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首页> 外文期刊>Hydrology and Earth System Sciences >Comparing bias correction methods in downscaling meteorological variables for a hydrologic impact study in an arid area in China
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Comparing bias correction methods in downscaling meteorological variables for a hydrologic impact study in an arid area in China

机译:在中国干旱地区水文影响研究中按比例缩小气象变量的偏差校正方法比较

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摘要

Water resources are essential to the ecosystem and social economy in the desert and oasis of the arid Tarim River basin, northwestern China, and expected to be vulnerable to climate change. It has been demonstrated that regional climate models (RCMs) provide more reliable results for a regional impact study of climate change (e.g., on water resources) than general circulation models (GCMs). However, due to their considerable bias it is still necessary to apply bias correction before they are used for water resources research. In this paper, after a sensitivity analysis on input meteorological variables based on the Sobol' method, we compared five precipitation correction methods and three temperature correction methods in downscaling RCM simulations applied over the Kaidu River basin, one of the headwaters of the Tarim River basin. Precipitation correction methods applied include linear scaling (LS), local intensity scaling (LOCI), power transformation (PT), distribution mapping (DM) and quantile mapping (QM), while temperature correction methods are LS, variance scaling (VARI) and DM. The corrected precipitation and temperature were compared to the observed meteorological data, prior to being used as meteorological inputs of a distributed hydrologic model to study their impacts on streamflow. The results show (1) streamflows are sensitive to precipitation, temperature and solar radiation but not to relative humidity and wind speed; (2) raw RCM simulations are heavily biased from observed meteorological data, and its use for streamflow simulations results in large biases from observed streamflow, and all bias correction methods effectively improved these simulations; (3) for precipitation, PT and QM methods performed equally best in correcting the frequency-based indices (e.g., standard deviation, percentile values) while the LOCI method performed best in terms of the time-series-based indices (e.g., Nash-Sutcliffe coefficient, R-2); (4) for temperature, all correction methods performed equally well in correcting raw temperature; and (5) for simulated streamflow, precipitation correction methods have more significant influence than temperature correction methods and the performances of streamflow simulations are consistent with those of corrected precipitation; i.e., the PT and QM methods performed equally best in correcting flow duration curve and peak flow while the LOCI method performed best in terms of the time-series-based indices. The case study is for an arid area in China based on a specific RCM and hydrologic model, but the methodology and some results can be applied to other areas and models.
机译:水资源对中国西北干旱的塔里木河流域的沙漠和绿洲的生态系统和社会经济至关重要,并且有望受到气候变化的影响。已经证明,与一般循环模型(GCM)相比,区域气候模型(RCM)为气候变化(例如对水资源)的区域影响研究提供了更可靠的结果。但是,由于它们的偏差很大,在将其用于水资源研究之前仍需要进行偏差校正。在基于Sobol方法对输入气象变量进行敏感性分析之后,我们在塔里木河流域之一的开都河流域进行的降尺度RCM模拟中比较了五种降水校正方法和三种温度校正方法。 。所应用的降水校正方法包括线性缩放(LS),局部强度缩放(LOCI),功率变换(PT),分布映射(DM)和分位数映射(QM),而温度校正方法是LS,方差缩放(VARI)和DM 。将校正后的降水和温度与观测到的气象数据进行比较,然后再用作分布式水文模型的气象输入,以研究其对水流的影响。结果表明:(1)水流对降水,温度和太阳辐射敏感,但对相对湿度和风速不敏感; (2)原始RCM模拟与观测到的气象数据有很大的偏差,将其用于流量模拟会导致观测到的流量有较大的偏差,所有偏差校正方法均有效地改善了这些模拟; (3)对于降水而言,PT和QM方法在校正基于频率的指标(例如,标准偏差,百分位数)方面表现最佳,而LOCI方法在基于时间序列的指标(例如,纳什指数)方面表现最佳Sutcliffe系数,R-2); (4)对于温度,所有校正方法在校正原始温度方面均表现良好; (5)对于模拟流量,降水校正方法比温度校正方法的影响更大,并且流量模拟的性能与校正后的降水一致。即PT和QM方法在校正流量曲线和峰值流量方面表现最佳,而LOCI方法在基于时间序列的指数方面表现最佳。案例研究是基于特定的RCM和水文模型在中国的干旱地区进行的,但是该方法和一些结果可以应用于其他地区和模型。

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