Comprehensive and accurate acquisition of surface soil pH spatial distribution information is essential for monitoring soil degradation and providing scientific guidance for agricultural practices. This study focused on Heilongjiang Province in China, utilizing data from 125 soil survey sampling points. Key environmental covariates were identified as modeling inputs through Pearson correlation analysis and recursive feature elimination (RFE). Three machine learning models-support vector machine (SVM), random forest (RF), and extreme gradient boosting (XGBoost)-were employed to predict surface soil pH in the study area. The modeling outcomes and distinctions among these models were then thoroughly compared. The results showed that the mean monthly temperature maximum (MMTmax), mean monthly precipitation minimum (MMPmin), mean annual precipitation (MAP), drought index (DI), and mean monthly wind speed maximum (MMWSmax) were the most important environmental covariates for modeling. Climate variables are better suited to reflect the nonlinear relationships between soil properties and the environment in large and flat areas during mapping. Among the mapping models, XGBoost exhibited the highest prediction performance (R =0.705, RMSE=0.633, MAE=0.484), followed by RF (R =0.688, RMSE=0.656, MAE=0.497), while SVM was considered unstable in this study. For uncertainty maps, XGBoost demonstrated lower uncertainty primarily in high-altitude mountainous forest regions, whereas RF achieved higher prediction consistency mainly in low-altitude plain areas. Each prediction model had its advantages in different terrain regions, yet XGBoost was regarded as the optimal model. According to the optimal model, the typical black soil in Heilongjiang Province generally exhibited weak acidity, with an average pH of 6.42, showing a gradual increasing trend from east to west and from north to south. Soil acidification mainly occurred in the meadow black soil and albic black soil regions of Heilongjiang Province's eastern and northeastern parts. It is imperative to rigorously control the application of nitrogen fertilizers and to focus on improving the soil's acid-base buffering capacity.
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http://dx.doi.org/10.1007/s10661-025-13814-z | DOI Listing |
Nanomaterials (Basel)
February 2025
Zhongyuan Critical Metal Laboratory, School of Chemical Engineering, Zhengzhou University, Zhengzhou 450001, China.
The excessive utilization and emission of waste plastics have caused serious damage to the environment, and it is of great significance to explore high-value utilization methods for these waste plastics. To address this challenge, functional nano cobalt-loaded porous carbon materials (CoPC) with excellent antibiotic wastewater removal properties were prepared by one-step pyrolysis using waste PET plastics as a carbon source, a process described in this paper. Characterization revealed that the obtained CoPC-2 catalysts had a high degree of defects, a large specific surface area (343.
View Article and Find Full Text PDFNanomaterials (Basel)
February 2025
Beijing Key Laboratory of Farmland Soil Pollution Prevention and Remediation, College of Resources and Environmental Sciences, China Agricultural University, Beijing 100193, China.
Iron-based metal-organic frameworks (Fe-MOFs) are widely used for agricultural chemical delivery due to their high loading capacity, and they also have the potential to provide essential iron for plant growth. Therefore, they hold significant promise for agricultural applications. Evaluating the plant biotoxicity of Fe-MOFs is crucial for optimizing their use in agriculture.
View Article and Find Full Text PDFAppl Environ Microbiol
March 2025
School of Life Science and Engineering, Southwest University of Science and Technology, Mianyang, Sichuan, China.
Unlabelled: The diversity patterns and drivers of soil microbial communities across spatial distances have been extensively investigated over the recent years. However, whether microbial communities in surface and subsurface soils showed an identical spatial distribution pattern at a small regional scale has not been fully confirmed. For this, we investigated the linkage between soil water content (SWC), pH as well as nutrient contents and soil bacterial diversity and communities in different soil layers in the Longmenshan fault zone in Sichuan Province, China.
View Article and Find Full Text PDFEcol Appl
March 2025
Institute of Ecology and Evolution, University of Oregon, Eugene, Oregon, USA.
There is substantial interest in restoring tidal wetlands because of their high rates of long-term soil carbon sequestration and other valued ecosystem services. However, these wetlands are sometimes net sources of greenhouse gases (GHG) that may offset their climate cooling potential. GHG fluxes vary widely within and across tidal wetlands, so it is essential to better understand how key environmental drivers, and importantly, land management, affect GHG dynamics.
View Article and Find Full Text PDFSci Rep
March 2025
Grassland Soil and Water Research Laboratory, USDA-ARS, Temple, TX, 76502, USA.
In the Mississippi alluvial plain (MAP) area, the demand for groundwater resources from the alluvial aquifer for agricultural irrigation has led to significant reductions in groundwater-level elevation over time. In this study, we use the hydrologic model SWAT + to quantify long-term changes in groundwater storage within the MAP in United States, wherein groundwater is used extensively for irrigation. We apply a linear quantile regression method to perform trend analysis for wet, dry, and average conditions for the 1982-2020 period.
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