Heyvaert, Z., Scherrer, S., Dorigo, W., Bechtold, M., & De Lannoy, G. (2024). Joint assimilation of satellite-based surface soil moisture and vegetation conditions into the Noah-MP land surface model. Science of Remote Sensing, 9, Article 100129. https://doi.org/10.1016/j.srs.2024.100129
E120-08 - Forschungsbereich Klima- und Umweltfernerkundung
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Journal:
Science of Remote Sensing
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Date (published):
Jun-2024
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Number of Pages:
15
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Publisher:
Elsevier
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Peer reviewed:
Yes
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Keywords:
Soil moisture; Vegetation; Multi-sensor data assimilation; Multivariate data assimilation
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Abstract:
This study explores the potential of integrating satellite retrievals of surface soil moisture (SSM) and vegetation conditions into the Noah-MP land surface model. In total, five data assimilation (DA) experiments were carried out. One of the experiments only assimilates SSM retrievals from the Soil Moisture Active Passive mission, two experiments only assimilate retrievals of vegetation conditions: either optical retrievals of leaf area index (LAI) from the Copernicus Global Land Service, or X-band microwave-based retrievals of vegetation optical depth (VOD) from the Advanced Microwave Scanning Radiometer 2. Additionally, two joint DA experiments are performed, each incorporating SSM and one of the vegetation products. The DA experiments are compared with a model-only run, and all experiments are evaluated using independent ground reference data of soil moisture, evapotranspiration, net ecosystem exchange and gross primary production (GPP). Assimilating only SSM improves estimates of the soil moisture profile (median SSM anomaly correlation improves with 0.02 compared to a model-only run), whereas assimilating LAI predominantly improves GPP estimates (reduction in median RMSD of 0.024 gC m−2 day−1 compared to a model-only run). The joint assimilation of SSM and vegetation conditions captures both of these improvements in a single, physically consistent analysis product. The DA increments show that this combined setup allows one satellite product to compensate for potential degradations introduced into the system by the other product. Furthermore, the joint SSM and VOD DA experiment has the smallest ensemble spread in its estimates (21% reduction in SSM spread compared to a model-only run). Overall, our results underline the potential of multi-sensor and multivariate DA, in which information from different sources is combined to improve the estimates of several land surface states and fluxes simultaneously.
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Project title:
consistent climate data records of soil moisture and vegetation though data assimilation: I4489 (FWF - Österr. Wissenschaftsfonds)
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Project (external):
Research Foundation Flanders
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Project ID:
G0A7320N
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Research Areas:
Environmental Monitoring and Climate Adaptation: 100%