降水
气候学
环境科学
气候变化
全球变暖
风暴
气候模式
自然(考古学)
气象学
地理
地质学
海洋学
考古
作者
Yoo‐Geun Ham,Jeong Hwan Kim,Seung‐Ki Min,Daehyun Kim,Tim Li,Axel Timmermann,Malte F. Stuecker
出处
期刊:Nature
[Springer Nature]
日期:2023-08-30
卷期号:622 (7982): 301-307
被引量:16
标识
DOI:10.1038/s41586-023-06474-x
摘要
According to twenty-first century climate-model projections, greenhouse warming will intensify rainfall variability and extremes across the globe1-4. However, verifying this prediction using observations has remained a substantial challenge owing to large natural rainfall fluctuations at regional scales3,4. Here we show that deep learning successfully detects the emerging climate-change signals in daily precipitation fields during the observed record. We trained a convolutional neural network (CNN)5 with daily precipitation fields and annual global mean surface air temperature data obtained from an ensemble of present-day and future climate-model simulations6. After applying the algorithm to the observational record, we found that the daily precipitation data represented an excellent predictor for the observed planetary warming, as they showed a clear deviation from natural variability since the mid-2010s. Furthermore, we analysed the deep-learning model with an explainable framework and observed that the precipitation variability of the weather timescale (period less than 10 days) over the tropical eastern Pacific and mid-latitude storm-track regions was most sensitive to anthropogenic warming. Our results highlight that, although the long-term shifts in annual mean precipitation remain indiscernible from the natural background variability, the impact of global warming on daily hydrological fluctuations has already emerged.
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