通过在潜空间进行有指导的迭代预测,有效改进关键天气变量预报

Shuangliang Li, Siwei Li
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引用次数: 0

摘要

天气预报是指学习一些关键高层空气和地表变量的演变模式,这一点非常重要。近年来,基于深度学习的方法因其强大的特征学习能力而被越来越多地应用于天气预报领域。因此,我们提出了一种 "编码-预测-解码 "预测网络,该网络能有效地受益于更多与关键变量相关的输入变量,即它能自适应地从更多的输入大气变量中提取与关键变量相关的低维潜在特征进行迭代预测。我们构建了一个损失函数,利用多个大气变量在相应的前导时间内迭代潜特征。此外,我们还通过输入更多的时间步长来提高预测结果与输入变量之间的时间相关性,从而改进了 HTA 算法的准确性。在ERA5数据集上的定性和定量预测结果都验证了我们的方法优于其他方法。(代码见 https://github.com/rs-lsl/Kvp-lsi)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficiently improving key weather variables forecasting by performing the guided iterative prediction in latent space
Weather forecasting refers to learning evolutionary patterns of some key upper-air and surface variables which is of great significance. Recently, deep learning-based methods have been increasingly applied in the field of weather forecasting due to their powerful feature learning capabilities. However, prediction methods based on the original space iteration struggle to effectively and efficiently utilize large number of weather variables. Therefore, we propose an 'encoding-prediction-decoding' prediction network. This network can efficiently benefit to more related input variables with key variables, that is, it can adaptively extract key variable-related low-dimensional latent feature from much more input atmospheric variables for iterative prediction. And we construct a loss function to guide the iteration of latent feature by utilizing multiple atmospheric variables in corresponding lead times. The obtained latent features through iterative prediction are then decoded to obtain the predicted values of key variables in multiple lead times. In addition, we improve the HTA algorithm in \cite{bi2023accurate} by inputting more time steps to enhance the temporal correlation between the prediction results and input variables. Both qualitative and quantitative prediction results on ERA5 dataset validate the superiority of our method over other methods. (The code will be available at https://github.com/rs-lsl/Kvp-lsi)
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