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Integrating Remote Sensing Data on Evapotranspiration and Leaf Area Index with Hydrological Modeling: Impacts on Model Performance and Future Predictions

机译:将蒸散量和叶面积指数的遥感数据与水文模型相结合:对模型性能和未来预测的影响

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Using the Connecticut River basin as an example, this study assesses the extent to which remote sensing data can help improve hydrological modeling and how it may influence projected future hydrological trends. The dynamic leaf area index (LAI) derived from satellite remote sensing was incorporated into the Variable Infiltration Capacity model (VIC) to enable an interannually varying seasonal cycle of vegetation (VICVEG); the evapotranspiration (ET) data based on remote sensing were combined with ET from a default VIC simulation to develop a simple bias-correction algorithm, and the simulation was then repeated with the bias-corrected ET replacing the simulated ET in the model (VICET). VICET performs significantly better in simulating the temporal variability of river discharge at daily, biweekly, monthly, and seasonal time scales, while VICVEG better captures the interannual variability of discharge, particularly in the winter and spring, and shows slight improvements to soil moisture estimates. The methodology of incorporating ET data into VIC as a bias-correction tool also influences the modeled future hydrological trends. Compared to the default VIC, VICET portrays a future characterized by greater drought risk and a stronger decreasing trend of minimum river flows. Integrating remote sensing data with hydrological modeling helps characterize the range of model-related uncertainties and more accurately reconstruct historic river flow estimates, leading to a better understanding and prediction of hydrological response to future climate changes.
机译:以康涅狄格河流域为例,本研究评估了遥感数据可在多大程度上帮助改善水文模型,以及它如何影响预计的未来水文趋势。来自卫星遥感的动态叶面积指数(LAI)被纳入可变入渗能力模型(VIC),以实现植被的年际变化季节周期(VICVEG);将基于遥感的蒸散量(ET)数据与默认VIC模拟中的ET结合,以开发一种简单的偏差校正算法,然后使用偏差校正的ET代替模型中的模拟ET(VICET)重复该仿真。 VICET在模拟每天,每两周,每月和季节性时间尺度上河流流量的时间变化方面表现要好得多,而VICVEG可以更好地捕获流量的年际变化,特别是在冬季和春季,并且对土壤湿度的估算略有改善。将ET数据纳入VIC作为偏差校正工具的方法学也影响了模拟的未来水文趋势。与默认的VIC相比,VICET描绘了一个未来,其特征是干旱风险更高,且最小河流量的下降趋势更强。将遥感数据与水文建模相集成有助于表征与模型有关的不确定性范围,并更准确地重建历史河流流量估算值,从而更好地理解和预测水文对未来气候变化的响应。

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