首页> 外文期刊>Geoscientific Model Development Discussions >Data assimilation of in situ and satellite remote sensing data to 3D hydrodynamic lake models: a case study using Delft3D-FLOW v4.03 and OpenDA v2.4
【24h】

Data assimilation of in situ and satellite remote sensing data to 3D hydrodynamic lake models: a case study using Delft3D-FLOW v4.03 and OpenDA v2.4

机译:用Delft3D-Flow V4.03和Openda v2.4使用Delft3D-Flow v4.03和Openda V2.4的案例研究

获取原文
           

摘要

The understanding of physical dynamics is crucial to provide scientifically credible information on lake ecosystem management. We show how the combination of in situ observations, remote sensing data, and three-dimensional hydrodynamic (3D) numerical simulations is capable of resolving various spatiotemporal scales involved in lake dynamics. This combination is achieved through data assimilation (DA) and uncertainty quantification. In this study, we develop a flexible framework by incorporating DA into 3D hydrodynamic lake models. Using an ensemble Kalman filter, our approach accounts for model and observational uncertainties. We demonstrate the framework by assimilating in situ and satellite remote sensing temperature data into a 3D hydrodynamic model of Lake Geneva. Results show that DA effectively improves model performance over a broad range of spatiotemporal scales and physical processes. Overall, temperature errors have been reduced by 54%. With a localization scheme, an ensemble size of 20 members is found to be sufficient to derive covariance matrices leading to satisfactory results. The entire framework has been developed with the goal of near-real-time operational systems (e.g., integration into meteolakes.ch).
机译:对物理动态的理解至关重要,以便在科技湖生态系统管理中提供科学可信的信息。我们展示了原位观察,遥感数据和三维流体动力学(3D)数值模拟的组合能够解决涉及湖动态的各种时空尺度。通过数据同化(DA)和不确定量化来实现这种组合。在这项研究中,我们通过将DA结合到3D流体动力湖模型来开发灵活的框架。使用Ensemble Kalman滤波器,我们的方法考虑了模型和观察不确定性。我们通过将原位和卫星遥感温度数据和卫星遥感温度数据同化到日内瓦湖的3D流体动力模型来展示框架。结果表明,DA有效提高了广泛的时空秤和物理过程的模型性能。总体而言,温度误差减少了54%。利用本地化方案,发现了20个成员的集合大小足以导出导致的协方差矩阵导致令人满意的结果。整个框架已经通过近实时操作系统的目标(例如,集成到Meteolakes.ch)。

著录项

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