Triple Collocation of Ground-, Satellite- and Land Surface Model-Based Surface Soil Moisture Products in Oklahoma Part II: New Multi-Sensor Soil Moisture (MSSM) Product
Abstract
:1. Introduction
2. Data Sources
2.1. The Oklahoma Mesonet Soil Moisture Measurements
2.2. NLDAS-2 Noah Soil Moisture Estimations
2.3. SMAP L3 Soil Moisture Retrievals and SMAP L4 Modeled Product
2.4. The Automated Soil Moisture Mapping System (RK-SM)
2.5. Auxiliary Data
2.5.1. The 2016 National Land Cover Dataset
2.5.2. STATSGO Soil Texture
2.5.3. Oklahoma Climate Divisions
3. Methodology
3.1. Triple Collocation
3.2. Equal and Least Square Weighting
3.3. MSSM Product Assessment
4. Results
4.1. LSW Weight Optimization
4.2. State-Level Assessment of MSSM
4.3. MSSM Performance by Land Cover Type
4.4. MSSM Performance by Soil Texture Type
4.5. MSSM Performance by Climate Zone
4.6. Daily Time Series Intercomparison
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Approach | Pros | Cons |
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In situ |
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Satellite Remote Sensing |
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Aircraft-, UAS- or Ground-based Remote Sensing |
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Land Surface Models |
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Hong, Z.; Moreno, H.A.; Alvarez, L.V.; Li, Z.; Hong, Y. Triple Collocation of Ground-, Satellite- and Land Surface Model-Based Surface Soil Moisture Products in Oklahoma Part II: New Multi-Sensor Soil Moisture (MSSM) Product. Remote Sens. 2023, 15, 3450. https://doi.org/10.3390/rs15133450
Hong Z, Moreno HA, Alvarez LV, Li Z, Hong Y. Triple Collocation of Ground-, Satellite- and Land Surface Model-Based Surface Soil Moisture Products in Oklahoma Part II: New Multi-Sensor Soil Moisture (MSSM) Product. Remote Sensing. 2023; 15(13):3450. https://doi.org/10.3390/rs15133450
Chicago/Turabian StyleHong, Zhen, Hernan A. Moreno, Laura V. Alvarez, Zhi Li, and Yang Hong. 2023. "Triple Collocation of Ground-, Satellite- and Land Surface Model-Based Surface Soil Moisture Products in Oklahoma Part II: New Multi-Sensor Soil Moisture (MSSM) Product" Remote Sensing 15, no. 13: 3450. https://doi.org/10.3390/rs15133450
APA StyleHong, Z., Moreno, H. A., Alvarez, L. V., Li, Z., & Hong, Y. (2023). Triple Collocation of Ground-, Satellite- and Land Surface Model-Based Surface Soil Moisture Products in Oklahoma Part II: New Multi-Sensor Soil Moisture (MSSM) Product. Remote Sensing, 15(13), 3450. https://doi.org/10.3390/rs15133450