Source identification of heavy metals in atmospheric dust using Platanus orientalis L. leaves as bioindicator

Studies on atmospheric dust have been limited by the high cost of instrumental monitoring methods and also sampling difficulties. The use of organisms acting as bioaccumulators has recently been proposed. In this study, the leaves of Platanus orientalis L., as a possible biomonitor of heavy metals i...

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Main Authors: Samira Norouzi, Hossein Khademi
Format: Article
Language:English
Published: Federation of Eurasian Soil Science Societies 2015-07-01
Series:Eurasian Journal of Soil Science
Subjects:
Online Access:http://dergipark.ulakbim.gov.tr/ejss/article/view/5000130407/5000119456
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spelling doaj-5f5866cb81834b4ebf5413e4e3eef0842020-11-25T02:38:54ZengFederation of Eurasian Soil Science SocietiesEurasian Journal of Soil Science 2147-42492015-07-0143144219http://dx.doi.org/10.18393/ejss.2015.3.144-152Source identification of heavy metals in atmospheric dust using Platanus orientalis L. leaves as bioindicatorSamira Norouzi0Hossein Khademi1Isfahan University of Technology, Department of Soil Science, Isfahan, IranIsfahan University of Technology, Department of Soil Science, Isfahan, IranStudies on atmospheric dust have been limited by the high cost of instrumental monitoring methods and also sampling difficulties. The use of organisms acting as bioaccumulators has recently been proposed. In this study, the leaves of Platanus orientalis L., as a possible biomonitor of heavy metals in atmospheric dust, were evaluated to understand the likely source(s) of pollution in Isfahan, Iran. Concentration of Zn, Cu, Ni and Mn and Magnetic susceptibility (χlf) were determined in washed (WL) and unwashed leaves (UL), monthly sampled from May to Nov., 2012. By subtracting the amount of metal concentrations and χlf in UL and WL, the amount of these parameters in dust deposited on the leaves (UL-WL) were calculated. Enrichment factor analysis (EF), correlation coeficient, principal component analysis (PCA) and cluster analysis (CA) on the UL-WL data were employed to trace the heavy metals sources. Results showed that the metal concentration in UL and WL in primary sampling times was not statistically different. As time passed, this difference became more noticeable. Seasonal accumulation trends of elements concentration in UL-WL, referred to as accumulative biomonitors showing the accumulation of dust on the leaves are considerable and the contamination of plants by metal occurs mainly by retention of particulate matter. All the heavy metals are well correlated with χlf, indicating the potential of magnetic measurement as an inexpensive and less laborious method to estimate heavy metals. Cu and Zn exhibited a very strong correlation with each other and the highest correlation with χlf, suggesting an anthropogenic nature of these two metals. High EF of Cu and Zn showed that anthropogenic sources contribute a substantial amount of these metals to dust deposited on leaves. Whereas, less EF for Mn and Ni shows that natural source and local polluted soils might be the main origins of these metals. PCA results showed 2 principal components. Factor 1 with significant loading for Cu and Zn and factor 2 for Mn and Ni. In an agreement with the PCA and correlation results, CA showed strong clusters for Zn and Cu and also for Mn and Ni. Zn seems to originate from vehicular emissions, oil combustion and wear and tear of vehicle tires. Cu seems to originate from industrial processes, traffic and combustion of fossil fuels. Polluted soils in the area appear to be the main natural source for Mn and Ni in dust, while anthropogenic activities could be considered as the second origin.http://dergipark.ulakbim.gov.tr/ejss/article/view/5000130407/5000119456Tree leavesHeavy metalsMagnetic susceptibilityEnrichment FactorMultivariate statistics
collection DOAJ
language English
format Article
sources DOAJ
author Samira Norouzi
Hossein Khademi
spellingShingle Samira Norouzi
Hossein Khademi
Source identification of heavy metals in atmospheric dust using Platanus orientalis L. leaves as bioindicator
Eurasian Journal of Soil Science
Tree leaves
Heavy metals
Magnetic susceptibility
Enrichment Factor
Multivariate statistics
author_facet Samira Norouzi
Hossein Khademi
author_sort Samira Norouzi
title Source identification of heavy metals in atmospheric dust using Platanus orientalis L. leaves as bioindicator
title_short Source identification of heavy metals in atmospheric dust using Platanus orientalis L. leaves as bioindicator
title_full Source identification of heavy metals in atmospheric dust using Platanus orientalis L. leaves as bioindicator
title_fullStr Source identification of heavy metals in atmospheric dust using Platanus orientalis L. leaves as bioindicator
title_full_unstemmed Source identification of heavy metals in atmospheric dust using Platanus orientalis L. leaves as bioindicator
title_sort source identification of heavy metals in atmospheric dust using platanus orientalis l. leaves as bioindicator
publisher Federation of Eurasian Soil Science Societies
series Eurasian Journal of Soil Science
issn 2147-4249
publishDate 2015-07-01
description Studies on atmospheric dust have been limited by the high cost of instrumental monitoring methods and also sampling difficulties. The use of organisms acting as bioaccumulators has recently been proposed. In this study, the leaves of Platanus orientalis L., as a possible biomonitor of heavy metals in atmospheric dust, were evaluated to understand the likely source(s) of pollution in Isfahan, Iran. Concentration of Zn, Cu, Ni and Mn and Magnetic susceptibility (χlf) were determined in washed (WL) and unwashed leaves (UL), monthly sampled from May to Nov., 2012. By subtracting the amount of metal concentrations and χlf in UL and WL, the amount of these parameters in dust deposited on the leaves (UL-WL) were calculated. Enrichment factor analysis (EF), correlation coeficient, principal component analysis (PCA) and cluster analysis (CA) on the UL-WL data were employed to trace the heavy metals sources. Results showed that the metal concentration in UL and WL in primary sampling times was not statistically different. As time passed, this difference became more noticeable. Seasonal accumulation trends of elements concentration in UL-WL, referred to as accumulative biomonitors showing the accumulation of dust on the leaves are considerable and the contamination of plants by metal occurs mainly by retention of particulate matter. All the heavy metals are well correlated with χlf, indicating the potential of magnetic measurement as an inexpensive and less laborious method to estimate heavy metals. Cu and Zn exhibited a very strong correlation with each other and the highest correlation with χlf, suggesting an anthropogenic nature of these two metals. High EF of Cu and Zn showed that anthropogenic sources contribute a substantial amount of these metals to dust deposited on leaves. Whereas, less EF for Mn and Ni shows that natural source and local polluted soils might be the main origins of these metals. PCA results showed 2 principal components. Factor 1 with significant loading for Cu and Zn and factor 2 for Mn and Ni. In an agreement with the PCA and correlation results, CA showed strong clusters for Zn and Cu and also for Mn and Ni. Zn seems to originate from vehicular emissions, oil combustion and wear and tear of vehicle tires. Cu seems to originate from industrial processes, traffic and combustion of fossil fuels. Polluted soils in the area appear to be the main natural source for Mn and Ni in dust, while anthropogenic activities could be considered as the second origin.
topic Tree leaves
Heavy metals
Magnetic susceptibility
Enrichment Factor
Multivariate statistics
url http://dergipark.ulakbim.gov.tr/ejss/article/view/5000130407/5000119456
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