Mapping soil organic matter and identifying potential controls in the farmland of Southern China: Integration of multi‐source data, machine learning and geostatistics

Author:

Hu Bifeng12ORCID,Ni Hanjie12,Xie Modian3,Li Hongyi12,Wen Yali12,Chen Songchao4,Zhou Yin5,Teng Hongfen6ORCID,Bourennane Hocine7,Shi Zhou89

Affiliation:

1. Department of Land Resource Management, School of Public Finance and Public Administration Jiangxi University of Finance and Economics Nanchang China

2. Key Laboratory of Data Science in Finance and Economics Jiangxi University of Finance and Economics Nanchang China

3. School of Information Management Jiangxi University of Finance and Economics Nanchang China

4. ZJU‐Hangzhou Global Scientific and Technological Innovation Center Hangzhou China

5. Institute of Land and Urban‐Rural Development Zhejiang University of Finance and Economics Hangzhou China

6. School of Environmental Ecology and Biological Engineering Wuhan Institute of Technology Wuhan China

7. INRAE, Unité Info&Sol Orléans France

8. Key Laboratory of Environment Remediation and Ecological Health, Ministry of Education, College of Environmental and Resource Sciences Zhejiang University Hangzhou China

9. Institute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences Zhejiang University Hangzhou China

Abstract

AbstractSoil organic matter (SOM) plays a critical role in terrestrial ecosystem functioning and is closely related to many global issues like soil fertility, soil health and climate regulation. Therefore, obtaining accurate information on the spatial distribution of SOM and its potential controlling factors is of global interest. However, this remains a great challenge since SOM is affected by numerous natural and anthropogenic factors and usually showed strong heterogeneity. In this study, we collected a total of 16,580 surface soil (0–20 cm) samples from the farmland throughout Jiangxi Province. And the Random Forest (RF), Cubist and gradient‐boosted models were compared and used to define the factor which is most associated with SOM. Then the ordinary kriging (OK) and machine learning‐ordinary co‐kriging (ML‐COK) were used to map SOM. We found that on average, 30.86 g kg−1 SOM was present in farmland soil of Jiangxi Province. Anthropogenic activities strongly affected SOM level, with five of the top 10 most important factors are anthropogenic related. The straw return amount was proved to have the largest importance (31.46%) for modelling SOM and a significant (p < 0.001) positive relationship between SOM content and the amount of straw returned to farmland was detected. Additionally, returning straw improved crop production. Soil derived from the Quaternary Subred Sand has the highest SOM content (37.82 g kg−1). Crop rotation also improved SOM content and the rice‐bean rotation system has the highest SOM content (34.27 g kg−1). With the best performance, the RF algorithm (R2 = 0.49, RMSE = 6.77 g kg−1) was selected to identify the primary control of SOM and integrated with COK, which we termed as ML‐COK, to map the SOM in the farmland of Jiangxi Province. ML‐COK outperformed OK method for mapping the SOM in farmland of Jiangxi Province with R2 of 0.351 and Lin's concordance correlation coefficient of 0.549. Farmland distributed in the central part of the province had high SOM content. In contrast, farmland in the north, south and east parts had relatively low SOM. Our study offers new insight for mapping soil properties, identifying potential factors driving variation in SOM, and also provides valuable information for making more reasonable and environmentally friendly farmland management measures.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Soil Science,General Environmental Science,Development,Environmental Chemistry

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