Abstract

Cadmium (Cd) is a toxic metal and found in various soils, including forest soils. The great spatial heterogeneity in soil Cd makes it difficult to determine its distribution. Both traditional soil surveys and spatial modeling have been used to study the natural distribution of Cd. However, traditional methods are highly labor-intensive and expensive, while modeling is often encumbered by the need to select the proper predictors. In this study, based on intensive soil sampling (385 soil pits plus 64 verification soil pits) in subtropical forests in Yunfu, Guangdong, China, we examined the impacting factors and the possibility of combining existing soil information with digital elevation model (DEM)-derived variables to predict the Cd concentration at different soil depths along the landscape. A well-developed artificial neural network model (ANN), multi-variate analysis, and principal component analysis were used and compared using the same dataset. The results show that soil Cd concentration varied with soil depth and was affected by the top 0–20 cm soil properties, such as soil sand or clay content, and some DEM-related variables (e.g., slope and vertical slope position, varying with depth). The vertical variability in Cd content was found to be correlated with metal contents (e.g., Cu, Zn, Pb, Ni) and Cd contents in the layer immediately above. The selection of candidate predictors differed among different prediction models. The ANN models showed acceptable accuracy (around 30% of predictions have a relative error of less than 10%) and could be used to assess the large-scale Cd impact on environmental quality in the context of intensifying industrialization and climate change, particularly for ecosystem management in this region or other regions with similar conditions.

Highlights

  • We present a study to (1) analyze the Cd distribution pattern based on an intensive soil survey and (2) explore and compare several potential approaches for estimating the vertical and spatial distributions of Cd concentrations with a dataset obtained in a subtropical forest ecosystem in South China

  • To examine the relationship between Cd concentrations and digital elevation model (DEM)-derived variables and other soil properties collected in this study, principal component analysis (PCA) was conducted using data obtained from each soil depth, including the mixed layer (0–100 cm)

  • The differences among layers were statistically significant (p < 0.05), and the mean Cd concentration decreased with increasing soil depth

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Summary

Introduction

Toxic metal contamination in soil has become a global issue due to its environmental impacts and potential risks and hazards to human beings. Among toxic metals in soils, Cadmium (Cd) has been of great concern and is extensively studied around the world [1,2,3]. Cd affects human health by leaching into streams and groundwater but is of concern in agricultural soils [4]. Its build-up at high concentrations in soil may pose risks and hazards to human and ecosystem health through the food chain, contaminated groundwater, and microorganism processes [9], affecting the density and diversity of meso- and macro-fauna [10]. Marked cadmium contamination was reported in areas where food had been grown in Japan in the 1950s and 1960s, with Cd concentrations ranging from 0.2 to 3 mg kg−1 [13]

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