Changes in United States Summer Temperatures Revealed by Explainable Neural Networks

被引:1
|
作者
Labe, Zachary M. [1 ]
Johnson, Nathaniel C. [2 ]
Delworth, Thomas L. [2 ]
机构
[1] Princeton Univ, Atmospher & Ocean Sci Program, Princeton, NJ 08540 USA
[2] NOAA, OAR, Geophys Fluid Dynam Lab, Princeton, NJ USA
基金
美国海洋和大气管理局;
关键词
climate change; climate variability; large ensembles; timing of emergence; forced signals; machine learning; GFDL GLOBAL ATMOSPHERE; EARTH SYSTEM MODEL; CLIMATE-CHANGE; INTERNAL VARIABILITY; LARGE ENSEMBLES; WARMING HOLE; HEAT WAVES; EMERGENCE; TIME; UNCERTAINTIES;
D O I
10.1029/2023EF003981
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
To better understand the regional changes in summertime temperatures across the conterminous United States (CONUS), we adopt a recently developed machine learning framework that can be used to reveal the timing of emergence of forced climate signals from the noise of internal climate variability. Specifically, we train an artificial neural network (ANN) on seasonally averaged temperatures across the CONUS and then task the ANN to output the year associated with an individual map. In order to correctly identify the year, the ANN must therefore learn time-evolving patterns of climate change amidst the noise of internal climate variability. The ANNs are first trained and tested on data from large ensembles and then evaluated using observations from a station-based data set. To understand how the ANN is making its predictions, we leverage a collection of ad hoc feature attribution methods from explainable artificial intelligence (XAI). We find that anthropogenic signals in seasonal mean minimum temperature have emerged by the early 2000s for the CONUS, which occurred earliest in the Eastern United States. While our observational timing of emergence estimates are not as sensitive to the spatial resolution of the training data, we find a notable improvement in ANN skill using a higher resolution climate model, especially for its early twentieth century predictions. Composites of XAI maps reveal that this improvement is linked to temperatures around higher topography. We find that increases in spatial resolution of the ANN training data may yield benefits for machine learning applications in climate science. While temperatures around the world continue to warm due to human-caused climate change, some areas have observed smaller temperature trends than others. Understanding this regional variability in the rate of warming is important when assessing future projections. One location that has observed less warming is across the United States during their summer season. To evaluate temperature variability in this region using real-world observations and climate model simulations, we use a statistical method from artificial intelligence called neural networks. The goal of the neural network setup is to learn temperature patterns across the United States and then identify whether climate change effects have exceeded the range of natural variability that has occurred in the past. This is called the timing of emergence (ToE), which is the first year that the effect has clearly appeared. We find that the average United States minimum temperature increase has already emerged in historical records. However, we find no ToE for the average maximum temperature, other than in the Western United States. Another important finding of this study is that by using higher resolution climate model data (i.e., more latitude and longitude points), we find better accuracy in the neural network predictions. Forced temperature changes have emerged in observations during summer in the United States as detected by an artificial neural network Increasing spatial resolution improves neural network skill for predicting the year of a given summer temperature map Western United States land surface climate properties contribute to earlier timing of emergence predictions for the SPEAR climate model
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页数:28
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