Prior Data¶
Vegetation Prior Data¶
Note
TBD
Soil Moisture Prior Data¶
The provided prior data for the soil moisture domain is twofold. Mattia et al. [Mattia] show that the usage of climatological mean soil moisture information significantly improves soil moisture estimates from active microwave observations. Therefore, a soil moisture climatology is used as prior to get a general idea of the amplitude, variability and seasonal behaviour of the in situ soil moisture. Furthermore, a dynamic daily coarse resolution product is consulted for an a priori estimation of the current state.
The climatological prior data set has been generated from the global ESA CCI SM v04.4 COMBINED product which is derived from a combination of active and passive satellite sensors over the period 1978 - 2018. Originally, the data set provides daily surface soil moisture with a spatial resolution of 0.25 degree ([Dorigo]; [Gruber]; [Liu]). The data was aggregated to monthly means. Uncertainty is given by the intra-monthly standard deviation.
Data from the Soil Moisture Active Passive (SMAP) project is used as dynamic prior ([Reichle]). Specifically, the model-derived value-added Level 4 data product with 3-hourly estimates of soil moisture and respective error estimates at a 9 km resolution are averaged to daily values as the MULTIPLY platform assimilates data at this temporal resolution.
Climatological Soil Moisture July¶
- Mattia
Mattia, F. et al. (2006) Using a priori information to improve soil moisture retrieval from ENVISAT ASAR AP data in semiarid regions. IEEE Trans. Geosci. Remote Sens. 44: 900–912.
- Dorigo
Dorigo, W. A., et al., 2017, ESA CCI Soil Moisture for improved Earth system understanding: State-of-the art and future directions, Remote Sensing of Environment, 203, 185-215, 2017, doi:10.1016/j.rse.2017.07.001.
- Gruber
Gruber, A., et al., 2017, Triple Collocation-Based Merging of Satellite Soil Moisture Retrievals, Transactions on Geoscience and Remote Sensing, 55(12), 1-13. doi:10.1109/TGRS.2017.2734070.
- Liu
Liu, Y. Y., et al., 2012, Trend-preserving blending of passive and active microwave soil moisture retrievals, Remote Sensing of Environment, 123, 280-297.
- Reichle
Reichle, R. et al. 2014. SMAP Algorithm Theoretical Basis Document: L4 Surface and Root-Zone Soil Moisture Product. SMAP Project, JPL D-66483, Jet Propulsion Laboratory, Pasadena, CA, USA.