperature and precipitation using convolutional conditional neural processes (convCNPs). ConvCNPs are a recently developed class of models that allow deep learning techniques to be applied to off-the-grid spatio-temporal data. This model has a substantial advantage over existing downscaling methods in that the trained model can be used to generate multisite predictions at an arbitrary set of locations, regardless of the availability of training data. The convCNP model is shown to outperform an ensemble of existing downscaling techniques over Europe for both temperature and precipitation taken from the VALUE intercomparison project. The model also outperforms an approach that uses Gaussian processes to interpolate single-site downscaling models at unseen locations. Importantly, substantial improvement is seen in the representation of extreme precipitation events. These results indicate that the convCNP is a robust downscaling model suitable for generating localised projections for use in climate impact studies, and motivates further research into applications of deep learning techniques in statistical downscaling.
翻译:该模型比现有的缩小尺度方法有很大的优势,因为无论培训数据是否到位,经过培训的模型都可用于在任意地点进行多点预测,而无论培训数据是否可用,都可用于对温度和降水进行多点统计降级。该模型显示,在从VALUE相互比较项目中获取的温度和降水的现有降级技术方面,超越了欧洲现有降级技术的共合体。该模型还超越了利用高斯进程在未见地点对单点降级模型进行内推的方法。重要的是,在极端降水事件的代表性方面,可以看到显著的改进。这些结果表明,ConvCNP是一种稳健的降级模型,适合于生成本地化预测,供气候影响研究使用,并激励进一步研究在下层统计降级中应用深层学习技术。