Mapping Soil Organic Matter Content during the Bare Soil Period by Using Satellite Data and an Improved Deep Learning Network

被引:5
|
作者
Xu, Xibo [1 ,2 ]
Zhai, Xiaoyan [2 ]
机构
[1] Beijing Normal Univ, Key Lab Environm Change & Nat Disaster, Minist Educ, Beijing 100875, Peoples R China
[2] Zaozhuang Univ, Coll Tourism Resources & Environm, Zaozhuang 277160, Peoples R China
关键词
soil organic matter; mapping; satellite data; improved deep learning neural network; CARBON; PREDICTION; SPECTROSCOPY; REGRESSION; FIELD;
D O I
10.3390/su15010323
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Soil function degradation has impaired global work in the implementation of sustainable development goals (SDGs), and soil organic matter (SOM) is a basic and the most important indicator. The deep learning neural network (i.e., DL network) has become a popular tool for mapping SOM content at a regional scale. However, outlier sample data caused by environmental factors (e.g., moisture and vegetation) and uncertain noise (e.g., random noise and instability effects) have interfered with the determination of the function mapping relationship between target soil properties and spectral features, leading to DL networks with low generalization capability. Therefore, we introduced a spatial association module into a deep neural network to remove outlier sample data in order to construct an optimal sample set for calibrating an improved deep learning (IDL) network for SOM mapping. A total of 707 soil samples and a Sentinel-2B multispectral image were acquired during the bare soil period in Weibei, China. The variable importance in the projection approach was used to select the SOM-responsive spectral features for model inputs. Measured SOM contents were taken as the dependent variable, and the IDL network was constructed and applied to map SOM at the regional scale. The results showed that Band 11 was the most important band for SOM prediction. The band difference transformation method was able to integrate multiple-band information and enhance the absorption signal of SOM. The optimal SOM-responsive spectral features included B11, B1-B11, B2-B11, B3-B11, B4-B11, and B1-B12. The IDL network exhibited better performance (R-2 = 0.92; RPIQ = 4.57) regarding SOM estimation compared with the DL model performance (R-2 = 0.84; RPIQ = 2.84), being improved by 9.52% (for R-2) and 60.92% (for RPIQ). After introducing the spatial association module, the DL network generalization capability was enhanced. SOM distribution showed a high-value (>20 g kg(-1)) area in the south, and a low-value (<6 g kg(-1)) area in the north of the study area (the area affected by seawater intrusion). These results provide a strategy based on an IDL network and satellite data for effectively and accurately mapping SOM at the regional scale.
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页数:14
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