...
首页> 外文期刊>Hydrological Processes >Moving beyond run‐off calibration-Multivariable optimization of a surface-subsurface-atmosphere model
【24h】

Moving beyond run‐off calibration-Multivariable optimization of a surface-subsurface-atmosphere model

机译:超越径流校准-地表-地下-大气模型的多变量优化

获取原文
获取原文并翻译 | 示例
           

摘要

Spatially distributed hydrological models are traditionally calibrated and evaluated against few spatially aggregated observations such as river discharge. This model evaluation approach does not enable an assessment of the model predictive capabilities of other hydrological states and fluxes nor does it give any insight into the model ability to mimic the spatial patterns within a catchment. The current study explores a multivariable optimization of a complex coupled surface-subsurface-atmosphere model at the catchment scale in an attempt to move beyond simple run-off calibration. The model is evaluated against five independent observational data sets of discharge (Q), hydraulic head (h), actual evapotranspiration (ET), soil moisture (SM), and remotely sensed land surface temperature (LST). It is shown that a balanced optimization can be achieved where errors on objective functions for all five observation data sets can be reduced simultaneously. Additionally, the multivariable calibration proved more robust, compared with calibration against Q and h only, during the validation period, even for Q and h. The current parameterization and calibration framework was mainly suitable for reducing model biases and allowed only limited improvements in the spatio-temporal patterns of the model simulations. This points towards development of better parametrization schemes that will allow simulated spatial patterns to adjust during calibration. Additionally, analysis showed that systematic spatial patterns in the errors of the LST maps could be a very valuable diagnostic tool for assessing deficiencies in the model structure, spatial parameterization, or process description.
机译:传统上是对空间分布的水文模型进行校准和评估,而不是针对诸如河流流量之类的空间聚集的观测数据进行评估。这种模型评估方法无法评估其他水文状态和通量的模型预测能力,也无法深入了解模拟流域内空间格局的模型能力。当前的研究探索了流域尺度上复杂的地表-地下-大气耦合模型的多变量优化,以试图超越简单的径流校准。根据流量(Q),水头(h),实际蒸散量(ET),土壤湿度(SM)和遥感地表温度(LST)的五个独立的观测数据集对模型进行评估。结果表明,可以实现均衡的优化,同时可以减少所有五个观测数据集目标函数的误差。此外,与仅针对Q和h的校准相比,在验证期间,即使针对Q和h,多变量校准也被证明更加可靠。当前的参数化和校准框架主要适合于减少模型偏差,并且仅允许有限程度地改善模型仿真的时空模式。这指向了更好的参数化方案的发展,该方案将允许在校准过程中调整模拟的空间模式。此外,分析表明,LST映射图误差中的系统空间模式对于评估模型结构,空间参数化或过程描述中的缺陷可能是非常有价值的诊断工具。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号