Application of ConvLSTM Network in Numerical Temperature Prediction Interpretation

Hong Lin, Yunzi Hua, Leiming Ma, Lei Chen
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引用次数: 9

Abstract

The application research of machine learning methods has attracted attention in the meteorological field. In this paper, we establish a spatiotemporal temperature deviation prediction model (PredTemp) based on convolution and long short-term memory network (ConvLSTM). The model is trained with numerical weatherprediction (NWP), and the prediction results are used to correct the temperature prediction in NWP. Exploring the influence of the weather elements added to the model on the prediction results is also the focus of this paper. Two datasets are constructed for this purpose: the temperature forecast deviationdataset (dataset1) is constructed by using the temperature forecastsand the analysis field in NWP, a precipitation forecast dataset (dataset2) was constructed using the precipitation forecasts in NWP. The experimental results show that the model is effective. Using dataset1 as dataset for training, the accuracy rate of temperaturecorrected by PredTempwas increased by 3%compared to NWP; using dataset1 and dataset2 as dataset for training, the accuracy rate of temperature corrected by PredTemp was increased by 4%. The addition of precipitation elements has played a positive role in improving the accuracy of the model prediction.
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ConvLSTM网络在数值温度预报解释中的应用
机器学习方法在气象领域的应用研究备受关注。本文建立了基于卷积和长短期记忆网络(ConvLSTM)的时空温度偏差预测模型PredTemp。利用数值天气预报(NWP)对模型进行训练,并利用预报结果对数值天气预报中的温度预报进行校正。探讨模型中加入的气象要素对预测结果的影响也是本文研究的重点。为此构建了两个数据集:利用NWP的温度预报和分析场构建温度预报偏差数据集(dataset1),利用NWP的降水预报构建降水预报数据集(dataset2)。实验结果表明,该模型是有效的。使用dataset1作为训练数据集,predtemp的温度校正准确率比NWP提高了3%;使用dataset1和dataset2作为训练数据集,PredTemp对温度校正的准确率提高了4%。降水要素的加入对提高模式预测精度起到了积极的作用。
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