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Airborne particles in snow

Published online by Cambridge University Press:  20 January 2017

Jost Heintzenberg
Affiliation:
Department of Meteorology, Stockholm University, S-10691 Stockholm, Sweden
Markku Rummukainen
Affiliation:
Air Quality Department, Finnish Meteorological Institute, SF-00810 Helsinki, Finland
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Abstract

In a pilot experiment, airborne particles were shown to exist in snow. In newly deposited snow they could be traced down to 17 cm below the surface. With our particle sensor, the snow was ventilated on the level of expected natural ventilation velocities. We show with a simple deposition model that air/snow exchange of airborne particles must be considered in the interpretation of impurities in snow and glacier ice. However, the relative magnitude of ventilation velocity compared to dry-deposition velocities at the surface is of crucial importance for determining total deposition. In particular, in ice sheets with high ventilation velocities, seasonal variations in atmospheric concentrations can be dampened and age distributions of deposited particles need to be considered similarly to the occlusion of gases.

Type
Research Article
Copyright
Copyright © International Glaciological Society 1993

Introduction

It has long been known that air transport occurs in snow. The related exchange of air between the atmosphere and the deposited snow influences the incorporation of gases and particles into glacier ice. Thus, this process needs to be taken into account when relating the concentrations of incorporated trace substances to corresponding atmospheric values. Our knowledge of the air/snow exchange of material is still very limited. Reference BaderBader (1939) found strong air currents in snow. However, no diffusion coefficients could be derived from his data. Reference Schwander, Oeschger and LangwaySchwander (1989) identified three main causes of this transport: horizontal wind above the snow surface, barometric pressure variations and the densification process of the firn. In addition to this, Reference ReuterReuter (1948) has shown that convective mass exchange can be expected in snow with a strong diurnal variation in surface heat balance. In cold firn, on the other hand, Schwander argued that the mixing of air essentially is controled by molecular diffusion. He derived superficial air speeds near the surface of about 10−3 cms−1 from measurements of diffusion coefficients on firn samples in the laboratory. Reference DubrovinDubrovin (1961) found much larger velocities on the order of 1 cm s−1 at the 2 m depth level on the Lazarev Ice Shelf, Antarctica.

Tracer experiments in ambient snow are preferable to indirect estimates of the air exchange via micrometeorological or laboratory experiments. To our knowledge, no airborne tracer experiments had been performed prior to the present study. Profiles of deposited impurities, on the other hand, have been used to investigate air/snow exchange. Reference Gjessing and GjessingGjessing and Gjessing (1973) have determined profiles of major ions and metals down to 1 m snow depth and speculated that wind-pumping was responsible for the measured concentration decrease with depth. To test this hypothesis, Reference GjessingGjessing (1977) artificially ventilated snow samples from a 10 m profile prior to the analysis of deposited impurities. He found that a 1 m snow layer was not an absolute filter for impurities.

The study reported here comprises a pilot field experiment to demonstrate that airborne particles do exist in snow and that it is feasible to quantify their size distribution and the retention profile down to 20 cm below the snow surface. We will focus our attention on particles in the size range which is dominated by one of the major source processes for atmospheric processes. In this so-called accumulation mode (0.–2 μm particle diameter), combustion and condensation processes control particle formation. Furthermore, atmospheric residence times are at a maximum (Reference WhitbyWhitby, 1978). These accumulation-mode particles can be distributed on a global scale. Thus, they are of greatest interest in paleoclimatological studies that build on aerosol particles deposited in the polar ice sheets.

Instrumental

The core of the instrumentation is an optical particle counter (OPC). The instrument was developed by Reference Knollenberg.Knollenberg (1985) and is manufactured by Particle Measurement Systems, Inc., Boulder, Colorado. Nominally, the OPC counts particles in 32 channels between 100 and 7500 nm. For our aerosol experiment we calibrated the instrument with ammonium sulfate particles of known size because (NH4)2SO4 is the commonest material in the atmospheric aerosol below 1000 nm particle radius. Due to rapidly decreasing number concentrations with particle size, very long sampling times are necessary for sizes larger than about 2000 nm. Therefore, and because of the consideration about particle source processes and atmospheric residence times mentioned above, we limited our experiment to particle sizes up to 2000 nm. The volumetric sample flow of the instrument is Fopc = l cm3 s−1.

The microcomputer-based data-acquisition program for the OPC allows us to record time series of particle-size distributions with a choice of averaging times between 1 and 64000 s. The program also reads the mass flow of sample air through the sensor in order to calculate absolute particle concentrations. From the raw counts in the first 22 channels of the OPC, number concentrations in the form of dN/d log dp (units in cm−3) are calculated. By assuming that the particles are spherical, this number-size distribution is used to calculate volume-size distribution as dV/d log dp (as μm−3 cm−3). The first and third moments of the size distributions yield total number Ν and total volume V.

In order to determine particle profiles, this sensor was connected via a plenum and ten magnetic valves to ten identical inlets which could be arranged in any geometric configuration. To minimize particle losses on the way from the intake to the sensor (discussed in detail below), the length of the sample lines had to be kept to a minimum. Consequently, the plenum and valves had to be placed outdoors, close to the sampling site. No commercial valves were available that:

  • (a) had small dead air volumes to minimize residence times,

  • (b) had sufficiently large openings to minimize particle losses, and

  • (c) worked at temperatures down to −20 °C.

Thus, we built our own valves from small spring-loaded electromagnets and short silicone tubes which were pinched shut in the off position of the magnets. The valves were connected to the intake points by stainless steel tubes of internal diameter 1.05 mm having identical 2 m lengths. The same tubing was used in the star connection to the plenum and from the plenum to the OPC (2.8 m).

A controler opened the valves in cyclical order for preset lengths of time. It also sent a valve identification signal to the parallel port of the personal computer which ran the OPC. For simplicity of design, controler and OPC were not synchronized. However, the OPC software terminated any ongoing averaging process whenever the valve position changed in order to avoid mixed data from two inlets. A schematic picture of the total set-up is given in Figure 1.

Fig. 1. Schematic picture of the electrical set-up of the particle profiler OPC = PMS ASASPX–100 optical particle counter. PC = lap-top personal computer; PIO = parallel input-output port; PL = 9 cm3 sample plenum; RS232 = serial port; V0–V9 = magnetic valves.

A prerequisite for the determination of profiles of particle-size distributions with the above set-up is the quantification of particle losses as a function of their size in the different branches of the system. This loss measurement was achieved by comparing polydisperse particle-size distributions in laboratory air and in the field measured with and without the lines to be calibrated. Because of the system design, loss differences between the ten inlet lines were insignificant. Thus, the field results given below are corrected with one overall loss-correction function. The measured transmissions have been approximated by a third-order polynomial function. Due to sedimentation in the sample lines, transmission decreases rapidly with particle size above 2 μm diameter. This fact is another reason for terminating the study at the upper end of the accumulation mode.

The Field Experiment

In March 1991, we conducted an exploratory field experiment near Ny-Ȧlesund, Vestspitsbergen (79 ° N, 12 °E) to test the snow profiler. The instruments were set up in a field station located about 1 km from the main research station. A c. 20 cm deep pit was dug in a compact old snow pile on the upwind side of the house. The inlets were set up as shown schematically in Figure 2. They were supported and spaced by Δz = 4 cm with a wooden stick. The opening of the pit had an area Apit of about 710 cm2. With the volumetric flow Fopc of the sensor, a snow-covered opening in an otherwise closed pit of this size yields a face velocity u0

which is on the order of the superficial air speed proposed by Reference Schwander, Oeschger and LangwaySchwander (1989) for the ventilation in snow.

Fig. 2. Schematic picture of the particle profiler in the field experiment in Ny-Ȧlesund, Vestspitsbergen. Δz= 4 cm. All ten intakes have the same length. See Figure 1 for further details.

From 16 to 21 March, ambient conditions allowed the recording of profiles. However, the air intakes did not become snow-covered before 20 March. The next day the experiment had to be terminated because freezing rain covered the outdoor instruments and closed off the inlets from the ambient air. Most of the time the system was run with a 2 min average time per size distribution of the OPC and 10 min sampling time per valve. The results of valve zero were discarded because they showed some cross-talk due to valve 9 not closing completely. It should be noted, though, that this interference was on the order of 1/1000 of thevalue for valve 9 and that it was not noticeable in the next higher channel (number 1).

Results and Discussion

A first overview of the results can be found in Figure 3 which gives isolines of corrected number concentrations at the nine intakes as a function of time. The graph shows clearly that on 20 March around 0300 h snowfall started covering the lowest intakes. As is common in polar regions, much of the snow deposit was due to wind-blown snow settling in the pit. At about 0800 h, the deposition process stopped and particle profiles stabilized at about 1000 h. At this time, inlets 1 through 5 were snow-covered, 5 being about 1 cm below the surface while intakes 6 through 9 sampled air above the snow surface. With the exception of a particle intrusion around 1600 h, they remained relatively stable until 2200 h. Soon after, freezing rain started to influence sampling conditions. Consequently, we chose the period 1000–2200 h for the detailed study of average profiles.

Fig. 3. Isolines of number concentrations (cm−3) of airborne particles in and above the surface of a small snow-filled pit. The x-axis is divided in local time of 19 and 20 March at Ny-Ȧlesund, Vestspitsbergen.

In Figure 4 average profiles of Ν and V are presented. They have been calculated relative to the corresponding values in air above the snow (averaged over intakes 6–9). At 1 cm below the snow surface, about 40% of the average particle number and volume for the layers 3–15 cm above the snow were left. This ratio decreases approximately exponentially down to 13 cm below the surface where about 1% of the air concentrations are present in the pores of the snow. Concentrations at the deepest usable intake (17 cm depth) were much lower than an exponential decay would predict. We attribute this to the proximity of the bottom of the pit where ventilation was increasingly obstructed by the closely packed old surrounding snow.

Fig. 4. Average relative depth profiles of airborne total number and total volume of particles in the diameter range 0.1 ≤ dp ≤ 2μm. Concentrations are normalized to the average corresponding values in the four valves above the snow surface. The error bars show 1 standard deviation about the mean.

The increasing uncertainty of the profiles with depth is due to decreasing particle concentrations which lead to increasing statistical errors in the OPC.

The similarity of the profiles for N and V is not self-evident. The number-size distribution is weighted by when deriving volume- (or mass-) size distributions and subsequent integrals. Thus, more weight is put on larger particles in the total volume compared to N. As will be discussed below, particle retention in snow is size-dependent. However, the profiles for N and V are essentially identical. A look at the volume-size distribution as a function of depth indicates why this is so. These results are plotted in Figure 5 together with average air data. There is one major peak of the volume-size distribution around 350 nm and a minor contribution at a size of 1000nm and above. This finding is typical for aerosols in polar regions with only minor sources of crustal material and sea salt (Reference HeintzenbergHeintzenberg, 1980). Around the peak size of these distributions, the deposition processes for particles is at a minimum. Thus, atmospheric ageing processes tend to yield such distributions in remote areas. As a consequence of this near-monodisperse aerosol, the number- and volume-size distributions do not differ markedly and their respective depth profiles are very similar.

Fig. 5. Average profile of volume-size distributions given as μm3 cm−3 in air and at snow depths 1, 5, 9 and 13 cm. Error bars mark 1 standard deviation about the mean. At 13 cm depth, the error bars of the channels between 400 and 600 nm are larger than the frame of the graph (170, 190 and 160%, respectively).

There is a further consequence of the shape of the distribution and the location of its peak size. Because the effectiveness of the deposition processes increases towards smaller and larger sizes than the peak shown here, we would expect the distribution to become narrower with depth. Indeed, the half-width of the volume distributions as shown in Figure 5 decreases linearly from 155nm at 1cm to 143 nm at 13 cm depth with a further strong decrease to 130nm at 17 cm (not shown in Figure 5).

Classical filter theory (Reference FuchsFuchs, 1964) can be used to describe the decrease of the particle concentration c with depth c in a homogeneously filtering snow. We define a retention coefficient a in Equation (1)

(1)

This coefficient α is size-dependent because several size-dependent retention processes act on the particles. The total particle retention (1 — c/c0)T can be written as the sum of the effects of diffusion (D), impact (I) and interception (R)

(2)

According to Reference FuchsFuchs (1964), an interaction term (IR), between impact and interception, needs to be taken into account. The superposition of the terms in Equation (2) yields a size-dependence of (1 — c/c0)T leading from a value of 1 at very small sizes via a minimum between 100 and l000nm to another asymptotic limit of 1 at large sizes. For fibrous filters, Reference Lee and LiuLee and Liu (1980) have treated the most penetrating size as a function of filter parameters both theoretically and experimentally. In our pilot experiment, we did not have sufficient information available to apply a detailed filter model to the measured profiles. However, our results can be used to quantify α as a function of particle size in the most critical range between 100 and 1000 nm.

We calculated average slopes α(dp) for the line in Equation (1) for the three Δz intervals from 1 to 13 cm depth. Standard deviations of the average slopes were determined as a measure of the uncertainty in the profiles. Above 500 nm diameter, particle concentrations were too low to allow the determination of α at all depths. In order to derive information on large particles, we calculated average depth profiles of all channels above 500 nm and ascribed them to the geometric mean channel of 960 nm. The results for α(dp) are shown in Figure 6.

Fig. 6. Size-dependence of the retention coefficient α(dp) in cm−l between 1 and 13cm snow depth. All data above 500 nm have been collected in one average channel at the geometric mean size.

The shape of the curve and the location of the minimum value of α(dp) is in good agreement with general filter behavior as discussed in Reference Lee and LiuLee and Liu (1980). At the minimum efficiency size the 1/e depth is about 4cm.The change in uncertainty with particle size simply reflects the fact that absolute number-size distributions have their maximum at about 200 nm diameter. The results presented in Figure 6 provide the explanation for the sharpening of the size distributions with depth as shown in Figure 5.

Model Calculations

We incorporated our results into a simple deposition model in order to give rough estimates of the effect of the penetration of airborne particles into snow on the distribution of impurities in the snowpack. In this time-dependent model, atmospheric particle concentrations (units in cm−3) either have a constant value Cav or Cav and a superimposed annual periodic forcing of the form

(3)

where A is amplitude of the annual wave, Δt is time step and n is total number of layers. For the present purpose, the period Τ of the forcing is held fixed at 1 year.

Two deposition processes add material to each deposited layer with a thickness Δd = RΔt. For the present study, a time-independent accumulation rate R in cm year−1 is used. At the present snow surface, dry deposition with a velocity ud takes place, yielding at each time step iΔt the amount of deposited material multiplied by the product of the dry-deposition flux (per unit of surface) and the time step Δt

(4)

Ventilation with a speed uv takes place in the accumulating snow layer. The amount which is deposited at each depth d = RiΔt at the time step Δt is calculated by taking the difference of the total amount deposited down to d + Q.5Δd and that down to d – 0.5Δd:

In the present model, the filtering effect of the snow is constant with depth and is described by the retention coefficient a. Re-arranging and replacing Δd by RΔt yields

(5)

After the evolution of n time steps, corresponding to the accumulation of a snow layer with a total depth of RnΔt, the total amount of deposited material at any depth di = RiΔt is calculated by the sum of the surface deposition at the time that the layer was formed

plus the corresponding sums of ventilation terms according to Equation (5)

By changing the essential parameters of the model A, α, R, ud and uv , we explored the effect of ventilation on the distribution of deposited material in a homogeneous snowpack. In the first case, we kept air concentrations constant with time and varied the ratio of velocities uv/ud for the minimum retention coefficient amin = 0.27, which we had measured at about 350 nm. Since the driving forces in the two processes are given by uv and ud , it is their ratio that determines the relative importance of ventilation for the deposition of material in snow. As indicated in the introduction, very little is known about the relative magnitude of uv and ud. For dry-deposition, velocities ud to snow-surface values between 0.01 and 0.2 cm s−1 have been reported (Reference DeWalle, Jones and Orville-ThomasDeWalle, 1987; Reference Davidson, Harrington, Stephenson, Small, Boscoe and GandleyDavidson and others, 1989), while values between 0.001 and 1 have been discussed for uv (Reference DubrovinDubrovin, 1961; Reference Schwander, Oeschger and LangwaySchwander, 1989). The results which are independent of R are given in Figure 7. A 50% ventilation fraction is reached when both velocities are roughly equal. Because of the limited information available on the deposition processes on and in snow, the results in Figure 7 may give a rough estimate of the importance of ventilation in different settings.

Fig. 7. Relative magnitude of ventilation (v/(d + v)) in the two-process deposition as a function of uv/ud for the minimum measured retention coefficient αmin = 0.27.

Naturally, deposition by ventilation also depends on the retention coefficient α We explored this dependency by modeling the deposition processes for periodically varying particle concentrations in air according to Equation (1). In the case of annual variations, the accumulation rate R determines the time (or depth) at which deposition conditions stabilize. All results in Figure 8 have been calculated for that stable state (and varying absolute depths). In order to quantify the effect of ventilation on the profile of deposited material, we calculated the ratio of annual amplitudes in deposited concentrations with and without ventilation. This ratio Ad+v/Ad is plotted for different velocity ratios and retention coefficients in Figure 8. For all velocity ratios, the shape of the α dependencies are the same. At very high α values, snow ventilation dampens annual variations strongly because of the high retention effect. At very low α values, on the other hand, the dampening effect is also high because particles ventilated into the snow penetrate very deep. The level difference of the three curves in Figure 8 are in accordance with Figure 7. It is interesting to see in Figure 8 that there are deposition conditions conceivable where annual variations in the air are dampened to about 90% (α = 0.06, uv = 10ud).

Fig. 8. The ratio of annual amplitude in deposited material with and without snow ventilation as a function of retention coefficient a and of the relative magnitude of ventilation speed uv versus surface deposition velocity ud

Conclusions

The short pilot experiment described above was not intended to provide a comprehensive picture of airborne particles in snow. However, a number of conclusions can be drawn which are important for environmental and paleoclimatological studies. Airborne particles can be used as tracers in newly deposited snow down to 17 cm below the surface. With a suitable particle sensor, snow ventilation at the level of expected natural values can be measured. The air/snow exchange of these particles must be considered in the interpretation of impurities in snow and glacier ice. However, the relative magnitude of ventilation velocity compared to dry-deposition velocities at the surface is of crucial importance for the magnitude of the ventilation effect on total deposition. In particular, in ice sheets with high ventilation velocities, seasonal variations in atmospheric concentrations will be leveled out and the age distributions of deposited particles need to be considered as in the occlusion of gases. With the help of modern theory for fibrous filters and some additional information derived for future experiments such as the pressure drop from the surface to the sampling points and snow density, it should be possible to derive a comprehensive description of the filtration properties of snow.

Acknowledgements

We should like to thank J. Ogren for providing us with the software to run the particle counter with a PC, to read the position of the valve controler, and to do the primary data reduction. L. Bäcklin designed and built the valves and the controler which worked while snow-covered at −15 °C. S.-Ȧ. Odh’s help with the set-up inthe laboratory and in the field is gratefully acknowledged. S. Haarala kindly provided the isoline plot in Figure 3.

The accuracy of references in the text and in this list is the responsibility of the authors, to whom queries should be addressed.

References

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Figure 0

Fig. 1. Schematic picture of the electrical set-up of the particle profiler OPC = PMS ASASPX–100 optical particle counter. PC = lap-top personal computer; PIO = parallel input-output port; PL = 9 cm3 sample plenum; RS232 = serial port; V0–V9 = magnetic valves.

Figure 1

Fig. 2. Schematic picture of the particle profiler in the field experiment in Ny-Ȧlesund, Vestspitsbergen. Δz= 4 cm. All ten intakes have the same length. See Figure 1 for further details.

Figure 2

Fig. 3. Isolines of number concentrations (cm−3) of airborne particles in and above the surface of a small snow-filled pit. The x-axis is divided in local time of 19 and 20 March at Ny-Ȧlesund, Vestspitsbergen.

Figure 3

Fig. 4. Average relative depth profiles of airborne total number and total volume of particles in the diameter range 0.1 ≤ dp ≤ 2μm. Concentrations are normalized to the average corresponding values in the four valves above the snow surface. The error bars show 1 standard deviation about the mean.

Figure 4

Fig. 5. Average profile of volume-size distributions given as μm3 cm−3 in air and at snow depths 1, 5, 9 and 13 cm. Error bars mark 1 standard deviation about the mean. At 13 cm depth, the error bars of the channels between 400 and 600 nm are larger than the frame of the graph (170, 190 and 160%, respectively).

Figure 5

Fig. 6. Size-dependence of the retention coefficient α(dp) in cm−l between 1 and 13cm snow depth. All data above 500 nm have been collected in one average channel at the geometric mean size.

Figure 6

Fig. 7. Relative magnitude of ventilation (v/(d + v)) in the two-process deposition as a function of uv/ud for the minimum measured retention coefficient αmin = 0.27.

Figure 7

Fig. 8. The ratio of annual amplitude in deposited material with and without snow ventilation as a function of retention coefficient a and of the relative magnitude of ventilation speed uv versus surface deposition velocity ud