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A Novel Two-Factor Attention Encoder-Decoder Network through Combining Temporal and Prior Knowledge for Weather Forecasting

机译:结合时间和先验知识的天气预报两要素注意力编解码器网络

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This paper proposes a novel two-factor attention based encoder-decoder model (TwoFactorEncoderDecoder) for multivariate weather prediction. The proposed model learns attention weights from two factors, namely, temporal information and prior knowledge inferred information. Here, temporal information contains change patterns hidden in observed time series data, while prior knowledge inferred information gives various types of meteorological observations in weather forecasting. Attention weights of the two factors are used to select the intermediate outputs of the encoder, and then combine the selected result with information inferred by prior knowledge for weather forecasting by a more effective way. In addition, this paper proposes a loss function for multivariate prediction. Compared with Mean Square Error (MSE) loss function, the proposed loss function can fit small variances more accurately in performing multivariate prediction. Compared with the attention model that only uses temporal information or the prior knowledge inferred information, the proposed TwoFactorEncoderDecoder model has encouraging improvements in prediction accuracy on the public weather forecasting dataset, namely, the MAPE of t2m is increased by 5.42%, the MAPE of rh2m is increased by 2.92%, and the MAPE of w2m is increased by 1.67%, which shows the effect of the two-factor attention mechanism. Source code for the complete system will be available at https://github.com/YuanMLer/TFAEncoderDecoder.
机译:本文提出了一种用于多变量天气预报的基于新的基于双因素的编码器 - 解码器模型(Twofactorencoderdecoder)。所提出的模型从两个因素,即时间信息和先验知识推断信息中学习引起注意力。这里,时间信息包含隐藏在观察时间序列数据中的改变模式,而现有知识推断信息在天气预报中提供各种类型的气象观测。两个因素的注意重量用于选择编码器的中间输出,然后将所选择的结果与通过更有效的方式的天气预报的现有知识推断出来的信息。此外,本文提出了多元预测的损失函数。与均方误差(MSE)损失功能相比,所提出的损耗函数可以更准确地在执行多变量预测时更准确地符合小差异。与仅使用时间信息或先前知识推断信息的注意模型相比,所提出的Twofactorencoderdecoder模型令人鼓舞的预测准确性对公共天气预报数据集的预测准确性,即T2M的mape增加了5.42%,rh2m的mape增加了2.92%,MAPE的W2M增加了1.67%,显示了双因素注意机制的影响。完整系统的源代码将在https://github.com/yuanmler/tfaencoderdecoder上使用。

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