This study determines the properties of hot spring waters and associated rocks, calculates reservoir temperatures and depths in the Mongolian Altai region, and constructs a conceptual model for geothermal water based on these results. The hot springs consist of HCO3–Na, SO4–Na, and HCO3–SO4–Na mixed waters. They exhibit alkaline pH levels and temperatures in the range 21.3–35°C. X-ray diffraction analyses of outcrop rocks reveal silicate and carbonate-type minerals such as quartz, albite, orthoclase, dolomite, mica and actinolite, while correlation analysis indicates that the chemical composition of the hot spring water is directly related to rock mineral composition, where dissolution of albite, orthoclase and dolomite minerals has played an important role. Reservoir water circulation depths are 2615–3410 m according to quartz and chalcedony geothermometry. The results indicate that the spring water in the Mongolian Altai region comprises a low mineral content with alkaline pH levels and that the reservoir temperature can reach up to 106°C. We also propose a conceptual model for geothermal water in the Chikhertei hot spring. The geothermal water in the Mongolian Altai region has the potential for use in heating systems.

Thematic collection: This article is part of the Hydrochemistry related to exploration and environmental issues collection available at: https://www.lyellcollection.org/cc/hydrochemistry-related-to-exploration-and-environmental-issues

Hot springs have been widely used for decades in recreational and medical applications because they impart useful health benefits (Kaven et al. 2020). Nowadays, hot springs are being utilized by heating and power generation systems because the geothermal energy of hot springs is renewable (Lund 2018). Currently, about 82 countries produce 164 635 GWh yr–1 of energy for direct use from geothermal energy resources (Lund, et al. 2011), and this energy is used in agriculture, minor industrial processes, various heating systems, greenhouses and farms (Guðnason et al. 2015). Some countries such as Costa Rica, El Salvador, Kenya and New Zealand produce more than 10% of their total electricity supply using geothermal resources (Van Nguyen et al. 2015).

In Mongolia, there are an estimated 250 hot and cold springs, of which 43 are hot (Oyuntsetseg et al. 2015). Numerous authors have classified spring water temperatures to exhibit different ranges of values (Durowoju et al. 2015; Thermal Laboratory et al. 2018; Žunić et al. 2019). We have used the following range, which has been used repeatedly in the literature: cold (<20°C), warm (20–35°C), hot (35–45°C) and very hot (>45°C). Generally, Mongolian springs occur in the following five regions: Mongolian Altai, Khuvsgul, Dornod-Mongol, Khangai and Khentii (Lkhagvadorj and Tseesuren 2005). Most of the hot springs (32) are distributed in the Khangai Mountain region, where they are used for medical treatment and in spa resorts. This area is in the central part of Mongolia, which is located 400 km away from the capital city. For the past 10 years, other hot springs such as the Tsenkher, Khujirt and Shivert have been used for heating systems with constant flow (Bignall et al. 2005; Lkhagvadorj and Tseesuren 2005).

Hot spring research in the Khangai Mountain region has been more intense than in the other four regions (Gendenjamts 2003; Ganbat and Demberel 2010; Oyuntsetseg et al. 2015). The Mongolian Altai region predominantly has cold springs; however, it also has four hot springs including Chikhert, Gants Mod, Aksu and Indert. Previous studies in the Mongolian Altai region were focused on hydrochemical analyses of the hot springs (Yousif and El-Aassar 2018); however, a geothermal study in this area has not yet been reported (Tugjamba 2021).

The hydrochemical properties of hot springs are related to the interactions of water with the surrounding rock minerals. Therefore, mineral interactions, mineral components, and geothermal calculations can be used to assess the feasibility of using a hot spring as an energy resource. The purpose of this study was to determine the properties of the hot spring waters and associated rocks and calculate the reservoir temperatures and depths in the Mongolian Altai region; based on these results, we constructed a conceptual model for the geothermal waters.

Topography and climate

Figure 1 shows a map of Mongolia, which is a landlocked country between Russia and China and whose territory covers an area of 1 564 116 km2. The capital city is Ulaanbaatar, located about 1700 km away from the study area.

Fig. 1.

Hydrogeological regions and locations of hot springs in Mongolia.

Fig. 1.

Hydrogeological regions and locations of hot springs in Mongolia.

The Mongolian Altai range is 900 km long and is located in the NW of the country along the border of Mongolia and China (Fig. 1). The Mongolian Altai range extends through the landscapes and provinces of Bayan-olgii, Khovd, Uvs and Govi-Altai in Mongolia. The total area of the Mongolian Altai region is c. 104 478.5 km2 (Blomdin et al. 2016). At the top of the Mongolian Altai range is the Khuiten Mountain, whose summit is 4374 m above sea level.

The Mongolian Altai Mountains have sharp peaks, steep slopes and sharp fault scarps owing to a strong tectonic uplift. In this region, many deep crustal faults are located in the sub-meridian and sub-latitudinal directions. Additionally, the area is a seismically active zone (Lkhagvasuren and Burmaa 2017).

This continental area is located in a harsh climate zone owing to the northern latitudes and high elevations above sea level. The annual average precipitation reaches 50 to 350 mm in the Mongolian Altai Mountains (Lkhagvasuren and Burmaa 2017). Hot springs in the Mongolian Altai region are located 1690–2780 m above sea level (Blomdin et al. 2016; Lehmkuhl et al. 2016).

The distribution of Mongolian hot springs by temperature difference (warm, moderate and high) is shown in Figure 1.

Geological setting

Sedimentary rocks, volcanogenic sediments and granitic intrusions are widespread in the Mongolian Altai region. In the Paleozoic zone, Middle Cambrian–Lower Ordovician sandstone–siltstone was commonly deposited in this area. Gneiss, crystalline shale, granite, syenite, gabbro-syenite, grano-syenite, diorite and granodiorite are the other rocks present in this region.

Furthermore, the region contains valleys, ridges and mountainous areas with saline soils in meadow marshes, saline mountain tundra, and alpine meadow soils in high mountain areas, which were formed by erosion and weathering processes (Byamba et al. 1999; Blomdin et al. 2016). The Mongolian Altai terrain is characterized by overlapping depressions with Middle Ordovician–Lower Silurian volcanogenic–terrestrial compositions, overlapping depressions of the Deluun-Sagsai and Yamaat rivers, and Devonian volcanic sediment. It contains a variety of components, including molasse, siliceous sub-granite and the Devonian Altai granite complex (Tomurtogoo 2008, 2012).

The Tawan Bogd terrain range covers the high mountains in the western part of the Mongolian Altai range and includes a 4000–6000 m thick unit of Late Cambrian–Lower Paleozoic sandstone and siltstone. The lithology is composed of granite, leucogranite and granite porphyry that are 385–349 Ma and granite porphyritic biotite, medium granite and albite granite that are 456 Ma old (Byamba et al. 1999; Bulgatov et al. 2014). The geological setting of the Mongolian Altai region is shown in Figure 2.

Fig. 2.

Geological setting of the hot spring area in the Mongolian Altai range.

Fig. 2.

Geological setting of the hot spring area in the Mongolian Altai range.

Hydrogeology of the study area

The Mongolian Altai terrane is considered to be the remains of oceanic island arcs or a Lake Zone arc system (Cai et al. 2015 Xiao et al. 2018). It contains various lakes, glaciers and hot springs. The majority of the water resources in the region are located in the Khar-Us and Khovd river basins, which cover an area of 85 104.8 km2 over five provinces in Western Mongolia. The deepest lake, Khoton, is about 26–58 m deep, and the biggest lake, Achit, has an area of c. 296.8 km2. In total, 96% of the rivers and lakes are considered to be fed by glaciers, with the longest glacier in the range (Potanine) being 20 km in length. The Khovd River is the largest river in the outflow basin of the Mongolian Altai range, which is situated in Central Asia. The age of the hydrogeology of the region is Quaternary and the aquifer contains alluvial, deluvial and proluvial moraine sediments. The sediments of the Quaternary period represent the layer that is closest to the Earth's surface; these were formed 10 000 to 80 000 years ago. The Mongolian Altai region exhibits the following spring water types: Na–HCO3, Na–SO4, and Na–SO4–HCO3 (Lkhagvasuren and Burmaa 2017).

Hot spring water and rock samples were collected from locations represented by blue dots in Figure 2. Twelve water samples were collected from four hot spring sources: Aksu (AC), Indert (IN), Gants Mod (GM) and Chikhertei (CH). These springs are located in Altai region, Bayan-Olgii Province, Mongolia. Outcrop rock samples were collected from the outflow part of each of the four hot springs. As shown in Figure 2, rock and hot spring water samples were obtained from the same four locations. The bedrock of these hot springs was not exposed.

Each water sample was collected and stored in a polyethylene plastic bottle with 2 ml nitric acid for stabilization. Physicochemical parameters, such as temperature, pH, total dissolved solid (TDS) levels and oxidation reduction potential (ORP), were measured in situ using a Hanna HI-98 (USA) instrument. Bicarbonate ion levels were determined in situ using the 0.01 N hydrochloric acid titration method with methyl orange endpoint. The cations and anions in the hot spring water samples, including Ca2+, Mg2+, Na+ and K+, were detected using inductively coupled plasma (ICP) optical emission spectrometry (Shimadzu, Japan). All tests were performed in duplicate and measured in line with ICP standards. Quality assurance and control of the measurements were performed using a certified reference material (SPS–SW2) for the determination of trace elements. Sulfate ion and SiO2 levels were determined by spectrophotometry using the alkalinity standard and ammonium molybdate methods, respectively, with the 4500-SiO-2.C.3g standard silica sample (UV-M51, Brazil). Chloride ion concentration was analyzed using the AgNO3 volumetric method (Ewing and Jordan 1978). The ionic charge balance error of the analyses was less than ± 5%.

Rock samples were air dried at room temperature for 48–72 h after collection. The dried samples were sieved using a 0.074 mm mesh and used for elemental and mineral composition analyses. The mineral composition of the rock samples was investigated by X-ray diffraction (XRD) (PANalytical X'Pert PRO, Netherlands) using the Co–Kα line (λ = 1.79 Å) powder method with a 2θ diffraction angle range of 2–50π. Laboratory duplicates and internal standards (Si, hkl113) were used to ensure the precision and accuracy of the XRD analyses. For the X-ray fluorescence (XRF) measurements, a fused borate disk was used for calibration and a reference material (Cu-base-FP) was analyzed to monitor equipment performance and accuracy.

The results of the hydrochemical analyses are presented using a Piper diagram, Figure 3, and chemical geothermometry calculations were performed using Aquachem (PHREEQC Ver 2.0). A Piper diagram describes the chemical composition of groundwater and its different classes (Joshi and Bhandari 2013). The geological map and geothermometry model were prepared using ArcGIS and CorelDraw. The equations provided in Table 1 were used for geothermometry calculations.

Fig. 3.

Piper diagram of the major chemical compositions of hot springs in the Mongolian Altai region.

Fig. 3.

Piper diagram of the major chemical compositions of hot springs in the Mongolian Altai region.

Table 1.

Equations used in the geothermometer calculations

GeothermometerEquation (T in °C)Reference
QuartzT=13095.19logS273.15Fournier (1977) 
QuartzaT=15225.75logS273.15Fournier (1977) 
ChalcedonyT=11124.91logS273.15Arnorsson (1983) 
ChalcedonyT=10324.69logS273.15Fournier (1977) 
GeothermometerEquation (T in °C)Reference
QuartzT=13095.19logS273.15Fournier (1977) 
QuartzaT=15225.75logS273.15Fournier (1977) 
ChalcedonyT=11124.91logS273.15Arnorsson (1983) 
ChalcedonyT=10324.69logS273.15Fournier (1977) 

(a), adiabatic.

The depth of geothermal waters was calculated using the following equation (Arnórsson et al. 1983; Besser et al. 2018; Shestakova et al. 2018):
D=(TT)/G
where D is the geothermal water circulation depth in m, T is the reservoir temperature in °C, T° is the annual average temperature in °C, and G is the regional geothermal gradient in °C km–1.

Hydrochemical characteristics

Physicochemical parameters and some ion concentrations are shown in Table 2. The accuracy of the analyses was checked through the Standard Method 1030E. The ionic error balance (%), was calculated using cation–anion balance, expressed as milliequivalents per litre. As shown Table 2, ionic error balance for hot spring samples was less than ± 0.2% and it generally should not exceed 5% (Friedman and Erdmann 1982). The results show that the hot spring temperatures ranged between 21.3 and 35°C, and the pH levels were high, between 8.32 and 9.26, indicating alkaline conditions. This temperature range of the hot springs in the Mongolian Altai region corresponds to the warm springs (20–35°C) classification (Thermal Laboratory et al. 2018; Žunić et al. 2019). Alkaline hot springs might be suitable for heating systems because of the low corrosiveness of water in this pH range (Bleam 2016).

Table 2.

Physical and chemical parameters of hot springs in the Mongolian Altai area

IDT, °CpHORP, mVTDSDONaKCaMgHCO3CO3CISO4SiO2FIEB, %
Mg l–1
GM130.49.2140.01270.0745.41.232.020.2241.623.517.88.9146.79.860.121
GM224.59.1859.11450.0345.41.232.210.2247.322.413.710.748.27.310.054
CH122.09.2243.32210.5368.61.845.330.4272.615.17.7068.364.52.970.133
CH223.89.2651.92300.0171.81.832.500.2474.615.27.3166.161.11.270.291
CH321.39.1150.62590.3071.11.752.000.4968.717.89.6261.564.23.160.041
CH424.79.1444.72250.4073.61.863.220.4178.015.98.1167.460.91.990.016
CH524.79.1352.62250.4071.41.892.810.5479.412.57.1467.960.44.120.045
AC131.09.0028.81870.3138.41.222.800.1050.518.63.4114.551.64.820.066
AC235.08.6030.61880.2832.91.023.200.1648.714.62.6212.949.54.050.148
AC332.08.6535.81740.4434.51.202.800.1048.115.72.3014.545.32.820.014
IN125.08.401247250.4519612.524.21.221108.6547.732275.66.20.080
IN228.08.321276980.6118615.222.21.2291.56.1247.731969.22.540.022
IDT, °CpHORP, mVTDSDONaKCaMgHCO3CO3CISO4SiO2FIEB, %
Mg l–1
GM130.49.2140.01270.0745.41.232.020.2241.623.517.88.9146.79.860.121
GM224.59.1859.11450.0345.41.232.210.2247.322.413.710.748.27.310.054
CH122.09.2243.32210.5368.61.845.330.4272.615.17.7068.364.52.970.133
CH223.89.2651.92300.0171.81.832.500.2474.615.27.3166.161.11.270.291
CH321.39.1150.62590.3071.11.752.000.4968.717.89.6261.564.23.160.041
CH424.79.1444.72250.4073.61.863.220.4178.015.98.1167.460.91.990.016
CH524.79.1352.62250.4071.41.892.810.5479.412.57.1467.960.44.120.045
AC131.09.0028.81870.3138.41.222.800.1050.518.63.4114.551.64.820.066
AC235.08.6030.61880.2832.91.023.200.1648.714.62.6212.949.54.050.148
AC332.08.6535.81740.4434.51.202.800.1048.115.72.3014.545.32.820.014
IN125.08.401247250.4519612.524.21.221108.6547.732275.66.20.080
IN228.08.321276980.6118615.222.21.2291.56.1247.731969.22.540.022

The ORP values are important for determining the state of the elements and their transfer to other forms of groundwater. The ORP values of the GM, CH and AC hot spring samples ranged between 28.8 and 59.1 mV, whereas those of the IN samples were between 124 and 127 mV. The ORP may depend on the mineral salts, as well as on the TDS in the hot spring and the amount of dissolved oxygen (Emelyanov 2005). The SiO2 content (45.3–75.6 mg l–1) can be explained by the weathering of siliceous rocks in the hot spring waters, which caused the transfer of silica from the rocks to the water. The fluoride concentrations of the hot spring samples ranged from 1.27 to 9.86 mg l–1. Hot springs contain elements such as aluminum, boron, silicon and iron, which can form stable complexes with fluorine, thereby increasing the solubility of fluorite and the number of fluoride ions in the water. But the solubility of fluorite also depends on hot spring temperature (Edmunds and Smedley 2013). Therefore, another reason for the high fluoride content can be related to the host rocks. Some igneous and sedimentary rocks contain fluoride naturally, which leads to increased fluoride.

The dissolved oxygen (DO) in the hot springs amounted to 0.01 to 0.61 mgl–1; these low levels illustrate that DO decreases as the temperature increases. The TDS values ranged from 127 to 725 mg l–1. Interestingly, the TDS values of the IN1 and IN2 samples ranged between 698 and 725 mg l–1, which were higher than those of the other samples. The IN hot spring is located at a lower elevation area between the mountains. According to these results, we observed that the TDS values increased with a decrease in elevation of the hot springs in the Mongolian Altai region. TDS increase also can be related to evaporation at low altitudes (Oyem et al. 2014).

Moreover, the pH and TDS results support the conclusion that the hot springs of the Mongolian Altai region are advantageous for heating systems because of the low corrosion properties and low amounts of mineral accumulation.

We have illustrated the hydrochemical results for the Mongolian Altai hot springs using a Piper diagram (Fig. 3). According to this diagram, Na+ and HCO3 predominated in the CH1, CH2 and CH3 samples, which can be characterized as HCO3–Na type waters. The ions Na+ and SO42− predominated in the GM1, IN1 and IN2 samples, which can be characterized as SO4–Na type waters. In the АС1, AC2, AC3, CH4 and GM2 samples, which are HCO3–SO4–Na type waters, Na+, HCO3 and SO42− predominated.

Major geochemical processes

The major ion concentrations and their correlations were analysed to clarify ion relationships, and the results are shown in Table 3. The f(x) coefficient of correlation analysis was equal to 0.96. Sodium ions predominated in all hot spring samples. As shown in Table 3, Na/SO4, Ca/SO4, Ca/K and Na/CI ions had positive correlations (r = 0.99, r = 0.98, r = 0.98 and r = 0.98, respectively). With respect to silica, HCO3 exhibited the highest positive correlation (r = 0.90). This correlation may be related to the dissolution of subsurface rock and metamorphic rock containing albite and silicate minerals (Fan et al. 2019). According to the correlation results, gypsum and halite minerals may be dissolved in the hot spring waters.

Table 3.

Correlations of major ions (milliequivalents per litre) in hot spring samples

NaKCaMgHCO3SO4CISi
Na1.00
K0.961.00
Ca0.960.981.00
Mg0.930.900.891.00
HCO30.760.560.590.671.00
SO40.990.970.980.920.701.00
CI0.980.950.940.940.590.931.00
Si0.850.710.720.750.900.830.651.00
NaKCaMgHCO3SO4CISi
Na1.00
K0.961.00
Ca0.960.981.00
Mg0.930.900.891.00
HCO30.760.560.590.671.00
SO40.990.970.980.920.701.00
CI0.980.950.940.940.590.931.00
Si0.850.710.720.750.900.830.651.00

f(X) = 0.96

Saturation indices (SIs) can aid the interpretation of water–rock reactions in hot spring environments. A positive SI value shows oversaturation while a negative value indicates undersaturation (Bouragba et al. 2011). The temperature of hot spring water, major ions, pH and microelements were used as input data in SI calculation. Table 4 shows the SIs of hot spring samples; values for alunite, anhydrite, gypsum and halite indicate undersaturation whereas the other minerals were oversaturated.

Table 4.

Saturation indices for hot springs of the Mongolian Altai region

SamplesGM1GM2CH1CH2CH3CH4CH5AC1AC2AC3IN1IN2
Albite7.598.138.318.118.077.997.816.656.566.076.816.56
Alunite−6.55−4.77−2.29−3.22−2.71−3.14−3.61−7.51−5.96−7.95−2.19−2.64
Anhydrite−1.9−1.8−0.84−1.12−1.29−1.06−1.09−1.47−1.26−1.320.210.21
Calcite2.342.372.622.392.182.42.322.412.282.232.62.44
Fluorite2.562.451.930.881.591.311.92.152.171.812.982.14
Gibbsite1.231.651.981.751.751.661.490.560.790.080.710.51
Gypsum−1.66−1.49−0.51−0.08−0.94−0.75−0.79−1.23−1.07−1.090.510.48
Halite−4.94−5.04−5.18−5.19−5.06−5.14−5.21−5.73−5.89−5.92−4.05−4.08
K-feldspar8.549.149.329.19.098.978.87.667.57.118.117.93
K-mica16.618.018.818.218.117.917.414.414.712.915.114.5
Kaolinite7.978.999.478.979.078.828.496.637.115.837.026.6
Quartz2.332.432.342.322.382.342.342.332.342.422.382.38
SamplesGM1GM2CH1CH2CH3CH4CH5AC1AC2AC3IN1IN2
Albite7.598.138.318.118.077.997.816.656.566.076.816.56
Alunite−6.55−4.77−2.29−3.22−2.71−3.14−3.61−7.51−5.96−7.95−2.19−2.64
Anhydrite−1.9−1.8−0.84−1.12−1.29−1.06−1.09−1.47−1.26−1.320.210.21
Calcite2.342.372.622.392.182.42.322.412.282.232.62.44
Fluorite2.562.451.930.881.591.311.92.152.171.812.982.14
Gibbsite1.231.651.981.751.751.661.490.560.790.080.710.51
Gypsum−1.66−1.49−0.51−0.08−0.94−0.75−0.79−1.23−1.07−1.090.510.48
Halite−4.94−5.04−5.18−5.19−5.06−5.14−5.21−5.73−5.89−5.92−4.05−4.08
K-feldspar8.549.149.329.19.098.978.87.667.57.118.117.93
K-mica16.618.018.818.218.117.917.414.414.712.915.114.5
Kaolinite7.978.999.478.979.078.828.496.637.115.837.026.6
Quartz2.332.432.342.322.382.342.342.332.342.422.382.38

Gibbs diagram

The Gibbs diagram was used to investigate the hydrochemical components of ground water and identify the interactions of water and rock (Fig. 4). The element transfers from rock played an important role in the compositions of the hot springs (Nwankwoala et al. 2015; Nagaraju et al. 2016). Therefore, we investigated the rock sample compositions further as discussed below.

Fig. 4.

Gibbs diagram for hot springs in the study area.

Fig. 4.

Gibbs diagram for hot springs in the study area.

Rock characterization

Elemental composition of the rock samples

Major and minor element compositions of the rock samples determined by XRF are shown in Table 5. The major element oxides were in the following order: SiO2 > Al2O3 > Na2O > K2O > Fe2O3 > CaO > MgO > TiO2 > P2O5 > MnO. Based on these results, we concluded that the hot spring reservoirs included metamorphic layers of granite–gneiss (Joshi and Bhandari 2013). Elemental analyses of the rock samples showed the presence of the following 30 elements: Ba, Bi, Ce, Co, Cr, Cs, Cu, Ga, Ge, Hf, La, Mo, Nb, Ni, Pb, Pr, Rb, Sb, Se, Sm, Sn, Sr, Ta, Th, U, V, W, Y, Zn and Zr. Minor element contents in the rock samples were in the order Ba > Sr > Rb > Zr > Sb > Cs > Cr > Se > Zn > V. High contents of barium and strontium were directly related to the decomposition of dolomite and calcite minerals.

Table 5.

Major and minor element compositions of rock samples

Sample IDMajor elements, %
SiO2TiO2Al2O3Fe2O3CaOMgONa2OK2OMnOP2O5
CH75.50.21312.52.341.150.2903.053.920.0330.067
GM75.30.17612.72.540.740.4114.502.570.0360.034
IN70.20.35213.83.042.270.7123.423.750.0620.119
AC69.30.35513.64.322.691.232.782.410.0770.086
Minor elements, mg kg–1
BaCsRbSbSrZnZrVSeCr
CH38648.01904017618.064.025.130.043.0
GM28939.080.24011648.210416.230.039.0
IN93642.01324042532.316435.053.039.0
AC23530.01994070.218.136.015.330.033.0
Sample IDMajor elements, %
SiO2TiO2Al2O3Fe2O3CaOMgONa2OK2OMnOP2O5
CH75.50.21312.52.341.150.2903.053.920.0330.067
GM75.30.17612.72.540.740.4114.502.570.0360.034
IN70.20.35213.83.042.270.7123.423.750.0620.119
AC69.30.35513.64.322.691.232.782.410.0770.086
Minor elements, mg kg–1
BaCsRbSbSrZnZrVSeCr
CH38648.01904017618.064.025.130.043.0
GM28939.080.24011648.210416.230.039.0
IN93642.01324042532.316435.053.039.0
AC23530.01994070.218.136.015.330.033.0

Normative mineral composition (norm) was calculated using the bulk chemical analysis of the rock samples from the four hot springs. Major and minor element compositions of rock samples were used as input data for this calculation. Silicate minerals (quartz, plagioclase, orthoclase, hypersthene), oxide minerals (corundum, ilmenite, magnetite) and phosphate minerals (apatite) were present as normative minerals (Table 6).

Table 6.

Calculated normative minerals

Normative mineralsVolume norm, %
CHGMINAC
Quartz39.4136.3729.6730.16
Plagioclase31.8542.9541.0138.26
Orthoclase24.5316.1423.9323.94
Corundum0.890.830.190.04
Hypersthene2.853.364.456.86
Ilmenite0.240.190.390.39
Magnetite0.090.100.120.17
Apatite0.140.060.230.18
Normative mineralsVolume norm, %
CHGMINAC
Quartz39.4136.3729.6730.16
Plagioclase31.8542.9541.0138.26
Orthoclase24.5316.1423.9323.94
Corundum0.890.830.190.04
Hypersthene2.853.364.456.86
Ilmenite0.240.190.390.39
Magnetite0.090.100.120.17
Apatite0.140.060.230.18

Mineralogical characterization of rock samples

XRD analyses of the rock samples detected silicate- and carbonate-type minerals such as quartz, albite, orthoclase, dolomite, mica and actinolite. Albite and mica are typically found in the metamorphic rock layer (Joshi and Bhandari 2013; Bleam 2016). The results of the XRD analysis are presented in Figure 5.

Fig. 5.

X-ray diffraction analyses of rock samples.

Fig. 5.

X-ray diffraction analyses of rock samples.

Water–rock interactions

Results of the correlation analysis of elemental compositions of hot spring water and rock are presented in Table 7. The correlation analysis for water–rock interaction was calculated using centered log-ratio (CLR) transformation using R software by the R Core Team. The sum of all components was equal to 100% and the f(X) value of correlation analysis was 0.91. As shown in Table 7, the following components showed strong positive correlation with each other: Na(w) and f(SiO2(r)); CI(w) and f(Na2O(r)); Ca(w) and f(CaO)(r) whereas the following components showed strong negative correlation: Na(w) and f(Al2O3(r)) and CaO(r), MnO(r). The positive correlations indicate the interaction between hot spring water and reservoir rock.

Table 7.

Correlation analysis results for CLR transformed sample compositions

CO3(w)Ca(w)Cl(w)HCO3(w)K(w)Mg(w)Na(w)SO4(w)Al2O3(r)CaO(r)Fe2O3(r)K2O(r)MgO(r)MnO(r)Na2O(r)P2O5(r)SiO2(r)TiO2(r)
CO3(w) 
Ca(w)−0.36 
Cl(w)−0.21−0.60 
HCO3(w)0.92−0.12−0.57 
K(w)−0.910.520.28−0.90 
Mg(w)0.01−0.890.89−0.31−0.09 
Na(w)0.46−0.980.410.28−0.670.77 
SO4(w)−0.890.38−0.15−0.670.66−0.21−0.39 
Al2O3(r)−0.450.92−0.25−0.350.72−0.65−0.980.30 
CaO(r)−0.411.00−0.61−0.160.55−0.88−0.970.460.90 
Fe2O3(r)0.090.87−0.560.220.21−0.84−0.84−0.120.830.83 
K2O(r)−0.76−0.050.04−0.600.410.140.050.90−0.140.04−0.53 
MgO(r)−0.060.88−0.400.040.39−0.75−0.90−0.060.910.840.98−0.48 
MnO(r)−0.240.95−0.43−0.100.52−0.79−0.970.150.970.920.95−0.300.98 
Na2O(r)0.10−0.700.95−0.290.020.900.53−0.44−0.36−0.73−0.51−0.22−0.40−0.48 
P2O5(r)−0.720.87−0.47−0.440.70−0.70−0.850.790.770.900.510.460.550.70−0.70 
SiO2(r)0.41−0.960.360.27−0.660.741.00−0.31−0.99−0.95−0.870.13−0.93−0.980.47−0.80 
TiO2(r)−0.500.99−0.48−0.280.65−0.81−0.990.480.950.990.810.050.850.94−0.620.91−0.97 
CO3(w)Ca(w)Cl(w)HCO3(w)K(w)Mg(w)Na(w)SO4(w)Al2O3(r)CaO(r)Fe2O3(r)K2O(r)MgO(r)MnO(r)Na2O(r)P2O5(r)SiO2(r)TiO2(r)
CO3(w) 
Ca(w)−0.36 
Cl(w)−0.21−0.60 
HCO3(w)0.92−0.12−0.57 
K(w)−0.910.520.28−0.90 
Mg(w)0.01−0.890.89−0.31−0.09 
Na(w)0.46−0.980.410.28−0.670.77 
SO4(w)−0.890.38−0.15−0.670.66−0.21−0.39 
Al2O3(r)−0.450.92−0.25−0.350.72−0.65−0.980.30 
CaO(r)−0.411.00−0.61−0.160.55−0.88−0.970.460.90 
Fe2O3(r)0.090.87−0.560.220.21−0.84−0.84−0.120.830.83 
K2O(r)−0.76−0.050.04−0.600.410.140.050.90−0.140.04−0.53 
MgO(r)−0.060.88−0.400.040.39−0.75−0.90−0.060.910.840.98−0.48 
MnO(r)−0.240.95−0.43−0.100.52−0.79−0.970.150.970.920.95−0.300.98 
Na2O(r)0.10−0.700.95−0.290.020.900.53−0.44−0.36−0.73−0.51−0.22−0.40−0.48 
P2O5(r)−0.720.87−0.47−0.440.70−0.70−0.850.790.770.900.510.460.550.70−0.70 
SiO2(r)0.41−0.960.360.27−0.660.741.00−0.31−0.99−0.95−0.870.13−0.93−0.980.47−0.80 
TiO2(r)−0.500.99−0.48−0.280.65−0.81−0.990.480.950.990.810.050.850.94−0.620.91−0.97 

(w), water; (r), rock; f(x) = 0.91

Geochemical models of minerals

Rock transformation processes occur over thousands of years and are affected by natural factors. We used the following models to explain the effect of rock weathering processes on the composition of hot springs in the Mongolian Altai region. Water from these hot springs predominantly contain HCO3–Na, SO4–Na, and HCO3–SO4–Na ions, and rocks contain albite, orthoclase, dolomite, calcite, mica and other minerals.

Geochemical model of the HCO3Na-type hot spring. Hot spring water + albite, orthoclase, and dolomite→HCO3-Na+(SiO2+AI2O3+K2O+Na2O)mud
2KAISi3O8+2H2CO3+9H2O2K++2HCO3+4H4SiO4+AI2Si2O5(OH)4
(1)
2NaAISi3O8+2H2CO3+9H2O2Na++2HCO3+4H4SiO4+AI2Si2O5(OH)4
(2)

Equations (1) and (2) show the dissolution of albite and orthoclase to form KHCO3, NaHCO3 and kaolinite (Oyuntsetseg 2014; Yuan et al. 2017). Moreover, kaolinite can react with hot spring water to form orthosilicic acid and gibbsite.

The interaction of dolomite and calcite minerals with water is shown in Equations (3) and (4), respectively:
MgCa(CO3)2+2CO2+2H2OCa2++Mg2++4HCO3
(3)
CaCO3(g)+CO2+H2OCa2++2HCO3
(4)
According to Equations (3) and (4), an increase in the calcium and magnesium ion concentrations may lead to cation exchange reactions between sodium and calcium or magnesium. By contrast, minerals containing Na+ ions, such as albite, can interact with water and exchange dissolved Ca2+, which may cause an increase in Na+ ions in the water. The cation exchange reaction is (Kononov 1983; Yuan et al. 2017; Zhang et al. 2020).
Ca2++2Namineral2Na++Camineral
(5)
Geochemical model of SO4Na-type hot spring. HCO3–Na type water shown in the previous model forms SO4–Na type water and calcite compounds by interacting with gypsum. Equations (6) and (7) show the formation of SO4–Na type water, which occurs in response to the reactions between HCO3–Na type water and gypsum:
2NaHCO3+CaSO42H2O=Ca(HCO3)2+Na2SO4+2H2O
(6)
CaSO42H2OCa2++SO42+2H2O
(7)
According to Equation (8), hydrogen sulfide in groundwater can react with organic carbon and oxygen, and this may lead to the formation of sulfate ions:
H2S+2O22H++SO42
(8)
Hot springs predominately contain SO42−, whereas cold springs predominately contain HCO3. While a temperature increase can lead to a decrease in the dissolution of carbonate ions, a significant rise in temperature can lead to an increase in the dissolution of sulfate ions (Kononov 1983; Joshi and Bhandari 2013).

Geothermal reservoir

Chemical geothermometers

Various types of geothermometers can be used to determine reservoir temperature, including silicate mineral (quartz and chalcedony) and cation (Na–K; Na–K–Ca) thermometers (Klein 2007; Peiffer et al. 2014). These methods are based on the interactions between water and rock (Dolgorjav 2009). We used the methods of Fournier (1977) and Arnorsson (1983) for the geothermometer calculations, and the results are shown in Table 8.

Table 8.

Reservoir temperature (T, °C)

Sample IDAverageQuartz(1)Quartzad(2)Chalcedony(3)Chalcedony(4)
CH96.211111082.281.6
GM82.496.898.268.266.5
IN106.412111992.692.8
AC84.498.810070.168.6
Sample IDAverageQuartz(1)Quartzad(2)Chalcedony(3)Chalcedony(4)
CH96.211111082.281.6
GM82.496.898.268.266.5
IN106.412111992.692.8
AC84.498.810070.168.6

(1, 2, 4) Fournier (1977); (3) Arnorsson (1983); ad, adiabatic.

Quartz and chalcedony geothermometers are based on the solubilities of different forms of silica in the rock (Fournier 1989). Temperature estimated by these geothermometers can range from 20 to 250°C, because of different silica phases and solubility characterization (Fournier 1991; Reed and Mariner 2007).

As shown in Table 8, the quartz and chalcedony geothermometry values were ranged between 82.4 and 106.4°C. But the reservoir temperature might be underestimated due to partial equilibration. Moreover, silica geothermometers generally give lower temperature estimation than other cation geothermometers. Hot spring circulation depth is estimated by SiO2 geothermometers (quartz and chalcedony). The circulation depth ranged from 2615 to 3410 m (Table 8).

NaKMg ternary diagram. A ternary diagram (Na–K–Mg) was used to estimate the reservoir temperature and equilibrium state of the water and rock interactions (Sebeşan et al. 2015; Fan et al. 2019) (Fig. 6). As shown, hot springs in the Mongolian Altai region included a partially equilibrated water zone. Generally, water–rock interactions are divided into three zones: mature water, partially equilibrated water and immature water. As shown in Figure 6, the hot springs in the Mongolian Altai region include a ‘partially equilibrated water’ zone on the Giggenbach plot. This indicates that the water–rock interactions occurred partially, not fully. On the other hand, mixing with rainwater, cold spring or groundwater in the aquifer may prevent the achievement of complete equilibrium.

Fig. 6.

Na–K–Mg ternary diagram (Giggenbach 1988).

Fig. 6.

Na–K–Mg ternary diagram (Giggenbach 1988).

Geothermal water circulation depth

We calculated the reservoir depth of the hot springs by measuring reservoir temperatures and estimating local geothermal gradients (Shestakova et al. 2018). These are shown in Table 9. The geothermal gradient of the Mongolian Altai region was calculated as 20–30 °С km–1 (Lkhagvadorj and Tseesuren 2005).

Table 9.

Temperatures and depths of the hot springs

Sample IDReservoir temperature (°С)Water circulation depth (m)
CH96.23070
GM82.42615
IN1063410
AC84.42680
Sample IDReservoir temperature (°С)Water circulation depth (m)
CH96.23070
GM82.42615
IN1063410
AC84.42680

According to Mongolian statistics on climate, the annual average temperature of the research area is between −2 and −4°C. Based on this information, we calculated the depth of water circulation as 2615 to 3410 m.

Conceptual model for the geothermal water of the CH hot spring reservoir

We propose a conceptual model for the geothermal water for the CH hot spring reservoir in the Mongolian Altai region, based on its geology, the chemical composition of hot springs, and reservoir temperature and depth. The conceptual model of the CH hot spring is shown in Figure 7.

Fig. 7.

Conceptual model for geothermal water (Chikhertei).

Fig. 7.

Conceptual model for geothermal water (Chikhertei).

According to the model, precipitation (rain, snow, etc.) from the atmosphere reaches the hot spring system through tectonic faults and other possible geological features at a depth of 2550 m a.s.l., wherein the water interacts with aluminosilicate minerals (Byamba et al. 1999; Bulgatov et al. 2014). The dissolution of albite, dolomite and gypsum minerals generates HCO3–Na and SO4–Na types of water in this area. Moreover, rock weathering and precipitation play an important role in the CH hot spring system. According to our calculation, the reservoir temperature of this area is c. 96.2°С at a depth of 3070 m below surface, which corresponds to a geothermal source with a low temperature (Nicholson 1993).

In this study, we investigated the chemical composition, mineral components of rocks, geothermal temperature and reservoir depth of hot springs in the Mongolian Altai region.

The chemical compositions of the hot springs revealed that the springs contain HCO3–Na, SO4–Na, and HCO3–SO4–Na types of water with low TDS values in the alkaline pH range, and their temperatures ranged as 21.3–35°C. According to the Na–K–Mg ternary diagram, hot springs in the Mongolian Altai region have a partially equilibrated state of water–rock interactions. The results suggest that water–rock interactions and the geographical features of the reservoir are responsible for the main hydrochemical properties.

A preliminary study of the reservoir temperature found values ranging from 82.4 to 106.4°С. This result may be estimated lower because of the partial equilibrium. The reservoir depth of the hot springs ranged from 2615 to 3410 m according to the quartz and chalcedony geothermometers. We constructed a conceptual model for the geothermal water in the Mongolian Altai region, which can be used in other areas with similar geological settings.

Hot spring water in the Mongolian Altai region has the potential to be used in heating systems. Corrosion and mineral accumulation in heating systems based on these hot springs would be low, based on their alkaline properties and low TDS concentration. This type of hot spring resource could thus be directly used for heating households, greenhouses and swimming pools.

A limitation of this study is the lack of isotopic research on the hot springs and water resource calculations. Further research, including studying the isotopic characteristics of the thermal waters in the Mongolian Altai region, will be carried out in the future. Water source investigations are important for utilizing thermal groundwater in heating systems in remote areas of Western Mongolia.

We thank Dr Eric Stemmler for helping with R software and CLR transformation.

BC: data curation (lead), formal analysis (lead), investigation (lead), validation (equal), writing – original draft (lead), writing – review & editing (lead); DM: data curation (equal), formal analysis (supporting), investigation (equal), writing – original draft (equal), writing – review & editing (equal); BA: formal analysis (supporting), software (supporting), visualization (supporting), writing – original draft (supporting); OD: data curation (supporting), methodology (supporting), validation (equal), writing – review & editing (supporting); BO: conceptualization (lead), data curation (equal), funding acquisition (supporting), methodology (lead), project administration (lead), supervision (lead), writing – original draft (equal), writing – review & editing (supporting)

This work was funded by the Khovd University (A/51), and the Laboratory of Environmental Analysis, National University of Mongolia and Khovd University, Mongolia.

All data generated or analysed during this study are included in this published article.

Scientific editing by Scott Alan Wood

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