Abstract The spatial distribution of soil organic carbon density (SOCD) is crucial for understanding land use impact on carbon budget. The spatial estimation and accurate mapping of SOCD in plains remain challenging, partly due to the relatively invariant topography and the lack of consideration of landscape patterns. Here, we propose a novel landscape metric-based regression Kriging (LMRK) for the spatial estimation of SOCD in plains. Using 242 topsoil samples collected in the Jianghan Plain, China, we (i) investigate the scale-dependent relationship between SOCD and 24 landscape metrics and (ii) develop LMRK models with multi-scale buffers (100–1000 m) for SOCD estimation and compare their performance with ordinary Kriging (OK) and regression Kriging (RK) that integrates land use types. Results showed that LMRK outperformed other models. The relationships between SOCD and landscape metrics were found to be scale-dependent, and the buffer of 300 m exhibited the optimal scale in our case. The LMRK also revealed that a highly connected and water-sufficient landscape was conducive to the accumulation of soil organic carbon in farmlands. These results indicated that landscape metrics serve as good predictors, and the proposed LMRK method is effective for SOCD mapping in plains. Our findings highlight the scale-dependent relationship between landscape metrics and SOCD and provide a new perspective for soil mapping in plains.
Estimating soil organic carbon density in plains using landscape metric-based regression Kriging model
Zihao Wu,Bozhi Wang,Junlong Huang,Zihao An,Ping Jiang,Yiyun Chen,Yanfang Liu
Published 2019 in Soil & Tillage Research
ABSTRACT
PUBLICATION RECORD
- Publication year
2019
- Venue
Soil & Tillage Research
- Publication date
2019-12-01
- Fields of study
Environmental Science
- Identifiers
- External record
- Source metadata
Semantic Scholar
CITATION MAP
EXTRACTION MAP
CLAIMS
CONCEPTS
- buffer scale
The spatial radius around sample locations at which landscape metrics were calculated for model fitting.
Aliases: multi-scale buffer, buffer
- connected and water-sufficient landscape
A landscape configuration characterized by strong spatial connectivity and adequate water-related features in the surrounding area.
Aliases: highly connected and water-sufficient landscape
- farmland
Agricultural land use within the study area that serves as the context for carbon accumulation interpretation.
Aliases: farmlands
- jianghan plain
The plain region in China where the topsoil samples were collected for model development and evaluation.
- landscape metric-based regression kriging (lmrk)
A hybrid spatial interpolation approach that combines landscape metrics with regression Kriging to estimate soil organic carbon density.
Aliases: LMRK
- landscape metrics
Quantitative descriptors of landscape pattern and composition used as predictors in the spatial models.
Aliases: landscape metric
- ordinary kriging (ok)
A geostatistical interpolation baseline that estimates values from spatial autocorrelation alone.
Aliases: OK
- regression kriging (rk)
A geostatistical model that combines regression on covariates with kriging of residual spatial structure.
Aliases: RK
- soil organic carbon density
The amount of organic carbon stored per unit soil volume or area in the sampled topsoil.
Aliases: SOCD
REFERENCES
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