AI Chat Paper
Note: Please note that the following content is generated by AMiner AI. SciOpen does not take any responsibility related to this content.
{{lang === 'zh_CN' ? '文章概述' : 'Summary'}}
{{lang === 'en_US' ? '中' : 'Eng'}}
Chat more with AI
PDF (2 MB)
Collect
Submit Manuscript AI Chat Paper
Show Outline
Outline
Show full outline
Hide outline
Outline
Show full outline
Hide outline

Spatial variation assessment of groundwater quality using multivariate statistical analysis(Case Study: Fasa Plain, Iran)

Mehdi Bahrami1( )Elmira Khaksar1Elahe Khaksar2
Department of Water Engineering, Faculty of Agriculture, Fasa University, Fasa 74617-81189, Iran
Department of Biostatistics and Epidemiology, School of Health, Shahid Sadoughi University of Medical Sciences, Yazd 89169-78477, Iran
Show Author Information

Abstract

Groundwater is considered as one of the most important sources for water supply in Iran. The Fasa Plain in Fars Province, Southern Iran is one of the major areas of wheat production using groundwater for irrigation. A large population also uses local groundwater for drinking purposes. Therefore, in this study, this plain was selected to assess the spatial variability of groundwater quality and also to identify main parameters affecting the water quality using multivariate statistical techniques such as Cluster Analysis (CA), Discriminant Analysis (DA), and Principal Component Analysis (PCA). Water quality data was monitored at 22 different wells, for five years (2009-2014) with 10 water quality parameters. By using cluster analysis, the sampling wells were grouped into two clusters with distinct water qualities at different locations. The Lasso Discriminant Analysis (LDA) technique was used to assess the spatial variability of water quality. Based on the results, all of the variables except sodium absorption ratio (SAR) are effective in the LDA model with all variables affording 92.80% correct assignation to discriminate between the clusters from the primary 10 variables. Principal component (PC) analysis and factor analysis reduced the complex data matrix into two main components, accounting for more than 95.93% of the total variance. The first PC contained the parameters of TH, Ca2+, and Mg2+. Therefore, the first dominant factor was hardness. In the second PC, Cl-, SAR, and Na+ were the dominant parameters, which may indicate salinity. The originally acquired factors illustrate natural (existence of geological formations) and anthropogenic (improper disposal of domestic and agricultural wastes) factors which affect the groundwater quality.

References

 

Alavi M. 2004. Regional stratigraphy of the Zagros fold-thrust belt of Iran and its pro-foreland evolution. American Journal of Science, 304: 1-20.

 

Amiri MJ, Bahrami M, Beigzadeh B, et al. 2018. A response surface methodology for optimization of 2, 4-dichlorophenoxyacetic acid removal from synthetic and drainage water: A comparative study. Environmental Science and Pollution Research, 25(34): 34277-34293.

 

Azhar SC, Aris AZ, Yusoff MK, et al. 2015. Classification of river water quality using multivariate analysis. Procedia Environmental Sciences, 30: 79-84.

 

Bagheri R, Bagheri F, Eggenkamp HGM. 2017. Origin of groundwater salinity in the Fasa Plain, southern Iran, hydrogeochemical and isotopic approaches. Environmental Earth Sciences, 76: 662.

 

Bahrami M, Amiri MJ, Beigzadeh B. 2018. Adsorption of 2, 4-dichlorophenoxyacetic acid using rice husk biochar, granular activated carbon, and multi-walled carbon nanotubes in a fixed bed column system. Water Science and Technology, 78(8): 1812-1821.

 

Bahrami M, Brumand-Nasab S, Kashkooli HA, et al. 2013. Cadmium removal from aqueous solutions using modified magnetite nanoparticles. Iranian Journal of Health and Environment, 6(2): 221-232.

 

Bahrami M, Zarei AR, Chakav S. 2017. Analysis of drought transitions using log-linear models in Iran. International Journal of Water, 11(3): 266-278.

 

Bencer S, Boudoukha A, Mouni L. 2016. Multivariate statistical analysis of the ground-water of Ain Djacer area (Eastern of Algeria). Arabian Journal of Geosciences, 9(4): 1-10.

 

Dehghani R, Mahvi AH, Rabani D, et al. 2015. Evaluation of chemical quality and salinity origin of groundwater in a semi aried area; Seyed Gholi region Saveh, Iran. Archives of Hygiene Sciences, 4(2): 100-108.

 
Ebrahimzadeh S, Boustani F, Shakeri A. 2011. Groundwater quality assessment of the Zarghan Plain, Shiraz, Iran. 2nd International Conference on Environmental Science and Technology IPCBEE, 6. Singapore: IACSIT Press.
 

El Alfy M, Faraj T. 2016. Spatial distribution and health risk assessment for groundwater contamination from intensive pesticide use in arid areas. Environmental Geochemistry and Health, 39: 231-253.

 

El Alfy M, Lashin A, Abdalla F, et al. 2017. Assessing the hydrogeochemical processes affecting groundwater pollution in arid areas using an integration of geochemical equilibrium and multivariate statistical techniques. Environmental Pollution, 229: 760-770.

 
Freeze RA, Cherry JA. 1979. Groundwater. Newjersey: Prentice-Hall, inc: 604.
 

Ghassemi Dehnavi A. 2018. Hydrochemical assessment of groundwater using statistical methods and ionic ratios in Aliguodarz, Lorestan, west of Iran. Journal of Advances in Environmental Health Research, 6: 193-201.

 
Hardle W, Simar L. 2007. Applied multivariate statistical analysis, 2nd edn. Berlin: Springer.
 

Helena B, Pardo R, Vega M, et al. 2000. Temporal evolution of groundwater composition in an alluvial aquifer (Pisuerga River, Spain) by principal component analysis. Water Research, 34(3): 807-816.

 

Hummel M, Edelmann D, Kopp-Schneider A. 2017. Clustering of samples and variables with mixed-type data. PLOS ONE, 12(11):e0188274. https://doi.org/10.1371/journal.pone.0188274

 
Institute of Standards and Industrial Research of Iran. 2009. Drinking water-physical and chemical specifications. ISIRI No. 1053, the 5th Revision. http://www.isiri.org/Portal/Home/Default.aspx?CategoryID=5f6bbf1b-ac23-4362-a309-9ee95a439628
 

Lokhande PB, Patil VV, Mujawar HA. 2008. Multivariate statistical analysis of ground-water in the vicinity of Mahad industrial area of Konkan Region, India. International Journal of Applied Environmental Sciences, 3(2): 149-163.

 

Mahmood A, Muqbool W, Mumtaz MW, et al. 2011. Application of multivariate statistical techniques for the characterization of groundwater quality of Lahore, Gujranwala and Sialkot (Pakistan). Pakistan Journal of Analytical & Environmental Chemistry, 12(1): 102-112.

 

Matiatos I, Alexopoulos A, Godelitsas A. 2014. Multivariate statistical analysis of the hydrogeochemical and isotopic composition of the groundwater resources in northeastern Peloponnesus (Greece). Science of the Total Environment: 476-477, 577-590.

 

Matiatos I. 2016. Nitrate source identification in groundwater of multiple land-use areas by combining isotopes and multivariate statistical analysis: A case study of Asopos basin (Central Greece). Science of the Total Environment, 541: 802-814.

 

Matiatos I, Evelpidou N. 2013. Assessment of groundwater quality contamination by nitrate leaching using multivariate statistics and Geographic Information Systems. Understanding freshwater quality problems in a changing world, 361: 183-190.

 

Matiatos I, Paraskevopoulou V, Botsou F, et al. 2016. Hydrogeochemical assessment of groundwater quality in a river delta using multivariate statistical techniques. EGU General Assembly Conference Abstracts, 18: 14568.

 

McKenna Jr JE. 2003. An enhanced cluster analysis program with bootstrap significance testing for ecological community analysis. Environmental Modelling and Software, 18(3): 205-220.

 

Mozafarizadeh J, Sajadi Z. 2013. Investigation of saline water intrusion in the Borazjan freshwater aquifer from the Dalaki and Helleh rivers. Journal of Electromagnetic and Application, 6(16): 69-78.

 

Noshadi M, Ghafourian A. 2016. Groundwater quality analysis using multivariate statistical techniques (Case study: Fars Province, Iran). Environmental Monitoring and Assessment, 188: 1-13.

 

Nosrati K, Van Den Eeckhaut M. 2012. Assessment of groundwater quality using multivariate statistical techniques in the Hashtgerd Plain, Iran. Environmental Earth Sciences, 65(1): 331-344.

 

Pandit S, Gupta S. 2011. A comparative study on distance measuring approaches for clustering. International Journal of Computer Science, 2(1): 29-31.

 
Rogerson PA. 2001. Statistical methods for geography. London: Sage Publications Ltd.
 

Sarbu C, Pop HF. 2005. Principal component analysis versus fuzzy principal component analysis. A case study: The quality of Danube water (1985-1996). Talanta, 65: 1215-1220.

 

Singh KP, Malik A, Sinha S. 2005. Water quality assessment and apportionment of pollution sources of Gomti River (India) using multivariate statistical techniques: A case study. Analytica Chimica Acta, 538(1-2): 355-374.

 

Singh A, Yadav A, Rana A. 2013. K-means with three different distance metrics. International Journal of Computer Applications, 67(10): 13-17.

 

Srivastava SK, Ramanathan AL. 2008. Geo-chemical assessment of groundwater quality in vicinity of Bhalswa landfill, Delhi, India, using graphical and multivariate statistical methods. Environmental Geology (Berlin), 53: 1509-1528.

 
US Salinity Laboratory Staff. 1954. Diagnosis and improvement of saline and alkali soils. Washington DC: US Department of Agriculture Handbook, 60: 160.
 

Usman UN, Toriman ME, Juahir H, et al. 2014. Assessment of groundwater quality using multivariate statistical techniques in Terengganu. Science and Technology, 4(3):42-49. DOI: 10.5923/j.scit.20140403.02

 

Witten DM, Tibshirani R. 2011. Penalized classification using Fisher's linear discriminant. Journal of the Royal Statistical Society, 73(5): 753-772.

 

Yidana SM. 2010. Groundwater classification using multivariate statistical methods: Birimian Basin, Ghana. Journal of Environmental Engineering, 136(12): 1379-1388.

 

Zarei AR, Bahrami M. 2016. Evaluation of quality and quantity changes of undergroundwater in the Fasa Plain, Fars (2006-2013). Iranian Journal of Irrigation & Water Engineering, 6(24): 103-113.

Journal of Groundwater Science and Engineering
Pages 230-243
Cite this article:
Bahrami M, Khaksar E, Khaksar E. Spatial variation assessment of groundwater quality using multivariate statistical analysis(Case Study: Fasa Plain, Iran). Journal of Groundwater Science and Engineering, 2020, 8(3): 230-243. https://doi.org/10.19637/j.cnki.2305-7068.2020.03.004

443

Views

15

Downloads

0

Crossref

11

Web of Science

17

Scopus

Altmetrics

Received: 16 December 2019
Accepted: 22 March 2020
Published: 28 September 2020
© 2020 Journal of Groundwater Science and Engineering Editorial Office
Return