通过机器学习从历史气象站观测数据重建过去 300 年的蒸散趋势

Haiyang Shi
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摘要

估算历史蒸散量(ET)对于了解气候变化和人类活动对水循环的影响至关重要。本研究利用历史气象站数据,通过机器学习重建了过去 300 年的蒸散发趋势。以降水、温度、干旱指数和根系深度为预测因子,在FLUXNET2015流量站月度数据上训练出的随机森林模型,通过10倍交叉验证,R2达到0.66,KGE达到0.76。该模型应用于 5267 个气象站,得出的月度蒸散发数据显示,从 1700 年至今,全球蒸散发普遍增加,1900 年后由于气候变暖,蒸散发明显加速。在干旱地区,蒸散发与气温的相关性较弱,而在潮湿地区,两者的相关性要高得多。几个世纪以来,蒸散发与降水之间的相关性一直保持稳定。这项研究扩展了蒸散发数据的时间跨度,为了解蒸散发的长期历史趋势及其驱动因素提供了宝贵的视角,有助于评估历史气候变化和人类活动对水循环的影响,支持未来的气候适应战略。
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Evapotranspiration trends over the last 300 years reconstructed from historical weather station observations via machine learning
Estimating historical evapotranspiration (ET) is essential for understanding the effects of climate change and human activities on the water cycle. This study used historical weather station data to reconstruct ET trends over the past 300 years with machine learning. A Random Forest model, trained on FLUXNET2015 flux stations' monthly data using precipitation, temperature, aridity index, and rooting depth as predictors, achieved an R2 of 0.66 and a KGE of 0.76 through 10-fold cross-validation. Applied to 5267 weather stations, the model produced monthly ET data showing a general increase in global ET from 1700 to the present, with a notable acceleration after 1900 due to warming. Regional differences were observed, with higher ET increases in mid-to-high latitudes of the Northern Hemisphere and decreases in some mid-to-low latitudes and the Southern Hemisphere. In drylands, ET and temperature were weakly correlated, while in humid areas, the correlation was much higher. The correlation between ET and precipitation has remained stable over the centuries. This study extends the ET data time span, providing valuable insights into long-term historical ET trends and their drivers, aiding in reassessing the impact of historical climate change and human activities on the water cycle and supporting future climate adaptation strategies.
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