Sun Wenchao, Ishidaira Hiroshi, Bastola Satish, Yu Jingshan
College of Water Sciences, Beijing Normal University, Xinjiekouwai Street 19, Beijing 100875, China; Joint Center for Global Change Studies (JCGCS), Beijing 100875, China.
Interdisciplinary Graduate School of Medicine and Engineering, University of Yamanashi, 4-3-11, Takeda, Kofu, Yamanashi 400-8511, Japan.
Environ Res. 2015 May;139:36-45. doi: 10.1016/j.envres.2015.01.002. Epub 2015 Feb 11.
Lacking observation data for calibration constrains applications of hydrological models to estimate daily time series of streamflow. Recent improvements in remote sensing enable detection of river water-surface width from satellite observations, making possible the tracking of streamflow from space. In this study, a method calibrating hydrological models using river width derived from remote sensing is demonstrated through application to the ungauged Irrawaddy Basin in Myanmar. Generalized likelihood uncertainty estimation (GLUE) is selected as a tool for automatic calibration and uncertainty analysis. Of 50,000 randomly generated parameter sets, 997 are identified as behavioral, based on comparing model simulation with satellite observations. The uncertainty band of streamflow simulation can span most of 10-year average monthly observed streamflow for moderate and high flow conditions. Nash-Sutcliffe efficiency is 95.7% for the simulated streamflow at the 50% quantile. These results indicate that application to the target basin is generally successful. Beyond evaluating the method in a basin lacking streamflow data, difficulties and possible solutions for applications in the real world are addressed to promote future use of the proposed method in more ungauged basins.
缺乏用于校准的观测数据限制了水文模型在估算日流量时间序列方面的应用。遥感技术的最新进展使得能够从卫星观测中检测河流的水面宽度,从而实现从太空追踪流量。在本研究中,通过应用于缅甸未测流的伊洛瓦底江流域,展示了一种使用遥感得出的河宽校准水文模型的方法。广义似然不确定性估计(GLUE)被选作自动校准和不确定性分析的工具。在50000个随机生成的参数集中,基于将模型模拟与卫星观测进行比较,有997个被确定为有效。对于中高流量条件,流量模拟的不确定性范围可以涵盖10年平均月观测流量的大部分。在50%分位数处,模拟流量的纳什-萨特克利夫效率为95.7%。这些结果表明该方法在目标流域的应用总体上是成功的。除了在缺乏流量数据的流域评估该方法外,还探讨了在现实世界中应用的困难及可能的解决方案,以促进该方法在更多未测流流域的未来应用。