Machine-learning-constrained projection of bivariate hydrological drought magnitudes and socioeconomic risks over China

Rutong Liu, Jiabo Yin, Louise J. Slater, Shengyu Kang, Yuanhang Yang, Pan Liu, Jiali Guo, Xihui Gu, Xiang Zhang, Aliaksandr Volchak
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Abstract

Abstract. Climate change influences the water cycle and alters the spatiotemporal distribution of hydrological variables, thus complicating the projection of future streamflow and hydrological droughts. Although machine learning is increasingly employed for hydrological simulations, few studies have used it to project hydrological droughts, not to mention bivariate risks (referring to drought duration and severity) as well as their socioeconomic effects under climate change. We developed a cascade modeling chain to project future bivariate hydrological drought characteristics in 179 catchments over China, using five bias-corrected global climate model (GCM) outputs under three shared socioeconomic pathways (SSPs), five hydrological models, and a deep-learning model. We quantified the contribution of various meteorological variables to daily streamflow by using a random forest model, and then we employed terrestrial water storage anomalies and a standardized runoff index to evaluate recent changes in hydrological drought. Subsequently, we constructed a bivariate framework to jointly model drought duration and severity by using copula functions and the most likely realization method. Finally, we used this framework to project future risks of hydrological droughts as well as the associated exposure of gross domestic product (GDP) and population. Results showed that our hybrid hydrological–deep-learning model achieved > 0.8 Kling–Gupta efficiency in 161 out of the 179 catchments. By the late 21st century, bivariate drought risk is projected to double over 60 % of the catchments mainly located in southwestern China under SSP5-85, which shows the increase in drought duration and severity. Our hybrid model also projected substantial GDP and population exposure by increasing bivariate drought risks, suggesting an urgent need to design climate mitigation strategies for a sustainable development pathway.
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机器学习约束下的中国双变量水文干旱幅值和社会经济风险预测
摘要气候变化影响着水循环,改变着水文变量的时空分布,从而使未来河水流量和水文干旱的预测变得更加复杂。虽然机器学习越来越多地被用于水文模拟,但很少有研究将其用于预测水文干旱,更不用说气候变化下的二元风险(指干旱持续时间和严重程度)及其社会经济影响。我们开发了一个级联建模链,在三种共享的社会经济路径(SSPs)下,利用五个偏差校正的全球气候模式(GCM)输出、五个水文模型和一个深度学习模型来预测中国 179 个流域未来的双变量水文干旱特征。我们利用随机森林模型量化了各种气象变量对日流量的贡献,然后利用陆地蓄水异常和标准化径流指数评估了近期水文干旱的变化。随后,我们利用 copula 函数和最可能实现法构建了一个双变量框架,以联合模拟干旱持续时间和严重程度。最后,我们利用这一框架预测了未来的水文干旱风险以及与之相关的国内生产总值(GDP)和人口风险。结果表明,在 179 个流域中,我们的混合水文-深度学习模型在 161 个流域的克林-古普塔效率大于 0.8。根据 SSP5-85 预测,到 21 世纪末,主要位于中国西南部的 60% 的流域的双变量干旱风险将增加一倍,这表明干旱持续时间和严重程度都将增加。我们的混合模型还预测,由于二元干旱风险的增加,GDP 和人口将面临巨大风险,这表明迫切需要设计气候减缓战略,以实现可持续发展。
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