基于Kriging和机器学习混合方法的气象数据空间插值方法

IF 3.5 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Julong Huang, Chuhan Lu, Dingan Huang, Yujing Qin, Fei Xin, Hao Sheng
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引用次数: 0

摘要

传统的气象数据空间插值方法通常基于线性插值。然而,随着观测数据时空分辨率的提高,当地邻近台站容易受到下垫面变化和高地形梯度的影响。此外,对于单个时间点的插值,无法从相邻时间点有效地提取连续变化信息,限制了插值的性能。本文提出了一种改进的混合深度学习-kriging方法,该方法将图神经网络(GNNs)预测模型与kriging插值算法相结合。gnn考虑随时间的动态变化,并结合空间和时间信息,以再分析数据作为输入估计(插值)目标气象站的气象数据。实验结果表明,混合插值方法在复杂地形和不均匀地表条件下具有良好的插值效果。与传统的克里格插值方法相比,该方法的插值效率得到了显著提高。此外,将混合方法应用于站格插值时,其插值效果仍优于克里格方法。因此,本研究为气象资料插值提供了新的方法和视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Spatial Interpolation Method for Meteorological Data Based on a Hybrid Kriging and Machine Learning Approach

A Spatial Interpolation Method for Meteorological Data Based on a Hybrid Kriging and Machine Learning Approach

Conventional spatial interpolation methods for meteorological data are usually based on linear interpolation. However, with the improvements in the temporal and spatial resolution of observational data, local neighbouring stations are susceptible to the influence of underlying surface changes and high terrain gradients. Moreover, for interpolation at a single time point, the inability to extract continuous change information effectively from adjacent times limits the interpolation performance. In this paper, an improved hybrid deep learning-kriging method is proposed that combines a graph neural networks (GNNs) prediction model with the kriging interpolation algorithm. The GNNs considers dynamic changes over time and combines spatial and temporal information to estimate (interpolate) meteorological data at target weather stations using reanalysis data as input. The experimental results show that the hybrid method exhibits good performance in interpolating station data in complex terrain areas and under uneven surface conditions. The interpolation effectiveness of this method is markedly improved compared to that of traditional kriging methods. Moreover, when applied to station-to-grid interpolation, the hybrid method still provides better interpolation results than those of kriging methods. Therefore, this research provides a new method and perspective for meteorological data interpolation.

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来源期刊
International Journal of Climatology
International Journal of Climatology 地学-气象与大气科学
CiteScore
7.50
自引率
7.70%
发文量
417
审稿时长
4 months
期刊介绍: The International Journal of Climatology aims to span the well established but rapidly growing field of climatology, through the publication of research papers, short communications, major reviews of progress and reviews of new books and reports in the area of climate science. The Journal’s main role is to stimulate and report research in climatology, from the expansive fields of the atmospheric, biophysical, engineering and social sciences. Coverage includes: Climate system science; Local to global scale climate observations and modelling; Seasonal to interannual climate prediction; Climatic variability and climate change; Synoptic, dynamic and urban climatology, hydroclimatology, human bioclimatology, ecoclimatology, dendroclimatology, palaeoclimatology, marine climatology and atmosphere-ocean interactions; Application of climatological knowledge to environmental assessment and management and economic production; Climate and society interactions
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