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Prediction of Soil Organic Carbon based on Landsat 8 Monthly NDVI Data for the Jianghan Plain in Hubei Province, China
by
Ju, QingLan
, Guo, Long
, Wang, Shanqin
, Zhang, Yangchengsi
, Chen, Yiyun
, Shi, Tiezhu
, Zhang, Haitao
, Luo, Mei
in
Agricultural land
/ Agricultural management
/ Agricultural production
/ agricultural soils
/ Agriculture
/ Artificial neural networks
/ biomass
/ Carbon
/ Carbon cycle
/ China
/ Chlorophyll
/ Climate change
/ climatic factors
/ computer-aided mapping
/ Crop growth
/ Crops
/ Digital mapping
/ digital soil mapping
/ Information processing
/ kriging
/ Kriging interpolation
/ Laboratories
/ Land use
/ Landsat
/ Landsat satellites
/ landscapes
/ least squares
/ machine learning methods
/ Mapping
/ model validation
/ NDVI time series
/ Neural networks
/ normalized difference vegetation index
/ Normalized difference vegetative index
/ Organic carbon
/ Organic soils
/ Precipitation
/ Precision agriculture
/ prediction
/ prediction model
/ Predictions
/ Productivity
/ Remote sensing
/ Soil fertility
/ Soil formation
/ Soil management
/ Soil mapping
/ soil organic carbon
/ soil properties
/ soil surveys
/ Soils
/ spatial data
/ Spatial distribution
/ spectral analysis
/ Support vector machines
/ Terrain
/ Time series
/ time series analysis
/ Topography
/ Vegetation
/ Vegetation cover
2019
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Prediction of Soil Organic Carbon based on Landsat 8 Monthly NDVI Data for the Jianghan Plain in Hubei Province, China
by
Ju, QingLan
, Guo, Long
, Wang, Shanqin
, Zhang, Yangchengsi
, Chen, Yiyun
, Shi, Tiezhu
, Zhang, Haitao
, Luo, Mei
in
Agricultural land
/ Agricultural management
/ Agricultural production
/ agricultural soils
/ Agriculture
/ Artificial neural networks
/ biomass
/ Carbon
/ Carbon cycle
/ China
/ Chlorophyll
/ Climate change
/ climatic factors
/ computer-aided mapping
/ Crop growth
/ Crops
/ Digital mapping
/ digital soil mapping
/ Information processing
/ kriging
/ Kriging interpolation
/ Laboratories
/ Land use
/ Landsat
/ Landsat satellites
/ landscapes
/ least squares
/ machine learning methods
/ Mapping
/ model validation
/ NDVI time series
/ Neural networks
/ normalized difference vegetation index
/ Normalized difference vegetative index
/ Organic carbon
/ Organic soils
/ Precipitation
/ Precision agriculture
/ prediction
/ prediction model
/ Predictions
/ Productivity
/ Remote sensing
/ Soil fertility
/ Soil formation
/ Soil management
/ Soil mapping
/ soil organic carbon
/ soil properties
/ soil surveys
/ Soils
/ spatial data
/ Spatial distribution
/ spectral analysis
/ Support vector machines
/ Terrain
/ Time series
/ time series analysis
/ Topography
/ Vegetation
/ Vegetation cover
2019
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Prediction of Soil Organic Carbon based on Landsat 8 Monthly NDVI Data for the Jianghan Plain in Hubei Province, China
by
Ju, QingLan
, Guo, Long
, Wang, Shanqin
, Zhang, Yangchengsi
, Chen, Yiyun
, Shi, Tiezhu
, Zhang, Haitao
, Luo, Mei
in
Agricultural land
/ Agricultural management
/ Agricultural production
/ agricultural soils
/ Agriculture
/ Artificial neural networks
/ biomass
/ Carbon
/ Carbon cycle
/ China
/ Chlorophyll
/ Climate change
/ climatic factors
/ computer-aided mapping
/ Crop growth
/ Crops
/ Digital mapping
/ digital soil mapping
/ Information processing
/ kriging
/ Kriging interpolation
/ Laboratories
/ Land use
/ Landsat
/ Landsat satellites
/ landscapes
/ least squares
/ machine learning methods
/ Mapping
/ model validation
/ NDVI time series
/ Neural networks
/ normalized difference vegetation index
/ Normalized difference vegetative index
/ Organic carbon
/ Organic soils
/ Precipitation
/ Precision agriculture
/ prediction
/ prediction model
/ Predictions
/ Productivity
/ Remote sensing
/ Soil fertility
/ Soil formation
/ Soil management
/ Soil mapping
/ soil organic carbon
/ soil properties
/ soil surveys
/ Soils
/ spatial data
/ Spatial distribution
/ spectral analysis
/ Support vector machines
/ Terrain
/ Time series
/ time series analysis
/ Topography
/ Vegetation
/ Vegetation cover
2019
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Prediction of Soil Organic Carbon based on Landsat 8 Monthly NDVI Data for the Jianghan Plain in Hubei Province, China
Journal Article
Prediction of Soil Organic Carbon based on Landsat 8 Monthly NDVI Data for the Jianghan Plain in Hubei Province, China
2019
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Overview
High-precision maps of soil organic carbon (SOC) are beneficial for managing soil fertility and understanding the global carbon cycle. Digital soil mapping plays an important role in efficiently obtaining the spatial distribution of SOC, which contributes to precision agriculture. However, traditional soil-forming factors (i.e., terrain or climatic factors) have weak variability in low-relief areas, such as plains, and cannot reflect the spatial variation of soil attributes. Meanwhile, vegetation cover hinders the acquisition of the direct information of farmland soil. Thus, useful environmental variables should be utilized for SOC prediction and the digital mapping of such areas. SOC has an important effect on crop growth status, and remote sensing data can record the apparent spectral characteristics of crops. The normalized difference vegetation index (NDVI) is an important index reflecting crop growth and biomass. This study used NDVI time series data rather than traditional soil-forming factors to map SOC. Honghu City, located in the middle of the Jianghan Plain, was selected as the study region, and the NDVI time series data extracted from Landsat 8 were used as the auxiliary variables. SOC maps were estimated through stepwise linear regression (SLR), partial least squares regression (PLSR), support vector machine (SVM), and artificial neural network (ANN). Ordinary kriging (OK) was used as the reference model, while root mean square error of prediction (RMSEP) and coefficient of determination of prediction (R2P) were used to evaluate the model performance. Results showed that SOC had a significant positive correlation in July and August (0.17, 0.29) and a significant negative correlation in January, April, and December (−0.23, −0.27, and −0.23) with NDVI time series data. The best model for SOC prediction was generated by ANN, with the lowest RMSEP of 3.718 and highest R2P of 0.391, followed by SVM (RMSEP = 3.753, R2P = 0.361) and PLSR (RMSEP = 4.087, R2P = 0.283). The SLR model was the worst model, with the lowest R2P of 0.281 and highest RMSEP of 3.930. ANN and SVM were better than OK (RMSEP = 3.727, R2P = 0.372), whereas PLSR and SLR were worse than OK. Moreover, the prediction results using single-data NDVI or short time series NDVI showed low accuracy. The effect of the terrain factor on SOC prediction represented unsatisfactory results. All these results indicated that the NDVI time series data can be used for SOC mapping in plain areas and that the ANN model can maximally extract additional associated information between NDVI time series data and SOC. This study presented an effective method to overcome the selection of auxiliary variables for digital soil mapping in plain areas when the soil was covered with vegetation. This finding indicated that the time series characteristics of NDVI were conducive for predicting SOC in plains.
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