论文标题

基于注意机制的卷积网络,用于在中国降水

An attention mechanism based convolutional network for satellite precipitation downscaling over China

论文作者

Jing, Yinghong, Lin, Liupeng, Li, Xinghua, Li, Tongwen, Shen, Huanfeng

论文摘要

降水是水文循环的关键部分,是气候变化的敏感指标。全球降水测量(GPM)任务(IMERG)数据集的综合多卫星检索被广泛用于全球和区域降水研究。但是,他们的本地应用受到相对粗糙的空间分辨率的限制。因此,在本文中,提出了基于注意机制的卷积网络(AMCN),以降级GPM imerg每月降水数据。所提出的方法是一个端到端网络,由一个全局的跨意义模块,多因素跨科模块以及残留的卷积模块组成,全面考虑了降水与复杂的表面特征之间的潜在关系。此外,基于低分辨率沉淀的降解损失函数旨在物理限制网络训练,以在不同的时间和规模变化下提高所提出的网络的鲁棒性。实验表明,所提出的网络明显优于三种基线方法。最后,引入了一种地理差异分析方法,以进一步提高缩减结果,通过合并现场测量值以进行高质量和优质降水估计。

Precipitation is a key part of hydrological circulation and is a sensitive indicator of climate change. The Integrated Multi-satellitE Retrievals for the Global Precipitation Measurement (GPM) mission (IMERG) datasets are widely used for global and regional precipitation investigations. However, their local application is limited by the relatively coarse spatial resolution. Therefore, in this paper, an attention mechanism based convolutional network (AMCN) is proposed to downscale GPM IMERG monthly precipitation data. The proposed method is an end-to-end network, which consists of a global cross-attention module, a multi-factor cross-attention module, and a residual convolutional module, comprehensively considering the potential relationships between precipitation and complicated surface characteristics. In addition, a degradation loss function based on low-resolution precipitation is designed to physically constrain the network training, to improve the robustness of the proposed network under different time and scale variations. The experiments demonstrate that the proposed network significantly outperforms three baseline methods. Finally, a geographic difference analysis method is introduced to further improve the downscaled results by incorporating in-situ measurements for high-quality and fine-scale precipitation estimation.

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