基于小波分解和Boruta选择的多层次时间卷积网络模型预测月降水

IF 3.1 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Hydrometeorology Pub Date : 2023-11-01 DOI:10.1175/jhm-d-22-0177.1
Lizhi Tao, Xinguang He, Jiajia Li, Dong Yang
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引用次数: 0

摘要

摘要本文提出了一种多级时间卷积网络(MTCN)模型,用于1个月前的降水预测。在MTCN模型中,首先利用正交小波变换(ATWT)将标准化的月降水异常及其候选预测因子分解成不同时间尺度的分量。然后,在每个时间水平上,结合Boruta选择算法(TCN- b)从相应的预测分量中识别重要的模型输入,构建时序卷积网络(TCN)模型来预测降水异常分量。最后,将所有预测异常分量相加,对标准化月降水量进行逆变换,实现降水预报。利用长江流域189个台站的月降水量对MTCN进行了验证,并与TCN- b和TCN进行了比较。将TCN与Boruta算法耦合形成TCN- b。比较结果表明,TCN- b模型的性能优于TCN模型,其中MTCN模型的性能最好。与TCN相比,MTCN对所有台站,特别是盆地东部台站都提供了显著的改善。三种模型在春夏季表现较好,在冬季表现最弱。与其他两种模式相比,MTCN在预测四季降水方面有较大的改进。三种模式在流域西部的预测效果均优于东部,这与降水变率的空间分布密切相关。
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A Multilevel Temporal Convolutional Network Model with Wavelet Decomposition and Boruta Selection for Forecasting Monthly Precipitation
Abstract In this study, a multilevel temporal convolutional network (MTCN) model is proposed for 1-month-ahead forecasting of precipitation. In the MTCN model, à trous wavelet transform (ATWT) is first utilized to decompose the standardized monthly precipitation anomaly and its candidate predictors into their components with the different time scales. Then, at each of the time levels, a temporal convolutional network (TCN) model is built to forecast the precipitation anomaly component by combining with the Boruta selection algorithm (TCN-B) for identifying important model inputs from corresponding predictor components. Finally, the precipitation forecast is achieved by summing all the forecasted anomaly components and applying the inverse transform of the standardized monthly precipitation. The proposed MTCN is tested and compared to the TCN-B and TCN using monthly precipitation at 189 stations in the Yangtze River basin. The TCN-B is formed by coupling the TCN with the Boruta algorithm. The comparison results show that the TCN-B outperforms the TCN, and the MTCN has the best performance among the three models. Compared to the TCN, the MTCN provides a significant improvement for all stations, especially for the eastern stations of the basin. It is also shown that all three models perform better in spring and summer and have the weakest abilities in winter. The MTCN has a great improvement in predicting precipitation of all four seasons compared with the other two models. Additionally, all three models exhibit better prediction performance in the western region than in the eastern region of the basin, which is strongly related to the spatial distribution of precipitation variability.
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来源期刊
Journal of Hydrometeorology
Journal of Hydrometeorology 地学-气象与大气科学
CiteScore
7.40
自引率
5.30%
发文量
116
审稿时长
4-8 weeks
期刊介绍: The Journal of Hydrometeorology (JHM) (ISSN: 1525-755X; eISSN: 1525-7541) publishes research on modeling, observing, and forecasting processes related to fluxes and storage of water and energy, including interactions with the boundary layer and lower atmosphere, and processes related to precipitation, radiation, and other meteorological inputs.
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