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On the effectiveness of multi-scale landscape metrics in soil organic carbon mapping.

Authors :
Wang, Jiaxue
Chen, Yiyun
Wu, Zihao
Wei, Yujiao
Zhang, Zheyue
Wang, Xiaomi
Huang, Jingyi
Shi, Zhou
Source :
Geoderma. Sep2024, Vol. 449, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

• Environmental variables surrounding sample locations play an important role in DSM. • Landscape metrics can comprehensively characterize the surrounding environment. • The intricate relationship between landscape metrics and SOC was fully explored. • Landscape metrics can promote our understanding on the spatial variation of SOC. Soil organic carbon (SOC) mapping delivers invaluable information to the global carbon budget and climate change mitigation endeavour. Environmental variables at sample locations are frequently used as explanatory variables for simulating the spatial distribution of soil properties. However, these may not fully capture the spatial information generated by soil-forming processes. We applied multi-scale landscape metrics that can comprehensively characterize the surrounding landscape information of sample points. The metrics were extracted at two levels (landscape level and class level) and include the diversity, shape and area, fragmentation and connectivity with a buffer distance from 500 m to 5,000 m. We then investigated its effectiveness as environmental variables via recursive feature elimination, random forests, and quantile regression forests. The Jianghan Plain, China, was selected as the study area, where over 19,000 topsoil samples were collected. Results indicated that multi-scale landscape metrics enhanced the predictability of SOC mapping, with R2 increased by 43 %. Specifically, Shannon's diversity index, the percentage of landscape index, interspersion and juxtaposition index, and patch cohesion index outperformed environmental variables that were extracted at the sample location. In addition, the relationships between SOC and landscape metrics were found to be scale-dependent. Landscape metrics demonstrated significant explanatory capacity for SOC across various spatial scales. Notably, as the scale surpassed 3,000 m, there was a discernible improvement in the explanatory effectiveness of the landscape metrics for SOC. Our findings highlight that landscape metrics are effective in characterising the soil-landscape relationship that is generated by multi-scale natural and anthropogenic soil-forming processes. Meanwhile, knowledge of the intricate relationship between landscape characteristics and SOC is crucial for informing land management decisions aimed at enhancing carbon sequestration, mitigating climate change, and maintaining soil fertility. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00167061
Volume :
449
Database :
Academic Search Index
Journal :
Geoderma
Publication Type :
Academic Journal
Accession number :
179691388
Full Text :
https://doi.org/10.1016/j.geoderma.2024.117026