This document summarizes a study that analyzed heavy metal contamination in the Pondicherry mangroves in India. Surface water and sediment samples were collected from two locations in the mangroves over one year. The samples were analyzed for concentrations of zinc, copper, iron, manganese, cadmium, and mercury. Statistical analysis methods including cluster analysis, principal component analysis, and multidimensional scaling were used to evaluate pollution levels and relationships between metals. The study found that metal concentrations followed the order of iron > zinc > manganese > copper > cadmium > mercury. Concentrations were generally lowest in summer months. Enrichment factor values indicated unpolluted sediments at one station and correlations between metals suggested influences
Seasonal Variations and Diversity of Marine Diatoms of Jegathapattinam and Ka...IJSRD
The present study entitled on Seasonal variations and diversity of plantonic marine diatoms of Jegathapattinam (Lat. 09º 95 N: Long. 79º 18 E) and Kattumavadi (Lat. 10º 13 N; Long.79º 22 E) South East Coast of India was carried out for a period of one year (from June 2011 to May2012).The study focuses attention on the survey, systematics of marine diatom diversity and the influence of physico-chemical factors on their seasonal distribution. A total of 52 species belonging to 38 genera of marine diatoms were recorded from both stations. The most common genera were Actinocyclus, Amphora, Bacteriastrum, Biddulphia, Chaetoceros, Coscinodiscus, Cyclotella, Diploneis, Gyrosigma, Licmophora, Melosira, Navicula, Nitzschia, Pleurosigma and Tropidoneis were present in the two stations. Higher values of diatom population density were found during summer at both stations. The seasonal distribution and abundance are discussed in relation to physico- chemical parameters.
Rainy seasonal analysis of Physico-chemical parameters of Mukungwa River at N...Agriculture Journal IJOEAR
Water availability and quality are important factors that determine not only where people can live, but also the quality of life. The Mukungwa river is affected by rainy season especially at Ngaru point before discharge in Nyabarongo river, where its physico-chemical properties are seasonally changed. This may cause serious problems on all forms of life in the river. Objective of this work was to assess the impacts of rainy season on physico-chemical properties of Mukugwa River before discharging into Nyabarongo River at Ngaru. The parameters such as pH, temperature, turbidity, electric conductivity, total dissolved solids (TSS), phosphates, nitrates, and ammonium were monitored in three rainy seasons: April, 2012; October, 2012 and May, 2017 respectively. In this research, pH, temperature, electric conductivity were analyzed in situ using multifunction pH-meter and others parameters, were analyzed in laboratory using electrometric, volumetric, turbidity tube and colorimetric methods. The measured values for each parameter in three seasons were analyzed using MS Excel, and then compared to their international standards for surface water delivered by World Health Organization (WHO). The findings showed high variation of TSS (134mg/l, 178mg/l, and 582mg/l), turbidity (322NTU, 317NTU and 1560NTU) and ammonium (0.498mg/L, 0.536mg/L and 0.78mg/L) in three rainy seasons assessed. The quality of Mukungwa River needs prevention measures in order to control its pollution by erosion.
Seasonal Variations and Diversity of Marine Diatoms of Jegathapattinam and Ka...IJSRD
The present study entitled on Seasonal variations and diversity of plantonic marine diatoms of Jegathapattinam (Lat. 09º 95 N: Long. 79º 18 E) and Kattumavadi (Lat. 10º 13 N; Long.79º 22 E) South East Coast of India was carried out for a period of one year (from June 2011 to May2012).The study focuses attention on the survey, systematics of marine diatom diversity and the influence of physico-chemical factors on their seasonal distribution. A total of 52 species belonging to 38 genera of marine diatoms were recorded from both stations. The most common genera were Actinocyclus, Amphora, Bacteriastrum, Biddulphia, Chaetoceros, Coscinodiscus, Cyclotella, Diploneis, Gyrosigma, Licmophora, Melosira, Navicula, Nitzschia, Pleurosigma and Tropidoneis were present in the two stations. Higher values of diatom population density were found during summer at both stations. The seasonal distribution and abundance are discussed in relation to physico- chemical parameters.
Rainy seasonal analysis of Physico-chemical parameters of Mukungwa River at N...Agriculture Journal IJOEAR
Water availability and quality are important factors that determine not only where people can live, but also the quality of life. The Mukungwa river is affected by rainy season especially at Ngaru point before discharge in Nyabarongo river, where its physico-chemical properties are seasonally changed. This may cause serious problems on all forms of life in the river. Objective of this work was to assess the impacts of rainy season on physico-chemical properties of Mukugwa River before discharging into Nyabarongo River at Ngaru. The parameters such as pH, temperature, turbidity, electric conductivity, total dissolved solids (TSS), phosphates, nitrates, and ammonium were monitored in three rainy seasons: April, 2012; October, 2012 and May, 2017 respectively. In this research, pH, temperature, electric conductivity were analyzed in situ using multifunction pH-meter and others parameters, were analyzed in laboratory using electrometric, volumetric, turbidity tube and colorimetric methods. The measured values for each parameter in three seasons were analyzed using MS Excel, and then compared to their international standards for surface water delivered by World Health Organization (WHO). The findings showed high variation of TSS (134mg/l, 178mg/l, and 582mg/l), turbidity (322NTU, 317NTU and 1560NTU) and ammonium (0.498mg/L, 0.536mg/L and 0.78mg/L) in three rainy seasons assessed. The quality of Mukungwa River needs prevention measures in order to control its pollution by erosion.
Influence of Sulfate, Phosphate, Ammonia and Dissolved Oxygen on Biochemical ...BRNSS Publication Hub
The present study was done to ascertain the level biochemical oxygen demand (BOD) of Marlimund Lake situated in Ooty how it is related with the other parameters such as water temperature, dissolved oxygen, phosphate, sulfate, iron, and free ammonia. Four sampling sites were selected and studied over the period of 13 months from February 2016 to February 2017. The results were computed by best model fits applied for calculation using Curve Expert Version 4.2. The water temperature ranged from 8.1°C to 18.7°C, dissolved oxygen 3.468–6.976 mg/l, phosphate 0.1–1.92 mg/l, sulfate 1–18 mg/l, free ammonia 0.12–6.01 mg/l, and BOD 2.178–5.040 mg/l. BOD was found to be significantly related to dissolved oxygen (r = 0.5690291) by 4th degree polynomial fit, phosphate (r = 0.7095253) by rational function fit and free ammonia (r = 0.7395016) by MMF model fit, respectively. Sulfate was found to be nonsignificant (r = 0.2565396) by geometric fit model, and water temperature (r =0.4595060) shows a sinusoidal fit.
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online.
Study on Physico-Chemical Parameters of Harsi Reservoir Dabra, Gwalior Distri...ijsrd.com
this study was aimed to estimate physico-chemical characteristic of Harsi reservoir. Harsi reservoir located in Dabra, Gwalior district, Madhya Pradesh is constructed on parwati River. Monthly study in Physico-chemical parameters such as water temperature, depth, transparency, electrical conductivity, turbidity, total dissolved solids, pH, dissolved oxygen, free carbon dioxide, total alkalinity, total hardness, chlorides, sulphates, nitrate, nitrite, phosphate, silicates, ammonia, BOD, COD, calcium, magnesium, sodium, potassium were analyzed from January 2011 to December 2011. The results indicated that Physico-chemical parameters of the water were used for drinking, domestic use, irrigation and pisciculture.
Quantification of Heavy Metals using Contamination and Pollution Index in Sel...IJEAB
Many sites in urban cities are used for dumping of domestic, industrial and municipal wastes because of high human population density in the area. Most often, people use these dumpsites for growing of crops without knowing the level of heavy metal contamination in soils of these areas. This study evaluated the quantification and contamination level of heavy metals in some refuse dumpsites in communities of the State Nigeria. Three replicate soil samples were collected from the dumpsites and at 20 m away from the non - dumpsite which do not receive sewage water within the root zone of 0 – 40 cm depth using soil auger sampler. Samples were analysed for soil properties and heavy metal concentrations using standard methods. The concentrations of the studied heavy metals (Cu, Pb, Zn and Cd) were compared with the permissible limits of other countries. Results showed that in the three studied locations, soil pH at dumpsites were 40 .6%, 39.4% and 38.9% higher than the values in the control sites while soil organic carbon were higher in the dumpsites by 50.1%, 31.3% and 41.1% as compared to the control sites. Cu concentrations at the three locations were below the standard limits of United Kingdom, European Union (EU), USA and WHO. The concentrations of the studied heavy metals passed the contamination stage and therefore will pose negative effect on plant and soil environment. Use of the dumpsite for crop cultivation or as compost materials should be avoided and construction of shallow wells near these areas should be discouraged.
Physico-chemical parameters and macrobenthic invertebrates of the intertidal ...Angelo Mark Walag
Physico-chemical parameters and macrobenthic invertebrates of the intertidal zone of Gusa, Cagayan de Oro City, Philippines were assessed from March to May 2014. Water temperature, pH, salinity, dissolved oxygen, biological oxygen demand, and type of substrate were determined in the study were within the normal range. A modified transect-quadrat method was used in an approximately 14,000 m2 of study area. Seven hundred twenty seven individuals belonging to 15 species were found in the area. These organisms belong to four phyla namely: Mollusca, Arthropoda, Echinodermata, and Annelida. The three most abundant organisms found were Coenobita clypeatus, Ophiothrix longipeda, and Cypraea poraria with relative abundance of 73.86%, 4.13% and 3.71% respectively. Most of the macrobenthic fauna identified exhibited a clumped pattern of distribution, while the rest are randomly distributed. The species diversity of the area is 1.19 which is very low compared to reports from related studies.
Macrobenthic Invertebrate assemblage along gradients of the river Basantar (J...Agriculture Journal IJOEAR
Abstract— A limnological investigation was carried out in River Basantar in the Jammu province of Jammu & Kashmir (India) during the period from December, 2009 to November, 2011 in order to analyse the effect of industrial pollution on the diversity and population density of Macrobenthic invertebrate fauna along the longitudinal profile of the river. A total of 27 macrobenthic invertebrate taxa inhabited the river; among these Arthropoda dominated the macrobenthic community (81.48%, 22 species) followed by Annelida (11.11%, 3 species) and Mollusca (7.41%, 2 species). The Discharge Zone (St II) had the highest mean standing crop of macrobenthic population while the lowest species number. Oligochaetes (Annelida) and Dipterans (Arthropoda) exhibited their abundance at polluted sites whereas Odonates, Ephemeropterans, Hemipterans, Coleopterans (Arthropoda) and Molluscs were abundant at least polluted sites. Tubifex tubifex, Branchiura sowerbyi, Limnodrillus hoffmeisteri, Chironomus, Tubifera, Psychoda and Physa acuta were identified as pollution indicator taxa while Progomphus, Cloeon, Baetis and Gyraulus as sensitive taxa.
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online.
An Assessment of Water Quality of Gomati River Particular Relevant To Physico...IJERA Editor
The study was carried out to determine physicochemical characteristics, residues of pesticide and heavy metals in water of Gomati River in Lucknow to understand its ecology. In this study the water samples were collected from 5 different locations from upstream to downstream of Lucknow from all three sites i.e, right, middle and left. Analyte including organochlorine pesticide (OCP’s) and herbicides (H) α-HCH, β-HCH, γ-HCH, δ-HCH, op-DDT, pp-DDT, pp-DDE, op-DDE, op-DDD, pp-DDD, α- endosulfan, β-endosulfan, endosulfan SO4, dicofol, heptachlor, alachlor, atrazine, butachlor, pendimethalin and heavy metals Pb, Cu, Cd, Cr, Fe, Mn, Zn, Ni were analysed. The method for pesticide residues was based on d-SPE. The quantification was done by GC-ECD and confirmation by GC-MS/MS. Heavy metals were analysed by AAS.The results revealed that river water was contaminated with HCH, DDT, alachlor, heptachlor and butachlor at hanuman sethu and gomati bairaj which may contribute to toxicity in the ecosystem of the river. The recovery ranged from 76.6 to 96.2 %, with relative standard deviations below 14%. The results revealed that river water was contaminated with ∑HCH (ND - 0.024 μg/ml), endosulfan (ND - 0.127 μg/ml), dicofol (ND - 0.041 μg/ml), alachlor (ND - 0.035 μg/ml), heptachlor (ND - 0.107 μg/ml) and butachlor (ND - 0.135 μg/ml) which may contribute to toxicity in the ecosystem of river. The heavy metals found in river water were in range: Cu (0.004 - 0.016 μg/ml); Fe (0.554 - 1.179 μg/ml); Mn (0.044 - 0.112 μg/ml); Pb (0.167 - 0.327 μg/ml) and Zn (0.046 - 0.168 μg/ml). The physicochemical parameter; pH (6.8 - 7.5), electrical conductivity (0.533 - 0.764 ms/cm), total dissolved solids (202 - 388 mg/l), chloride (17.99 - 35.98 mg/l) were recorded. The water quality has been found unsafe for civil consumption. The higher level of pollutants polluting water quality of river are disturbing the ecology of river and affecting human health directly and indirectly.A
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online.
Study of Seasonal Variations in Oxygen Consumption of Estuarine Clam, Meretri...ijtsrd
The estuarine clam, Meretrix meretrix was exposed to predetermined seasonal sublethal and lethal concentrations of CdCl2, 2½ H2O for 96 hrs. Experiments were conducted during summer, monsoon and winter by keeping control group of clams. Estuarine water parameters like temperature, pH, salinity, rainfall and dissolved oxygen were recorded. In the present study, it is found that, it has significant influence on rate of oxygen consumption and toxicity of cadmium chloride. During summer, clams from LC0 and LC50 group were treated with 1.1ppm and 1.8 ppm respectively. During monsoon LC0 and LC50 group were treated with 1.6 ppm and 2.0 ppm respectively. During winter clams from LC0 and LC50 group were exposed to 1.4 ppm and 2.1 ppm cadmium chloride respectively. During summer, as compared to control group, there were 3.83, 17.04, 16.77 and 10.63 increase in oxygen uptake at the end of 24, 36, 48, and 60 hrs. There were 0.35, 4.97 and 21.75 decrease at the end of 48, 72, 84 and 96 hrs. Moreover, similar trend of oxygen consumption was observed in LC0 and LC50 .group of clams in winter and monsoon season. During monsoon and winter clams from control group showed similar trend of oxygen uptake with less significant fluctuations. Clams from control group and LC0 and LC50 group showed less oxygen consumption during monsoon than summer and winter. Sanjay Kumbhar "Study of Seasonal Variations in Oxygen Consumption of Estuarine Clam, Meretrix Meretrix (Linnaeus, 1758) after Acute Exposure of Cadmium Chloride" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-4 | Issue-3 , April 2020, URL: https://www.ijtsrd.com/papers/ijtsrd30543.pdf Paper Url :https://www.ijtsrd.com/biological-science/zoology/30543/study-of-seasonal-variations-in-oxygen-consumption-of-estuarine-clam-meretrix-meretrix-linnaeus-1758-after-acute-exposure-of-cadmium-chloride/sanjay-kumbhar
Influence of Sulfate, Phosphate, Ammonia and Dissolved Oxygen on Biochemical ...BRNSS Publication Hub
The present study was done to ascertain the level biochemical oxygen demand (BOD) of Marlimund Lake situated in Ooty how it is related with the other parameters such as water temperature, dissolved oxygen, phosphate, sulfate, iron, and free ammonia. Four sampling sites were selected and studied over the period of 13 months from February 2016 to February 2017. The results were computed by best model fits applied for calculation using Curve Expert Version 4.2. The water temperature ranged from 8.1°C to 18.7°C, dissolved oxygen 3.468–6.976 mg/l, phosphate 0.1–1.92 mg/l, sulfate 1–18 mg/l, free ammonia 0.12–6.01 mg/l, and BOD 2.178–5.040 mg/l. BOD was found to be significantly related to dissolved oxygen (r = 0.5690291) by 4th degree polynomial fit, phosphate (r = 0.7095253) by rational function fit and free ammonia (r = 0.7395016) by MMF model fit, respectively. Sulfate was found to be nonsignificant (r = 0.2565396) by geometric fit model, and water temperature (r =0.4595060) shows a sinusoidal fit.
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online.
Study on Physico-Chemical Parameters of Harsi Reservoir Dabra, Gwalior Distri...ijsrd.com
this study was aimed to estimate physico-chemical characteristic of Harsi reservoir. Harsi reservoir located in Dabra, Gwalior district, Madhya Pradesh is constructed on parwati River. Monthly study in Physico-chemical parameters such as water temperature, depth, transparency, electrical conductivity, turbidity, total dissolved solids, pH, dissolved oxygen, free carbon dioxide, total alkalinity, total hardness, chlorides, sulphates, nitrate, nitrite, phosphate, silicates, ammonia, BOD, COD, calcium, magnesium, sodium, potassium were analyzed from January 2011 to December 2011. The results indicated that Physico-chemical parameters of the water were used for drinking, domestic use, irrigation and pisciculture.
Quantification of Heavy Metals using Contamination and Pollution Index in Sel...IJEAB
Many sites in urban cities are used for dumping of domestic, industrial and municipal wastes because of high human population density in the area. Most often, people use these dumpsites for growing of crops without knowing the level of heavy metal contamination in soils of these areas. This study evaluated the quantification and contamination level of heavy metals in some refuse dumpsites in communities of the State Nigeria. Three replicate soil samples were collected from the dumpsites and at 20 m away from the non - dumpsite which do not receive sewage water within the root zone of 0 – 40 cm depth using soil auger sampler. Samples were analysed for soil properties and heavy metal concentrations using standard methods. The concentrations of the studied heavy metals (Cu, Pb, Zn and Cd) were compared with the permissible limits of other countries. Results showed that in the three studied locations, soil pH at dumpsites were 40 .6%, 39.4% and 38.9% higher than the values in the control sites while soil organic carbon were higher in the dumpsites by 50.1%, 31.3% and 41.1% as compared to the control sites. Cu concentrations at the three locations were below the standard limits of United Kingdom, European Union (EU), USA and WHO. The concentrations of the studied heavy metals passed the contamination stage and therefore will pose negative effect on plant and soil environment. Use of the dumpsite for crop cultivation or as compost materials should be avoided and construction of shallow wells near these areas should be discouraged.
Physico-chemical parameters and macrobenthic invertebrates of the intertidal ...Angelo Mark Walag
Physico-chemical parameters and macrobenthic invertebrates of the intertidal zone of Gusa, Cagayan de Oro City, Philippines were assessed from March to May 2014. Water temperature, pH, salinity, dissolved oxygen, biological oxygen demand, and type of substrate were determined in the study were within the normal range. A modified transect-quadrat method was used in an approximately 14,000 m2 of study area. Seven hundred twenty seven individuals belonging to 15 species were found in the area. These organisms belong to four phyla namely: Mollusca, Arthropoda, Echinodermata, and Annelida. The three most abundant organisms found were Coenobita clypeatus, Ophiothrix longipeda, and Cypraea poraria with relative abundance of 73.86%, 4.13% and 3.71% respectively. Most of the macrobenthic fauna identified exhibited a clumped pattern of distribution, while the rest are randomly distributed. The species diversity of the area is 1.19 which is very low compared to reports from related studies.
Macrobenthic Invertebrate assemblage along gradients of the river Basantar (J...Agriculture Journal IJOEAR
Abstract— A limnological investigation was carried out in River Basantar in the Jammu province of Jammu & Kashmir (India) during the period from December, 2009 to November, 2011 in order to analyse the effect of industrial pollution on the diversity and population density of Macrobenthic invertebrate fauna along the longitudinal profile of the river. A total of 27 macrobenthic invertebrate taxa inhabited the river; among these Arthropoda dominated the macrobenthic community (81.48%, 22 species) followed by Annelida (11.11%, 3 species) and Mollusca (7.41%, 2 species). The Discharge Zone (St II) had the highest mean standing crop of macrobenthic population while the lowest species number. Oligochaetes (Annelida) and Dipterans (Arthropoda) exhibited their abundance at polluted sites whereas Odonates, Ephemeropterans, Hemipterans, Coleopterans (Arthropoda) and Molluscs were abundant at least polluted sites. Tubifex tubifex, Branchiura sowerbyi, Limnodrillus hoffmeisteri, Chironomus, Tubifera, Psychoda and Physa acuta were identified as pollution indicator taxa while Progomphus, Cloeon, Baetis and Gyraulus as sensitive taxa.
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online.
An Assessment of Water Quality of Gomati River Particular Relevant To Physico...IJERA Editor
The study was carried out to determine physicochemical characteristics, residues of pesticide and heavy metals in water of Gomati River in Lucknow to understand its ecology. In this study the water samples were collected from 5 different locations from upstream to downstream of Lucknow from all three sites i.e, right, middle and left. Analyte including organochlorine pesticide (OCP’s) and herbicides (H) α-HCH, β-HCH, γ-HCH, δ-HCH, op-DDT, pp-DDT, pp-DDE, op-DDE, op-DDD, pp-DDD, α- endosulfan, β-endosulfan, endosulfan SO4, dicofol, heptachlor, alachlor, atrazine, butachlor, pendimethalin and heavy metals Pb, Cu, Cd, Cr, Fe, Mn, Zn, Ni were analysed. The method for pesticide residues was based on d-SPE. The quantification was done by GC-ECD and confirmation by GC-MS/MS. Heavy metals were analysed by AAS.The results revealed that river water was contaminated with HCH, DDT, alachlor, heptachlor and butachlor at hanuman sethu and gomati bairaj which may contribute to toxicity in the ecosystem of the river. The recovery ranged from 76.6 to 96.2 %, with relative standard deviations below 14%. The results revealed that river water was contaminated with ∑HCH (ND - 0.024 μg/ml), endosulfan (ND - 0.127 μg/ml), dicofol (ND - 0.041 μg/ml), alachlor (ND - 0.035 μg/ml), heptachlor (ND - 0.107 μg/ml) and butachlor (ND - 0.135 μg/ml) which may contribute to toxicity in the ecosystem of river. The heavy metals found in river water were in range: Cu (0.004 - 0.016 μg/ml); Fe (0.554 - 1.179 μg/ml); Mn (0.044 - 0.112 μg/ml); Pb (0.167 - 0.327 μg/ml) and Zn (0.046 - 0.168 μg/ml). The physicochemical parameter; pH (6.8 - 7.5), electrical conductivity (0.533 - 0.764 ms/cm), total dissolved solids (202 - 388 mg/l), chloride (17.99 - 35.98 mg/l) were recorded. The water quality has been found unsafe for civil consumption. The higher level of pollutants polluting water quality of river are disturbing the ecology of river and affecting human health directly and indirectly.A
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online.
Study of Seasonal Variations in Oxygen Consumption of Estuarine Clam, Meretri...ijtsrd
The estuarine clam, Meretrix meretrix was exposed to predetermined seasonal sublethal and lethal concentrations of CdCl2, 2½ H2O for 96 hrs. Experiments were conducted during summer, monsoon and winter by keeping control group of clams. Estuarine water parameters like temperature, pH, salinity, rainfall and dissolved oxygen were recorded. In the present study, it is found that, it has significant influence on rate of oxygen consumption and toxicity of cadmium chloride. During summer, clams from LC0 and LC50 group were treated with 1.1ppm and 1.8 ppm respectively. During monsoon LC0 and LC50 group were treated with 1.6 ppm and 2.0 ppm respectively. During winter clams from LC0 and LC50 group were exposed to 1.4 ppm and 2.1 ppm cadmium chloride respectively. During summer, as compared to control group, there were 3.83, 17.04, 16.77 and 10.63 increase in oxygen uptake at the end of 24, 36, 48, and 60 hrs. There were 0.35, 4.97 and 21.75 decrease at the end of 48, 72, 84 and 96 hrs. Moreover, similar trend of oxygen consumption was observed in LC0 and LC50 .group of clams in winter and monsoon season. During monsoon and winter clams from control group showed similar trend of oxygen uptake with less significant fluctuations. Clams from control group and LC0 and LC50 group showed less oxygen consumption during monsoon than summer and winter. Sanjay Kumbhar "Study of Seasonal Variations in Oxygen Consumption of Estuarine Clam, Meretrix Meretrix (Linnaeus, 1758) after Acute Exposure of Cadmium Chloride" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-4 | Issue-3 , April 2020, URL: https://www.ijtsrd.com/papers/ijtsrd30543.pdf Paper Url :https://www.ijtsrd.com/biological-science/zoology/30543/study-of-seasonal-variations-in-oxygen-consumption-of-estuarine-clam-meretrix-meretrix-linnaeus-1758-after-acute-exposure-of-cadmium-chloride/sanjay-kumbhar
Status of Heavy metal pollution in Mithi river: Then and NowIJRES Journal
The Mithi River runs through the heart of suburban Mumbai. Its path of flow has been severely
damaged due to industrialization and urbanization. The quality of water has been deteriorating ever since. The
Municipal and industrial effluents are discharged in unchecked amounts. The municipal discharge comprises
untreated domestic and sewage wastes whereas the industries are majorly discharge chemicals and other toxic
effluents which are responsible in increasing the metal load of the river. In the current study, the water is
analysed for heavy metals- Copper, Cadmium, Chromium, Lead and Nickel. It also includes a brief
understanding on the fluctuations that have occurred in the heavy metal pollution, through the compilation of
studies carried out in the area previously.
IJERA (International journal of Engineering Research and Applications) is International online, ... peer reviewed journal. For more detail or submit your article, please visit www.ijera.com
IJERA (International journal of Engineering Research and Applications) is International online, ... peer reviewed journal. For more detail or submit your article, please visit www.ijera.com
Environmental Qualitative assessment of rivers sedimentsGJESM Publication
In this study, the concentrations of heavy metals (Ca, Zn, Cu, Fe, Mn, Ni) in thesediment of Shavoor River in Khuzestan Province in Iran has been investigated. After the library studies and field studies, six samples of water
and sediment were taken from the river in order to evaluate heavy metal pollution in sediments. To determine the
geochemical phases of metals in sediment samples the 5-step method was used for chemical separation. For quantitative assessment of the severity of contamination in the sediments, the geochemical indicators such as enriched factor (EF) and the accumulation index (Igeo) were used. Also, the statistical analyses including methods such as correlation analysis cluster analysis the (CA), were conducted.The results of the experiments showed that the organic matter deposited varies
with the average of 2.49 and ranges between 1.95% and 3.43%. Samples showed concentrations of metals such as calcium, iron, manganese, copper and nickel at all the sampling points were below the global average, whereas the concentration of copper was slightly higher than the global scale. Enriched factor (EF) was calculated for the elements revealed that heavy metals are classified as non-infected. The Geo-accumulation Index showed that the studied elements were uninfected peers. Based on the results of multivariate statistical analysis it was concluded that metals such as manganese, copper, iron, nickel and zinc are mainly natural and calcium metal is likely to have an organic origin.
This work contributes to the monitoring of water pollution of some selected Dams in Katsina
State, North western Nigeria by assessing the degree of heavy metal pollution in the Dams sediment samples.
The study was conducted in the year 2017 within some selected Dams in the State (Ajiwa, Zobe,
Sabke/Dannakola) that are beehives of fishing and Agricultural activities in Katsina State. Analysis for the
concentration of these heavy metals; Cr, Cd, Fe, Ni, Mn, Pb and Zn was conducted by the use of AAS (by
Atomic Absorption Spectrophotometry) method. Several indices were used to assess the metal contamination
levels in the sediment samples, namely; Geo-accumulation Index (Igeo), Enrichment Factor (EF),
Contamination Factor (CF), Degree of Contamination (Cd), Pollution Load Index (PLI) and Potential
Ecological Risk Index (PERI). The result of this study has shown that generally among the heavy metals
evaluated, the highest concentration was observed for Fe (range: 2.6718-4.2830 ppm), followed by Zn (range:
0.4265-0.7376 ppm), Cr (range: 0.1106-0.1836 ppm), Cd (range: 0.1333-0.1273 ppm) and Mn (range: 0.1136-
0.1271 ppm). While Pb has the lowest concentration (range: 0.0472-0.0598 ppm). For all the site sampled the
heavy metal Ni was below detection level (BDL). From the results of heavy metals I-geo values, according to
Muller’s classification, all the sediment samples from the selected dams were unpolluted (class 0). The result for
the enrichment factor has shown that for all the selected dam sediment samples the heavy metals show
deficiency to minimal enrichment. Also based on the contamination factors for all sediment samples the heavy
metal Cd has a CF values range of 0.5430-0.6665 (~1), indicating that the sediment samples are moderately
contaminated with Cd. In contrast, the rest of the heavy metals exhibit low contamination in general. The value
of PLI ranges from 0.2408 to 0.4935, indicating unpolluted to moderate pollution. The Eri values for all
samples are all < 40, presenting low ecological risk. The results suggest that the sediment samples from the
selected dams in Katsina state has low contamination by the heavy metals evaluated.
Assessment Of Heavy Metal In Sediment Of Orogodo River, Agbor, Delta State.docxResearchWap
This study was carried out to examine heavy metals concentration in sediment of upstream and downstream of the entry of the sewage to the Orogodo River, Agbor, Delta state Nigeria . Samples were collected from upstream and downstream and were analyzed for Heavy metals (Cd, Cr, Cu, Fe, Pb, Ni, Ca, Mg, Co, Mn and Zn) by atomic absorption spectrophotometer. It shows the concentration of iron, cadmium, manganese, cobalt, chromium, zinc, magnesium, calcium, nickel, lead and copper in mg/kg in sediments sampled.Some specific physico-chemical characteristics, such as TDS, pH, Temperature and conductivity which are known to influence the interactions and dynamics of metals within the sediment. The mean value of the metals listed above in all the six locations gave 126.09mg/kg, 0.000mg/kg, 0.538mg/kg, 0.000mg/kg, 0.141mg/kg, 1.789mg/kg, 1.258mg/kg, 9.49mg/kg, 0.000mg/kg, 0.112mg/kg and 0.0827mg/kg respectively.. The result of the analysis It shown that the concentrations of heavy metal like Zn, Pb, Cr, Ca, Cu, Co, Mg, Mn, Cd and Ni in the sediment are low, but require monitoring to prevent an increase. Hence the concentration of Fe is higher when compared with the WHO and FEPA standard for sediment which may constitute risk to the environment. The concentration of heavy metals varies for the different locations. Based on the result of the analysis, recommendations were offered to reduce the concentration of heavy metal of the river.
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Identification of heavy metals contamination by multivariate statistical analysis methods in pondicherry mangroves
1. Journal of Environment and Earth Science www.iiste.org
ISSN 2224-3216 (Paper) ISSN 2225-0948 (Online)
Vol 1, No.1, 2011
Identification of heavy metals contamination by multivariate
statistical analysis methods in Pondicherry mangroves, India
P. Satheeshkumar1*, D. Senthilkumar 2
1. Department of Ecology and Environmental Sciences, Pondicherry University, Puducherry,
India-605014
2. Kandaswamy Kandar Arts and Science College, Department of Zoology,
Paramathy-Velur, Tamilnadu, India-638181
*Email of the corresponding author: indianscientsathish@gmail.com
Abstract
Pondicherry mangroves received a heavy influx of sewage, industrial effluents; domestic and agricultural
waste which consists of varying hazardous chemical and causing deleterious effects on fish and other
aquatic organisms. Surface water and sediments (0-5 cm) were collected in two locations from the
Pondicherry mangroves, India. Fractionation of the metals in Zn, Cu, Fe, Mn, Cd & Hg was investigated.
Cluster analysis, principal componenent analysis and multidimensional scale plot were employed to
evaluate tropic status of pollution for monitoring the present study stations. This study confirmed that
source of water and sediment heavy metals concentration followed the hierarchy;
Fe>Zn>Mn>Cu>Cd>Hg in estuary. An important observation is that, in general lowest heavy metal
concentrations are found during summer, compared Post, pre and monsoon. Enrichment factor values of
station 2; sediments reveal unpolluted nature and the positive correlation among Fe, Mn and other heavy
metals indicate the influence of early diagnostic process.
Keywords: correlation, estuary, heavy metal, Pondicherry, sediment, water
1. Introduction
Pollution of the natural environment by heavy metals is a worldwide problem because these
metals are permanent and most of them have toxic effects on living organisms when they exceed a certain
concentration (Chakraborty et al. 2009). In coastal environments and estuaries, which are often
characterized by large industrial settlements and urban areas, the impact of effluent discharges leads to
the accumulation of contaminants such as heavy metals and organometallic and persistent organic
pollutants (Ridgway & Shimmield 2002). Heavy metals are introduced anthropogenically as pollutants
into lotic and lenthic aquatic ecosystems from industrial, agricultural and domestic wastewater / effluents
(Ho et al. 2003). Concentration of metals in sediment of the Indian waters has been documented by
(Mitra et al. 1996; Hema Achyuthan et al. 2002; Agoramoorthy et al. 2008). Discharge of greater
quantity pollutants into the aquatic environment may result into deterioration of ecological imbalance,
changes the physical and chemical nature of the water and aquatic biota (Mitra et al.1996).
Mangrove environment of Pondicherry is important as supports the local fishing activities,
nursery grounds for many fish and shellfish species, and as well as being central ecotourism activities.
Pondicherry coastal area is polluted due to discharge of industrial, domestic and agricultural wastes
through small tributaries and channels in to the Bay of Bengal. Ariyankuppam estuary is regarded as one
of the most polluted estuaries in Pondicherry, due to a long history of contamination, and as a result
sediments are seriously affected by metal pollution (Ananthan et al. 2004). It is difficult to quantify
anthropogenic input of heavy metals into many polluted environments as frequently no direct evidence of
heavy metal content in sediments from pre-industrial periods (De Groot et al. 1976). Marine sediments
are very important accumulation site of metals in the coastal areas; therefore analyses of these metals are
important to assess the degree of pollution in the marine environment. Hence, the present study has been
made to survey metals composition of mangroves in relation to their surrounding water and sediment.
The primary objectives of the present study was to obtain a preliminary assessment about the levels and
spatial distribution of these selected elements, to estimate the total concentrations of the heavy metals in
the water and sediments at Pondicherry mangroves and to evaluate the grain size effect on metal levels in
the sediments.
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2. Journal of Environment and Earth Science www.iiste.org
ISSN 2224-3216 (Paper) ISSN 2225-0948 (Online)
Vol 1, No.1, 2011
2. Materials and Method
2.1 Study site
o o
The Pondicherry mangrove is located between latitudes 11 46’03” to 11 53’40” N and
o o
longitudes 79 49’45” to 79 48’00” E (Figure 1). Mangrove exists as fringing vegetation over 168 ha
distributed along the sides of Ariankuppam estuary, which is seasonally bar-built and semi diurnal type
that flows eastwards and empties into the Bay of Bengal at Veerampatinam, carrying wastes from
adjacent agriculture lands and industries in addition to domestic municipal and distillery effluents. These
estuaries with their wetlands, lagoons, mangroves and sea-grass beds are rich in natural resources
including fisheries. They also offer tremendous potential for recreation, aquaculture, and extraction of
freshwater and transport and play a dominant role in the economy of coastal population. Our present
investigation was carried out in two stations: 1 Ariyankuppam, 2 Veerampattinam. Triplicate samples
were collected every month for one year from October 2008 to September 2009, For the sake of
interpreting the data, a calendar year wise divided into four main seasons, viz pre monsoon
(July-September), monsoon (October-December), post monsoon (January-March), summer
(April-June).
2.2 Sampling and analysis
Water samples collected from two stations in mangrove (three sites from each station). All
water samples were kept in clean polyethylene bottles. Finally samples were acidified with 10 % HNO3,
placed in an ice box and then brought back to the laboratory for analysis. Dissolved oxygen was
estimated by the modified Winkler’s methods and sulphide by (Strickland and Parsons 1972), salinity
with hand Refractometer (ERMA), water pH and temperature (hand water pH meter pH scan-2),
electrical conductivity (EC) was measured using an electrical conductivity instrument (Elico). Sediment
texture (Krumbein and Pettijhon 1983) was determined by pipette analysis method. Organic matter (OM)
of the sediment was determined by wet oxidation method (Elwakeel and Riley 1957).
Sediment samples were collected from each a clean and dried corer and samples were
transformed to clean polyethylene covers. Samples were stored frozen until analysis. Sediment samples
were separated in to fine and coarse material by sieving in the laboratory, prior to analysis of 63 < μm dry
fraction by microwave 2.3 digestion using nitric acid, this dissolution of the biological material after
freeze drying. Determination of metal concentration was undertaken using ICP-AES (Inductive Coupled
Plasma- Atomic Emission Spectroscopy).
2.3 Estimation of heavy metal enrichment
A common approach to estimating anthropogenic impact on water and sediments is to calculate
a normalized enrichment factor (EF) for metal concentrations above uncontaminated background levels
(Salomons and Forstner 1984). The EF measured in heavy metal content with respect to a sample
reference metal such as Fe or Al (Ravichandran et al.1995). Due to the lack of geochemical background
value of the study areas an alternative of the average crustal concentrations as reference material. In this
approach Fe or Al is considered to act as a “proxy” for the clay content (Windom et al.1989; Din 1992).
Deely and Fergusson (1994) proposed Fe as an acceptable normalization element to be used in the
calculation of the enrichment factor since they consider the Fe distribution which was not related to other
heavy metals (Table 1). In the present study EF values were applied to evaluate the dominant source of
sediment and as indicator for pollution effects.
The EF is calculated according to the following equation:
EF = Mx / Feb ÷Mb / Fex
Where Mx and Fex are the sediment sample concentrations of the heavy metal and Fe (or other
normalizing element), while Mb and Feb are their concentrations in a suitable background or baseline
reference material (Salomons and Forstner 1984).
2.4 Statistical analysis
Co- efficient of correlation (r) was calculated in order to understand relationship among
variables. Significant of the models was also tested using correlation co efficient. Mean and standard
deviation were calculated for each parameter. All these statistical analyses were performed using SPSS
statistics (Version 7.5 for Windows XP, SPSS, and Chicago, IL, USA). The multivariate statistical
techniques such as Cluster analysis (CA), Non- Multidimensional scale plot (MDS) and Principal
Component analysis (PCA) have widely been used as unbiased methods in analysis of water quality data
for drawing meaningful conclusions (Simenov et al. 2003; Yongming et al. 2006). CA was applied to
heavy metals in water and sediment data using a wards method. Cluster analysis was again used to find
homogeneous groups of samples on the basis of their geochemical and granulometric compositions.
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ISSN 2224-3216 (Paper) ISSN 2225-0948 (Online)
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Multivariate analysis was performed using PAST (statistical Version 1.93 for Windows XP). In the
present study, the efficiency of different multivariate statistical techniques (CA, PCA and MDS) is
applied to evaluate heavy metal pollution status of Pondicherry Coast. Cluster analysis was used to
identify similar groups of temporal and spatial variations of water quality; the temporal and spatial
patterns of trophic status were also determined by principal component analysis.
3. Results
3.1 Physico- chemical characteristics of water
This study showed that in general physical properties of water and ancillary parameters such as
grain size and total organic matter were also determined. The results of physico-chemical parameters of
water and sediment characteristics in the study area are shown in (Table 2). Surface water temperature
ranged between 16.66º - 37.91º maximum during summer and minimum during monsoon. The
C C
salinity distribution indicated strongly mixed estuarine characteristics with the salinity increasing in the
summer. Salinity showed wide variations in the ranges 6.36 - 36.77 ppt. Generally, changes in the
salinity of the brackish water habitats such as estuaries, backwaters and mangrove are due to the influx of
freshwater from land run off, caused by monsoon or by tidal variations.
The dissolved oxygen concentration in the surface water were generally high (5.17 ml/l) during
monsoon and low (3. 94 mg/L.) during summer. Season-wise observation of dissolved oxygen showed
an inverse trend against temperature and salinity, it is well known that temperature and salinity affect the
dissolution of oxygen. pH in surface waters remained alkaline throughout the study period, they varied
from 7.26 to 8.31, Whereas maximum during summer and minimum in monsoon. EC at two stations
varied from 26.65-52 mS/cm with maximum EC (52 mS/cm) recorded at station 2. Seasonal mean
fluctuations recorded in the sulphide concentration varied from 2.76 - 47.16 mg/l respectively with
maximum during pre and post monsoon. In the present investigation maximum content of sulphide
(47.16 mg/l) was recorded at station 1 on September. Significant negative correlation between sulphide
and DO (r = -0.601; P<0.05) at station 1 indicates that DO is largely influenced by sulphide at this station.
3.2 Sediment characteristics
Seasonal variations in sediment components and OM are detailed here below (Table 3).The
substratum was mainly composed of sand with an admixture of silt and clay. Sand fraction ranged
between (67.60 - 87.31 %) followed by silt (9.89-24.21 %) and clay (3.06-10.49 %). Seasonally, station 1
recorded higher fractions of sand during monsoon and summer, silt content during post monsoon and pre
monsoon period and clay during summer season. Such differed combinations of sediment observed were
mainly due to the transport of sediments from one place to another and back associations with tidal
currents. Soil texture, sand, silt and clay showed significant correlations at P<0.01. In general sand is
dominating in the upper estuarine region i.e. at station 1 whereas silt, clay and OM are mostly enriched in
the lower part of the mangrove sediments. Organic matter distribution is associated with estuary and
hydrodynamic factors, and its levels explain the black color and H 2S odor of the sediments.
3.3 Heavy metal distributions in water and sediments
The average concentration of surface water was shown in Table 4. Monthly variation of
different heavy metal concentrations were observed, correlation revealed that both spatial and temporal
variations of all metals were significant. The magnitude of different heavy metals followed hierarchy,
Fe>Zn>Mn>Cu>Cd>Hg. In this present study, Fe varied from 3-133.2 μg/g followed by Zn 2.95-69.9
μg/g ;Mn 1.8-14.7 μg/g ; Cu 0.72-7 μg/g; Cd 0.03-3.01 μg/g and Hg 0.1-3.01 μg/g. However, the
seasonal variation was remarkable and the maximum discharges occur consistently during monsoon and
the minimum in summer. The concentration of Mn in this study positively correlated to the concentration
of Cu and Fe (p < 0.01), respectively the concentration of Zn was positively correlated with Fe and Cu (p
< 0.01).
Heavy metal concentrations in sediments are shown in Table 5. The hierarchy of heavy metals
are as follows, Fe>Zn>Mn>Cu>Cd>Hg. In this present study, Fe ranged from 360-1440 μg/g; Mn
105-787 μg/g; Zn 310-1140 μg/g; Cu 25-482μg/g; Cd 0.39-9.02 μg/g and Hg 0.21-6.93 respectively.
Maximum concentrations of heavy metals were observed during monsoon and their concentrations were
gradually decreased from onset of post monsoon and they reach as minimum in summer. Comparisons of
the metal levels in the sediments from different areas of estuary indicate that there is a detectable
anthropogenic input into the Pondicherry mangroves. The concentration of Hg in this study positively
correlated to the concentration of Zn (p < 0.05), respectively the concentration of Mn and Cu was
positively correlated with Fe (p < 0.01) Table 7.
3.4 Correlation of heavy metals with environmental parameters
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ISSN 2224-3216 (Paper) ISSN 2225-0948 (Online)
Vol 1, No.1, 2011
The correlation of heavy metals concentration in water and sediment samples from Pondicherry
coast were examined and given in Table 6 and 7. Correlation analysis also revealed close relationships
between individual elements, Fe and Zn (r = 0.957), Mn and Zn (r = 0.859), Cu and Fe (r =0.960), Cd and
Hg (r = 0.734) these results could suggest Fe and Mn compounds in the surface sediments are very
effective scavengers of other metals. Mn showed positive correlation with Fe in all the sites and this may
be explained as redox cycling of Mn that mainly controls Fe in the study area. The Physico- chemical
parameters of water indicated high positive correlation that exist between DO with Mn (r= 0.913;
P<0.01), Fe (r = 0.738; P<0.05), Zn (r = 0.711; P<0.05), Cu (r = 0.708; P<0.05) and also a positive
correlation was observed between sulphide and Fe (r = 0.789; P<0.05). A high negative correlation was
observed between salinity and Cd (r = -0.920; P<0.01), salinity and Hg (r = -0.732; P<0.05), temperature
and Cd (r = -0.918; P<0.01), temperature and Hg (r = -0.771; P<0.05), pH and Hg (r = -0.732; P<0.05)
respectively. Among sediments clay has been exhibit positive correlation with Cd (r = 0.722; P<0.05)
and Hg (r = 0.891; P<0.01), negative correlation were observed between sand and Hg (r = -0.732;
P<0.05), OM and Fe (r = -0.840; P<0.01), OM and Zn (r = -0.759; P<0.05). This suggests that these
metals are significantly associated with clay and silt, clay-sized constituents of the surface sediments.
Results showed that municipal and domestic discharges to the river through the populated urban area
contained high concentrations of heavy metals.
3.5 Enrichment factor
Sediment Enrichment of Mn and Zn was lower in comparison, reflecting their ability to be
efficiently regulated. The EF varied from a low of 0.001 for Mn (Pre monsoon) to a high of 947.5 for Fe
in Monsoon season. Enrichment of water low in Zn (0.001) on summer and to a high of Fe (87.66) in
monsoon and Hg in during Pre monsoon; In contrast high EF values of Fe and Cu indicate anthropogenic
source for this metal. In particular very high EF values of Fe from this anthropogenic source of metal.
Very high positive correlation of Zn and Cu in water (0.970) and sediment (0.979) clearly indicates that
these elements were derived from weathering materials of upper crust and associated with high organic
contents, is indicative of the influence of organic wastes from municipal sewage entering the mangrove
environment at Pondicherry.
3.6 Multivariate statistical analysis
Cluster analysis (CA) was used to detect similar groups between the sampling sites in four
seasons. Bray-Curtis similarities were calculated on (root transformed) between the physico-chemical
parameters of water and sediment characteristics and heavy metals at two stations and result is depicted,
based on which two distinct community groupings could be distinguished that apparently reflected
differences in sediment /habitat types with in Pondicherry coast. The achieved dendogram is displayed in
water and sediments heavy metal (Figure 2, 3). Group A included MS1, PRM1, PMS1 and SS1 (all the
sampling station 1) and Group B included MS2, PRM2, PMS2 and SS2 (all the sampling station 2)
correspond to a relatively low pollution, high pollution regions, respectively. From the resulting
dendrogram, it is possible to grade the results according to season and stations. The station 1 showed
separation from the remaining station 2, except monsoon season in water strongly influenced by season,
with the monsoon season being associated with much higher levels of nutrients and sediments than the
dry season.
The results from temporal PCA suggested that most of the variations in mangrove water quality
are explained by the soluble salts (natural), toxic metals (industrial), nutrients (non-point) and organic
pollutants (anthropogenic). However, PCA served as a means to identify those parameters, which have
greatest contribution to temporal variation in the mangrove water quality and suggested possible sets of
pollution sources in each of the catchments regions of the Pondicherry coast. The data were distributed in
a limited region of space spanned by the PCA well-defined axes (Figure 4, 5). Group A included MS1,
PRM1, PMS1 and SS1 and Group B included MS2, PRM2, PMS2 and SS2. Station 2 had positive values
in group 2, they had higher concentration of sulphide and OM. Similar approach based on PCA for
evaluation of temporal and spatial variations in water quality has earlier been used (Vega et al. 1998).
However, from the PCA results, it may convincingly be presumed that in all the four regions under study,
pollution is mainly from agricultural run-off, leaching from solid waste disposal sites, domestic and
industrial wastewater disposal. It can be concluded for the MDS (Figure 6 and 7), it was found that all the
station 1 were ordinate separately from the station 2 which conform to the dendogram. From the above
discussion, we can say that CA, MDS and PCA are a useful tool to analyze the pollution source and
monitoring sites. It can offer information to identify polluted sites and help in the decision making on
controlling of water pollution.
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Vol 1, No.1, 2011
4. Discussion
Estuaries are highly dynamic systems from both a chemical and physical point of view. Sharp
gradients in parameters such as salinity, temperature, pH, dissolved oxygen induce considerable
biogeochemical reactivity and model the behaviour of trace elements in the system (Murray et al. 1999;
Wang et al. 2007). Dissolved heavy metals Cu and Zn presented a maximum at relatively high salinity
and decreased seawards, following the same behavior observed for Cd. Higher values of Cu and Zn
profiles have also been observed in upper estuary (Owens and Balls, 1993). In most cases metal
concentrations were lowest near the mouth of estuary. This is to be expected, since Adyar estuary acts as
a sink for trace metals supplied by rivers and storm water canals that feed the estuary (Hema Achyuthan
et al. 2002). EC variations were not random. In estuaries, EC is highly influenced by the mixing of river
and seawater. The volume ratio of each source will control the salinity, Hence EC may not be a factor
controlling the seasonal variation of the studied metals, these similar results corroborate with
(Papafilippaki et al. 2008). This ratio is obviously controlled by the tidal coefficient recorded during
samplings. Besides, EC hardly ever controls metal contents in natural water; this role is played by pH and
redox conditions that possibly enhanced metal speciation.
Concentrations of heavy metals increase in the estuarine mud due to decrease of grain size, and
increase an OM, pH and input of anthropogenic metals from industrial pollution. In addition to the heavy
metal inputs, sediment grain size plays a significant role in the accumulation of heavy metals in tidal flats
(Xu et al. 1997). The high concentrations of heavy metals at station 1 correspond well to an increase in
the clay fractions in these sediments, although samples from station 2 have low heavy metal
concentration due to the fact that they are relatively coarse compared to their counter parts at station1.
The high concentrations of heavy metals at station 1 have considerable significance in terms of sewage
discharge in the Pondicherry coast; these similar results were reported by (Zhang et al. 2001) at Yangtze
Estuary, China. Atkins (1953) noticed adsorption consequent settlement by particulate matter is another
reason for low concentration of metals in waters.
Concentrations of available and total particulate Fe maximum in the uppermost estuary mean
while Mn has significantly high concentrations in the lower estuary. Zwolsman and van Eck (1999)
found similar distributions of particulate Fe and Mn concentrations in estuaries elsewhere. The
maximum seasonal averages of the dissolved Fe found in monsoon, possibly reflect the higher amounts
of river runoff input in this season. An elevated concentration of Fe was observed in sampling station 1
where the domestic sewage and industrial waste water and medical hospital waste were discharged
directly into the river. On the other hand, concentrations of Mn in the estuarine sediments were lower
than the background level, 400± 850 mg gÿ as quoted by Deely and Fergusson (1994). Pollution of
1
aquatic environment by man directly or indirectly results in impairment of water quality with respect to
its use in agricultural, industrial, and recreational activities. Results showed that municipal and domestic
discharges to the river through the populated urban area contained high concentrations of heavy metals.
It is well established that OM contents are important controlling factors in the abundance of
trace metals (Rubio et al. 2000). The organic matter content of the sediments showed negatively
correlated with Fe and Zn (Table 7). The statistical analysis of intermetallic relationship revealed that the
high degree correlation among metals indicate the identical behavior of metals during its transport in the
estuarine environment. In the present study, poor associations of Mn with other metals (Cu and Hg)
suggest that Mn – oxide may be only a minor host phase for these elements in the Pondicherry estuarine
environment.
Zn shows strong positive correlations with Fe and Mn and significant correlation with Cu.
Donazzolo et al. (1984) suggested that abnormally Zn concentrations found in samples collected
offshore are related to industrial tailing and wastes. The correlation of Zn with Fe is (r = 0.73, P< 0.05),
Mn (r = 0.68, P< 0.05); so, it can be clearly confirmed that high levels of this element are related to the
presence of diffuse anthropogenic activities (e.g., residential effluents, city runoff). There are significant
correlations between Fe and Cu with Mn, positive correlations are also revealed for Mn with Hg. The
WHO (1996) recommended value for Zn in water for domestic supply is 3 mg/l and should not be a
problem if the water is used for domestic purpose. Hence the significant amount of Zn present in the most
available fraction is likely to be due the presence of anthropogenic sources, and Zn cans in garbage
moulds, rusty and unwanted galvanized scars. The maximum seasonal average of the dissolved Cu found
in monsoon, inspite of higher amounts of riverine input in this season. Inspite of the lowest river
discharge, the summer average value of the dissolved Cu was lower than those in the pre and post
monsoon in the studied area. High concentrations of these metals occurred in the sampling station 1, Cu
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contents ranged from water 1.6-7 μg/g and sediment 80-482μg/g; with the highest value found in station
1 (482 μg/g). This element is well correlated with OM (r = 0.844, P < 0.05), thus suggesting that organic
matter contributes in controlling its distribution. Decomposition of OM and ion-exchange controlled the
release of about one-third of the Cu bound to large particles reported by Sung (1995).
Cd is one of the most dangerous pollutants due to its high-potential toxic effects. Cadmium is
extremely toxic and the primary use of water high in Cd could cause adverse health effect to consumers
such as renal disease and cancer (Fatoki et al. 2002 and Passos et al. 2010). The WHO and EPA has
established a human health based guideline of 0.003 mg/l for drinking water (USEPA 1996 and WHO
1996). These guidelines were exceeded at all the sampling sites. In view of the fact that major use of the
water is domestic, high levels of Cd in the estuary is of great concern. The probable sources of Cd in the
estuary are from natural sources due to the catchment soils and runoffs from agricultural soils where
phosphate fertilizers have often been used since Cd is a common impurity in phosphate fertilizers. Other
probable sources include leachates from disused nickel–cadmium based batteries and cadmium-plated
items that are disposed at refuse dumps by the communities. Hg is highly toxic metal and these high
concentrations need to be investigated further to assess the present sources and pathways of this metal in
Ariyankuppam estuary. Among heavy metals, mercury deserves particular attention due to its high
toxicity and tendency to bioaccumulation and biomagnifying in aquatic organisms. The low correlation
between sand and Hg (r= 0.327, P<0.05), this indicates that Hg must not be common on sandy sediments.
Similar studies conducted by Jain (2004), using sediment from the Yamuna river (India), highly polluted
by contaminants contained in domestic and industrial effluents, resulting in a high risk to environment.
Cluster analysis was used to identify the similarity groups between the sampling sites. It implies that for
rapid assessment of heavy metals only one site in each group may serve as good in spatial assessment of
the heavy metals as the whole network. It is evident that the CA technique is useful in affording reliable
classification of heavy metals in the whole region and will make possible to design a future spatial
sampling strategy in an optimal manner. It can be concluded from the CA, PCA and MDS results shows
station 1 highly polluted by anthropogenic sources and industrial effluents in Pondicherry estuarine
environment. The anthropogenic source is probably the major mechanism, However from the enrichment
factor values, it is obvious that along the south east coast of India, sediments are depleted Fe, Mn, Zn and
Cu; Enriched with Fe and Cu in the midst of respect to upper crustal composition. On the other hand, Zn
is very close to upper crustal value in all the seasons are depleted when comparing to UCC. Higher EF
values of Fe, Cu and Hg in all the locations clearly suggest the influence of anthropogenic sources/
industry effluents of these three heavy metals. Therefore, the study area is assumed to be heavily affected
by industry and sewage run-offs. The enrichment factor analysis is used to differentiate between
anthropogenic and naturally occurring metal source and also to assess the anthropogenic influence in
sediment samples (Wang et al. 2007).
Conclusions
It is observed that, in general, lowest heavy metal concentration are found during the summer
and compared to post, pre and monsoon. Relatively high seasonal averages of dissolved Fe and Zn were
found in monsoon, and those Cd and Hg were found in post monsoon. The relative variability followed
the order Fe>Zn>Mn>Cu>Cd>Hg water and sediment. Our results clearly indicate that Fe>Zn> Cu
>Cd>Hg high in station1. The sediment heavy metal contamination of these mangroves is a cause for
concern as these metals may undergo bioaccumulation and affect the benthic organisms.
The seasonal variation of the studied heavy metals may be related to the variations of DO, pH,
salinity, temperature and sulphide with sediment characteristics such as sand, clay and OM. Correlation
with organic matter have allowed to understand the distribution of metals and its association within the
sediments. Correlation between the studied metals and DO were satisfying, but with EC was observed no
remarkable relationship. Clay rich sediments together with a downstream location relative to the sewage
outlets result in elevated concentration of heavy metals at station 1. This implies that the accumulation of
heavy metals is not dependent only on the closeness to contaminant sources, but also on the pattern of
sediment transport and sedimentation with estuarine hydrodynamics.
In this case study, different multivariate statistical techniques were used an assessment of heavy
metal pollution status in Pondicherry estuarine water and sediment. Based on the results multivariate
analyses CA, PCA and MDS can be used as available tool to provide information of pollution status of
heavy metal in the Pondicherry Mangroves. The estuary is exposed to sewage waste water from
industries, urban waste water and agricultural runoff all contributing to the current condition of the
sources contaminating the Pondicherry coast. In addition, H2S pollution from both agricultural and
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industrial inputs deteriorates the water quality of estuary ecosystem at station 1 and 2. It can be
recommended that accumulation of heavy metals in the region should be stopped. As a result it is
essential that Pondicherry estuary and mangrove health in coastal environment monitoring is urgently
required.
Acknowledgements
Authors thank the University Grants Commission, Government of India for the financial support. The
authors thank the authorities of Pondicherry University for providing necessary facilities.
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Table 1 Selected concentration in average continental crust
___________________________________________________
Element Average continental Crust a (mg/kg)
___________________________________________________
Cu 45
Fe 46,000
Zn 95
Cd 0.3
Mn 800
Hg 0.5
_____________________________________________________
Source: (Salomons and Forstner 1984)
Table 2. Seasonal variation of physico chemical parameters of water and sediments grain size
composition at stations 1 and 2
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________________________________________________________________________________
Seasons Salinity TºC pH DO EC Sulphide
________________________________________________________________________________
Monsoon
Station 1 15.67±3.92 22.55±4.82 7.26±0.17 4.86±0.16 36.48±4.53 13.75±11.6
Station 2 14.31±6.91 22.89±4.53 7.29±0.07 5.17±0.22 33.20±3.984 5.01±1.65
Post monsoon
Station 1 21.77±2.50 23.39±0.81 8.02±0.43 5.02±0.41 39.19±6.71 17.64±4.26
Station 2 25.77±4.33 25.59±0.95 7.44±0.21 4.09±0.05 41.33±4.26 5.89±1.50
Summer
Station 1 31.68±1.56 32.31±0.36 7.61±0.42 4.2±0.25 39.44±11.19 13.80±0.22
Station 2 35.20±2.34 35.85±0.09 8.31±0.14 3.94±0.27 34.83±9.07 4.19±1.28
Pre monsoon
Station 1 27.85±2.64 28.45±2.59 7.56±0.12 4.28±0.24 36.51±8.54 26.25±6.88
Station 2 29.95± 1.34 29.55± 1.85 7.8± 0.23 4.64± 0.09 39.59± 5.40 5.65±0.54
___________________________________________________________________________________
Tº temperature; DO: Dissolved oxygen; EC: Electrical conductivity, OM: Organic matter
C:
Table 3. Seasonal variation of sediment composition and organic matter at stations 1-2.
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Season Sand (%) Silt (%) Clay (%) OM (%)
_____________________________________________________________
Monsoon
Station 1 82.38±3.64 13.12±11.81 4.5±1.59 0.94±0.31
Station 2 73.24±17.20 21.60±12.94 5.81±3.18 3.21±0.88
Post monsoon
Station 1 72.40±16.31 16.66±14.41 10.01±0.84 1.58±0.31
Station 2 67.60±22.37 26.06±24.07 6.23±1.91 3.13±0.86
Summer
Station 1 87.31±9.74 9.89±11.46 3.06±1.59 1.74±0.51
Station 2 75±11.48 15.31±8.64 10.49±10.23 3.64±0.45
Pre monsoon
Station 1 71.83±21.02 24.21±20.75 4.04±0.42 1.12±0.30
Station 2 77.87±10.06 18.02±8.69 4.07±2.05 3.82±0.74
____________________________________________________________
OM=Organic matter
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Table 4. Seasonal variations of heavy metals in water recorded at stations 1 and 2.
_______________________________________________________________________________________________________
Season Cu (μg/g) Fe (μg/g) Zn (μg/g) Mn (μg/g) Hg (μg/g) Cd( μg/g)
_______________________________________________________________________________________________________
Monsoon
Station 1 6.1±0.77 121.1±9.79 43.23±12.63 11.36±2.46 1.12±0.07 1.123±0.29
Station 2 1.21±0.08 4.96±0.23 3.72±0.094 2.36±0.04 2.41±0.427 2.08±0.73
Post monsoon
Station 1 3.3±0.57 36.93±17.62 24.43±10.51 5.7±1.55 0.89±0.08 1.12±0.071
Station 2 1.03±0.72 4.47±0.38 3.21±0.14 2.204±0.065 1.08±0.14 1.71±0.35
Summer
Station 1 2.6±0.09 11.3±6.92 6.6±2.66 2.86±0.99 0.44±0.25 0.82±0.91
Station 2 0.826±0.37 3.58±0.417 3.19±0.30 2.17±0.13 1.01±0.164 0.703±0.46
Pre monsoon
Station 1 3.7±0.06 43.23±20.82 24.93±3.39 7.73±0.30 0.89±0.05 0.85±0.96
Station 2 1.01±0.04 4.12±0.105 3.62±0.07 2.31±0.07 1.2±0.2 1.49±0.49
_________________________________________________________________________________________________________
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Table 5. Seasonal variations of heavy metals in sediment recorded at stations 1 and 2.
______________________________________________________________________________________________
Season Cu (μg/g) Fe (μg/g) Zn (μg/g) Mn (μg/g) Hg (μg/g) Cd (μg/g)
_____________________________________________________________________________________________
Monsoon
Station 1 441.33±52.54 1395±14.57 1048±82.9 623±82.92 3.42±0.06 6.88±0.14
Station 2 46.66±2.08 476.66±163.77 455.33±25.48 260±25.48 6.13±0.73 8.01±1.04
Post monsoon
Station 1 159.33±27.68 991±74.70 586.6±100.16 526.33±100.16 3.03±0.12 5.49±0.59
Station 2 37.66±3.05 441±127.57 344±21.16 138.33±21.16 4.88±0.14 5.27±0.82
Summer
Station 1 98.66±22.05 765±30.89 520±100.37 201.66±100.37 1.55±1.30 2.26±2.22
Station 2 27±2.021 387±100 344.33±36.11 111.66±36.11 3.28±0.63 2.17±1.66
Pre monsoon
Station 1 268±46.35 1119.33±44.44 901.33±117.85 403±117.85 3.04±0.10 2.93±2.53
Station 2 36±3.021 445±21.35 401.66±10.40 158.33±10.40 3.623±0.49 4.3±1.76
_____________________________________________________________________________________________
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Table 6. Correlation of water heavy metals between physico-chemical parameters of water and sediment characteristics
Cu Fe Mn Zn Hg Cd Salinity pH DO EC Sulphide Sand Silt Clay OM
Cu 1
Fe 0.953 1
Mn 0.966 0.968 1
Zn 0.97 0.961 0.983 1
Hg -0.381 -0.21 -0.229 -0.298 1
Cd -0.147 -0.112 -0.093 -0.077 0.675 1
Salinity -0.262 -0.465 -0.385 -0.349 -0.737 -0.543 1
pH 0.057 -0.21 -0.139 -0.056 -0.783 -0.34 0.844 1
DO 0.736 0.721 0.771 0.779 0.165 0.534 -0.596 -0.2 1
EC -0.368 -0.421 -0.292 -0.212 -0.02 0.027 0.291 0.229 -0.196 1
Sulphide 0.677 0.473 0.648 0.657 -0.535 -0.243 0.285 0.493 0.452 0.18 1
Sand 0.414 0.2951 0.346 0.447 -0.805 -0.428 0.515 0.562 0.03 0.347 0.638 1
Silt -0.474 -0.432 -0.425 -0.554 0.292 -0.005 0.085 -0.185 -0.362 -0.368 -0.464 -0.703 1
Clay -0.279 -0.163 -0.188 -0.267 0.931 0.565 -0.705 -0.65 0.177 -0.173 -0.467 -0.897 0.356 1
OM -0.78 -0.561 -0.663 -0.675 0.647 0.253 -0.293 -0.589 -0.477 0.1869 -0.897 -0.557 0.358 0.488 1
DO: Dissolved oxygen; EC: Electrical conductivity, OM: Organic matter
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Table 7. Correlation of sediment heavy metals between physic-chemical parameters of water and sediment charactersitcs
__________________________________________________________________________________________________________________________
Cu Fe Mn Zn Hg Cd Salinity pH DO EC Sulphide Sand Silt Clay OM
Cu 1
Fe 0.960 1
Mn 0.883 0.924 1
Zn 0.979 0.957 0.859 1
Hg -0.274 -0.406 -0.161 -0.275 1
Cd 0.229 0.153 0.432 0.183 0.734 1
Salinity -0.337 -0.177 -0.409 -0.261 -0.74 -0.92 1
pH -0.097 0.143 -0.021 -0.047 -0.81 -0.661 0.844 1
DO 0.708 0.738 0.912 0.711 0.153 0.698 -0.596 -0.2 1
EC -0.364 -0.241 -0.135 -0.335 0.068 -0.252 0.291 0.229 -0.19 1
Sulphide 0.646 0.789 0.644 0.736 -0.51 -0.219 0.285 0.493 0.452 0.18 1
Sand 0.361 0.485 0.359 0.346 -0.73 -0.501 0.515 0.562 0.03 0.347 0.638 1
Silt -0.418 -0.515 -0.568 -0.336 0.211 -0.137 0.085 -0.18 -0.36 -0.36 -0.465 -0.70 1
Clay -0.219 -0.324 -0.146 -0.212 0.89 0.721 -0.705 -0.65 0.177 -0.17 -0.467 -0.89 0.356 1
OM -0.696 -0.84 -0.661 -0.759 0.672 0.193 -0.294 -0.59 -0.47 0.187 -0.898 -0.55 0.3581 0.488 1
DO: Dissolved oxygen; EC: Electrical conductivity, OM: Organic matter
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14. Table 8.Enriched metal concentrations in Pondicherry estuary water and fraction sediments at seasonal wise
____________________________________________________________________
Water Cu Fe Mn Zn Hg Cd
Monsoon
Station 1 0.04 87.66 0.043 0.13 0.588 0.011
Station 2 0.027 1.12 0.03 0.04 0.52 0.007
Post monsoon
Station 1 0.015 17.43 0.015 0.005 1.429 0.03
Station 2 0.22 0.93 0.026 0.032 0.326 0.005
Summer
Station 1 0.009 4.08 0.005 0.001 0.214 0.004
Station 2 0.015 0.65 0.022 0.28 0.158 0.0019
Pre monsoon
Station 1 0.019 22.9 0.023 0.006 1.678 0.006
Station 2 0.22 0.86 0.027 0.036 0.214 0.004
Sediment
Monsoon
Station 1 2.97 947.5 0.0236 0.003 0.0661 0.0006
Station 2 0.1 107.9 0.033 0.004 0.0841 0.0002
Post monsoon
Station 1 0.76 468.26 0.0141 0.00013 0.042 0.00003
Station 2 0.78 92.12 0.0016 0.0003 0.0222 0.00002
Summer
Station 1 0.36 277.16 0.443 0.0009 0.004 0.00001
Station 2 0.5 71.41 0.0001 0.0003 0.002 0.00006
Pre monsoon
Station 1 1.44 591.17 0.012 0.0002 0.334 0.00002
Station 2 0.77 93.88 0.019 0.00004 0.019 0.00001
_______________________________________________________________________
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15. F
i
g
u
r
e
1
Figure 1. Study site from Pondicherry coast
Figure 2. Dendrogram showing Bray-Curtis similarity of water heavy metals,
MS1= Monsoon station 1; MS2 = Monsoon station 2; PM1= Post monsoon station 1; PM2 = Post monsoon
station 2; SU1 = summer station 1; SU2 = summer station 2; PR1 = Premonsoon station 1; PR2 =
Premonsoon station 2
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16. Figure 3. Dendrogram showing Bray-Curtis similarity with sediment heavy metals
MS1= Monsoon station 1; MS2 = Monsoon station 2; PM1= Post monsoon station 1; PM2 = Post monsoon
station 2; SU1 = summer station 1; SU2 = summer station 2; PR1 = Premonsoon station 1; PR2 =
Premonsoon station 2
Figure 4. Principal Component analysis showing similarity with water heavy metal
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17. MS1= Monsoon station 1; MS2 = Monsoon station 2; PM1= Post monsoon station 1; PM2 = Post monsoon
station 2; SU1 = summer station 1; SU2 = summer station 2; PR1 = Premonsoon station 1; PR2 =
Premonsoon station 2
Figure 5. Principal Component analysis similarity showing similarity with sediment heavy metal
MS1= Monsoon station 1; MS2 = Monsoon station 2; PM1= Post monsoon station 1; PM2 = Post monsoon
station 2; SU1 = summer station 1; SU2 = summer station 2; PR1 = Premonsoon station 1; PR2 =
Premonsoon station 2
Figure 6. N- MDS plot analysis showing similarity with water heavy metal
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18. MS1= Monsoon station 1; MS2 = Monsoon station 2; PM1= Post monsoon station 1; PM2 = Post monsoon
station 2; SU1 = summer station 1; SU2 = summer station 2; PR1 = Premonsoon station 1; PR2 =
Premonsoon station 2
Figure 7. N- MDS plot analysis showing similarity with sediment heavy metal
MS1= Monsoon station 1; MS2 = Monsoon station 2; PM1= Post monsoon station 1; PM2 = Post monsoon
station 2; SU1 = summer station 1; SU2 = summer station 2; PR1 = Premonsoon station 1; PR2 =
Premonsoon station 2
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