Characterization of underground tunnel water hydrochemical system and uses through multivariate statistical methods: a case study from Maddhapara Granite Mine, Dinajpur, Bangladesh

被引:0
作者
M. Farhad Howladar
Md. Mustafizur Rahman
机构
[1] Shahjalal University of Science and Technology,Department of Petroleum and Mining Engineering
来源
Environmental Earth Sciences | 2016年 / 75卷
关键词
Maddhapara Granite Mining Project; Correlation matrix (; ); Cluster analysis; Principal component analyses; ANOVA; Quality of water;
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摘要
A quality study of the drained water from Maddhapara Granite Mine underground tunnel was undertaken to study their hydrochemical variations and suitability for various uses employing chemical analysis, basic statistics, correlation matrix (r), cluster analysis, principal component/factor analyses, and ANOVA as the multivariate statistical methods. The results of chemical analysis of water show the modest variation in their ionic assemblage among different sampling points of the tunnel where Ca–HCO3 type of hydrochemical facies is principally dominated. The correlation matrix shows a very strong to very weak positive, even negative, correlation relationship, suggesting the influence of different processes such as geochemical, biochemical processes, and multiple anthropogenic sources on controlling the hydrochemical evolution and variations of water in the mine area. Cluster analysis confirms that cluster 1 contains 68.75% of total samples, whereas cluster 2 contains 31.25%. On the whole, the dominated chemical ions of first cluster groups are Ca and HCO3, suggesting a natural process similar to dissolution of carbonate minerals. The second cluster group consisted of Cl− and SO42− ions representing natural and anthropogenic hydrochemical process. The results of PCA/FA analysis illustrate that different processes are involved in controlling the chemical composition of groundwater in the mine area. The factor 1 loadings showed that pH, EC, TDS, Na, Mg, chloride, and sulfate which have high loading in this factor are expected to come from carbonate dissolution to oxidation conditions. One-way ANOVA describes the significance of dependent variables with respect to independent variables. ANOVA gives us the idea that EC, K+, Fetotal, SO42, As, and Pb are the most important factors in controlling spatial differences in water quality in this tunnel. But different results have been encountered for different independent variables which might be due to dissimilar sources of water. From the qualitative analysis, it is clear that water quality is not very favorable for aquatic creatures as well as for drinking purposes. The water can be used for irrigation purposes without any doubt as SAR and RSC analysis provides good results. Moreover, the results of this research confirmed that the application of multivariate statistical analysis methods is apposite to inferring complex water quality data sets with its possible pollution sources. At the end, this research recommends (1) as water becomes more and more important, water treatment plants should be built before the water being used; (2) a detailed water step utilization plan should be set beforehand to guarantee tunnel water being used effectively; and (3) after the water being used for agriculture, elements in crops should be monitored continuously to ensure that ions and compounds that come from the tunnel water are lower than guideline values for human beings health.
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[1]  
Arslan H(2011)Water quality assessment of the drainage canals in Bafra Plain using multivariate statistical analysis J Agric Fac Gaziosmanpaşa Univ 28 61-71
[2]  
Yildirim D(2007)Assessing groundwater quality using GIS Water Resour Manag 21 699-715
[3]  
Babiker IS(2015)Using multivariate statistical analysis, geostatistical techniques and structural equation modeling to identify spatial variability of groundwater quality Water Resour Manag 29 2073-2089
[4]  
Mohamed MAA(2015)An assessment of water quality in the Coruh Basin (Turkey) using multivariate statistical techniques Environ Monit Assess 187 721-18
[5]  
Hiyama T(2010)Evaluation of surface water quality of Uluabat Lake Istanb Univ J Fish Aquatic Sci 25 9-483
[6]  
Belkhiri L(2002)Factor analysis: basic concepts and using to development scale Educ Adm Theory Pract 32 470-321
[7]  
Narany TS(2016)Common factor analysis versus principal component analysis: a comparison of loadings by means of simulations Commun Stat: Simul Comput 45 299-1364
[8]  
Bilgin A(2014)Integrated assessment of spatial and temporal variations of groundwater quality in the eastern area of Urmia Salt Lake Basin using multivariate statistical analysis Water Resour Manag 29 1351-679
[9]  
Bulut C(2010)Hydrochemistry and classification of groundwater resources of Ishwardi municipal area, Pabna district, Bangladesh Geotech Geol Eng 28 671-226
[10]  
Atay R(2012)Coal mining impacts on Water Environs around the Barapukuria Coal Mining Area, Dinajpur, Bangladesh Environ Earth Sci 70 215-170