Remote Sensing Data Assimilation to Improve the Seasonal Snow Cover Simulations Over the Heihe River Basin, Northwest China

IF 3.5 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES International Journal of Climatology Pub Date : 2024-11-06 DOI:10.1002/joc.8656
Gang Deng, Xiuguo Liu, Qikai Shen, Tongchang Zhang, Qihao Chen, Zhiguang Tang
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Abstract

The reliability of seasonal snow cover information is constrained by limitation of in situ observations and uncertainties in remote sensing data and model simulations in alpine region, thus posing important challenges to understanding the climate system and water resource management in alpine region. Here, the assimilation of daily cloud-free Moderate Resolution Imaging Spectroradiometer (MODIS) normalised difference snow index (NDSI) product into an intermediate complexity snow mass and energy balance model—Flexible Snow Model (version FSM2_MO)—was implemented. The aim is to improve the model simulations of seasonal snow cover (snow-covered extent; SCE, snow depth; SD, snow water equivalent; SWE, and snowmelt runoff; SMR) in the alpine region (a case of the upper-middle reaches of the Heihe River basin, Northwest China). The results indicate comprehensive improvement in the simulation of SCE, SD, and SMR in the study area through data assimilation, with the ability to significantly reduce prior biases of the FSM2_MO. Based on the independent daily cloud-free Advanced Very High Resolution Radiometer (AVHRR) SCE product, the updated SCE simulation (i.e., data assimilation) showed a reduction in mean absolute error (MAE) from 10.46% to 7.16%, root mean square error (RMSE) from 16.14% to 12.26%, and an increase in Pearson's correlation coefficient (CC) from 0.18 to 0.67 compared with the open loop simulation (i.e., without assimilation). The evaluation results of SD observation data showed that data assimilation improved SD simulation compared with the open loop run (OL). And utilising the monthly discharge observations at the Yingluoxia hydrological station, data assimilation slightly improved the SMR simulation. The updated SMR simulation achieved a CC of 0.91, Nash-Sutcliffe efficiency coefficient (NSE) of 0.73, and Kling-Gupta efficiency coefficient (KGE) of 0.76. Moreover, the Landsat 8-derived snow cover map and Sentinel-1-derived SD also indicated that the updated simulation effectively filled in the missing snow cover and removed the superfluous snow cover predicted by the OL simulation in terms of spatial distribution.

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遥感数据同化改进黑河流域季节积雪模拟
高寒地区季节性积雪信息的可靠性受到原位观测的限制以及遥感数据和模式模拟的不确定性的制约,这对了解高寒地区气候系统和水资源管理提出了重要挑战。本文将每日无云中分辨率成像光谱仪(MODIS)的归一化雪指数(NDSI)产品同化为一个中等复杂程度的雪质量和能量平衡模型——柔性雪模型(FSM2_MO版本)。目的是改进季节积雪(积雪覆盖范围;SCE:雪深;SD:雪水当量;SWE和融雪径流;(以黑河中上游地区为例)。结果表明,通过数据同化,研究区SCE、SD和SMR的模拟得到了全面改善,并能显著降低FSM2_MO的先验偏差。基于独立的日无云高级甚高分辨率辐射计(AVHRR) SCE产品,更新后的SCE模拟(即数据同化)与开环模拟(即不同化)相比,平均绝对误差(MAE)从10.46%降低到7.16%,均方根误差(RMSE)从16.14%降低到12.26%,Pearson相关系数(CC)从0.18提高到0.67。SD观测数据的评价结果表明,与开环运行(OL)相比,数据同化改善了SD模拟。利用英洛峡水文站的月流量观测资料,同化数据对SMR模拟结果略有改善。更新后的SMR模拟CC为0.91,Nash-Sutcliffe效率系数(NSE)为0.73,Kling-Gupta效率系数(KGE)为0.76。此外,Landsat 8反演的积雪地图和sentinel -1反演的SD也表明,更新后的模拟在空间分布上有效地填补了OL模拟预测的缺失积雪,并去除了OL模拟预测的多余积雪。
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来源期刊
International Journal of Climatology
International Journal of Climatology 地学-气象与大气科学
CiteScore
7.50
自引率
7.70%
发文量
417
审稿时长
4 months
期刊介绍: The International Journal of Climatology aims to span the well established but rapidly growing field of climatology, through the publication of research papers, short communications, major reviews of progress and reviews of new books and reports in the area of climate science. The Journal’s main role is to stimulate and report research in climatology, from the expansive fields of the atmospheric, biophysical, engineering and social sciences. Coverage includes: Climate system science; Local to global scale climate observations and modelling; Seasonal to interannual climate prediction; Climatic variability and climate change; Synoptic, dynamic and urban climatology, hydroclimatology, human bioclimatology, ecoclimatology, dendroclimatology, palaeoclimatology, marine climatology and atmosphere-ocean interactions; Application of climatological knowledge to environmental assessment and management and economic production; Climate and society interactions
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