Machine Learning-Based Soil Moisture Retrieval from Sentinel-1A Observations over the International Soil Moisture Networks
Highlights
- Tree-based ensemble models, especially XGBoost, outperform deep learning algorithms and achieve the highest retrieval accuracy at global and regional scales.
- XGBoost is insensitive to Sentinel-1A orbital geometry, enabling multi-orbit data fusion to improve temporal resolution without accuracy loss.
- The validated global and regional calibration framework supports flexible production of high-spatiotemporal-resolution soil moisture datasets, balancing generalization ability for large-scale mapping and high precision for local applications.
- The orbit insensitivity of XGBoost enables the fusion of multi-orbit Sentinel-1A observations, which can substantially improve the temporal resolution of soil moisture products without compromising accuracy, greatly benefiting operational hydrological and agricultural monitoring.
Abstract
1. Introduction
2. Materials
2.1. ISMN SM Networks
2.2. Dataset
2.2.1. Sentinel-1A Data
2.2.2. MODIS Data
2.2.3. ERA5-Land Data
2.2.4. Preparation of Datasets
3. Methodology
3.1. Machine Learning Methods
3.1.1. RF
3.1.2. XGBoost
3.1.3. CNN
3.1.4. LSTM
3.2. Model Performance Evaluation
4. Results
4.1. Evaluation at the Global Scale
4.2. Evaluation at the Regional Scale
4.3. Model Performance on the Station Scale
4.4. Model Performance on the Relative Orbit
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Network | No. of Station Used | No. of Relative Orbit | No. of Samples | IGBP Land Cover * | Reference |
|---|---|---|---|---|---|
| AMMA-CATCH | 7 | 1 | 245 | 10, 12 | [18] |
| ARM | 15 | 3 | 2671 | 10, 12 | [19] |
| BIEBRZA-S-1 | 18 | 3 | 2666 | 10 | [20] |
| COSMOS-UK | 21 | 11 | 12,389 | 4, 5, 9, 10, 12, 14 | [21] |
| FMI | 17 | 6 | 5990 | 8, 9, 10 | [22] |
| FR_Aqui | 3 | 3 | 2156 | 8 | [23] |
| HOAL | 32 | 2 | 6037 | 12 | [24] |
| HOBE | 28 | 5 | 6923 | 1, 5, 9, 12, 14 | [25] |
| iRON | 8 | 3 | 563 | 9, 10 | [26] |
| OZNET | 6 | 1 | 458 | 10, 12 | [27] |
| PBO_H2O | 45 | 8 | 744 | 2, 6, 7, 8, 9, 10, 12 | [28] |
| REMEDHUS | 20 | 3 | 12,345 | 7, 10, 12 | [29] |
| RISMA | 22 | 7 | 1346 | 12 | [30] |
| RSMN | 11 | 10 | 5741 | 12 | - |
| Ru_CFR | 1 | 1 | 41 | 5 | - |
| SCAN | 175 | 51 | 21,796 | 1, 2, 4, 5, 7, 8, 9, 10, 12, 14 | [31] |
| SD_DEM | 1 | 1 | 102 | 10 | [32] |
| SMN-SDR | 33 | 4 | 1437 | 10 | [33] |
| SMOSMANIA | 21 | 9 | 12,406 | 5, 8, 9, 10, 12, 14 | [34] |
| SNOTEL | 370 | 32 | 36,866 | 1, 5, 7, 8, 9, 10 | - |
| TAHMO | 3 | 1 | 302 | 8, 9, 10, 12, 14 | - |
| TERENO | 5 | 4 | 3504 | 5, 9, 12 | [35] |
| TxSON | 40 | 2 | 4296 | 9, 10 | [36] |
| USCRN | 90 | 44 | 12,254 | 1, 2, 4, 5, 6, 7, 8, 9, 10, 12, 14 | [37] |
| Category | Input Variables | Description | Data Source |
|---|---|---|---|
| Sentinel-1A (Dynamic) | VV | VV-polarized backsatter (dB) | Sentinel-1A IW GRD |
| VH | VH-polarized backsatter (dB) | ||
| Theta | Local incidence angle (°) | ||
| Vegetation (Dynamic) | LAI | Leaf area index (m2/m2) | MODIS MCD15A3H |
| NDVI | Normalized difference vegetation index (-) | MODIS MCD13A2 | |
| EVI | Enhanced vegetation index (-) | ||
| Meteorology (Dynamic) | ERA5-Land topsoil SM | 0–7 cm SM (m3/m3) | ERA5-Land |
| ERA5-Land topsoil ST | 0–7 cm ST (°C) | ||
| Geospatial (Static) | Latitude | Geographic latitude (°) | Geographic data |
| Longtitude | Geographic longitude (°) | ||
| DEM | Digital elevation model (m) | Topographic data |
| Methods | Bias (m3/m3) | MAE (m3/m3) | RMSE (m3/m3) | ubRMSE (m3/m3) | R2 (-) |
|---|---|---|---|---|---|
| RF | 0.001 | 0.035 | 0.049 | 0.049 | 0.823 |
| XGBoost | −0.001 | 0.033 | 0.048 | 0.048 | 0.831 |
| CNN | 0.002 | 0.049 | 0.065 | 0.065 | 0.688 |
| LSTM | −0.002 | 0.064 | 0.082 | 0.082 | 0.501 |
| Stations | At Regional Scale | At Global Scale | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Bias (m3/m3) | MAE (m3/m3) | RMSE (m3/m3) | ubRMSE (m3/m3) | R2 (-) | Bias (m3/m3) | MAE (m3/m3) | RMSE (m3/m3) | ubRMSE (m3/m3) | R2 (-) | |
| Canizal | −0.000 | 0.005 | 0.015 | 0.015 | 0.958 | 0.001 | 0.022 | 0.030 | 0.030 | 0.844 |
| Carretoro | 0.001 | 0.002 | 0.006 | 0.006 | 0.965 | 0.000 | 0.011 | 0.014 | 0.014 | 0.808 |
| CasaPeriles | 0.000 | 0.003 | 0.010 | 0.010 | 0.959 | −0.001 | 0.014 | 0.019 | 0.019 | 0.863 |
| ConcejodelMonte | 0.000 | 0.004 | 0.013 | 0.013 | 0.972 | −0.001 | 0.021 | 0.028 | 0.028 | 0.880 |
| ElCoto | 0.001 | 0.002 | 0.005 | 0.005 | 0.925 | 0.001 | 0.009 | 0.012 | 0.011 | 0.548 |
| ElTomillar | 0.001 | 0.002 | 0.007 | 0.007 | 0.913 | 0.002 | 0.011 | 0.015 | 0.015 | 0.657 |
| Granja-g | 0.001 | 0.004 | 0.012 | 0.012 | 0.966 | −0.000 | 0.018 | 0.024 | 0.024 | 0.871 |
| Guarrati | −0.002 | 0.009 | 0.025 | 0.024 | 0.952 | −0.0012 | 0.029 | 0.040 | 0.040 | 0.886 |
| LaAtalaya | 0.001 | 0.003 | 0.007 | 0.007 | 0.987 | 0.004 | 0.014 | 0.018 | 0.018 | 0.924 |
| LaCruzdeElias | 0.001 | 0.005 | 0.013 | 0.013 | 0.967 | −0.001 | 0.020 | 0.026 | 0.026 | 0.867 |
| LasArenas | −0.001 | 0.005 | 0.013 | 0.013 | 0.972 | −0.002 | 0.021 | 0.028 | 0.028 | 0.882 |
| LasBodegas | 0.001 | 0.004 | 0.011 | 0.011 | 0.948 | −0.001 | 0.013 | 0.018 | 0.018 | 0.854 |
| LasBrozas | 0.000 | 0.003 | 0.008 | 0.008 | 0.961 | 0.001 | 0.016 | 0.021 | 0.021 | 0.780 |
| LasEritas | 0.000 | 0.005 | 0.014 | 0.014 | 0.963 | −0.003 | 0.018 | 0.024 | 0.024 | 0.899 |
| LasTresRayas | 0.001 | 0.005 | 0.016 | 0.016 | 0.928 | 0.003 | 0.023 | 0.030 | 0.030 | 0.773 |
| LasVacas | −0.000 | 0.003 | 0.009 | 0.009 | 0.965 | 0.001 | 0.012 | 0.017 | 0.017 | 0.885 |
| LasVictorias | 0.000 | 0.002 | 0.005 | 0.005 | 0.952 | 0.001 | 0.008 | 0.011 | 0.011 | 0.742 |
| LlanosdelaBoveda | 0.000 | 0.005 | 0.016 | 0.016 | 0.969 | −0.001 | 0.025 | 0.035 | 0.035 | 0.869 |
| Paredinas | 0.001 | 0.002 | 0.004 | 0.004 | 0.979 | 0.002 | 0.009 | 0.012 | 0.012 | 0.812 |
| Zamarron | −0.000 | 0.003 | 0.008 | 0.008 | 0.974 | −0.001 | 0.014 | 0.018 | 0.018 | 0.882 |
| Stations | Relative Orbits | Bias (m3/m3) | MAE (m3/m3) | RMSE (m3/m3) | ubRMSE (m3/m3) | R2 (-) | Bias (m3/m3) | MAE (m3/m3) | RMSE (m3/m3) | ubRMSE (m3/m3) | R2 (-) |
|---|---|---|---|---|---|---|---|---|---|---|---|
| Gevenich | 15 | −0.001 | 0.009 | 0.025 | 0.025 | 0.905 | 0.001 | 0.027 | 0.036 | 0.036 | 0.869 |
| 88 | −0.002 | 0.006 | 0.020 | 0.020 | 0.940 | −0.001 | 0.035 | 0.044 | 0.044 | 0.792 | |
| 37 | −0.004 | 0.009 | 0.021 | 0.021 | 0.932 | 0.001 | 0.035 | 0.043 | 0.043 | 0.799 | |
| 139 | −0.001 | 0.007 | 0.022 | 0.022 | 0.922 | −0.001 | 0.031 | 0.038 | 0.038 | 0.868 | |
| Merzenhausen | 15 | −0.001 | 0.005 | 0.014 | 0.014 | 0.962 | −0.001 | 0.020 | 0.028 | 0.028 | 0.876 |
| 88 | 0.001 | 0.006 | 0.018 | 0.018 | 0.940 | −0.001 | 0.028 | 0.039 | 0.039 | 0.740 | |
| 37 | −0.001 | 0.006 | 0.019 | 0.019 | 0.929 | 0.001 | 0.025 | 0.034 | 0.034 | 0.802 | |
| 139 | −0.001 | 0.006 | 0.020 | 0.019 | 0.924 | 0.002 | 0.025 | 0.035 | 0.035 | 0.774 | |
| Schoeneseiffen | 88 | 0.001 | 0.006 | 0.018 | 0.018 | 0.954 | −0.002 | 0.022 | 0.031 | 0.031 | 0.865 |
| 37 | 0.001 | 0.008 | 0.023 | 0.023 | 0.919 | 0.001 | 0.025 | 0.036 | 0.036 | 0.808 | |
| 139 | 0.001 | 0.007 | 0.017 | 0.017 | 0.955 | 0.002 | 0.024 | 0.034 | 0.034 | 0.834 | |
| Selhausen | 15 | −0.001 | 0.006 | 0.015 | 0.015 | 0.944 | −0.002 | 0.018 | 0.025 | 0.025 | 0.859 |
| 88 | −0.001 | 0.004 | 0.012 | 0.012 | 0.963 | −0.003 | 0.019 | 0.026 | 0.026 | 0.834 | |
| 37 | −0.002 | 0.005 | 0.016 | 0.016 | 0.939 | 0.002 | 0.022 | 0.030 | 0.030 | 0.790 | |
| 139 | 0.001 | 0.006 | 0.017 | 0.017 | 0.934 | 0.000 | 0.021 | 0.029 | 0.029 | 0.819 | |
| Wildenrath | 88 | −0.000 | 0.005 | 0.017 | 0.017 | 0.947 | 0.001 | 0.025 | 0.034 | 0.034 | 0.815 |
| 37 | 0.001 | 0.009 | 0.023 | 0.023 | 0.901 | 0.001 | 0.026 | 0.038 | 0.038 | 0.746 | |
| 139 | 0.003 | 0.010 | 0.024 | 0.024 | 0.898 | −0.001 | 0.021 | 0.030 | 0.030 | 0.853 |
| Methods | Bias (m3/m3) | MAE (m3/m3) | RMSE (m3/m3) | ubRMSE (m3/m3) | R2 (-) |
|---|---|---|---|---|---|
| RF | 0.001 | 0.037 | 0.051 | 0.051 | 0.827 |
| XGBoost | 0.001 | 0.033 | 0.047 | 0.047 | 0.848 |
| CNN | 0.005 | 0.053 | 0.070 | 0.070 | 0.672 |
| LSTM | −0.001 | 0.069 | 0.087 | 0.087 | 0.49 |
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Wang, J.; Wang, Y.; Bai, X.; Shao, W. Machine Learning-Based Soil Moisture Retrieval from Sentinel-1A Observations over the International Soil Moisture Networks. Remote Sens. 2026, 18, 1914. https://doi.org/10.3390/rs18121914
Wang J, Wang Y, Bai X, Shao W. Machine Learning-Based Soil Moisture Retrieval from Sentinel-1A Observations over the International Soil Moisture Networks. Remote Sensing. 2026; 18(12):1914. https://doi.org/10.3390/rs18121914
Chicago/Turabian StyleWang, Jingyang, Yuzhu Wang, Xiaojing Bai, and Wei Shao. 2026. "Machine Learning-Based Soil Moisture Retrieval from Sentinel-1A Observations over the International Soil Moisture Networks" Remote Sensing 18, no. 12: 1914. https://doi.org/10.3390/rs18121914
APA StyleWang, J., Wang, Y., Bai, X., & Shao, W. (2026). Machine Learning-Based Soil Moisture Retrieval from Sentinel-1A Observations over the International Soil Moisture Networks. Remote Sensing, 18(12), 1914. https://doi.org/10.3390/rs18121914

