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Article

Investigation of Groundwater Contamination and Health Implications in a Typical Semiarid Basin of North China

1
School of Renewable Energy, North China Electric Power University, Beijing 102206, China
2
Faculty of Geosciences and Environmental Engineering, Southwest Jiaotong University, Chengdu 611756, China
3
Water Bureau of Changping District, Beijing 100022, China
4
Institute of Hydrogeology and Environmental Geology, Chinese Academy of Geological Science, Shijiazhuang 050061, China
5
School of Geographic Science, Nantong University, Nantong 226000, China
6
School of Water Conservancy and Environment, University of Jinan, Jinan 250022, China
*
Author to whom correspondence should be addressed.
Water 2020, 12(4), 1137; https://doi.org/10.3390/w12041137
Submission received: 3 April 2020 / Revised: 12 April 2020 / Accepted: 14 April 2020 / Published: 16 April 2020
(This article belongs to the Section Water Quality and Contamination)

Abstract

:
Groundwater chemistry and its potential health risks are as important as water availability in arid and semiarid regions. This study was conducted to determine the contamination and associated health threats to various populations in a semiarid basin of north China. A total of 78 groundwater samples were collected from the shallow unconfined aquifers. The results showed that the phreatic water was slightly alkaline, hard fresh water with ions in the order of Ca2+ > Na++K+ > Mg2+ and HCO3 > SO42− > Cl. Four hydrochemical elements, NO3, F, Mn and Zn, exceeded the permissible limits. NO3 and F contaminants may pose health risks to local residents, while the risks of Mn and Zn are negligible. Dermal exposure is safe for all populations, while the oral pathway is not. Minors (i.e., infants and children) are susceptible to both NO3 and F contaminants, and adults only to NO3. The susceptibility of various populations is in the order of infants > children > adult males > adult females. Anthropogenic activities are responsible for the elevated levels of NO3, Zn, Total dissolved solids (TDS), while F and Mn are from geogenic sources. Thus, differential water supplies, strict control of waste, and rational irrigation practices are encouraged in the basin.

1. Introduction

Freshwater accounts for only approximately 2.5% of the total water on earth [1]. Furthermore, most freshwaters exist in the forms of ice or snow making them difficult to utilize by human society. Surface water and groundwater are the main water bodies accessed by ecological and social consumers. In contrast with surface water, groundwater has unparalleled advantages of spatio-temporal availability, good stability, easy accessibility, good quality, resistance to pollution, etc. [2,3]. Thus, groundwater has been the primary water resource supporting socio-economic development [4]. It is estimated that over 50% of the global population relies on groundwater resource to satisfy daily water demands, and groundwater is the sole available water resource for people living in many arid and semiarid regions [5,6]. Hydrochemical quality is the prerequisite of groundwater usage, and is crucial to human health and social development [7]. Understanding groundwater chemistry and its associated potential threats to humans is vital for society and human sustainable development, especially in the regions facing surface water scarcity.
Groundwater is characterized by extremely low flow rate, with a mean residence time of ~1500 years in the aquifers [8]. During the long residence time, it has sufficient time to interact with the surrounding media of the aquifers [9,10], and harmful elements such as fluoride, arsenic, and other toxic elements can become dissolved [11,12,13,14]. In addition, many external elements in groundwater have been shown to be elevated in recent decades in many regions around the world [15,16,17,18,19,20]. For instance, nitrogen including nitrates, nitrites, and ammonia in aquifers have been found to be elevated in both urban and agricultural areas. The origins of these compounds could vary from domestic sources, like effluents and septic tanks, to agricultural practices [21,22,23]. The levels of toxic metals in groundwater have also demonstrated rapid increases in many sites such as landfill sites, wastewater/reclaimed water irrigation lands, mining areas, and industrial sites [16,19,24,25,26]. The deterioration of water quality has been reported in many aquifers around the world [26,27,28]. Deteriorated groundwater quality will further intensify the scarcity of water resources and poverty, especially in arid and semiarid areas of developing countries, and finally, threaten the stability and sustainable development of society.
The deterioration of groundwater quality has attracted the attention pf researchers, as high concentrations of certain elements could potentially cause adverse health effects, including a variety of cancers and noncarcinogenic illnesses like bone and kidney diseases [1]. Due to physical and behavioral differences, various populations would have different sensitivities to the toxic chemical elements contents of groundwater [29]. Considering the preciousness of available water resources, groundwater should not be abandoned once showing high concentrations of certain elements. The smart decision is to supply the water differently to various consumers according to its quality and requirements. Therefore, investigation and assessment of the potential health risks for various populations posed by harmful elements in groundwater, along with the identification of their sources, are the prerequisites to realize safety and sustainability of water supplies [24]. Human health risk assessments proposed by the United States Environmental Protection Agency (USEPA) [30] are among the most useful approaches for quantifying the degrees of potential risks of groundwater contaminants. This approach has been widely used to evaluate the potential health risks from water contaminants and provide scientific guidance for differential water supplies and cost-effective water treatments [13,31,32,33,34].
In arid and semiarid regions, attention should be adequately paid to groundwater supply in terms to water shortages and potential threats to human health. The present study focuses on the groundwater in a typical semiarid basin of north China. The specific objectives are to: (1) delineate the hydrochemical characteristics and contamination of groundwater in the basin, (2) assess the potential health risk for various segments of the population posed by contaminant(s) via different exposure pathways, and (3) identify sources of contaminant(s) for scientific and sustainable groundwater resource management.

2. Study Area

The study area, i.e., the Yanqing basin, is a typical semiarid basin in north China (Figure 1). The area extends between latitudes of 40°17′37″–40°35′28″ N and longitudes of 115°44′43″–116°15′9″ E and covers an area of about 540 km2. This basin is surrounded by mountains in three directions and is adjacent to a big reservoir in the southwest. Weishui River is the main river in the basin, running from northeast to southwest. The Yanqing basin is characterized by a temperate continental monsoon climate with an average temperature of 8.8 °C. The mean annual precipitation is about 430 mm, with more than 70% occurring from June to September. The average annual potential evaporation reaches 1652 mm, which is about four times the annual precipitation.
The terrain of Yanqing basin is flat overall, and gradually inclines from the northeast to the southwest. The elevation of the basin ranges from 474 m in the southwest to approximate 600 m in the northeast. Quaternary deposits dominantly cover the basin, with thicknesses ranging from ~100 m at the mountain front to more than 1000 m at the Guanting reservoir area. The lithology gradually changes from sandy gravels in the piedmont area to fine sands and silty clay in the southwestern basin, resulting in aquifers varying from single unconfined layers to multilayered structures (Figure 2). Groundwater generally flow from northeast to southwest within the basin.

3. Materials and Methods

3.1. Sample Collection and Analysis

Groundwater samples were collected from 78 shallow wells with a depth range of 30–50 m across the basin during the October of 2017 (Figure 1). All samples were phreatic water from the shallow unconfined aquifers in the basin. Wells were pumped for at least 15 minutes to remove the stagnant water before in situ measuring and sampling. The pH was measured in situ using a multiparameter device (Multi 350i/SET, Munich, Germany). Groundwaters were sampled in 2.5 L clean high-density polyethylene bottles that had been thoroughly prewashed with the target water. Samples were sent to the Laboratory of Groundwater Sciences and Engineering of the Institute of Hydrogeology and Environmental Geology, Chinese Academy of Geological Sciences (LGSE-IHEG-CAGS, Shijiazhuang, China) for analysis within 24 hours. Total dissolved solids (TDS) and HCO3 were determined with the aid of gravimetric analysis and acid–base titration, respectively. NH4+, SO42−, Cl, NO3, NO2 and F were analyzed using ion chromatography (Shimadzu LC-10ADvp, Kyoto, Japan). Major cations (K+, Na+, Ca2+, Mg2+) and trace elements (Fe, Mn, Zn) were measured by inductively coupled plasma-maa spectrometry (Agilent 7500ce ICP-MS, Tokyo, Japan) [15,35]. All samples had relative errors within ±6%.

3.2. Health Risk Assessment

The potential health hazards posed by contaminants in groundwater can be quantitatively assessed with the aid of the health risk assessment model proposed by the United States Environmental Protection Agency (USEPA). Dermal contact (i.e. dermal absorption when washing) and drinking water intake (oral pathway) are the dominant potential exposure pathways to groundwater contaminants in daily life. Thus, dermal and oral exposure pathways are considered in the present study. According to physiological and behavioral differences, people relying on groundwater for daily water consumption are divided into four groups: infants (0–6 months), Children (7 months–17 years old), adult females (>18 years old), and adult males (>18 years old). Noncarcinogenic risk is considered based on the potential contaminants (nitrogen, F, Fe, Mn, Zn) of groundwater in this study [36].
The noncarcinogenic risks via dermal contact pathway can be determined as follows:
CDIdermal = (Ci × K × Sa × T × EF × ED × EV × CF) / (BW × AT)
Sa = 239 × BH0.417 × BW0.517
HQdermal = CDIdermal / RfDdermal
RfDdermal = RfDoral / ABSgi
where CDIoral is the daily exposure dose through drinking water intake pathway [mg/(kg×day)], Ci represents the concentration of the target contaminants in groundwater (mg/L), K represents the skin permeability parameter (cm/h), Sa represents the skin surface area, T represents the contact duration (h/d), EF denotes exposure frequency (days/year), ED indicates exposure duration (years), EV represents the exposure frequency of daily dermal contact (time/day), CF represents the unit conversion factor (L/cm3).,BW is the average body wight (kg), AT expresses the average time (days, AT = ED × 365), BH denotes the average body height (cm), RfDoral signifies the reference dose of a specific pollutant [mg/(kg × day)] through dermal contact pathway, and ABSgi indicates the gastrointestinal absorption factor.
The noncarcinogenic risks through the oral pathway can be assessed as follows:
CDIoral = (Ci × IR × EF × ED) / (BW × AT)
HQoral = CDI / RfDoral
HIoral = HQoral,1 + HQoral,2 + … + HQoral,i
where CDIoral is the chronic daily intake dose via drinking water intake pathway [mg/(kg × day)], HQoral is the hazard quotient of noncarcinogenic risk due to drinking water intake pathway, HIoral represents the overall noncarcinogenic health risks of multiple contaminants (1, 2, …, i) by drinking the water, IR refers to the ingestion rate of drinking water (L/day), and RfDoral denotes the reference dose of a specific pollutant [mg/(kg × day)] through drinking the water. The calculation parameters used for health risk assessment in this study are listed in Table 1.
The total hazard quotient of noncarcinogenic risk of specific pollutants (i) (HQtotal) and overall noncarcinogenic health risks of multiple contaminants (1, 2, …, i) (HItotal) through both dermal and drinking intake pathways were determined as follows:
HQtotal,I = HQoral,i + HQdermal,i
HItotal = HIoral + HIdermal

3.3. Multivariate Statistical Analysis

Multivariate statistical analysis was carried out by descriptive statistical analysis, box plot, correlation analysis, and principal component analysis (PCA) using the SPSS software (IBM, Chicago, USA). The spatial distributions were obtained with the aid of the Kriging interpolation module of ArcGIS software (Esri, Redlands, USA). The descriptive statistical analysis and box plot were used to clearly illustrate variations in the physical-hydrochemical parameters of groundwaters in the study area. Correlation analysis was conducted to quantify the relation degree of two physical-hydrochemical parameters. A correlation coefficient close to +1 or −1 indicates strong positive or negative correlation between the two parameters, while coefficients close to 0 demonstrate a weak correlation [13]. PCA is a useful mathematical method to reduce the dimensionality of the dataset in order to identify the key mechanisms influencing/controlling groundwater chemistry without losing important information [40,41,42]. This method can transform the correlated observations to uncorrelated quantities (principal components) based on an orthogonal transformation. The principal component (PC) can be expressed as follows [41]:
zij = ai1x1j + ai2x2 + ai3x3j + … + aimxmj
where a represents the loading of component, z indicates the score of components, x denotes the measured value of a variable, i is the number of components, j signifies the number of samples, and m is the variables number.

4. Results and Discussion

4.1. Groundwater Hydrochemical Charecteristics

A statistical summary of the physicochemical analysis results for the groundwater in the study area is given in Table 2. The groundwaters have a slightly alkaline nature with a pH range of 7.3–8.1, averaging 7.7, which is well within the Chinese Guidelines [43]. The total hardness (TH) ranges between 86 mg/L and 414 mg/L, with an average of 216 mg/L. All groundwaters are within the maximum acceptable limits of 450 mg/L given by the Chinese Guideline [43]. The total dissolved solids (TDS) are in the range of 203–606 mg/L with an average of 316 mg/L. The relatively high TDS groundwaters were mainly distributed in the central basin in areas dominantly associated with agricultural lands, and some sporadic residential areas (Figure 3a). Groundwaters at all sites are fresh water according to the classification based on TDS (fresh: <1000 mg/L, slightly saline: 1000–3000 mg/L, moderately saline: 3000–10,000 mg/L, highly saline: 10,000–35,000 mg/L) suggested by the US Geological Survey [44]. The integrated classification of groundwater quality based on TDS and TH is demonstrated in Figure 4. It can be seen that all groundwaters belong to the hard freshwater category.
The dominant major cation ion is Ca2+, with concentrations ranging from 20 mg/L to 89.2 mg/L, and an average of 53.4 mg/L. The concentrations of Na++K+ have a large range, i.e., 5.3–165 mg/L, averaging 28.9 mg/L. Among the major cations, Mg2+ has relative low concentrations, ranging from 9.1 mg/L to 32.8 mg/L, with an average of 19.5 mg/L. HCO3 is the dominant major anion ion, with concentrations ranging from 173 mg/L to 494 mg/L and an average of 279 mg/L, followed by SO42 with 3.8 mg/L, 86.4 mg/L, and 20.2 mg/L as the minimum, maximum, and mean values, respectively. The Cl concentrations range from ~2.4 mg/L to 61 mg/L, with an average of ~14.8 mg/L. The concentrations of all major ions except Ca2+ are within the permissible limits, and about 1.3% of groundwater samples are found to slightly exceed the limit of 75 mg/L (Table 2). Overall, the abundance of major ions is in the order Ca2+ > Na+ + K+ > Mg2+ for cations and HCO3 > SO42 > Cl for anions (Figure 5).
Nitrogen was detected in the groundwater in the study area. The concentrations of NO3-N range from 0.04 mg/L to 21.8 mg/L, with an average of 5.01 mg/L, and about 11.8% of groundwater samples are found with NO3-N beyond the permissible limit of 10 mg/L given by WHO [45]. High NO3-N groundwaters are primarily distributed in residential areas ranging from Kangzhuang to Badaling Town, and some residential areas of the other major towns except Yanqing city (Figure 3b). Groundwaters at all sampling sites have low concentrations ranging, from 0.01 mg/L to 0.09 mg/L with an average of 0.01 mg/L for NO2-N, and from 0.02 mg/L to 0.4 mg/L, with an average of 0.12 mg/L for NH4-N. All groundwaters have acceptable concentrations of NO2-N and NH4-N according to the Chinese Guidelines [43]. The concentrations of F are observed to be slightly above the permissible limit of 1 mg/L given by Chinese Guideline at 2.6% of the sampling sites, showing a range of 0.12–1.17 mg/L and averaging 0.39 mg/L. For toxic metals, the concentrations are in the range of 0.005–0.252 mg/L, with an average of 0.017 mg/L, for Fe, 0.001–0.173 mg/L, with an average of 0.004 mg/L, for Mn, and 0.001–1.12 mg/L, with an average of 0.032 mg/L, for Zn. The majority of sampling sites have low toxic metal contents, and only 1.3% of samples for Mn and 1.3% of samples for Zn are observed to be slightly beyond the limits recommended in the Chinese Guideline. The high F, Zn, and Mn groundwaters are all sporadically distributed in the basin.

4.2. Potential Health Risk Assessment

4.2.1. Spatial Distribution of the Total Health Risk

Groundwaters in the study area are found with the NO3-N, F, Mn, and Zn beyond the permissible limits of Chinese Guideline (Table 2). Their higher concentrations may pose health hazards to human beings. Noncarcinogenic risks to human health should be considered if exposed to high concentrations of NO3-N, F, Mn, and Zn in daily life recommended by USEPA [36]. Thus, these four chemical substances (NO3-N, F, Mn and Zn) are taken into account to identify their noncarcinogenic risks via dermal and oral exposure pathways. Four population groups, i.e., infants, children, adult females, and adult males are considered. The assessment results are listed in Table 3.
Overall, human health risk may be posed by the harmful hydrochemical substances in groundwater according to the overall noncarcinogenic health risk (HItotal, i.e. HI of multiple potential harmful elements including NO3-N, F, Mn and Zn via both dermal and oral exposure pathways) assessment results. The HItotal values range from 0.42 to 6.14, with an average of 1.99, for infants, from 0.26 to 3.80, with an average of 1.23, for children, from 0.19 to 2.73, with an average of 0.89, for adult females, and from 0.22 to 3.25, with an average of 1.06, for adult males. According to the classification of noncarcinogenic risk based on HI values (Medium chronic risk: 1 ≤ HI < 4, High chronic risk: HI ≥ 4) [47], most groundwaters present medium or high chronic risk for infants, and only less than 25% showed low/negligible risks (HI < 1) which can be ignored (Figure 6). It also clearly shows that the percentage of groundwaters with high chronic risk is limited and only a handful of groundwaters have HItotal values greater than 4. The risk can be reduced or even eliminated if some appropriate measures are taken. All groundwaters at sampling sites are with total HI values less than 4 for other populations, implying low to medium chronic risk for children, adult females, and males. The total chronic risk via multiple pathways is in the order of infants > children > adult males > adult females (Figure 6).
The distribution of overall potential noncarcinogenic risks for various populations are demonstrated in Figure 7. It is clearly shown that the areas of potential chronic risks for various populations are in the order of infants > children > adult males > adult females (Figure 7), which coincide with the aforementioned statistic results (Figure 6). It can be seen that the areas of high potential noncarcinogenic risks for infants are concentrated adjacent to Zhangshanying, Kangzhuang, Badaling, Yongning, and some other sporadic area of the central basin (Figure 7a). For other populations, the high potential risks are mainly distributed adjacent to towns including Zhangshanying, Kangzhuang, Badaling, and Yongning (Figure 7b–d), which are also the highest potential risk areas for infants.

4.2.2. Discrepancy of Health Risk through Various Exposure Pathways

Risks from different exposure pathways were identified and are presented in Figure 8. It can be clearly seen that the total health risks through dermal contact pathway for infants, children, adult females, and males are far below the permissible limit of 1, implying the total health risks potentially posed by NO3-N, F, Mn and Zn via dermal exposure are very low, and would not likely threaten the health of local residents (Figure 8a). In contrast, the total health risks via oral pathway for various populations are greater than 1 at some sampling sites, indicating the existence of potential health impacts on humans (Figure 8b). Thus, the overall noncarcinogenic health risks demonstrated in Figure 6 are dominantly through the oral pathway (Figure 8).
For the oral pathway, the HI (HIoral, i.e. HI of oral pathway) values are in the range of 0.42–6.08 for infants, 0.26–3.76 for children, 0.19–2.70 for adult females, and 0.22–3.22 for adult males, with an average of 1.98, 1.19, 0.86, and 1.02, respectively (Table 3). The total potential health risks for various populations via oral pathway (HIoral) are in the order of infants > children > adult males > adult females (Figure 8b), which is consistent with the overall health risk (HItotal) order demonstrated in Figure 6.

4.2.3. Health Risk from Nitrogen, Fluoride, and Toxic metals

In order to further reveal the risk of each contaminant, the hazard quotients (HQ) of NO3-N, F, Mn, and Zn were determined. As discussed in Section 4.2.2, the health risk via the dermal contact pathway is negligible. Thus, only oral exposure is discussed here.
As demonstrated in Table 3 and Figure 9, the HQ values of NO3-N via the oral pathway are in a range of 0.01–5.65 for infants, 0.01–3.49 for children, 0.01–2.51 for adult females, and 0.01–2.99 for adult males, with an average of 1.30, 0.80, 0.58, and 0.69, respectively. This implies that NO3-N contamination groundwater at some sampling sites presents a potential threat to all populations, as some HQ values exceeding the permissible limit (HQ = 1). The HQ values of F via theoral pathway are in a range of 0.19–1.83, with an average of 0.60, for infants, 0.12–1.13, with an average of 0.37, for children, and less than 1 for both adult females and adult males, indicating that F could pose potential health threats to infants and children, but not to adults. The maximum HQ values of Mn and Zn substances in groundwater via the oral pathway are far below the permissible limit of 1 for all populations, suggesting that the effect of these toxic metals on human health are negligible, although groundwaters at some local sites showed slightly higher concentrations. Therefore, the potential health risks are primarily posed by NO3-N and F, rather than Mn and Zn substances. Infants were shown to be the most susceptible population to harmful substances in groundwater, followed by children, adult males, and adult females (Figure 9).
The distributions of HQ of NO3-N and F via the oral pathway for various populations are further revealed in Figure 10 and Figure 11. As shown in Figure 10, many towns in the basin like Zhangshanying, Kangzhuang, Badaling, Shenjiaying, and Yongning presentred relatively high noncarcinogenic risk of NO3-N. The distributions of NO3-N risk for various populations (Figure 10) were consistent with the overall noncarcinogenic risk distribution (Figure 7). As the chronic health risk of F for adults was low and negligible (Figure 9b), only F risks for minors (infants and children) were examined in terms of their spatial distribution (Figure 11). It can be seen that the F hazard risk to infant health is sporadically distributed around Jingzhuang, Dayushu, and Yanqing, while for children, the same risk applies to only a small area located to the southeast of Jingzhuang. In terms of a single risk-causing substance, NO3-N poses a greater threat to various populations than F; indeed, the overall potential noncarcinogenic health risks in the basin are dominantly due to by NO3-N. Thus, extra attentions should be paid to NO3-N contaminants in groundwater. F hazard risk also should be examined for the minors (i.e. infants and children) in high F content groundwater areas.

4.3. Source Analysis and Implication for Sustainable Water Management

As shown in Figure 3, the high TDS groundwaters are mainly distributed in the central basin. Some other sporadic areas are also observed with relative high TDS groundwaters. The distribution of high nitrate-nitrogen groundwaters is very similar to the relative high TDS groundwaters areas besides the central basin (Figure 3a,b). The linear relationship between various chemical parameters (presented in Table 4) shows that NO3 has a high correlation coefficient with TDS (r = 0.83), implying that NO3 and TDS are from same source(s). NO3 is a common contamination in groundwater and below 10 mg/L (~2.3 mg/L for NO3-N) in natural conditions. Groundwater with NO3 exceeding this limit is generally influenced by the anthropogenic input of nitrogen [21]. This suggests that the relatively high TDS in the sporadic areas of the basin is caused by anthropogenic activities. In addition, it can be seen that the high NO3 groundwaters are dominantly distributed in the residential areas of basin (Figure 1 and Figure 3b), indicating domestic sources like effluents and septic tanks. The high TDS groundwaters in the central basin are located in agricultural areas (Figure 1; Figure 3a), implying a relationship with agricultural practices. Meanwhile, no high nitrogen groundwater is found in these areas, suggesting the absence of direct external inputs. The high TDS is possibly from the leaching from the vadose zone due to the infiltration of agricultural irrigation water.
F, Mn, and Zn in groundwater are found with relative low concentrations in most of the basin (Figure 3c–e). Only a few sampling sites are showed high F/Mn/Zn. As shown in Table 4, a strong negative correlation (r = −0.57) exists between F and HCO3. Additionally, Mg2+ is shown to have a negative correlation with F. This suggests that F is strongly related to reverse ion exchange processes in the aquifers [34]. F also shows a positive correlation with pH, i.e., alkalinity, indicating that F in fluoride-bearing minerals like biotite and muscovite was replaced by OH ligands in groundwater [34,48,49]. Mn showed a strong positive correlation with pH (r = 0.57) and F (r = 0.62), implying similar origins (water-rock interaction). All the absolute values of correlation coefficients for F/Mn and TDS/NO3 are below 0.5, confirming that the high levels of F and Mn in groundwater are from geogenic sources rather than anthropogenic ones. The Zn in groundwaters has no significant relation with other elements (Table 4). However, areas having high Zn groundwaters are also shown to have relatively high NO3 (Figure 3b,e), implying that the high levels Zn are due to anthropogenic activities.
The result of the PCA analysis is presented in Figure 12. The first two principal components (PC) are extracted, and account for 51.19% of the total variance. The first principal component (PC1) explains 31.08% of the total variance in the groundwater chemical dataset. PC1 has a clear positive loading on TH, TDS, Cl, NO3, and a negative loading on pH, F, and Mn. As discussed, high TDS and NO3 in groundwater is associated with anthropogenic activities, and high F and pH (alkalinity) is related to natural origins. Thus, positive PC1 value can be attributed to anthropogenic sources, and negative PC1 values represent the natural processes. PC2 shows clear a positive loading on Na+ + K+, and a negative loading on Ca2+ and Mg2+, indicating cation-exchange and reverse cation-exchange processes, respectively. This confirms the aforementioned mechanism for the formation of F.
Overall, groundwater sources in the study area are potentially threatened by high NO3, F, Mn, and Zn, and especially by NO3 and F. The high NO3 in groundwater is attributed to anthropogenic sources like domestic effluents and septic tanks in urban areas. The capital city Yanqing did not show high NO3. This is ascribed to the advanced administration measures and strict controls in the city on potential waste sources. Thus, the high NO3-N risk areas should adopt measures to protect groundwater from the anthropogenic nitrogen input. The high Zn in groundwater is also related to anthropogenic activities. Although it is sporadic and relatively low, attention should to paid to it in future water resource administration. The TDS of groundwater is found to be elevated not only in urban areas due to the urban anthropogenic waste input, but also in the rural areas due to the leaching of agricultural irrigation water. Scientific and rational irrigation methods like dropping and sprinkling are encouraged in the agricultural practices, as opposed to flooding irrigation. The F and Mn in the groundwater in the study area originate from geogenic sources. These two substances are sporadically distributed and slightly beyond the permissible limits. Mn would not pose hazards to human health; however, high F levels in the study area may threaten the health of minor, and treatment is necessary if the water is to be used for long-term drinking purposes.

5. Conclusions

Groundwater is a crucial water resource in arid and semiarid regions. In this study, groundwater contaminations and the associated health risks for various populations were investigated in a typical semiarid basin of north China, and the contaminations sources were discussed in order to propose measures to reduce the risks. The following conclusions were drawn:
(1)
The groundwater in the basin is slightly alkaline, hard fresh water. The abundance of major ions in groundwater is in the order of Ca2+ > Na+ + K+ > Mg2+ for cations and HCO3 > SO42− > Cl for anions. NO3-N, F, Mn, and Zn were found to be beyond the permissible limits at some sampling sites. Groundwaters exceeding the limits of NO3-N, F, Mn and Zn accounted for 11.8%, 2.6%, 1.3%, and 1.3% in all the sampled sites, respectively, with maximum concentrations of 21.8 mg/L, 1.17 mg/L, 0.17 mg/L and 1.12 mg/L.
(2)
Groundwater NO3-N and F contaminants may pose potential health risks to local residents. The risks due to Mn and Zn in the study area are low and negligible. The dermal exposure of high nitrate and fluoride contaminations in groundwater would not threated health, but oral exposure pathway should be further studied, as high potential risks be may posed. The health risks for all populations are primarily posed by NO3-N contamination. Adults are only at risk of NO3-N contaminants in groundwater, while minors are susceptible to both NO3-N and F contaminants. The total potential noncarcinogenic risks for various populations are in the order of infants > children > adult males > adult females.
(3)
High NO3-N groundwaters are dominantly distributed in residential areas, and were attributed to the anthropogenic sources. The inputs of anthropogenic sources in these urban areas also elevate the TDS values of groundwater. Advanced and strict administration measures are recommended to protect groundwaters from contamination due to anthropogenic activities. The elevation of TDS in groundwater is also associated with the leaching of irrigation water in agricultural areas. Rational irrigation practices like dropping and sprinkling are encouraged to replace the older flooding method. The high Zn in groundwaters is also related to anthropogenic activities, and should be studied by future water resource administrations. F and Mn contaminants in groundwater originate from geogenic sources. Treatment of groundwaters with high levels of F contaminants is necessary if the waters are to be used for long-term drinking purposes, especially regarding infants and children. The effects of Mn contamination in groundwater is limited and can be ignored.

Author Contributions

Conceptualization, Y.X. and Q.H.; Methodology, L.H., S.Y. and X.G.; Formal Analysis, S.Y., Y.X., P.H. and X.G.; Investigation, S.Y., P.H. and L.H.; Data Curation, S.Y. and B.M.; Writing-Original Draft, S.Y. and Y.X.; Writing-Review & Editing, Y.X. and B.M.; Supervision, Q.H. and B.M. All authors have read and agreed to the published version of the manuscript.

Funding

This research was financially supported by the Fundamental Research Funds for the Central Universities (2019MS028; 2682019CX14), China Geological Survey (DD20160238), the National Basic Resources Survey Program of China (2017FY100405), the Basic Science Research Project of Nantong (JC2019159), Large Instruments Open Foundation of Nantong University, the Research Project on Teaching Reform of Nantong University (2019B72), the Project of Shandong Provincial Natural Science Foundation (ZR2019MD029), and the Project of Shandong Province Higher Educational Science and Technology Program (J17KA191).

Acknowledgments

Authors are grateful to the Editor and anonymous reviewers whose insightful comments were very helpful in improving the paper.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

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Figure 1. Location of groundwater samples in the Yanqing basin of North China.
Figure 1. Location of groundwater samples in the Yanqing basin of North China.
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Figure 2. Hydrogeological cross section along the A-A′ in Yanqing basin.
Figure 2. Hydrogeological cross section along the A-A′ in Yanqing basin.
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Figure 3. Spatial distribution of (a) TDS, (b) NO3-N, (c) F, (d) Mn and (e) Zn in the study area.
Figure 3. Spatial distribution of (a) TDS, (b) NO3-N, (c) F, (d) Mn and (e) Zn in the study area.
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Figure 4. Scatter plots of TDS vs TH showing groundwater quality.
Figure 4. Scatter plots of TDS vs TH showing groundwater quality.
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Figure 5. Piper diagram showing the chemical compositions of groundwaters in Yanqing basin.
Figure 5. Piper diagram showing the chemical compositions of groundwaters in Yanqing basin.
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Figure 6. Box plots of the overall noncarcinogenic health risks by multiple pathways.
Figure 6. Box plots of the overall noncarcinogenic health risks by multiple pathways.
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Figure 7. Spatial distribution of the overall noncarcinogenic health risks by multiple pathways for (a) infants, (b) children, (c) adult females and (d) adult males.
Figure 7. Spatial distribution of the overall noncarcinogenic health risks by multiple pathways for (a) infants, (b) children, (c) adult females and (d) adult males.
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Figure 8. Box plots of the overall noncarcinogenic health risks via (a) dermal and (b) oral pathway.
Figure 8. Box plots of the overall noncarcinogenic health risks via (a) dermal and (b) oral pathway.
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Figure 9. Box plots of the hazard quotient of noncarcinogenic risk due to (a) NO3-N, (b) F, (c) Mn, and (d) Zn through oral pathway.
Figure 9. Box plots of the hazard quotient of noncarcinogenic risk due to (a) NO3-N, (b) F, (c) Mn, and (d) Zn through oral pathway.
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Figure 10. Spatial distribution of the hazard quotient of noncarcinogenic risk due to nitrate through the oral pathway for (a) infants, (b) children, (c) adult females, and (d) adult males.
Figure 10. Spatial distribution of the hazard quotient of noncarcinogenic risk due to nitrate through the oral pathway for (a) infants, (b) children, (c) adult females, and (d) adult males.
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Figure 11. Spatial distribution of the hazard quotient of noncarcinogenic risk due to fluoride through the oral pathway for (a) infants and (b) children.
Figure 11. Spatial distribution of the hazard quotient of noncarcinogenic risk due to fluoride through the oral pathway for (a) infants and (b) children.
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Figure 12. Plots of principal components loadings of interrelationships among various hydrogeochemical parameters.
Figure 12. Plots of principal components loadings of interrelationships among various hydrogeochemical parameters.
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Table 1. Exposure parameters and RfDoral used in the health risk assessment.
Table 1. Exposure parameters and RfDoral used in the health risk assessment.
Exposure ParameterValueCompositionRfDoral (mg/(kg × day))
InfantsChildrenAdult FemalesAdult Males
EF (days/year)365 a365 a365 a365 aNO31.6 d
ED (years)0.5 b6 b30 b30 bF0.06 c
IR (L/day)0.65 b1.5 b2.66 b3.62 bFe0.7 a
BW (kg)6.94 b25.9 b64.0 b73.0 bMn0.14 a
BH (cm)62.1 b117.0 b163.0 b165.3 bZn0.3 e
T (h/d)0.4 b0.4 b0.4 b0.4 b
ABSgi0.5 b0.5 b0.5 b0.5 b
EV (day)1 a1 a1 a1 a
CF (L/cm3)0.002 b0.002 b0.002 b0.002 b
K (cm/h)0.001 b0.001 b0.001 b0.001 b
a refer to [36]; b refer to [37]; c refer to [30]; d refer to [38]; e refer to [39].
Table 2. Statistical analyses physicochemical parameters and drinking water standard.
Table 2. Statistical analyses physicochemical parameters and drinking water standard.
IndexMinMaxMeanSD *Guideline% of the Sample Exceeding the Chinese Guideline
pH7.38.17.70.26.5–8.5 **/
TH (mg/L)8641421665450 **/
TDS (mg/L)203606316861000 **/
Na+ + K+ (mg/L)5.3165.028.937.3200 ****/
Ca2+ (mg/L)20.089.253.416.075 ***1.3%
Mg2+ (mg/L)9.132.819.58.250 ***/
Cl (mg/L)2.461.014.812.8250 **/
SO42− (mg/L)3.886.420.219.0250 **/
HCO3 (mg/L)17349427979//
NO3-N(mg/L)0.0421.805.015.1110.0 ***11.8%
NO2-N (mg/L)0.010.090.010.021.0 **/
NH4-N (mg/L)0.020.400.120.160.5 **/
F (mg/L)0.121.170.390.221.0 **2.6%
Fe (mg/L)0.0050.2520.0170.0510.3 **/
Mn (mg/L)0.0010.1730.0040.0220.1 **1.3%
Zn (mg/L)0.0011.120.0320.1341.0 **1.3%
* Standard Deviation; ** Chinese Guideline [43]; *** WHO Guideline [45]; **** refer to [46].
Table 3. Statistics of health risks assessment results through drinking and dermal contact.
Table 3. Statistics of health risks assessment results through drinking and dermal contact.
PopulationIndexesDermal Contact PathwayDrinking Water PathwayMultiple Pathways (Oral + Dermal)
MinMaxMeanSDMinMaxMeanSDMinMaxMeanSD
InfantsHQNO3-N0.000.050.010.010.015.651.301.330.015.71.311.34
HQF0.000.050.010.010.191.830.600.340.195.350.670.64
HQMn0.000.000.000.000.000.120.000.020.000.120.000.02
HQZn0.000.000.000.000.000.350.010.040.000.350.010.04
HI0.000.050.020.010.426.081.981.290.426.141.991.36
ChildrenHQNO3-N0.000.030.010.010.013.490.800.820.013.530.810.83
HQF0.000.030.000.000.121.130.370.210.123.310.410.40
HQMn0.000.000.000.000.000.070.000.010.000.070.000.01
HQZn0.000.000.000.000.000.220.010.030.000.220.010.03
HI0.000.040.010.010.263.761.190.800.263.81.230.84
FemalesHQNO3-N0.000.030.010.010.002.510.580.590.002.530.580.59
HQF0.000.020.000.000.080.810.270.150.082.380.300.29
HQMn0.000.000.000.000.000.050.000.010.000.050.000.01
HQZn0.000.000.000.000.000.160.000.020.000.160.000.02
HI0.000.030.010.010.192.70.860.570.192.730.890.60
MalesHQNO3-N0.000.020.010.010.012.990.690.70.012.530.580.59
HQF0.000.020.000.010.100.970.320.180.12.830.350.34
HQMn0.000.000.000.000.000.060.000.010.000.060.000.01
HQZn0.000.000.000.000.000.190.010.020.000.190.010.02
HI0.000.030.010.010.223.221.020.680.223.251.060.71
HQ denotes the hazard quotient of noncarcinogenic risk by a specified contaminant; HI signifies overall noncarcinogenic health risks of multiple contaminants.
Table 4. Linear relationship between various chemical parameters of groundwater in the study area.
Table 4. Linear relationship between various chemical parameters of groundwater in the study area.
IndexpH THTDSNa++K+Ca2+Mg2+ClSO42-HCO3NO3NO2NH4+FMnZn
pH1
TH−0.54 *1
TDS−0.45 0.96 *1
Na+ + K+−0.17 0.240.181
Ca2+−0.02 0.02−0.01−0.66 *1
Mg2+−0.31 0.390.33−0.440.78 *1
Cl−0.36 0.86 *0.94 *0.030.050.301
SO42−0.10 0.440.59 *0.16−0.14−0.200.56 *1
HCO3−0.44 0.450.320.69 *0.030.250.12−0.031
NO3−0.38 0.79 *0.83 *0.12−0.080.180.89 *0.460.091
NO2−0.42 0.00−0.05−0.140.230.41−0.18−0.130.14−0.211
NH4+−0.19 0.300.230.94 *−0.54 *−0.310.100.130.70 *0.17−0.071
F0.48 −0.49−0.31−0.20−0.20−0.46−0.280.41−0.57 *−0.27−0.02−0.271
Mn0.57 *−0.29−0.11−0.02−0.05−0.14−0.110.39−0.15−0.32−0.10−0.090.62 *1
Zn−0.27 0.180.130.36−0.24−0.310.030.220.190.19−0.130.25−0.07−0.171
* significant relation (absolute value of correlation coefficient >0.5).

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Yin, S.; Xiao, Y.; Han, P.; Hao, Q.; Gu, X.; Men, B.; Huang, L. Investigation of Groundwater Contamination and Health Implications in a Typical Semiarid Basin of North China. Water 2020, 12, 1137. https://doi.org/10.3390/w12041137

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Yin S, Xiao Y, Han P, Hao Q, Gu X, Men B, Huang L. Investigation of Groundwater Contamination and Health Implications in a Typical Semiarid Basin of North China. Water. 2020; 12(4):1137. https://doi.org/10.3390/w12041137

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Yin, Shiyang, Yong Xiao, Pengli Han, Qichen Hao, Xiaomin Gu, Baohui Men, and Linxian Huang. 2020. "Investigation of Groundwater Contamination and Health Implications in a Typical Semiarid Basin of North China" Water 12, no. 4: 1137. https://doi.org/10.3390/w12041137

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