1. Introduction
Lake Baikal, a UNESCO World Heritage Site, is the largest freshwater lake by volume in the world, containing roughly 20% of the world’s unfrozen surface freshwater. Moreover, it is the source of drinking water for thousands of villages and towns located around the lake and along the Angara River—the only outflow of Lake Baikal. To ensure the preservation of the lake’s ecosystem and the quality of the water flowing downstream, the evaluation of the self-purification capacity of the lake and its tributaries is necessary. However, the self-purification capacity of water bodies in the Lake Baikal watershed has not been previously assessed. The absence of such estimates is conditioned by the absence of significant effects of environmental pollution on aquatic biota and water quality [
1,
2], although some signs of water pollution (unpleasant odors, unchecked growth of aquatic weeds, etc.) in Lake Baikal have appeared in the last decade [
3,
4]. Even though the anthropogenic origin of changes in lake environment has not yet been proved [
5], the need to evaluate the self-purification capacity of natural water systems has become evident.
Despite the absence of direct estimations of self-purification capacity, numerous hydrological and hydrochemical studies conducted within the past few decades have been related in some way to different aspects of contaminant sequestration processes in riverine and lake waters. In particular, the evaluation of suspended sediment removal and bed load discharge in the Selenga River [
6] and its delta [
7,
8] could be regarded as an assessment of river purification from particulate matter. The sustainability of rivers despite anthropogenic impact was assessed to some extent using the morphometric and hydro-meteorological characteristics of river basins [
9]. The results of some studies on the chemical composition of riverine and lake water can be treated as qualitative estimates of water purification from dissolved contaminants. For example, the decrease in macro and trace element concentration from the source to the mouth of the Selenga River can be interpreted as element sequestration due to dilution [
10,
11,
12,
13,
14]. The different concentrations of biogenic elements [
14,
15] and heavy metals [
16] in different channels of the Selenga River delta can be regarded as different self-purification capacities of the water in those channels, and changes in the concentration of solutes along the channels can be interpreted as changes in self-purification capacity.
The residence time of any element in Lake Baikal’s water can be considered the rate of water self-purification with respect to a contaminant [
17,
18]. Additionally, the self-purification of lake water with respect to biogenic elements [
19] and heavy metals [
20] can be assessed on the basis of changes in their concentrations in the water and suspended sediments with increasing distance from the Selenga delta. Organic matter (OM) sequestration in the lake results in qualitative and quantitative composition changes in waterborne polycyclic aromatic hydrocarbons (PAHs) in the onshore–offshore direction [
21,
22]. One mechanism of water purification from organic solutes such as PAH and OM is microbial degradation [
22]. Its involvement in the purification of Baikal water in the littoral zone has been confirmed by the positive correlation between the abundance of microorganisms in epilithic biofilms formed on stony substrates and anthropogenic load [
23]. The net balance between the decomposition and production of organic matter in Baikal (including organic contaminants) has been assessed in terms of O
2 and CO
2 emission and absorption values [
24,
25,
26]. The only quantitative measure that has been used to evaluate surface water purification from dissolved contaminants in the Baikal watershed is biological oxygen demand (BOD)—the amount of oxygen consumed by bacteria in the process of organic matter decomposition [
19]. However, BOD does not reflect natural conditions since the final O concentration measurement in the BOD test is made after water is incubated for 5 days in dark sealed bottles at a constant temperature (20 °C).
Outside the Baikal region, quantitative estimates of water purification capacity are widely used. The value of contaminant removal is calculated using parameters of the corresponding purification mechanism; thus, the value of water purification capacity differs among contaminants. For example, water purification from OM is based on the development and analysis of the oxygen sag curve [
27], which represents the temporal development of BOD and dissolved oxygen (DO) concentrations. The removal of heavy metals (HMs) by their complexation with inorganic ligands can be evaluated on the basis of the relationship between the HM concentration in water and salinity [
28]. The biochemical removal of nitrogen (N) from lake water can be quantified using water residence time or phosphorus concentration [
29,
30]. The removal of N and OM from riverine water has also been evaluated using data on microbial density in bottom sediments [
31], water salinity, and the value of solar radiation [
32].
The primary purpose of such studies has been to prove that contaminant removal via a presumed purification mechanism is possible; however, the purpose should be to find the predominant mechanism of contaminant removal. Moreover, the occurrence of contaminant removal in the natural environment should be established first because the change in concentration of a contaminant does not always mean its removal. From this point of view, the most objective way to evaluate the self-purification capacity of streams, rivers [
33], and throughflow lakes [
34,
35] is to compare the quantity of a contaminant entering and leaving the lake or section of a river between an upstream and downstream location.
The main goal of this study is to evaluate the natural removal of various contaminants from the water of Lake Baikal and its tributaries in terms of the mass of contaminant per volume of water (or per time unit) using the above-mentioned mass balance approach. Another goal is to determine the most probable contaminant removal mechanisms typical for all contaminants. To achieve these goals, two proposed parameters of water self-purification capacity were developed and tested. Since the spatial and temporal variability of water chemistry may vary significantly in time and space [
36,
37,
38,
39] the water self-purification capacity was assessed in spatial and temporal dimensions.
2. Materials and Methods
The study was conducted in the Lake Baikal watershed (
Figure 1) in 2015 and 2017. The study area is a mountainous region characterized by a boreal climate and coniferous vegetation. The study area is characterized by long, cold winters lasting 4–5 months (November–March) and short hot summers (June–August). Winter air temperatures reach −37 degrees Celsius (°C), the summer air temperatures are about 25 °C to 30 °C.
Spatial variation in precipitation is high across the watershed, with the western coast receiving about 400 mm of precipitation annually, while as much as 600 to 800 mm are deposited on the southeastern coast. Extremely high precipitation (up to 1200 mm/year) is observed on northern slopes of Khamar-Daban Ridge located on the southeastern coast of Lake Baikal towards the Angara River, the only Baikal outflow. Most of the precipitation falls in the summer. Lake Baikal and three lake tributaries were investigated. These include the small river Krestovka (
Figure 1a) located on the western coast; the small river Pereemnaya (
Figure 1b) flowing down the northern side of the Khamar-Daban Ridge located on the eastern coast; and the Selenga river (
Figure 1c), the major tributary of Baikal that contributes about 60% of the surface water inflow into the lake. The number of water sampling stations established on the Selenga, Pereemnaya, and Krestovka rivers were 5, 4, and 2, respectively. Besides the studied rivers, the chemical composition of five Selenga tributaries (rivers Chikoy, Khilok, Uda, Dzhida, and Temnik) was evaluated. Also, data from the literature on the water chemistry of two major Baikal tributaries (rivers Barguzin and Upper Angara) and the authors’ data on the chemistry of 75 small southern tributaries were used to calculate Lake Baikal’s self-purification capacity. Five sampling stations were established on Selenga tributaries, and two stations were established on Pereemnaya’s tributaries, one for each river. Water was sampled quarterly, and about 200 samples were collected in total. The season-averaged contaminant concentrations were used for calculations.
The water self-purification capacity was evaluated in terms of both the rate of removal and the mass of contaminants removed. The rate of contaminant removal from water (CRR) was calculated as the difference between contaminant mass flow rates at downstream and upstream gauging stations:
where C
2 and C
1 are contaminant concentrations in µg/L at downstream and upstream gauging stations, respectively; Q
2 and Q
1 are water discharges in m
3/s at downstream and upstream gauging stations, respectively; C
1 × Q
1 may also equal the sum of C × Q values calculated for the upstream river station and tributary stations located between the downstream and upstream river stations.
Negative CRR values indicate the quantity of contaminants removed from the water (immobilized) every second between two stations, and positive values indicate the quantity of contaminants released into the water (mobilized) during this time. The distance between stations was selected in a way that results in the equal travel time of water between two adjacent stations. This was done to exclude differences in CRR values that arise from different water residence times in different sections of the river.
To compare the self-purification capacities of water in Lake Baikal and the Selenga, Pereemnaya, and Krestovka rivers, the values of contaminant removal capacity (CRC), which represents the quotient of CRR and the change in water discharge (ΔQ) between downstream and upstream gauging stations, were calculated:
The CRC is a relative value that indicates the mass of the contaminant removed from (or released to) water per unit of water volume removed from (or released to) river channel and reflects the dependence of the corresponding CRR value on hydrological processes. If negative ΔQ values arose because the river contributes to groundwater recharge or evaporation, the obtained CRC values were taken with a reversed sign. Otherwise, a correct classification of contaminant removal (negative CRR value) could be erroneously classified as contaminant release (positive CRC value) and vice versa.
Riverine water was sampled from the water surface. The concentrations of PAHs, dissolved organic carbon (DOC), nitrate ions (NO3−), Sr, Zn, Cu, Sn, Mo, V, Ti, Ni, Fe, Mn, Al, and some other metals in the water samples were measured. All dissolved components, except for PAHs, were measured in filtered water. Trace metals were measured using Agilent 7500 mass spectrometer. The ICP-MS was calibrated at six concentration levels (0.5, 1, 2, 5, 10, and 20 µg/L) to determine the linearity of the responses before sample analysis. The linearity of the calibration curve provides accurate estimates of metal concentrations below 0.5 µg/L and above 20 µg/L. For the calibration of the mass spectrometer the multi-element standard solutions ICP-MS68A-A and ICP-MS-68A-B (High-purity standards, Charleston, USA) were used. To control the analysis quality, all samples were spiked with internal surrogate standards. Since there was no sample manipulation performed before measurement, the recovery of metal analytes was not assessed. Detection limits for trace metals varied from 0.03 µg/L (for Ni and V) to 0.2 µg/L (for Al and Fe). The accuracy (closeness of a measured value to a standard one) and precision (closeness of repeat analysis values) expressed as standard deviation was either excellent (<3%) or good (3–7%). The DOC concentrations were measured using a Vario TOC Cube Analyzer (Elementar Analysensysteme GmbH). The concentration of NO3− (Nmin. hereinafter) was measured using a Dionex ICS-3000 ion chromatograph. Trace metals were measured using an Agilent 7500 mass spectrometer.
PAHs were measured in unfiltered samples since the PAH concentrations in the surface waters of the Lake Baikal region are extremely low [
22]. The samples were analyzed using an Agilent GC/MS system (Santa-Clara, CA 95051, USA) consisting of an Agilent Model 7890B gas chromatograph (GC) and an Agilent Model 5977A mass selective detector (MSD). The GC-MS was calibrated at six concentration levels (0.04, 0.4, 1, 4, 6, and 10 ng/L). To control the analysis quality, all samples were spiked with 100 µL of PAH surrogate standards (EPA 525 Fortification solution B) before extraction. The samples were analyzed using an Agilent GC/MS system consisting of an Agilent Model 6890N gas chromatograph (GC) and an Agilent Model 5973 mass selective detector (MSD). To ensure that the expected levels of quality were reached, detection limits, precision and accuracy of measurements and recovery efficiency of the analytical method were assessed. To assess the recovery, five replicate distilled water samples were spiked with standard solutions and analyzed. The average recovery of PAHs was 99 ± 11%. The recovery values were calculated as part of the QA/QC protocols, but no further correction was applied to the results. Sample detection limits for PAHs varied widely, from 0.02 ng/L for fluoranthene to 0.001 ng/L for anthracene. Precision ranged from 2.1% to 20.3%, although most values were better than 10%, and accuracy ranged from 2.7% to 13.4% and therefore was very good. The concentrations of the six most abundant PAHs in freshwater ecosystems were measured, namely, phenanthrene, anthracene, fluoranthene, pyrene, benzo[a]anthracene, and chrysene. The concentrations of all PAHs were summarized.
Some of the missing data on riverine water composition were derived from the literature [
10,
11,
12,
13]. The quarterly average data on the water discharge of the Selenga River and its tributaries were obtained for the years 2005, 2006, and 2009 from Khazheeva and Plyusnin [
12] and used for CRR and CRC calculations. These data were chosen because the annual precipitation in the Selenga basin during these years was similar to that in 2015 [
40]. Data on the trace metal composition of Baikal water were also derived from the literature [
17,
18].
5. Conclusions
In this study the removal of trace metals (TM), dissolved organic carbon (DOC), mineral nitrogen (Nmin.), and polycyclic aromatic hydrocarbons (PAHs) from the water of Lake Baikal and its tributaries was evaluated. The main conclusions were drawn as follows:
(1) The variety of environmental conditions in large watersheds results in a variety of contaminants in surface waters and a variety of processes that are responsible for contaminant removal. One such process is seepage loss from the river to the groundwater. The chemical processes of contaminant removal from the freshwater bodies of the Baikal watershed are probably the co-precipitation of organic and inorganic solutes with particulate matter, insoluble hydroxides, and authigenic aluminosilicates.
(2) The effectiveness of these processes increases with increasing salinity and turbidity and decreases with increasing concentrations of organic matter. Nevertheless, the realization of self-purification processes primarily depends on a few watershed morphometric characteristics that control the most important freshwater ecosystem parameters, such as biological activity, water residence time, and the area of mineral surfaces exposed to water.
(3) The highest rates of contaminant removal are observed in Lake Baikal, which is characterized by the highest water residence time. The highest rates of contaminant removal from tributary waters are observed in summer when the maximum length and width of river channels coincide with the maximum salinity and density of microbial and algal populations. The Selenga river’s upper reaches are characterized by higher salinity and turbidity with respect to the lower reaches, as well as higher contaminant removal rates. The lowest rates are found for the small Krestovka river, which is characterized by high organic matter concentrations.