Deep neural network based on dynamic attention and layer attention for meteorological data downscaling

IF 10.6 1区 地球科学 Q1 GEOGRAPHY, PHYSICAL
Junkai Wang, Lianlei Lin, Zongwei Zhang, Sheng Gao, Hangyi Yu
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引用次数: 0

Abstract

The scale of meteorological data products does not match the requirements of application scenarios, which limits their application. It is suggested that large-scale reanalysis data must be downscaled before use. Attention mechanism is the key to high-performance downscaling models. However, in different application scenarios and different locations on the network, the attention mechanism is not always beneficial. In this paper, we propose a dynamic attention module that can adaptively generate weights for each branch based on input features, thereby dynamically suppressing unnecessary attention adjustments. At the same time, we propose a layer attention module, which can independently and adaptively aggregate the feature representation of different network layers. In addition, we design a unique loss function based on homoscedasticity uncertainty, which can directly guide the model to learn the numerical mapping relationship from low resolution to high resolution at the pixel level, and implicitly motivate the model to better reconstruct the data distribution of each meteorological field by guiding the model to learn the distribution difference between different meteorological fields. Experiments show that our model is more robust in time dimension, with an MAE average reduction of about 40% compared to VDSR and other methods in downscaling composite meteorological data. It can more accurately reconstruct multivariate high-resolution meteorological fields. Codes available at https://github.com/HitKarry/SDDN.

用于气象数据降尺度的基于动态关注和层关注的深度神经网络
气象数据产品的尺度与应用场景的要求不符,限制了其应用。建议大尺度再分析数据在使用前必须进行降尺度处理。注意机制是高性能降尺度模式的关键。然而,在不同的应用场景和网络的不同位置,关注机制并不总是有利的。在本文中,我们提出了一种动态注意力模块,它可以根据输入特征自适应地为每个分支生成权重,从而动态地抑制不必要的注意力调整。同时,我们还提出了层关注模块,它可以独立、自适应地聚合不同网络层的特征表示。此外,我们还设计了基于同方差不确定性的独特损失函数,可直接引导模型学习像素级从低分辨率到高分辨率的数值映射关系,并通过引导模型学习不同气象场之间的分布差异,隐含地激励模型更好地重建各气象场的数据分布。实验表明,我们的模型在时间维度上更具鲁棒性,在降尺度处理复合气象数据时,与 VDSR 和其他方法相比,平均 MAE 降低了约 40%。它能更准确地重建多变量高分辨率气象场。可在以下网址获取代码
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来源期刊
ISPRS Journal of Photogrammetry and Remote Sensing
ISPRS Journal of Photogrammetry and Remote Sensing 工程技术-成像科学与照相技术
CiteScore
21.00
自引率
6.30%
发文量
273
审稿时长
40 days
期刊介绍: The ISPRS Journal of Photogrammetry and Remote Sensing (P&RS) serves as the official journal of the International Society for Photogrammetry and Remote Sensing (ISPRS). It acts as a platform for scientists and professionals worldwide who are involved in various disciplines that utilize photogrammetry, remote sensing, spatial information systems, computer vision, and related fields. The journal aims to facilitate communication and dissemination of advancements in these disciplines, while also acting as a comprehensive source of reference and archive. P&RS endeavors to publish high-quality, peer-reviewed research papers that are preferably original and have not been published before. These papers can cover scientific/research, technological development, or application/practical aspects. Additionally, the journal welcomes papers that are based on presentations from ISPRS meetings, as long as they are considered significant contributions to the aforementioned fields. In particular, P&RS encourages the submission of papers that are of broad scientific interest, showcase innovative applications (especially in emerging fields), have an interdisciplinary focus, discuss topics that have received limited attention in P&RS or related journals, or explore new directions in scientific or professional realms. It is preferred that theoretical papers include practical applications, while papers focusing on systems and applications should include a theoretical background.
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