Improving the Predictability of the US Seasonal Surface Temperature With Convolutional Neural Networks Trained on CESM2 LENS

被引:0
|
作者
An, Yujay [1 ,2 ]
Kim, Hyemi [3 ,4 ]
机构
[1] Ward Melville High Sch, InSTAR, East Setauket, NY USA
[2] Princeton Univ, Princeton, NJ USA
[3] Ewha Womans Univ, Dept Sci Educ, Seoul, South Korea
[4] SUNY Stony Brook, Sch Marine & Atmospher Sci, Stony Brook, NY 11794 USA
基金
新加坡国家研究基金会;
关键词
machine learning; seasonal predictability; ENSO; US temperature; TELECONNECTIONS; PRECIPITATION; PREDICTION; ENSEMBLE;
D O I
10.1029/2024JD040961
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
To better understand and improve the prediction of the seasonal surface temperature (TS) across the United States, we employed convolutional neural network (CNN) models trained on the Community Earth System Model Version 2 Large Ensemble (CESM2 LENS). We used lagged sea surface temperatures (SST) over the tropical Pacific region, containing the information of the El Ni & ntilde;o Southern Oscillation (ENSO), as input for the CNN models. ENSO is the principal driver of variability in seasonal US surface temperatures (TSUS) and employing CNN models allows for spatiotemporal aspects of ENSO to be analyzed to make seasonal TSUS predictions. For predicting TSUS, the CNN models exhibited significantly improved skill over standard statistical multilinear regression (MLR) models and dynamical forecasts across most regions in the US, for lead times ranging from 1 to 6 months. Furthermore, we employed the CNN models to predict seasonal TSUS during extreme ENSO events. For these events, the CNN models outperformed the MLR models in predicting the effects on seasonal TSUS, suggesting that the CNN models are able to capture the ENSO-TSUS teleconnection more effectively. Results from a heatmap analysis demonstrate that the CNN models utilize spatial features of ENSO rather than solely the magnitude of the ENSO events, indicating that the improved skill of seasonal TSUS is due to analyzing spatial variation in ENSO events. The proposed CNN model demonstrates a promising improvement in prediction skill compared to existing methods, suggesting a potential path forward for enhancing TSUS forecast skill from subseasonal to seasonal timescales. While seasonal temperature forecasting is crucial for decision makers, it is generally a difficult task. A major setback to statistical machine learning methods for forecasting is the limited observational record. In our study, to bypass this, we used simulated climate model data, not historical data, to train machine learning (ML) models for seasonal surface temperature forecasts. We applied this method to train convolutional neural networks (CNN), a type of ML model that can analyze spatial patterns in data. We found that using CNN models greatly improves seasonal temperature predictions compared to standard linear models and that the CNN models effectively analyze spatial patterns in ENSO to make more accurate predictions. We concluded that using ML models is a promising method to improve seasonal temperature forecasts over the US. Seasonal predictability of US temperature is compared between CNN, statistical, and dynamical models Training CNN models on CESM2 LENS improves the seasonal predictability of US temperature Considering the spatiotemporal variability of tropical Pacific SST contributes to seasonal predictability improvement
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页数:12
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