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首页> 外文期刊>Arabian journal of geosciences >Modeling the multiple time scale response of hydrological drought to climate change in the data-scarce inland river basin of Northwest China
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Modeling the multiple time scale response of hydrological drought to climate change in the data-scarce inland river basin of Northwest China

机译:建模水文干旱对中国西北地区内陆河流域气候变化的多次规模响应

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It is difficult to quantitatively assess the response of hydrological drought (HD) to climate change in the inland river basins of northwest China because of the complicated geographical environment and scarce data. To address this problem, we conducted a hybrid model by integrating the ensemble empirical mode decomposition (EEMD), the long short-term memory (LSTM) model, and the statistical downscaling method and selected the Aksu River Basin (ARB) as a typical representative of data-scarce inland river basin in northwest China to simulate its hydrological drought in the period of 1980-2015 based on reanalysis climate data and hydrological observation data. The coefficient of determination (R-2), the mean absolute error (MAE), the Nash-Sutcliffe efficiency coefficient (NSE), and the index of agreement d (d index) all showed high simulation accuracy of the hybrid model (R-2=0.712, MAE=0.304, NSE=0.706, and d index=0.901 of the Aksu River Basin), and the simulated effect of the hybrid model is much better than that of a single long short-term memory model. The simulated results in the Aksu River Basin by the model revealed that hydrological drought in the two subbasins (i.e. the Kumarik River Basin (KRB) and the Toshkam River Basin (TRB)) showed similar cycles on the seasonal scale, the interannual scale, and the interdecadal scale, which are mainly controlled and influenced by regional climate change. On the seasonal scale, the effect of precipitation and temperature on hydrological drought is not significant; on the interannual scale, precipitation is the key factor compared to temperature in inducing hydrological drought change; on the interdecadal scales, the correlations between precipitation, temperature, and hydrological drought were the strongest and most significant.
机译:由于具有复杂的地理环境和稀缺数据,难以定量评估水文干旱(HD)对西北地区内陆河流河流域气候变化的响应。为了解决这个问题,我们通过集成集合经验模式分解(EEMD),长短短期存储器(LSTM)模型以及统计缩小方法,并选择Aksu River盆地(ARB)作为典型代表来进行混合模型基于再分析气候数据和水文观测数据,在西北地区数据稀缺的内陆河流域在1980 - 2015年期间模拟其水文干旱。确定系数(R-2),平均绝对误差(MAE),NASH-SUTCLIFFE效率系数(NSE)以及协议指数D(D指数)所有都显示了Hybrid模型的高模拟精度(R- 2 = 0.712,MAE = 0.304,NSE = 0.706和D索引= 0.901的AKSU河流域),混合模型的模拟效果远优于单个长短期内存模型的模拟效果。 Aksu River盆地的模拟结果显示,两种子酶的水文干旱(即Kumarik河流域(KRB)和Toshkam河流域(TRB))在季节规模,际规模和跨越规模,主要受到区域气候变化的控制和影响。在季节性规模上,降水和温度对水文干旱的影响并不重要;在际规模上,与诱导水文干旱变化的温度相比,降水是关键因素;在跨越鳞状鳞片上,降水,温度和水文干旱之间的相关性最强,最显着。

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