Applicability Assessment of Passive Microwave LST Downscaling over Semi–Homogeneous Desert Underlying Surface Based on Machine Learning
<p>Overview of study area.</p> "> Figure 2
<p>Flowchart of data processing steps.</p> "> Figure 3
<p>Histogram of correlations between 16 feature vectors and LST. (<b>a</b>) Daytime. (<b>b</b>) Nighttime.</p> "> Figure 3 Cont.
<p>Histogram of correlations between 16 feature vectors and LST. (<b>a</b>) Daytime. (<b>b</b>) Nighttime.</p> "> Figure 4
<p>Spatial patterns of correlations between 16 feature vectors and LST. (<b>a</b>) Daytime. (<b>b</b>) Nighttime.</p> "> Figure 4 Cont.
<p>Spatial patterns of correlations between 16 feature vectors and LST. (<b>a</b>) Daytime. (<b>b</b>) Nighttime.</p> "> Figure 5
<p>Results of 10–fold cross–validation of five combinations of feature vectors. (<b>a</b>) Daytime. (<b>b</b>) Nighttime.</p> "> Figure 6
<p>(<b>a</b>) Scatter diagram of downscaled LST obtained with daytime Catboost models (V–H/H/V/Phy/VH and EVI) against MYD11A data. (<b>b</b>) Scatter diagram of downscaled LST obtained with nighttime Catboost models (V–H/H/V/Phy/VH and EVI) against MYD11A data.</p> "> Figure 7
<p>Importance bar graph of model (Catboost based on VH channels and EVI) factors for daytime and nighttime data.</p> "> Figure 8
<p>Correlation plots of Catboost VH|EVI–downscaled LST against 6–layer station data. (<b>a</b>) Daytime. (<b>b</b>) Nighttime.</p> "> Figure 9
<p>D represents day LST, and N represents night LST. (1) Cloud–free MODIS LST (K) at 1 km resolution, (2) AMSR–2–derived LST (K) at 1 km resolution, and (3) merged MODIS and AMSR–2 LST (K) at 1 km resolution.</p> ">
Abstract
:1. Introduction
2. Method
2.1. Study Area
2.2. Datasets
2.2.1. Remote Sensing Data
2.2.2. Ground–Measured Data
2.2.3. Data Processing
- (1)
- AMSR–2 and MODIS data were resampled to 10 km × 10 km (D1). Then, MYD11A1 pixels with quality average LST error ≤ 1 K were selected to match AMSR–2 microwave BT data and MYD13A2 vegetation index data.
- (2)
- The spatial correlation of the feature vectors was statistically analyzed. In order to obtain the spatial pattern of correlation coefficients (r) and probability (p) for each feature vector, 14 BTs and 2 vegetation indices were correlated with MYD11A1 data at a resolution of 10 km. The frequency distribution statistics of the correlation coefficients were calculated. On this basis, the frequency distribution characteristics and spatial characteristics of the correlation between each feature vector and LST data were analyzed.
- (3)
- Downscaled combinations of feature vectors were constructed. Based on the statistical analysis of correlation and the research studies of previous scholars, feature vector combinations were selected to train the Catboost model. The feature combinations were 7–channel algorithm [24] (difference between vertical polarization and horizontal polarization (V–H)), horizontal polarization combination [42] (7 horizontally polarized channels (H)), vertical polarization combination [42] (7 vertically polarized channels (V)), semi–empirical combination [32] (36.5 V/36.5 V–23.8 V/36.5 V–18.7 H/89 V GHz (Phy)), and full channel combination [42] (14 channels (VH)), respectively. The five microwave vector combinations were combined with vegetation indices to train five models of machine learning. The five models were initially evaluated using “10–fold cross–validation” to avoid overfitting [58,59,60].
- (4)
- Passive microwave BT data were resampled to 1 km (D2) using the nearest neighbor algorithm. Then, the 1 km MYD13A3 vegetation index data of the corresponding pixels were composed of five sets of feature vectors, which were input to the five machine learning models at 10 km resolution, respectively. The output 1 km pixels were the passive microwave surface temperature downscaling results.
- (5)
- MYD11A1 quality average LST error ≤1 K clear–sky pixels were selected to assess the consistency of downscaled surface temperature and MODIS data. Ten–fold cross–validation and MODIS validation were used to determine which was the optimal combination of downscaling feature vectors for the LST of a semi–heterogeneous underlying surface.
- (6)
- Six–layer soil temperature data from Fukang station were selected for accuracy verification both to determine the correlation between soil temperature and passive microwave LST downscaling for each layer and to evaluate the optimal model. The importance of each feature vector in the optimal model was also summarized and analyzed in this last step.
2.3. Methods
2.3.1. Microwave Radiation Transmission Theory—Radiative Transmission Model for Microwave Surface Temperature Inversion
2.3.2. Categorical Boosting—Catboost
2.3.3. Validation Methods
3. Result
3.1. Correlation Statistical Analysis of Feature Vectors and LST
3.2. Ten–Fold Cross–Validation of Catboost for Five Feature Vector Combinations
3.3. Intercomparison and Analysis of LST Downscaling Results Based on Catboost
3.4. Microwave Surface Temperature Correlation Analysis Based on Six–Layer Ground Temperature Data
3.5. Catboost–Based, Diurnal, All–Weather Surface Temperature Products
4. Discussion
5. Conclusions
- (1)
- The correlation coefficients between the feature vectors and LST of the semi–homogeneous underlying surface differed significantly from those of the surrounding oases, with the difference being more pronounced for daytime data. Specifically, the correlation coefficient of the semi–homogeneous underlying surface was high, while that of the surrounding oases was low. Moreover, we observed that the correlations between vertically polarized BT and LST were higher than those of horizontal polarization at the same frequency. As the frequency increased, the differences between the BT–LST correlation with horizontal polarization and that with vertical polarization at the same frequency became smaller.
- (2)
- Our ten–fold cross–validation results revealed that the Catboost model based on VH exhibited the best stability, with daytime R2, MAE, and RMSE mean values of 0.992, 1.50 K, and 2.08 K, respectively, and nighttime R2, MAE, and RMSE mean values of 0.993, 0.82 K, and 1.30 K, respectively. These results indicate that the Catboost model based on VH established the mapping relationship between passive microwave BT and LST more accurately than the other four classical models.
- (3)
- Validation using MYD11A1 data revealed that LST downscaled with the Catboost model based on VH and EVI had the highest accuracy, with daytime and nighttime R2 of 0.987 and 0.984, RMSE of 2.82 K and 2.12 K, and MAE of 2.08 K and 1.38 K, respectively. Furthermore, we validated the downscaled LST data using the six–layer soil temperature data of the site, which showed a highly significant, positive correlation with all six–layer soil temperature data of the site. However, the correlation coefficients (r) generally showed a decreasing trend with increasing depth, while RMSE showed an increasing trend.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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AMSR–2 Passive Microwave Bright Temperature Data | MODIS Data | ||||
---|---|---|---|---|---|
Center Frequency (GHz) | Polarization Direction | Spatial Resolution (km) | Data Types | Spatial Resolution (km) | Dataset |
6.925/7.3 | V/H | 10 | MYD 11A1 | 1 | LST_Day_1 kmQC_Day |
10.65 | V/H | 10 | |||
18.7 | V/H | 10 | |||
23.8 | V/H | 10 | MYD 13A2 | 1 | 1 km_16_days_EVI1 km_16_days_NDVI |
36.5 | V/H | 10 | |||
89 | V/H | 5 |
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Li, Y.; Liu, Y.; Huang, W.; Yan, Y.; Tan, J.; He, Q. Applicability Assessment of Passive Microwave LST Downscaling over Semi–Homogeneous Desert Underlying Surface Based on Machine Learning. Remote Sens. 2023, 15, 2626. https://doi.org/10.3390/rs15102626
Li Y, Liu Y, Huang W, Yan Y, Tan J, He Q. Applicability Assessment of Passive Microwave LST Downscaling over Semi–Homogeneous Desert Underlying Surface Based on Machine Learning. Remote Sensing. 2023; 15(10):2626. https://doi.org/10.3390/rs15102626
Chicago/Turabian StyleLi, Yongkang, Yongqiang Liu, Wenjiang Huang, Yang Yan, Jiao Tan, and Qing He. 2023. "Applicability Assessment of Passive Microwave LST Downscaling over Semi–Homogeneous Desert Underlying Surface Based on Machine Learning" Remote Sensing 15, no. 10: 2626. https://doi.org/10.3390/rs15102626