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Article

Hydro-Geochemical Assessment of Groundwater Quality in Aseer Region, Saudi Arabia

1
Department of Civil Engineering, College of Engineering, King Khalid University, Abha 61411, Saudi Arabia
2
Department of Energy and Environment, TERI School of Advanced Studies, New Delhi 110070, India
3
Department of Chemical Engineering, College of Engineering, King Khalid University, Abha 61411, Saudi Arabia
4
Urban Environmental & Remote Sensing Division, Faculty of Natural Sciences, Jamia Millia Islamia, New Delhi 110025, India
*
Author to whom correspondence should be addressed.
Water 2018, 10(12), 1847; https://doi.org/10.3390/w10121847
Submission received: 30 October 2018 / Revised: 3 December 2018 / Accepted: 6 December 2018 / Published: 13 December 2018
(This article belongs to the Section Water Quality and Contamination)

Abstract

:
Saudi Arabia is an arid country with very limited water resources. The absence of surface water bodies along with erratic rainfall renders groundwater as the most reliable source of potable water in arid and semi-arid regions globally. Groundwater quality is determined by aquifer characteristics regional geology and it is extensively influenced by both natural and anthropogenic activities. In the recent past, several methodologies have been adopted to analyze the quality of groundwater and associated hydro-geochemical process i.e., multivariate statistical analysis, geochemical modelling, stable isotopes, a redox indicator, structural equation modelling. In the current study, statistical methods combined with geochemical modelling and conventional plots have been used to investigate groundwater and related geochemical processes in the Aseer region of Saudi Arabia. A total of 62 groundwater samples has been collected and analyzed in laboratory for major cations and anions. Groundwater in the study region is mostly alkaline with electrical conductivity ranging from 285–3796 μS/cm. The hydro-geochemical characteristics of groundwater are highly influenced by extreme evaporation. Climatic conditions combined with low rainfall and high temperature have resulted in a highly alkaline aquifer environment. Principal component analysis (PCA) yielded principal components explaining 79.9% of the variance in the dataset. PCA indicates ion exchange, soil mineralization, dissolution of carbonates and halite are the major processes governing the groundwater geochemistry. Groundwater in this region is oversaturated with calcite and dolomite while undersaturated with gypsum and halite which suggests dissolution of gypsum and halite as major process resulting into high chloride in groundwater. The study concludes that the combined approach of a multivariate statistical technique, conventional plots and geochemical modelling is effective in determining the factors controlling the groundwater quality.

1. Introduction

The absence of surface water bodies renders groundwater as most reliable source of potable water in arid and semi-arid regions globally [1]. High evaporation and low precipitation ensure fewer surface water bodies resulting in a higher dependency on groundwater. In Saudi Arabia, owing to rainfall variability and scarce surface waterbodies, demand for the desalination of seawater and to some extent dependency on groundwater resource in Aseer province has increased tremendously in past few years. The groundwater in Saudi Arabia is found in eight large sedimentary basins. The groundwater reserves have been estimated at 1919 × 109 m3 of which 160 × 109 m3 is stored in deeper aquifers [2]. In general, groundwater is considered as safe from microbial contamination, but the presence of inorganic contaminants from the underlying rocks alleviates the problem. Groundwater is a significant hidden resource in context of quality and quantity. However, once contaminated it is not easy to restore the aquifer and this escalates the pollution impact [3,4,5].
The quality of groundwater is determined by the regional geology and aquifer characteristics and it is extensively influenced by both natural and anthropogenic activities. Hydro-geochemical processes i.e., precipitation, dissolution, recharge, discharge, oxidation-reduction, ion exchange, water mixing residence time etc. greatly influence the composition of groundwater [6]. When groundwater flows in an aquifer system it interacts with the aquifer minerals along with intermixing of water, chemical characteristics at the recharge zone, interaction between rock-water, climatic conditions, topography, flow direction, geological formations which governs the groundwater quality [7,8,9]. Also, anthropogenic activities such as over exploitation, sewage/fertilizers leaching, spillages etc influence groundwater quality. The chemical characteristics of groundwater are significant as they determine the suitability for domestic, industrial or agricultural use [5,10].
In the recent past, several methodologies have been adopted to analyze the quality of groundwater and associated hydrogeochemical process i.e., multivariate statistical analysis [3,9,11,12], geochemical modeling [13,14,15,16], stable isotopes [17,18], redox indicator, structural equation modeling [19]. These methods have been employed to analyze the geochemical evolution and hydro-chemical processes governing chemical composition of groundwater in their respective regions. The current study evaluates the groundwater and related geo-chemical processes using conventional graphical methods and statistical analysis in the Aseer region of Saudi Arabia.

2. Material and Methods

2.1. Study Area

The Aseer region of the Kingdom of Saudi Arabia lies between the latitude of 17.367079° N to 21.033532° N and longitude of 41.302589° E to 44.520914° E (WGS_1984) with area 84231 sq. km (Figure 1). The primary aquifers include quaternary alluvium, quartz sandstone and conglomerates while secondary aquifers include mainly limestone with lateral diagenetic alterations with increased original porosity along with karstification. Most of the aquifers consist of sedimentary rocks excluding Harrart and Wadi (filled with Shields).
Unconfined quaternary alluvial aquifers are important source of groundwater particularly where fed by runoff from the mountains of the Aseer. These shallow aquifers with poor to good quality have average annual recharge of 1196 × 106 m3 [20]. The good quality of groundwater in Wadi-ad-Dawasir is due to 100 m thick alluvial fill. The majority of average annual rainfall (355 mm) occurs between March–June and October, while the temperature in the study area varies from 19.3 °C to 29.7 °C.

2.2. Sampling and Analysis

Sixty-two groundwater samples were collected during November 2017 to January 2018 and tested onsite for pH, electrical conductivity (EC) and total dissolved solid (TDS) using portable pH, EC electrode (Oakton) and TDS meter (HANNA). The samples were acidified using nitric acid (50%) pH < 2 for cation analysis, while samples collected for anion analysis were not acidified. The samples were stored in an ice box, carried to the laboratory and kept at 4 °C for further chemical analysis. The samples were analyzed for the major cations (Mg2+, Ca2+, Na+, K+) along with iron (Fe) using an atomic absorption spectrometer (Thermo Fisher Scientific M series), and the major anions (F, Cl, SO42−, NO3) were analyzed using an ion chromatograph (Dionex). Bicarbonate (HCO3), total alkalinity and hardness of the samples was determined by titrimetric method as described in APHA 1995 [21]. After the analysis of all the groundwater quality parameters normalized charged balance index (NCBI) was calculated using the following formula [22,23]:
NCBI = (ΣTz − ΣTz+)/(ΣTz + ΣTz+)
where, ΣTz+ = total sum of cations (in epm) and ΣTz = total sum of anions (in epm). The values of NCBI ranged between +0.15 to −0.15.

2.3. Statistical Analysis

Correlation analysis of the groundwater quality parameters was studied to understand the degree of relationship/association between the water quality parameters. The correlation value (r) varies from +1 to −1. Variables with r value > 0.7 are considered strongly correlated while values between 0.5–0.7 are considered moderately correlated.
The multivariate technique, principal component analysis (PCA), is employed for large dataset to reduce volume of redundant information [5,9]. PCA has been performed using the XL-stat extension of Microsoft Excel. Bartlett’s sphericity test of normalized data has been carried out which shows χ2 (cal) = 1190.4 is greater than the χ2 (crit) = 202.5 (at degree of freedom 171, significant level 0.05 and p value < 0.0001); these values indicate successful data dimension reduction performed by PCA. During the PCA analysis all the variables has been scaled using the mean value 0 and variance of 1 and the eigen values > 1 has been used for the interpretation of the dataset [24].

2.4. Geochemical Modeling

Inverse geochemical modelling along with thermodynamic program Phreeqc was employed to estimate saturation index and aqueous mineral phases [25]. The inverse geochemical modelling consisted of the following assumptions: (1) analysis of two groundwater from the initial and final water-wells should represent groundwater that flows along the same path; (2) hydrochemistry should not be affected significantly by diffusion and dispersion; (3) the groundwater system is steady in terms of chemical composition; and (4) the inverse calculation is based on the mineral phases present in the aquifer [8,9,25]. The validation of the inverse modeling results depends upon input data accuracy, degree of understanding of local geochemical processes, groundwater system conceptualization and basic hydrochemical concepts. Changes in saturation state are useful for distinguishing the different stages of hydro-chemical evolution and the identification of important geochemical reactions controlling the groundwater chemistry [25,26,27]. Geochemical modeling of the groundwater samples was carried out using Phreeqc version 3. It operates according to the mass balance method, which determines the change in the chemical properties of the mineral species present in the groundwater [26]. Saturation indices (SI) of groundwater were calculated using the equation below:
SI = Log IAP Kt sp ( T )
where, IAP is ion activity product and Ktsp (T) is equilibrium solubility product of the mineral. Negative values of SI suggest groundwater is undersaturated while the positive values suggest oversaturation of groundwater with respective minerals.

2.5. Geospatial Database

The spatial analysis tool of ArcGIS 10.3 was used to analyze the spatial variation of groundwater quality parameters in the study area. The inverse distance weighted (IDW) algorithm was used to interpolate the point data [11] in order to generate the surface map. The IDW method has been successfully used to a power (e.g., linear, squared and cubed) to model different geometries (e.g., line, area, volume). Weights are computed by taking the inverse of the distance from an observation’s location to the location of the point being estimated [28].

3. Results and Discussion

3.1. Distribution of Major Ions

Chemical characteristics of groundwater in mainly dependent on the interaction of rock and water along with geochemical process occurring into the aquifer system. The basic statistics of the analyzed groundwater quality parameters along with their World Health Organization (WHO) limits are presented in Table 1 [29]. The pH of water samples varied from 5.6 to 9.2 and only 4 out of 62 groundwater samples have pH values < 7 which suggest high interaction between soil and water resulting into high alkalinity of the aquifers.
The total alkalinity of groundwater varied between 56 to 1899 mg/L. Wide variation in the EC and TDS is observed and EC varied from 285 to 3796 µS/cm. The high aridity of the Aseer region due to low precipitation and high evaporation contributes to high salt concentration in groundwater [9]. According to the classification by Davist and Dewiest 1967 [30], only 6 samples out of 62 (10%) has EC < 500 μS/cm and it can be considered similar to freshwater while 44 out of 62 (%) is under marginal water type with EC 500–1500 μS/cm and rest 12 has EC > 1500 μS/cm which is unfit for drinking [29,30]. Based on the mean concentration of the major cations, Ca2+ is found as the most dominant cation ranging from 48.8 to 540 mg/L with an average of 246.9 mg/L followed by Mg2+, Na+ and K+ (Figure 2).
The concentration of Mg2+ ranged between 2.9 mg/L to 214 mg/L with an average of 36.4 mg/L while Na+ concentration ranges from 3.5 to 72.8 mg/L with an average of 29 mg/L. The K+ concentration ranged between BDL (below detection limits)—9.6 mg/L (avg. 3.3 mg/L). The weathering of K-feldspar is mainly responsible for the K+ concentration in groundwater. HCO3 is most dominant among the anions followed by Cl, SO42− and NO3. The combination of Ca2+, Mg2+ along with HCO3 is responsible for hardness of the groundwater. In this study, we found a high concentration of the ions that contribute to the hardness of the groundwater, i.e., 104–1658 mg/L, with an average value of 387.3 mg/L. The concentration of HCO3 ranged from 136 mg/L to 864 mg/L with an average of 401.5 mg/L. High HCO3 values indicate the presence of carbonate containing minerals in the study area, as well as the presence of degraded organic matter that can also contribute to the presence of HCO3 in groundwater [31]. Concentration of Cl in groundwater varied from 12 mg/L to 825 mg/L with an average of 173.8 mg/L. The high rate of evaporation might be attributable to high Cl concentration in the groundwater while SO42− and NO3 concentration in groundwater varies from 29 mg/L to 557 mg/L (avg. 145.7mg/L) and BDL to 155 mg/L with an average of 31.4 mg/L respectively. The SO42− in the groundwater might be due to the dissolution of gypsum/anhydrite minerals while fertilizers, agricultural/municipal waste and leaching of sewage might contribute NO3 in groundwater. F concentration ranges from BDL to 0.86 mg/L which is below the WHO guidelines with an average of 0.35 mg/L (Table 1).

3.2. Association between Water Quality Parameters

Statistical Analysis
The correlation analysis of groundwater quality parameters suggests the hydrological process controls the evolution of groundwater and its chemical properties. The result of the correlation analysis suggests strong association between pH, alkalinity, F and iron (Fe) (Table 2). EC is strongly associated with Ca2+ Mg2+, Cl and SO42− indicating high conductivity of groundwater due to the presence of these ions. Ca2+ and Mg2+ show moderate association between Cl, SO42− and Cl, NO3. A strong association between Fe and F is observed (R = 0.88), however none of the samples exceeded WHO guidelines either for Fe or F. The high concentration of these ions may be due to the dissolution of evaporitic minerals, since a high proportion of EC favors the dissolution of evaporite minerals and sulphate salts, resulting in an increase in concentration of Mg2+ and Ca2+ in groundwater [32].
PCA results indicate five principal components (PCs) with eigenvalues, representing 84.5% of the total variance in the dataset. PC1 explains around 32.3% of the total variance whereas PC2 explains 26.4%, PC3 10.3% PC4 7.9% and PC5 7.37% of the total variance (Table 3). The loading >0.6 has been considered for the interpretation of the data. In PC1, the high loading of EC, TH, Ca2+ Mg2+, Cl, and SO42− has been found which indicates mineralization of rocks and soil [32,33]. A high loading of SO42− and Cl together depicts the dissolution of evaporitic minerals. In PC2, a negative loading of NO3 and pH while a high positive loading of alkalinity, Fe and F is observed. In PC3, a high loading of NO3 alone indicates anthropogenic influence on groundwater quality, while in PC4 Na+ and K+ is positively loaded and in PC5 HCO3 loading is found to be higher than 0.6 alone but negative and moderately high loading of K (−0.48) is also observed.

3.3. Hydro Geochemical Processes

3.3.1. Weathering and Dissolution

A scatter plot between Ca2+/Na+ and HCO3/Na+ is used to determine the effect of weathering of silicates or carbonate minerals or evaporation dissolution in the groundwater. Figure 3a shows weathering of carbonate minerals is the most dominant process affecting the groundwater quality. In Figure 3b, Na+ normalized Ca2+ vs. Mg2+ also refers carbonate dissolution as the major hydrogeochemical process. The ratio of Ca2+ and Mg2+ is used to understand the effect of dissolution of calcite and dolomite in groundwater. The value of Ca2+/Mg2+ > 1 indicates dissolution of calcite as main source of these ions in the study; the ratio of Ca2+/Mg2+ varies from 1.05 to 57, and indicates the dominance of calcite dissolution as a major process (Figure 4a) [5,9,11,31].
A Ca2+ + Mg2+ vs. HCO3+SO42− plot has been used to analyze ion exchange process. Samples with approximately 1:1 ratio indicate dissolution of calcite, dolomite, or gypsum (Figure 4b) while if there is exchange of ions it will shift the points away from the equiline i.e., towards the right and reverse ion-exchange will shift it towards the left. In Figure 4c i.e., Ca2+ + Mg2+ vs. Cl plot, points are mostly on the right of the equiline indicating ion-exchange and weathering of carbonate minerals as the major process controlling the groundwater quality [34].

3.3.2. Evaporation

A scatter plot between Na+/Cl vs. EC is effectively used to determine the influence of evaporation on groundwater quality. The Na+/Cl value greater than 1 suggests silicate weathering as a dominant process controlling release of Na+ in groundwater; while the Na+/Cl ratio is approximately 1, which suggests halite dissolution as a dominant process. The value of Na+/Cl ranges between 0–1.99 which determines the impact of evaporation on groundwater quality (Figure 4d–f). The scatter plot Cl vs. (Na+ + K+) reveals that most samples are above 1:1 line suggesting excess of cations which might be due to the excess of alkali and formation of alkali carbonates or sulfates in the region. The high concentration of Na+ compared to K+ may be the result of its resistance to ion exchange, dissolution and chemical weathering. Anthropogenic activities might also contribute high Na+ in groundwater. The Na+ and Cl plots are used to determine dominant silicate weathering and ion-exchange in groundwater (Figure 4e,f). The points above the equiline depicts influence of ion-exchange. Majority of the samples above 1:1 line was found to be influenced by ion-exchange while the samples below the equiline indicates evaporation as the influencing process.

3.3.3. Seawater Influences

The SO42+/Cl ratio used as a natural tracer to determine freshwater and seawater mixing [35]. Typically in seawater the value of (SO42+/Cl) × 1000 is found to be 103.4 and, based on the values, the quality of groundwater can be classified into two groups i.e., (a) samples with a SO42+/Cl ratio similar to seawater, and (b) samples with a ratio of SO42+/Cl ratio more than 300, mainly influenced dissolution of evaporites. In the current study, the ratio of (SO42+/Cl) × 1000 ranges from 51 to 4547 and out of 62 sample 48 samples has values >300 indicating the influence of sea water on groundwater (Figure 4f).

4. Geochemical Modeling

4.1. Geochemical Facies

Water type is used as to identify the signature of the soil water interaction and water recharge. The study found Ca2+ as the dominant cationic species while in anions HCO3 was dominant followed by Cl and SO42−; this is also evident from the Piper (1944) trilinear diagram (Figure 5) [36]. The most dominant water types present in this region are Ca-HCO3 followed by Ca-Cl and Ca-SO4. 69% of the samples have Ca-HCO3 type while the remaining 24% is of Ca-Cl and 4% of the samples are found to be Ca-SO4. Dissolution of carbonate minerals containing Ca2+ might be the reason behind Ca2+ dominance. Exchange of Na+, K+ by Ca2+ and Mg2+ adsorbed on the surface of clay minerals can cause their higher concentration. The dissolution of gases and minerals, especially CO2 and CO3 related compounds in the atmosphere and in the unsaturated area during precipitation and infiltration would give the observed HCO3 type water facies [37] while dissolution of halite could contribute to high Cl in groundwater.

4.2. Saturation Indices (SI)

SI are important to identify the reactivity of minerals in groundwater. A positive SI value of a mineral shows oversaturation and thus precipitation will occur while a negative SI value shows undersaturation and thus dissolution of mineral in groundwater. The SI of calcite and dolomite is mostly found >0 except for 4 samples for calcite and 10 for dolomite (Figure 6a,b). Water acts as solvent for calcite and dolomite when it interacts with carbonate minerals. In comparison to dolomite, the dissolution of calcite is a relatively rapid reaction [38,39] and accordingly the system rapidly acquires Ca2+ ion. A solution containing Ca2+ ions reacts with dolomite, acquires Mg2+ and increases Ca2+, CO32− and HCO3 concentration. The latter process can follow to oversaturation of calcite, which in order to maintain equilibrium, must precipitate. Positive values of SI for these minerals indicates oversaturation, hence precipitation, of these minerals [5]. It also indicates that the groundwater has enough residence time to interact with aquifer minerals and reach up to equilibrium. The groundwater is found to be undersaturated with halite, anhydride and gypsum as the SI values for these minerals are negative (Figure 6c,d), and dissolution of the above minerals is the controlling factor for groundwater quality in the Aseer region. Dissolution of halite and gypsum is probably the reason behind the high concentration of SO42− and Cl.

5. Conclusions

This study has been conducted in Asser region of Saudi Arabia. The integrated approach of multivariate statistical methods along with conventional plots and geochemical modelling have been used to identify the major hydrogeochemical processes and groundwater chemistry in the study area. Five principal components (PC1-PC5) were found to explain 79.9% of the dataset when subjected to PCA. The majority of groundwater composition is Ca-HCO3 followed by Ca-Cl. Groundwater in this region is oversaturated with calcite and dolomite while undersaturated with gypsum and halite, resulting in high concentrations of Ca2+ and Cl in groundwater. Since the presence and corresponding impact of these chemicals on the overall quality of groundwater is significant, the hydro-geochemical characteristics of groundwater are highly influenced by the climatic condition i.e., extreme evaporation. The climatic condition, coupled with high temperature and less rainfall may result in the highly alkaline conditions. The scatter plots between the ions suggests ion exchange, halite dissolution, carbonate weathering along with seawater mixing are the major process controlling groundwater quality in the Asser region. High alkalinity along with Cl, Ca2+ and NO3 in groundwater has emerged as a major concern in this study, and hence a sustainable water management plan should be adopted. Immediate action and proper intervention is needed to protect the groundwater quality and further deterioration of groundwater in the study area.

Author Contributions

Conceptualization, J.M. and M.K.A.; Formal analysis, J.M., C.K.S. and A.K.; Funding acquisition, J.M.; Investigation, C.K.S., A.K., R.A.K. and S.I.; Methodology, J.M., C.K.S. and A.K.; Project administration, J.M.; Resources, M.K.A., A.K., R.A.K. and S.I.; Supervision, J.M. and M.K.A.; Visualization, R.A.K.; Writing—original draft, J.M.; Writing—review and editing, J.M., C.K.S. and A.R.

Funding

Funding for this work has been provided by the Deanship of Scientific Research; King Khalid University, Ministry of Education, Kingdom of Saudi Arabia under award numbers R.G.P.1/28/38 (1439).

Acknowledgments

The authors thankfully acknowledge the Deanship of Scientific Research for proving administrative and financial support. The author also acknowledged Engr. Mohammad Ahmed Ibrahim AlFarhan, Ministry of Environment Water and Agriculture, Aseer, Saudi Arabia, for providing the assitant to collect the groundwater sample in the Aseer region.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Study area map with sampling location of groundwater.
Figure 1. Study area map with sampling location of groundwater.
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Figure 2. Distribution of major pH, electrical conductivity (EC) and major ions.
Figure 2. Distribution of major pH, electrical conductivity (EC) and major ions.
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Figure 3. (a) Na Normalized HCO3 vs. Ca2+. (b) Na Normalized Mg2+ vs. Ca2+ plot.
Figure 3. (a) Na Normalized HCO3 vs. Ca2+. (b) Na Normalized Mg2+ vs. Ca2+ plot.
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Figure 4. (a) Scatter plots of Ca2+/Mg2+ versus sample no; (b) Scatter Plots of Ca2+ + Mg2+ versus HCO3 + SO42−, (c) Na+/Cl vs. EC plot; (d) scatter plot between Na++K+ vs. Cl; (e) scatter plot between Na+ and Cl; (f) scatter plot of (SO4/Cl) × 1000 vs. sample no.
Figure 4. (a) Scatter plots of Ca2+/Mg2+ versus sample no; (b) Scatter Plots of Ca2+ + Mg2+ versus HCO3 + SO42−, (c) Na+/Cl vs. EC plot; (d) scatter plot between Na++K+ vs. Cl; (e) scatter plot between Na+ and Cl; (f) scatter plot of (SO4/Cl) × 1000 vs. sample no.
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Figure 5. Piper plot.
Figure 5. Piper plot.
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Figure 6. (a) Saturation indices (SI) of calcite vs. Ca. (b) SI of dolomite vs. Mg. (c) SI of gypsum vs. SO4 + Cl (d) SI of halite vs. Na + Cl.
Figure 6. (a) Saturation indices (SI) of calcite vs. Ca. (b) SI of dolomite vs. Mg. (c) SI of gypsum vs. SO4 + Cl (d) SI of halite vs. Na + Cl.
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Table 1. Descriptive statistics with World Health Organization (WHO) guidelines of groundwater quality parameters (ND; Not Defined).
Table 1. Descriptive statistics with World Health Organization (WHO) guidelines of groundwater quality parameters (ND; Not Defined).
ParameterMinimumMaximumMeanStandard DeviationWHO 2009
pH5.69.27.71.26.5–8
EC28537961221.5713.61500
TDS1552619713.9478.71000
Alkalinity561899223.8229.8-
TH1041658387.3252.7-
Na+ (mg/L)3.572.829.015.9200
K+ (mg/L)BDL9.63.32.430
Ca2+ (mg/L)48.8540246.994.8200
Mg2+ (mg/L)2.921436.436.6150
Fe (mg/L)BDL1.10.10.10.3
F (mg/L)BDL0.860.230.351.5
NH4 (mg/L)BDL0.10.00-
NO3 (mg/L)BDL15531.441.950
Cl (mg/L)12825173.8146.7250
SO42− (mg/L)29557145.7111.6250
HCO3 (mg/L)136864401.5129.9300
Table 2. Correlation analysis of groundwater quality parameters (bold depicts moderate to strong correlation).
Table 2. Correlation analysis of groundwater quality parameters (bold depicts moderate to strong correlation).
pHECTDSAlkTHNa+K+Ca2+Mg2+FeFNO3ClSO42−HCO3
pH1.00
EC0.331.00
TDS0.390.941.00
Alk−0.10−0.030.181.00
TH0.020.800.780.091.00
Na+0.010.220.16−0.070.171.00
K+−0.02−0.09−0.060.200.000.211.00
Ca2+0.120.660.650.270.670.190.031.00
Mg2+0.400.700.71−0.050.520.23−0.030.441.00
Fe0.06−0.030.180.840.06−0.160.150.22−0.031.00
F−0.220.140.040.000.250.00−0.020.42−0.11−0.021.00
NO30.560.460.56−0.030.07−0.04−0.090.180.570.01−0.361.00
Cl0.480.810.830.090.460.30−0.050.580.680.150.020.561.00
SO42−0.130.650.54−0.070.600.220.100.680.47−0.120.340.060.481.00
HCO3−0.180.210.200.280.210.200.020.390.230.050.090.070.080.071.00
Table 3. Factor loading along with eigenvalue, %variance and cumulative % (Bold depicts significant loading of the variables).
Table 3. Factor loading along with eigenvalue, %variance and cumulative % (Bold depicts significant loading of the variables).
Factor LoadingF1F2F3F4F5
pH0.412−0.8270.1420.108−0.032
EC0.9520.0270.041−0.109−0.005
Alk−0.1670.9560.0650.0930.118
TH0.7290.287−0.249−0.338−0.017
Na0.358−0.029−0.4720.575−0.012
K−0.0620.239−0.4010.545−0.485
Ca0.7210.449−0.219−0.1970.090
Mg0.8070.0550.2500.1830.002
Fe−0.1710.8800.2340.018−0.069
F−0.2510.9310.150−0.004−0.128
NO30.494−0.0330.7220.3220.021
Cl0.8060.2270.2940.141−0.151
SO40.7250.106−0.341−0.275−0.271
HCO30.2740.229−0.2670.2670.810
Eigenvalue4.5253.7021.4541.1181.033
% variance32.31826.44410.3897.9867.376
Cumulative %32.31858.76369.15177.13784.513

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Mallick, J.; Singh, C.K.; AlMesfer, M.K.; Kumar, A.; Khan, R.A.; Islam, S.; Rahman, A. Hydro-Geochemical Assessment of Groundwater Quality in Aseer Region, Saudi Arabia. Water 2018, 10, 1847. https://doi.org/10.3390/w10121847

AMA Style

Mallick J, Singh CK, AlMesfer MK, Kumar A, Khan RA, Islam S, Rahman A. Hydro-Geochemical Assessment of Groundwater Quality in Aseer Region, Saudi Arabia. Water. 2018; 10(12):1847. https://doi.org/10.3390/w10121847

Chicago/Turabian Style

Mallick, Javed, Chander Kumar Singh, Mohammed Khaloofah AlMesfer, Anand Kumar, Roohul Abad Khan, Saiful Islam, and Atiqur Rahman. 2018. "Hydro-Geochemical Assessment of Groundwater Quality in Aseer Region, Saudi Arabia" Water 10, no. 12: 1847. https://doi.org/10.3390/w10121847

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