Systematic modelling errors undermine the application of land data assimilation systems for hydrological and weather forecasting

IF 3.1 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Wade T. Crow, Hyunglok Kim, Sujay Kumar
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Abstract

Abstract Due to recent advances in the development of land data assimilation systems (LDAS) and the availability of high-quality, satellite-based surface soil moisture (SSM) retrieval products, we now have unambiguous evidence that the assimilation of SSM retrievals, or their proxy, can improve the precision (i.e., correlation versus truth) of surface state estimates provided by a land surface model (LSM). However, this clarity does not yet extend to the estimation of LSM surface water fluxes that are key to hydrologic and numerical weather forecasting applications. Here, we hypothesize that a key obstacle to extrapolating realized improvements in water state precision into comparable improvements in water flux accuracy (i.e., mean absolute error) is the presence of water-state/water-flux coupling strength biases existing in LSMs. To test this hypothesis, we conduct a series of synthetic fraternal twin data assimilation experiments where realistic levels of state/flux coupling strength bias - involving both evapotranspiration and runoff - are systematically introduced into an assimilation LSM. Results show that the accuracy of the resulting water flux analysis is sharply reduced by the presence of such bias – even in cases where the precision of soil moisture state estimates (e.g., SSM) is improved. The re-scaling of SSM observations prior to their assimilation (i.e., the most common approach for addressing systematic differences between LSMs and assimilated observations) is not always a robust strategy for addressing these errors and can, in certain circumstances, degrade water flux accuracy. Overall, results underscore the critical need to assess, and correct for, LSM water-state/water-flux coupling strength biases during the operation of an LDAS.
系统模拟误差破坏了土地数据同化系统在水文和天气预报中的应用
由于近年来土地数据同化系统(LDAS)的发展和高质量、基于卫星的地表土壤湿度(SSM)检索产品的可用性,我们现在有明确的证据表明,SSM检索的同化或其代理可以提高陆地表面模型(LSM)提供的地表状态估计的精度(即相关性与真值)。然而,这种明朗化尚未扩展到对水文和数值天气预报应用至关重要的LSM地表水通量的估计。在这里,我们假设,将已实现的水态精度改进外推到水通量精度(即平均绝对误差)的可比改进的关键障碍是lsm中存在的水态/水通量耦合强度偏差。为了验证这一假设,我们进行了一系列合成异卵双胞胎数据同化实验,其中系统地将实际水平的状态/通量耦合强度偏差(包括蒸散发和径流)引入同化LSM。结果表明,即使在土壤湿度状态估计(例如SSM)的精度得到提高的情况下,由于这种偏差的存在,所得到的水通量分析的准确性也大大降低。在同化之前对SSM观测进行重新标度(即,解决lsm与同化观测之间系统差异的最常用方法)并不总是解决这些误差的可靠策略,并且在某些情况下可能会降低水通量精度。总的来说,结果强调了评估和纠正LSM在LDAS运行期间水态/水通量耦合强度偏差的必要性。
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来源期刊
Journal of Hydrometeorology
Journal of Hydrometeorology 地学-气象与大气科学
CiteScore
7.40
自引率
5.30%
发文量
116
审稿时长
4-8 weeks
期刊介绍: The Journal of Hydrometeorology (JHM) (ISSN: 1525-755X; eISSN: 1525-7541) publishes research on modeling, observing, and forecasting processes related to fluxes and storage of water and energy, including interactions with the boundary layer and lower atmosphere, and processes related to precipitation, radiation, and other meteorological inputs.
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