Abstract:
For the estimation of the soil organic carbon stocks, bulk density (BD) is a fundamental
parameter but measured data are usually not available especially when dealing with legacy soil
data. It is possible to estimate BD by applying pedotransfer function (PTF). We applied different
estimation methods with the aim to define a suitable PTF for BD of arable land for the
Mediterranean Basin, which has peculiar climate features that may influence the soil carbon
sequestration. To improve the existing BD estimation methods, we used a set of public climatic
and topographic data along with the soil texture and organic carbon data. The present work
consisted of the following steps: i) development of three PTFs models separately for top (0–0.4 m)
and subsoil (0.4–1.2 m), ii) a 10-fold cross-validation, iii) model transferability using an external
dataset derived from published data.
The development of the new PTFs was based on the training dataset consisting of World Soil
Information Service (WoSIS) soil profile data, climatic data from WorldClim at 1 km spatial
resolution and Shuttle Radar Topography Mission (SRTM) digital elevation model at 30 m spatial
resolution.
The three PTFs models were developed using: Multiple Linear Regression stepwise (MLR-S),
Multiple Linear Regression backward stepwise (MLR-BS), and Artificial Neural Network (ANN).
The predictions of the newly developed PTFs were compared with the BD calculated using the
PTF proposed by Manrique and Jones (MJ) and the modelled BD derived from the global
SoilGrids dataset.
For the topsoil training dataset (N = 129), MLR-S, MLR-BS and ANN had a R 0.35, 0.58 and 0.86,
respectively. For the model transferability, the three PTFs applied to the external topsoil dataset
(N = 59), achieved R values of 0.06, 0.03 and 0.41. For the subsoil training dataset (N = 180), MLR S, MLR-BS and ANN the R values were 0.36, 0.46 and 0.83, respectively. When applied to the
external subsoil dataset (N = 29), the R values were 0.05, 0.06 and 0.41. The cross-validation for
both top and subsoil dataset, resulted in an intermediate performance compared to calibration
and validation with the external dataset. The new ANN PTF outperformed MLR-S, MLR-BS, MJ
and SoilGrids approaches for estimating BD. Further improvements may be achieved by
additionally considering the time of sampling, agricultural soil management and cultivation
practices in predictive models.