Redirigiendo al acceso original de articulo en 17 segundos...
ARTÍCULO
TITULO

Source Apportionment of Soil Heavy Metal(Loid)s in Farmland Using Diverse Models: A Comparative Assessment in the Yellow River Delta

Wei Huang    
Shuhuan Wang    
Lu Wang    
Yingqiang Song    
Yue Zhu    
Hao Yang    
Yingkai Xie and Yueming Hu    

Resumen

The rapid development of industrialization and urbanization has posed serious challenges for coastal farmland ecosystems. Source apportionment of soil heavy metals is an effective way for the detection of non-point source pollution in farmland to help support the high-quality development of coastal agriculture. To this end, 113 surface soil samples were collected in the coastal delta of China, and the contents of As, Cd, Cr, Cu, Ni, Pb, and Zn were determined. A variety of models were integrated to apportion the source of soil heavy metals, including positive matrix factorization (PMF), geographical detector (GD), eXtreme gradient boosting (XGBoost), and structural equation modeling (SEM). The result of PMF models revealed that there was collinearity between various heavy metals, and the same heavy metal may have a mixed source. The XGBoost model analysis indicated that there were significant non-linear relationships between soil heavy metals and source factors. A synergy between air quality and human activity factors was the key source of heavy metal that entered the study area, based on the results of the GD. Furthermore, the input path effect of heavy metals in the soil of the study area was quantified by SEM. The balance of evidence from the above models showed that air quality (SO2 and NO2) and factories in the study area had the greatest impacts on Cd, Cr, and Zn. Natural sources were dominant for Pb, while As, Cu, and Ni were contributed by soil parent material and factories. The above results led to the conclusion that there was a cycle path in the study area that continuously promoted the migration and accumulation of heavy metals in farmland soil; that is, the heavy metals discharged during oil exploitation and smelting entered the atmosphere and then accumulated in the farmland soil through precipitation, atmospheric deposition, and other paths. In this study, it is shown that a variety of models can be used to more comprehensively assess the sources of soil heavy metals. This approach can provide effective support for the rapid prevention and decision-making management of soil heavy metal pollution in coastal areas.

Palabras claves

 Artículos similares

       
 
Nikolaos Barmparesos, Dikaia Saraga, Sotirios Karavoltsos, Thomas Maggos, Vasiliki D. Assimakopoulos, Aikaterini Sakellari, Kyriaki Bairachtari and Margarita Niki Assimakopoulos    
Introductory Article of the MDPI Special Issue ?New Challenges for Indoor Air Quality?.
Revista: Applied Sciences

 
Efdal Yalçin,Lokman Hakan Tecer,Sema Yurdakul,Gürdal Tuncel     Pág. 269 - 284
The assessment of volatile organic compounds (VOCs) has become an important field of interest in atmospheric pollution. This study quantifies and characterizes the ambient levels and spatial distribution of VOCs in urban and rural areas of Balikesir city... ver más
Revista: Atmósfera

 
Konstantinos G. Koukoulakis, Panagiotis George Kanellopoulos, Eirini Chrysochou, Danae Costopoulou, Irene Vassiliadou, Leondios Leondiadis and Evangelos Bakeas    
Background: Thriassion Plain is considered the most industrialized area in Greece and thus a place where emissions of pollutants are expected to be elevated, leading to the degradation of air quality. Methods: Simultaneous determination of polycyclic aro... ver más
Revista: Applied Sciences

 
Chang Hoon Jung, Ji Yi Lee, Junshik Um, Seoung Soo Lee, Young Jun Yoon and Yong Pyo Kim    
We estimated source-based aerosol optical properties for polydisperse aerosols according to a chemical-species-resolved mass contribution method based on source apportionment. We investigated the sensitivity of aerosol optical properties based on PM2.5 (... ver más
Revista: Applied Sciences

 
Marsha Savira Agatha Putri, Chao-Hsun Lou, Mat Syai?in, Shang-Hsin Ou and Yu-Chun Wang    
The application of multivariate statistical techniques including cluster analysis and principal component analysis-multiple linear regression (PCA-MLR) was successfully used to classify the river pollution level in Taiwan and identify possible pollution ... ver más
Revista: Water