Remote Sensing Monitoring of Drought in Southwest China Using Random Forest and eXtreme Gradient Boosting Methods
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Areas
2.2. Data
2.2.1. Data Sources
2.2.2. Data Preprocessing
2.3. Methods
2.3.1. Calculation of Remote Sensing and Meteorological Drought Indices
2.3.2. ML Model
- (1)
- RF Model
- (2)
- XGBoost Model
- (A)
- XGBoost belongs to the category of rule-based models. Those models are generally better suited than DL algorithms for the datasets of moderate or small size.
- (B)
- XGBoost models have a higher accuracy due to the introduction of second-order Taylor expansion. The base learner of XGBoost can be a DT or a linear classifier, implying higher flexibility.
- (C)
- XGBoost models are convenient to build in that they can attain highly optimized performance by following a standard hyperparameter search process implemented using stratified k-fold nested cross-validation (CV). Because of the regularization term, XGBoost can also be easily trained in such a way as to reduce overfitting.
- (D)
- XGBoost can incorporate elements of cost-sensitive learning where a cost matrix can help influence the model to produce fewer false negatives.
- (E)
- XGBoost supports column sampling, and it can reduce computational load and accelerate the calculation. It has been used successfully to win several ML competitions.
- (F)
2.3.3. CV Method
2.3.4. Indicators of Model Accuracy Assessment
3. Results
3.1. Reconstructing the LST Using an RF Model
3.1.1. Construction of an RF Model
3.1.2. Evaluation and Validation of Model Accuracy
3.2. Remote Sensing-Based Drought Monitoring Using XGBoost
3.2.1. Selection of Input and Output Parameters
3.2.2. Building a Remote Sensing-Based Drought Monitoring Model Using XGBoost
3.2.3. Model Accuracy Evaluation
4. Discussion
5. Summary and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Type | Index | Formula | Note | Reference |
---|---|---|---|---|
Drought index calculated based on remote sensing information | NDVI | and are near-infrared and red bands, respectively. | [22] | |
EVI | is the blue band; G, C1, C2 and L are empirical coefficients. | |||
TRMM- SPI | SPI is calculated using the TRMM3B43 data. | [57] | ||
VCI | NDVImin and NDVImax are the minimum and maximum values of the NDVI, respectively; the smaller the VCI, the more likely drought will occur. | [25] | ||
TCI | LSTmax and LSTmin are the maximum and minimum values of LST, respectively; the smaller the TCI, the more severe the drought may be. | |||
VTCINDVI | a1, b1, a2, and b2 are the regression equation coefficients of the dry and wet edge in the relationship between the NDVI and LST, respectively. The value ranges of the four indices are all between (0,1). Among these, the smaller the value of VTCINDVI and VTCIEVI, the more severe the drought may be, and the larger the value of TVDINDVI and TVDIEVI, the more severe the drought may be. | [22,34,58,59,60] | ||
VTCIEVI | ||||
TVDINDVI | ||||
TVDIEVI | ||||
VSWINDVI | The smaller the VSWINDVI and VSWIEVI, the more severe the drought may be. | |||
VSWIEVI | ||||
Drought index calculated based on meteorological station data | SPEI | ( (; | Calculated according to the Thornthwaite method recommended by Vicente-Serrano. p is the cumulative probability, W is the cumulative probability weighted moment, and c0, c1, c2, d1, d2, and d3 are all constant values. | [56] |
MCI | Ka is the seasonal adjustment coefficient, SPIW60 is the standardized weighted precipitation index for the past 60 days, MI30 is the relative humidity index for the past 30 days, SPI90 is the SPI for the past 90 days, SPI150 is the SPI for the past 150 days, and a, b, c, and d are the weight coefficients of these indices. | [56,61] |
Drought Grade | Type | SPEI/MCI Value |
---|---|---|
1 | No drought | −0.5< |
2 | Mild drought | (−1.0, −0.5] |
3 | Moderate drought | (−1.5, −1.0] |
4 | Severe drought | (−2.0, −1.5] |
5 | Extreme drought | ≤−2.0 |
Parameter | Meaning | Optimal Parameter |
---|---|---|
max_features | Maximum number of features used by a single decision tree | auto |
max_depth | Maximum depth of the tree | 15 |
min_samples_split | Minimum number of samples required to split a node | 2 |
min_samples_leaf | Minimum number of samples contained in each leaf node | 1 |
n_estimators | Number of decision trees to build | 537 |
bootstrap | With or without put-back sampling | True |
criterion | Evaluation criteria for segmentation quality | mse |
Accuracy Assessment Indicator | Training Set | Testing Set |
---|---|---|
RMSE | 1.172 | 2.236 |
MAE | 0.847 | 1.719 |
EVS | 0.901 | 0.858 |
CC | 0.944 ** | 0.908 ** |
Drought Index | SM | TRMM-SPI | VCI | TCI | VTCINDVI | VTCIEVI | TVDINDVI | TVDIEVI | VSWINDVI | VSWIEVI |
---|---|---|---|---|---|---|---|---|---|---|
SPEI1 | 0.488 ** | 0.835 ** | 0.101 | 0.105 | 0.044 | 0.066 * | −0.097 | −0.071 | 0.187 | 0.096 * |
SPEI3 | 0.499 ** | 0.568 ** | 0.096 | 0.090 | 0.021 | 0.004 | −0.083 | −0.064 | 0.105 | 0.078 |
SPEI6 | 0.471 ** | 0.414 ** | 0.110 | 0.067 | 0.080 | 0.062 | −0.057 | −0.034 | 0.128 | 0.088 |
Parameter | Meaning | Optimal Parameter |
---|---|---|
n_estimators | Number of submodels | 203 |
max_depth | Maximum depth of the tree | 2 |
learning_rate | Learning rate of the resulting model at each iteration | 0.06 |
min_child_weight | Minimum number of samples contained in each leaf node | 2 |
Subsample | Proportion of random sampling | 0.8 |
Gamma | Controls whether to post-prune | 0 |
colsample_bytree | Controls the proportion of each random sampling column | 1 |
colsample_bylevel | Proportion of column sampling for each node splitting in each tree | 0.5 |
reg_alpha | Weight of the L1 regularization term | 0.01 |
eval_metric | Measures the validation data | mse |
Accuracy Assessment Indicator | Training Set | Testing Set |
---|---|---|
RMSE | 0.135 | 0.435 |
MAE | 0.095 | 0.328 |
EVS | 0.976 | 0.782 |
CC | 0.982 ** | 0.868 ** |
Drought Grade | Number of Weather Stations with Consistent Drought Grade/Total Number of Weather Stations under Each Drought Grade | Consistency Rate (%) |
---|---|---|
Extreme drought | 91/339 | 26.84 |
Severe drought | 712/1134 | 62.79 |
Moderate drought | 1512/2077 | 72.80 |
Mild drought | 1861/2624 | 70.92 |
No drought | 10,624/11,106 | 96.87 |
Total | 14,852/17,280 | 85.65 |
Season\Region | Sichuan | Chongqing | Yunnan | Guizhou | Tibet |
---|---|---|---|---|---|
March 2010 | Mild-to-severe drought in the southern region during the first 10-day period, with the drought relieved during the third 10-day period | No apparent drought | Mild-to-severe drought in the southern region and extreme drought locally in the northern region during the first 10-day period with the drought relieved during the third 10-day period | Mild-to-severe drought in the southern region and extreme drought in the southwestern region during the first 10-day period with the drought relieved during the third 10-day period | Mild-to-severe drought in the central region with an extreme drought locally during the first 10-day period with the drought continuing into the third 10-day period |
June 2010 | No apparent drought | No apparent drought | Moderate drought in the central region during the second 10-day period and a mild drought in the central and northern regions during the third 10-day period | No apparent drought | Mild-to-extreme drought in the central region, with an extreme drought mainly occurring near Nyima County of Nagqu City |
September 2011 | Drought of moderate severity and above in the southeastern region, with a severe drought locally | Drought of moderate severity and above in the southwestern region, with a severe drought locally | Drought of moderate severity and above in the northeastern region with a severe drought locally | Drought of moderate severity and above in most regions with a severe drought in northwestern and eastern regions | Moderate-to-severe drought in central and eastern regions |
February 2012 | Mild drought in the southwestern region during the first 10-day period with a moderate drought locally, and a severe drought in the central and western and southern regions during the third 10-day period | Moderate-to-severe drought in the central and northern regions | Mild drought in the western region during the first 10-day period, and a moderate-to-severe drought in most parts during the second 10-day period, with an extreme drought locally in the western region | No apparent drought | Mild-to-moderate drought in central and southern regions |
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Li, X.; Jia, H.; Wang, L. Remote Sensing Monitoring of Drought in Southwest China Using Random Forest and eXtreme Gradient Boosting Methods. Remote Sens. 2023, 15, 4840. https://doi.org/10.3390/rs15194840
Li X, Jia H, Wang L. Remote Sensing Monitoring of Drought in Southwest China Using Random Forest and eXtreme Gradient Boosting Methods. Remote Sensing. 2023; 15(19):4840. https://doi.org/10.3390/rs15194840
Chicago/Turabian StyleLi, Xiehui, Hejia Jia, and Lei Wang. 2023. "Remote Sensing Monitoring of Drought in Southwest China Using Random Forest and eXtreme Gradient Boosting Methods" Remote Sensing 15, no. 19: 4840. https://doi.org/10.3390/rs15194840
APA StyleLi, X., Jia, H., & Wang, L. (2023). Remote Sensing Monitoring of Drought in Southwest China Using Random Forest and eXtreme Gradient Boosting Methods. Remote Sensing, 15(19), 4840. https://doi.org/10.3390/rs15194840