1. Introduction
Measurements of the characteristics of atmospheric electricity in the surface layer, usually the electric field, provide information on both the local electrical state and the functioning of the entire global electric circuit (GEC). The first measurements of a predominantly experimental nature began more than 150 years ago. The modern level of instrumentation contributed to the organization of global systematic observations of electrical quantities such as the potential gradient, electrical conductivity of air, ion concentration, current density, and others [
1,
2,
3,
4,
5,
6,
7,
8]. Today, ground-based measurements provide information about the electrical state of the atmosphere, and different approaches to data selection and processing have allowed us to draw fundamental conclusions about the influence of fair weather [
1,
2,
3,
4,
5,
6,
7,
8,
9,
10,
11,
12,
13,
14,
15,
16,
17,
18,
19,
20,
21,
22] and disturbed weather conditions [
6,
11,
12,
13,
14,
15,
16,
17,
18,
19,
23,
24,
25,
26,
27,
28,
29,
30,
31,
32,
33,
34,
35,
36,
37,
38,
39,
40] on the surface atmospheric electricity.
For example, studies carried out at the beginning of the 20th century on board the Carnegie geophysical vessel made it possible to discover one of the global mechanisms that affected the electric field of the atmosphere [
1]. This is the average daily variation in the potential gradient, widely known as the Carnegie curve or unitary variation. It represents the global daily contribution of electrical activity in areas of disturbed weather [
1,
41] and follows universal time, globally independent of the measurement position [
1].
However, the contribution of regional and local factors can significantly affect the diurnal variations in the surface electric field in different regions of the Earth. There is a strong relationship between atmospheric aerosols and atmospheric electrical characteristics: air ions sink on aerosol particles, which leads to a decrease in conductivity, and, consequently, the electric field potential gradient should increase. Thus, in the polluted urban environment, the surface values of the potential gradient are higher than those in the countryside and are subject to additional fluctuations due to changes in aerosol concentrations in the boundary layer. This effect has been found in many locations in the world [
2,
6,
9,
42,
43,
44]. Rising smoke plumes from wildland fires [
45], intense dust storms [
46,
47], and eruptive clouds from volcanoes [
48] spreading in the middle and upper troposphere are all factors that act above the boundary layer and contribute to a decrease in the potential gradient near the surface.
Meteorological factors have a special place in the study of atmospheric electricity. They are characterized by greater temporal and spatial variability. Fog, mist, and haze contribute to an increase in the surface value of the potential gradient [
9,
10,
49]. Short-lived (up to several hours) convective clouds, especially cumulonimbus clouds, cause short-term deviations of the potential gradient, both positive and negative [
11,
35,
36,
37,
38,
39,
40]. Mesoscale convective systems and cloudiness associated with atmospheric fronts and tropical cyclones, which are accompanied by strong thunderstorm activity, cause a strong disturbance of the normal atmospheric electric field over long periods of time and space [
50,
51,
52,
53].
Diurnal variations in the potential gradient on fair-weather days recorded in different regions of the globe are generally divided into three types. Diurnal variations having a minimum of about 04 UTC and a maximum of about 19 UTC (as in the case of the Carnegie curve) are Type 1. Variations having two minima, one at ~02 UTC and another at ~10 UTC, and two maxima, one at ~06 UTC and the other at ~19 UTC, belong to Type 2. Diurnal variations with a wide depression centered at ~11 UTC belong to type 3 [
6,
13,
54].
Another quantity characterizing the electrical state of the atmosphere is the electrical conductivity of air, which is more than 90% determined by small air ions [
55]. Air ions play a key role in atmospheric chemistry, taking part, for example, in ion-catalyzed and ion-molecular chemical reactions and in the formation of aerosol particles induced by ions [
56]. The electrical conductivity of air also depends on many factors, both global and local. The formation of ions in the atmosphere (air ionization) is mainly associated with ionizing radiation (gamma radiation) and particle fluxes (alpha, beta, neutrons, etc.). In the surface layer, natural sources of ionizing radiation are, first of all, the spontaneous decay of radionuclides, in particular, radon and its daughter products. In the free atmosphere, with increasing altitude, galactic cosmic rays become the predominant source of ionizing radiation.
At the same time, it should be taken into account that in the troposphere, air ionization significantly depends on the geographical location and meteorological conditions. According to [
57], fluctuations in the ionizing capacity of the environment are due to the dynamics of the mixing layer, soil type and moisture content, meteorological conditions, atmospheric transport, the presence and change in snow cover, and precipitation. At the same time, measurements carried out in Paris [
58] and Shanghai [
59] show that aerosol particles reduce the concentration of small ions. Cloudiness [
60] and fog also lead to a decrease in the concentration of ions. Studies carried out in [
61,
62] showed that seasonal fluctuations in ionization were caused mainly by the presence of various air masses with relatively different chemical compositions.
As can be seen, the electrical state of the atmosphere varies greatly depending on various regional and local factors. Therefore, to fully understand the functioning of the GEC and its connection with modern climate changes, observations and analysis of the variability of atmospheric–electric quantities in different regions of the Earth are necessary.
The variability of atmospheric–electric quantities in electrically undisturbed atmospheric conditions (fair-weather conditions) in Siberia today remains poorly understood. This is especially true of Southern Siberia, which has a complex relief and includes various natural zones and types of landscapes. In this regard, the purpose of this work is to estimate the average values and variability of atmospheric–electric quantities in fair-weather conditions in Southern Siberia.
4. Discussion
The results of our study of the daily cycle of small ions in the territory of Southern Siberia generally coincide with the results of similar studies conducted in other regions [
67,
68]. As in these works, the minimum ion concentrations we observed during the day and the increased concentrations in the evening, with a maximum at night, can be explained by the diurnal variability of radon concentrations and turbulent mixing during the day. These effects were reflected in the results of our observations. So, the observation sites 1 and 4 were located near relatively large lakes (
Figure A1 and
Figure A4) where breeze circulation was observed when, during the day, the wind (an advective transport) moved from the water surface to the land and at night – vice versa (
Figure A10j and
Figure A13j).
Since the main source of small ions on land is radon released from the soil, due to the transfer of “clean” air from the water area, where there is no radon emission, n+ and n− during this period in the surface layer will decrease. In addition, thermal turbulence, more intense in the daytime over land, enhances vertical mixing, which also leads to a “dilution” of the radon concentration in the surface layer and, accordingly, a decrease in the concentration of small ions. When southeastern advection from the mountain ridge at site 1 and western advection from the steppe at site 4 were observed, the ion concentration increased significantly.
As can be seen in
Figure 3, the highest values of
n+ were observed at site 4 in the steppe, located close (about 5 km) to salt lakes, which presumably can influence
n+. Also, increased values of
n+ in the daytime are observed at site 1 in the highlands near the Mongun-Taiga Ridge. In general, there is a similarity in the daily variations in
n+ at all observation sites. The Pearson correlation coefficient for sites 3 and 4 is 0.77, and for sites 1 and 3, it is 0.36 (
Table A5). The highest values of
n− are observed at site 3 in the Tyva depression, and the lowest values—at site 1 in the highlands. As can be seen in
Figure 5, daily variations in
n− at observation sites are weakly consistent with each other. The correlation for sites 1 and 3 is 0.35, for sites 1 and 4—0.30, and for sites 3 and 4—0.33 (
Table A6).
A comparative analysis of the average values of ∇φ at observation sites showed the following. In general, the increase in the absolute altitude above sea level of observation sites coincides with an increase in the average (median) values of ∇φ. A similar relationship was previously noted in the Caucasus [
69] and Tibet [
70]. The values of ∇φ are somewhat different only at site 2 in the Bayan-Tala tract located at the foot of an extended 1500-m mountain ridge. The reduced values here, we believe, are explained by the local influence of the ridge on the bending of the electric field lines. As can be seen in
Figure 7, good agreement between the daily variations in ∇φ is observed between sites 1 and 3, where the correlation is 0.71 (
Table A7), despite the fact that these sites are located in areas with different topography (plateau and depression), at a considerable distance from each other (about 270 km), and at different altitudes above sea level (with a difference of more than 1500 m). The observed high correlation of daily variability is presumably explained by the influence of the Carnegie curve [
1,
10]. The similarity of daily variations in ∇φ is also noted at observation sites 2 and 4 (the correlation is 0.48 (
Table A7)). There is an increase in the values of ∇φ at dawn and sunset at these sites, which is not observed at sites 1 and 3.
Based on the type of daily cycle of ∇φ, observation sites can be divided into two groups:
- (1)
The sites with a daily cycle for typical continental regions, having two maxima and two minima (sites 1 and 3);
- (2)
The sites with a more complex daily cycle due to the strong influence of local factors (sites 2 and 4).
The first group includes observation sites with a relatively dry climate located in open, slightly winding terrain (the central part of the basin, a high mountain plateau). The second group, on the contrary, includes sites with a more humid climate, located in areas with complex terrain (mountain valley, shady slope of a mountain range), as well as near large bodies of water.
The obtained estimates of atmospheric–electric quantities at observation sites, in general, are consistent with estimates of the characteristics of the radiation background at these sites. Thus, high values of
n+ at sites 1 and 4 correspond to high values of γ-radiation dose (
Figure 2,
Figure 3 and
Figure A6). At sites 2 and 3, which are characterized by relatively low
n+ values, the γ-radiation dose is also low. In this case, the distribution of average values of volumetric radon activity at observation sites is the inverse of γ-radiation dose and is in better agreement with the values of
n− than with
n+. The minimum values of radon volumetric activity, as well as
n−, are noted at site 1 and the maximum at site 3 (
Figure 4,
Figure 5 and
Figure A7). A presumable explanation for the noted difference in the average values of volumetric radon activity at observation sites is the different permeability of the soils at the sites. The sandy soil at site 3 facilitates the emission of radon, and the rocky surface at site 1, on the contrary, hinders it. Based on the foregoing, the above-mentioned increase in average values of ∇φ with altitude can presumably be explained by a decrease in radon emission, which is associated with a change in the type of soil with an increase in the absolute altitude of the area. In the daily variation in γ-radiation dose and volumetric activity of radon, as well as in the daily variation in
n+ and
n−, the maximum, in general, occurs at night and early morning hours, and the minimum—in the daytime. Only the daily variation in the volumetric activity of radon at site 1 stands out from this dependence. This is presumably due to the weak emission of radon directly at this site and its transfer from adjacent territories. The daily variation in ∇φ, in general, is opposite to the daily variation in the above values, which is explained by the inverse relationship between the potential gradient and the electrical conductivity of the air, which is determined by
n+ and
n−.
There is also some consistency between atmospheric–electric quantities, the aerosol content in the air, and the transparency of the atmosphere. The maximum values of
PM2.5 and
PM10 in the surface layer (at a height of 1 m) were recorded at site 4, which has the lowest altitude above sea level and is located on a steppe area near salt lakes, and the minimum values were recorded at site 1, located at a high mountain plateau (see
Figure A8). Lower aerosol content was observed at site 2, located at the foot of the mountain range. Atmospheric transparency at a wavelength of 380 nm, on the contrary, was at its maximum at site 1 and minimum at site 4 (
Figure A9). At the same time, a direct relationship was noted between the absolute altitude of the sites and the average values of
CLT380, which is most clearly manifested in the afternoon (13–15 LT). Since the measurements were carried out mainly in clear and partly cloudy weather, the increase in
CLT380 with altitude is mainly due to a decrease in the aerosol content with altitude. The latter should lead to a decrease in the electrical resistance of the atmosphere and an increase in the conduction current from the ionosphere to the Earth’s surface. The noted feature, in general, is consistent with the results obtained, according to which
Jλ in the daytime increases with increasing absolute altitude of the area (
Figure A9).
Next, we will estimate the variability and relationship of hourly average values of atmospheric–electric quantities during the day with the main meteorological quantities (
t,
f,
V,
D),
SI,
CLT380,
PM2.5, and equivalent dose of gamma radiation at each observation site. The average daily variations in these quantities are shown in
Figure A10,
Figure A11,
Figure A12 and
Figure A13, and the results of correlation analysis are presented in
Table A9,
Table A10,
Table A11 and
Table A12.
Basically, at observation sites, the daily variability of n+, n− and ∇φ correlates with the variability of other measured quantities as moderate (R = 0.4–0.6) and strong (R > 0.6). However, there is a weak relationship (R < 0.4) at some sites.
Thus, at site 1, the correlations between n− and ∇φ with PM2.5 are 0.33 and 0.30, respectively. At site 2, we observe a weak connection between ∇φ and V and D (0.45 and 0.42, respectively). At site 3, weak connections are noted between n+ and CLT380 (0.39), n− and t (0.49), n− and CLT380 (0.47), and ∇φ and CLT380 (0.40). At site 4, the correlation is weak between n+ and SI (0.42), n+ and PM2.5 (0.32), n− and CLT380 (0.35), as well as between ∇φ and CLT380 (0.44), V (0.40) and D (0.37), and f (0.33) and SI (0.32).
Finally, we compared the data from our expeditionary measurements of ∇φ with data from other studies conducted, in particular, in mountainous regions. First of all, we compared the average daily variations in ∇φ at our observation sites with the unitary variation in ∇φ (the Carnegie curve). So, the main maxima in daily variations in ∇φ at sites 1 and 3 are observed 9–10 h before the main maximum of the Carnegie curve and at sites 2 and 4—12–13 h before. The secondary maxima observed in daily cycles around 3–4 LT (20–21 UTC) at all four sites coincide with the main maximum of the Carnegie curve. This coincidence is especially clear at site 1 on the high mountain plateau. Since secondary maxima of ∇φ occur in the early morning hours before dawn, we cannot explain their appearance by the influence of local factors at observation sites. We assume that their occurrence is associated with the influence of unitary variation. However, additional research is required to confirm or refute this.
A comparison of daily variations in ∇φ at expedition observation sites with daily variations in ∇φ at stationary observation sites in regions with similar physical–geographical conditions and time zones (from UTC+5 to UTC+8) showed the following. Daily variations in ∇φ at our observation sites, especially in the afternoon hours, are qualitatively similar to the daily variations observed at stations located on the West Siberian Plain and the spurs of the Kuznetsk Alatau [
21], the Tibetan Plateau [
22], and the foothills and slopes of the Himalayas in Northern India [
69] and Pakistan [
70,
71]. At all continental observation sites under good weather conditions, the increase in ∇φ in the daytime and the appearance of the main maximum is caused by radiative heating of the surface, the amplification of convective movements, increased turbulent mixing, and, accordingly, the spatial redistribution of aerosols. Therefore, the formation of the main maximum ∇φ corresponds to the afternoon, when convective–turbulent mixing reaches its maximum. Only according to expeditionary observations, maxima ∇φ occur at 06–09 UTC, and according to stationary observations, at 13–15 UTC. We believe that this difference is due to the fact that stationary observations are carried out in industrial areas, where an increased content of anthropogenic aerosols is recorded, and expeditionary observations were carried out far from sources of aerosol pollution.
5. Conclusions
Using the field measuring data in the southern part of Siberia in the mountain–steppe landscapes of Khakassia and Tyva in July–August 2022, estimates of the general and daily variability of atmospheric electrical quantities under electrically undisturbed atmospheric conditions were obtained.
The maximum values of n+ were noted at the site in the Iyussko-Shirinsky steppe between Belyo and Tus salt lakes in the Khakass-Minusinsk Basin. The maximum values of n– were observed at the site in the Shol tract in the center part of the Tyva depression.
The values of ∇φ tend to increase with altitude and reach a maximum in the highlands. The maximum values of ∇φ were noted in the highlands plateau near the Mongun-Taiga Mountain Massif and Khindiktig-Khol Lake.
The maximum values of n+ during the day at observation sites are mainly observed at night (23–03 LT), and the minimum values are observed during the day at 10–19 LT. At 04–06 and 05–08 LT, a secondary minimum and maximum of n+ are observed, respectively. The daily cycles of n– are similar to n+ but differ from each other at different observation sites.
The main maximum of ∇φ is observed in the afternoon at 13–17 LT, and the main minimum—after midnight at 00–01 LT. In addition to the main extremes of ∇φ, at 03–04 and 05–07 LT, there are secondary maximums and minimums, respectively. An increase in humidity at dawn (sunset) led to an increase in ∇φ.
The diurnal cycles of ∇φ at different observation sites can be conditionally divided into two groups: (1) a diurnal cycle in the form of a double wave; and (2) a daily cycle with a more complex course due to the strong influence of local factors.
The Jλ values at the observation sites varied in the range of 10−12–10−9 A/m2; the maximum of Jλ in the daily variation, as a rule, was observed at night at 23–03 LT, and the minimum during the day at 10–19 LT.