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STConvS2S: Spatiotemporal Convolutional Sequence to Sequence Network for weather forecasting

机译:Stconvs2s:天气预报序列网络的时空卷积序列

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摘要

Applying machine learning models to meteorological data brings many opportunities to the Geosciences field, such as predicting future weather conditions more accurately. In recent years, modeling meteorological data with deep neural networks has become a relevant area of investigation. These works apply either recurrent neural networks (RNN) or some hybrid approach mixing RNN and convolutional neural networks (CNN). In this work, we propose STConvS2S (Spatiotemporal Convolutional Sequence to Sequence Network), a deep learning architecture built for learning both spatial and temporal data dependencies using only convolutional layers. Our proposed architecture resolves two limitations of convolutional networks to predict sequences using historical data: (1) they violate the temporal order during the learning process and (2) they require the lengths of the input and output sequences to be equal. Computational experiments using air temperature and rainfall data from South America show that our architecture captures spatiotemporal context and that it outperforms or matches the results of state-of-the-art architectures for forecasting tasks. In particular, one of the variants of our proposed architecture is 23% better at predicting future sequences and five times faster at training than the RNN-based model used as a baseline. (C) 2020 Elsevier B.V. All rights reserved.
机译:将机器学习模型应用于气象数据为地球科学领域带来了许多机会,例如更准确地预测未来天气条件。近年来,具有深度神经网络的气象数据建模已成为一个相关的调查领域。这些作品适用于经常性神经网络(RNN)或一些混合方法混合RNN和卷积神经网络(CNN)。在这项工作中,我们提出了STConvs2s(Spatiotemporal卷积序列到序列网络),这是一种深度学习架构,用于仅使用卷积层学习空间和时间数据依赖性。我们所提出的体系结构解决了卷积网络的两个限制,以使用历史数据预测序列:(1)它们在学习过程中违反时间顺序,并且(2)它们需要输入和输出序列的长度等于相等的。来自南美洲的空气温度和降雨数据的计算实验表明,我们的架构捕获了时尚的背景,并且它优于现实的架构的结果来预测任务。特别是,我们所提出的架构的变体之一更好地在预测未来的序列时更好,并且在训练时比用作基线的基于RNN的模型快五倍。 (c)2020 Elsevier B.v.保留所有权利。

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