Department of Data Science and Knowledge Engineering, Maastricht University, The Netherlands.
Neural Netw. 2021 Dec;144:419-427. doi: 10.1016/j.neunet.2021.08.036. Epub 2021 Sep 10.
Weather nowcasting consists of predicting meteorological components in the short term at high spatial resolutions. Due to its influence in many human activities, accurate nowcasting has recently gained plenty of attention. In this paper, we treat the nowcasting problem as an image-to-image translation problem using satellite imagery. We introduce Broad-UNet, a novel architecture based on the core UNet model, to efficiently address this problem. In particular, the proposed Broad-UNet is equipped with asymmetric parallel convolutions as well as Atrous Spatial Pyramid Pooling (ASPP) module. In this way, the Broad-UNet model learns more complex patterns by combining multi-scale features while using fewer parameters than the core UNet model. The proposed model is applied on two different nowcasting tasks, i.e. precipitation maps and cloud cover nowcasting. The obtained numerical results show that the introduced Broad-UNet model performs more accurate predictions compared to the other examined architectures.
天气预报是指对短期内的气象要素进行高精度的空间分辨率预测。由于其在许多人类活动中的重要影响,准确的天气预报最近受到了广泛关注。在本文中,我们将天气预报问题视为一种使用卫星图像进行的图像到图像的翻译问题。我们引入了 Broad-UNet,这是一种基于核心 UNet 模型的新颖架构,用于有效地解决这个问题。特别是,所提出的 Broad-UNet 配备了不对称并行卷积以及空洞空间金字塔池化 (ASPP) 模块。通过这种方式,Broad-UNet 模型通过组合多尺度特征来学习更复杂的模式,同时使用比核心 UNet 模型更少的参数。所提出的模型应用于两个不同的天气预报任务,即降水图和云覆盖天气预报。所获得的数值结果表明,与其他检查的架构相比,引入的 Broad-UNet 模型能够进行更准确的预测。