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Self-Similarity of Wind Profiles in Blowing Snow Allows Outdoor Modeling

Published online by Cambridge University Press:  20 January 2017

Ronald D. Tabler*
Affiliation:
Rocky Mountain Forest and Range Experiment Station, U.S. Department of Agriculture Forest Service, Laramie, Wyoming 82070, U.S.A.
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Abstract

Drifts formed by snow fences appear to be scaled in proportion to fence height over a height range of nearly two orders of magnitude. This paper examines natural scaling in terms of commonly accepted similitude criteria. It is suggested that requirements for dynamic similarity of flow fields are satisfied over a period of time because surface roughness height z0 varies approximately as the square of shear velocity u2 for saltating flows in air. This is demonstrated by intensive measurements of wind profiles over snow and ice surfaces. Satisfaction of similitude requirements for scaling particle motion is less certain, although natural sorting may effectively scale particles over a restricted range of wind speeds. Natural scaling of drifts suggests snow erosion and deposition can be studied with reduced-scale models on smooth surfaces outdoors. The feasibility of this technique is demonstrated by results from 1 : 30 scale models of 1.8 and 3.8 m snow fences on both level lake ice and irregular terrain constructed from compacted snow.

Résumé

Résumé

Les congères formées par les barrières à neige semblant être dimensionnées proportionnellement à la hauteur de la barrière sur une large gamme de hauteurs s’étalant sur près de deux ordres de grandeur. Cet article examine les dimensions observées d’après les critères de similitude généralement admis. On fait l’hypothèse que les exigences pour une similitude dynamique sont satisiaites sur une période de temps puisque la hauteur z0 de la rugosité de surface varie approximativement comme le carré de la vitesse de cisaillement u2 de l’écoulement de saltation dans l’air. Ceci est démontré par de nombreuses mesures de profils de vent sur les surfaces de neige et glace. La satisfaction des exigences de la similitude pour les paramètres du mouvement des particules est moins évidente bien qu’un tri naturel puisse effectivement déterminer la taille des particules dans une gamme restreinte dé vitesses de vent. Le dimensionnement naturel des congères fait penser que l’érosion et le dépôt de la neige peut être étudié sur modèle réduit sur des surfaces lisses en plein air. La “faisabilité” de cette technique est démontrée par les résultats obtenus sur des modèles au 1/30 de barrières à neige de 1,8 et 3,8 m installées d'une part sur de la glace de lac horizontale et d’autre part sur neige compactée en terrain irrégulier.

Zusammenfassung

Zusammenfassung

Die Dimensionen von Driftablagerungen an Schneezäunen scheinen in Proportion zur Zaunhöhe zu stehen, und zwar über einen Höhenberetch von fast zwei Grössenordnungen. Diese Arbeit untersucht die Möglichkeit von Modellversuchen in der freien Natur unter Berücksichtigung der gewöhnlich als gültig angenommenen Ähnlichkcits- kritericn. Es wird angenommen, dass die Voraussetzungen für die dynamische Ähnlichkeit von Stromfeldern über einen längeren Zeitabschnitt erfüllt sind, da die Höhe der Oberflächenrauhigkeit z0 sich annähernd mit dem Quadrat der Schergeschwindigkeit u2 für sprungveise Transport ändert. Dies wird durch intensive Messungen von Windprofilen über Schnee– und Eisflächen gezeigt. Die Erfüllung der Ähnlichkeitsforderungen bei Modellversuchen zur Bewegung von Teilchen ist weniger gesichert, obwoht die natürliche Sortierung den Grössenbereich der Teilchen über einen beschränkten Bereich von Windgeschwindigkeiten wirksam imitieren dürfte. Die natürliche Driftbemessung lässt erwarten, dass Schneeerosion und -ablagerung mit masstäblich verkleinerten Modellen auf glatten Oberflächen im Freien untersucht werden kann Die Anwendbarkeit dieser Technik wird durch Ergebnisse an Modellen von 1,8 und 3,8 m hohen Schneezäunen un Masstab 1 : 30 sowohl über ebenem Seeeis wie über unregelmässigem Gelände, hergestellt aus kompaktem schnee, erwiesen.

Type
Research Article
Copyright
Copyright © The Author(s) 1980 

Introduction

“Similarity of flow phenomena not only occurs between a prototype and its model but also may exist between various natural phenomena if certain laws of similarity are satisfied” (Reference VennardVennard, 1974).

Studies of drifts formed by snow fences and other objects indicate that drift geometry is scaled to barrier height for heights from 0.8 to 4 m (Reference TablerTabler, 1980) and this leads one to consider the use of reduced-scale models outdoors in the study of snow deposition and erosion. This technique could circumvent many of the well-known problems associated with simulating snow in wind-tunnel and water-flume modeling.

In attempting to explain proportionality of snow-drifts in terms of commonly accepted similitude requirements, it became apparent that wind profiles under conditions of blowing snow are essentially “self-similar”. “Self-similarity” is said to exist if similitude requirements are met simultaneously between two parts of the same flow field, or if similitude exists between complete flow patterns at two different times (Reference HoltHolt, 1961).

The field measurements of wind profiles and small-scale drifts reported in this paper Support the hypothesis of self-similarity for saltation flows in air, and demonstrate the possibility for outdoor model studies.

Similitude Requirements

In this section, an attempt will be made to show how similitude requirements for modeling blowing snow might be fulfilled under natural conditions

For true, quantitative scaling of erosion and deposition features associated with wind-transported snow, models must be scaled to ensure geometric, kinematic, and dynamic similitude. Geometric similarity exists if all dimensions of the model are geometrically scaled with the prototype, so that model and prototype have the same shape. Kinematic similarity requires ratios of all corresponding velocities and accelerations to be the same throughout the flow, and dynamic similarity requires ratios of all pertinent forces to be matched. These requirements are described in the classical presentation by Reference LanghaarLanghaar (1951).

Simulation of snow transport, erosion, and deposition phenomena also requires scaling of particle trajectories and snow concentration profiles. The physical processes involved are complex, and it is not yet possible to specify on theoretical grounds the necessary and sufficient scaling requirements. A variety of scaling criteria have been proposed in the literature, most of which have been derived from the equations of motion for saltating or “suspended” particles. Recent assessments of similitude requirements for modeling snow transport include those by Reference MellorMellor (1965), Reference OdarOdar (1965), Reference DyuninDyunin (1967), Reference CalkinsCalkins (1975), Reference KindKind (1976), Reference WuebbenWuebben (1978), and Iversen (1979, 1980). We will now see how some of the more generally recognized criteria may be met under natural conditions.

Requirements for similarity of wind profiles

The wind profile for fully rough, turbulent flow with neutral stability is given by

(1)

where u is mean horizontal wind speed at height z above the surface, z0 is the roughness height (z at u = 0), u is the shear velocity (u =

(τ/ρ), where τ is shear stress and ρ is air density), and the coefficient 2.5 is the reciprocal of von Kármán’s constant, here assumed to be 0.4. Measurements by Reference BuddBudd and others (1966) and Reference LiljequistLiljequist (1957) demonstrate convincingly that Equation (1) adequately describes the wind profile at heights greater than 5 cm under blowing snow conditions. A basic premise developed in the following discussion is that the saltation layer allows surface roughness to vary as the square of shear velocity, providing a mechanism for self-similarity of wind profiles.

For saltating flows, z0 cannot be interpreted as the true physical height at which u=0, but rather as an index to effective surface roughness. Reference ZinggZingg’s (1953) wind-speed measurements within the saltation layer in blowing sand suggested a departure from the logarithmic profile below the 1 cm height, with measured velocities significantly greater than downward extrapolation of the upper profile would predict. Zingg attributed this to momentum transfer by saltating particles.

The basic requirement for dynamic similarity, with or without snow transport, is that of matching of the Froude numbers (ratio of inertial and gravitational forces), so that

(2)

where U is a reference velocity for the flow field, g is gravitational acceleration, L is the characteristic reference length, or dimension, used to define the geometric scale, and subscripts m and p refer to model and prototype values, respectively.

For flows transporting solid particles, the “densimetric” Froude number (Reference WuebbenWuebben, 1978) is usually substituted for Equation (2) to account for possible differences in the ratio of particle-fluid densities. For the natural conditions under consideration, the densimetric Fronde number reduces to Equation (2), and g is essentially the same in model and prototype, so that the scaling ratio becomes

(3)

For model and prototype flows to have kinematic similarity, both roughness heights z0 and shear velocities u in Equation (1) must be scaled so that

(4)

Over natural surfaces composed of rigid roughness elements, z0 is essentially independent of wind speed for fully rough flow (Reference SuttonSutton, 1953, p. 233), so that two wind profiles over the same surface cannot be exactly scaled both kinematically and dynamically, although similitude requirements may be approximately met over a wide range of heights and wind speeds. For the case of blowing snow or sand, however, the requirements of Equation (4) are more closely met because z0 increases with wind speed as a result of the surface roughness generated by the saltating particles. Reference BagnoldBagnold (1941) showed that the fluid momentum loss associated with saltating particles was proportional to u2, and Reference OwenOwen (1964) reasoned that since maximum particle trajectory height is approximately proportional to u2, z0 should also vary as the square of shear velocity. Letting A represent the coefficient of proportionality and substituting Au2 for z0, Equation (1) can be written

(5a)

where

(5b)

Owen empirically determined D to be 9.7, a value based on published data for sand and soil transport.

Reference RadokRadok (1968) was the first to recognize the significance of Owen’s hypothesis for snow transport phenomena, and he effectively demonstrated the existence of self-similarity using the Byrd Station data. Reference KindKind (1976) later showed Ōura’s data for blowing snow to be in general agreement with Equation (5a) and Owen’s value for D.

Although differences of opinion may exist regarding Owen’s assumptions in deriving Equation (5a), particularly with respect to the importance of rotation-induced lift of saltating particles (Reference White and SchulzWhite and Schulz, 1977), empirical evidence suggests roughness height is at least approximately proportional to the square of shear velocity for fully rough, saltating flows. Although it can be argued that the range of ufor published data is too restricted to provide a conclusive empirical test of the functional form (a linear relationship fits the author’s data nearly as well), it suffices to note that the variation of z0 with u is sufficient to meet similitude requirements of Equation (4), helping to explain why snow-drifts behind objects are scaled in proportion to object height. As an example, flow past a snow fence 1 m in height in a wind with u= 25 cm/s (the approximate threshold for movement of fresh snow particles) would be similar to that past a 4m fence at u = 50 cm/s, or a 10 m fence at u = 79 cm/s, provided, of course, that the fences were geometrically scaled in all dimensions.

The similitude requirements of Equation (4) obviously cannot be met instantaneously, but a range of heights would be effectively scaled over a period of time which would depend on the variation in wind speed. A wind characterized by a mean 10 m speed of 16 m/s and a 50% guest factor, for example, would vary from 8 to 24 m/s over a period of five minutes, implying a natural scaling range of nearly one order of magnitude.

Scaling of particle trajectories

Reference DyuninDyunin (1967) states that, although it is possible to simulate fully-developed drift shapes without meeting all particle scaling criteria, modeling the dynamics of snow deposition such as accumulation rates and pre-equilibrium drift shapes requires scaling of particle trajectories (and thus scaling of snow concentration profiles).

It appears difficult to specify realistic similitude criteria because of the wide range of natural surface conditions that are known to exist, and also because so little is actually known about the size distribution, interparticle forces, mechanics of detachment, and trajectories of snow particles. As a result, cohesive (bonding) forces have not been considered in published assessments of modeling criteria. Reference SchmidtSchmidt (1980) has shown (hat interparticle forces cannot be dismissed as negligible. His calculations indicate, for example, that cohesive forces are so much greater than particle weights that impact threshold shear velocity, as defined by Reference BagnoldBagnold (1941), is nearly independent of particle diameter. Although criteria for modeling non-cohesive particles are thus of questionable applicability for the case of snow transport, for completeness we will briefly discuss their inferences for natural dynamic scaling.

To simulate particle trajectories either explicitly or implicitly, it is generally agreed that W/U and u⋆ i /U must be matched, where W is the particle terminal velocity and u⋆1 is the impact threshold shear velocity required to sustain particle motion (Reference KindKind, 1976). It has been argued that for non-cohesive particles, these requirements should be sufficient and they imply the necessary scaling for particle diameter. Intuitively, it is easy to visualize a natural mechanism that might allow these conditions to be met for the case of a non-uniform distribution of particle sizes, such as exists for blowing snow. At moderate wind speeds, a natural sorting takes place such that the predominant size of saltating particles is determined by the prevailing shear stress. This process is particularly evident when migrating snow ridges or dunes form under conditions of relatively low wind speeds and aged snow, resulting in a continuous sorting process as coarse grains are forced up the windward side by the impact of smaller saltating grains.

For a non-uniform distribution of particle sizes, it would seem reasonable to replace u⋆iwith an analogous term for the maximum particle diameter entering saltation u⋆s. u⋆s can vary with u only over the range of available particle sizes, and the domain in which values are matched is thus determined by the relationship between u⋆s and particle diameter. For conditions of fully rough flow, Reference BagnoldBagnold (1941), Reference ZinggZingg (1953), and others have found u⋆i α d. As has already been pointed out, this may not be true for bonded particles and it is uncertain if a similar relationship would exist for u⋆s.

Particles smaller than a certain limit might be expected to become suspended in the air flow and not exhibit characteristic saltation trajectories. Reference IversenIversen (1979) proposes this limit as that where W = u⋆i, which the author has calculated from Iversen’s equations to be about 70 µm, for snow particles. This order is substantiated by the distribution of particle sizes at 3 cm above the snow surface reported by Reference BuddBudd (1966), which shows an absence of particles smaller than about 75 pm, with about 95% of the particles between 100 and 300 µm. Since W is approximately proportional to diameter over the range 100 to 1000 µm, if u⋆s were proportional to the square root of particle diameter, the W/u ratios would not he scaled. Budd’Reference Budds (1966) data indicated, however, that the relationship between W and the 10 m wind speed is nearly linear at heights close to the surface, suggesting similarity requirements for terminal velocity may be essentially fulfilled under natural conditions.

Given the presence of saltating particles, Reference White and SchulzWhite and Schulz (1977) maintain that it is reasonable to assume fully rough flow even though roughness Reynolds numbers fall in the transition regime as defined by commonly used criteria (Reference SuttonSutton, 1953): Smooth flow:

(6a)
(6b)

Fully rough flow

(6c)
(6d)

where k is the effective height of the surface roughness elements and v is kinematic viscosity. These limits are not clearly defined, however, and Reference KindKind (1976) concludes that viscosity effects should be small in saltation flows provided

(7)

This condition, which Kind proposes as a modeling requirement, is met if u is at and above threshold values observed in the field (≥23 cm/s).

In summary, all requirements appear to be met for the self-similarity of wind profiles during snow transport. The scaling of particle trajectories is much less certain, but may be at least partially accomplished through natural sorting processes over the range of the wind speeds associated with migrating snow ridges or dunes. Although additional study will be needed to evaluate requirements for particle scaling, an obvious argument for self-similiarity of concentration profiles can be based on the observation that mass flux of blowing snow in the first 2 m above the surface is proportional to U 3 (Reference DyuninDyunin, 1954; Reference KobayashiKobayashi, 1970). Snow concentration would therefore be proportional to U 2, implying concentration profiles in the lower layers would be scaled given the requirements of Equation (4).

Field experiments

Wind profiles were measured over a frozen lake during a continuous study from 27 December 1978 to 16 February 1979 in order to test the hypothesis that z0 varies with u2 so as to provide natural dynamic scaling of wind profiles under blowing snow conditions.

Snow accumulation behind 1/30 scale models of 1.8 and 3.8 in snow fences was measured under several conditions to provide additional tests of natural scaling, to confirm modeling criteria, and to demonstrate the feasibility of outdoor modeling. These models were run on flat lake ice, as well as on scaled “terrain” constructed from compacted snow.

Study area

All studies were conducted at Diamond Lake in south-east Wyoming at lat, 41° 37’ N., long. 106° 05’ W., and elevation 2 240 m. The lake is 80 ha (800 000 m2) in area and is surrounded by gently rolling hills covered with low-growing brush and grass. The site was selected for its wind and uniform up-wind terrain; it lies about 10 km down-wind from the foothills of a 3 000 to 3 700 m mountain range. Air temperatures during the study ranged from 0 to -40°C and averaged about -10°C during periods of blowing snow.

The portable mast supporting the sensors was located 380 In from the up-wind shore in the direction of the prevailing wind.

Instrumentation

Cup-type a.c. generating anemometers, constructed of a light-weight high-impact plastic, were installed at heights about 10, 20, 40, 80, 160, 320, 500, and 1 000 cm above the ice surface. Both the output frequency and amplitude of these instruments are linearly related to wind speed, with 60 Hz corresponding to 45.8 m/s. The swept diameter of the rotor is 19 cm, threshold wind speed is about 1 m/s, and dynamic response is 0 to 18 m/s in 0.45 s.

Multiplexed counting circuits, designed by Dr R. A. Schmidt, were used to measure mean frequency output simultaneously from the eight anemometers. Thermistor temperature sensors, calibrated to within approximately ±0.02 deg, were also installed at each anemometer level.

An electronic calculator with a 23 kbyte memory served as the system controller for data acquisition and also permitted on-line analysis of wind and temperature profiles so that any changes could be correlated with visual observation of surface conditions. Data were also recorded on a magnetic disk. Other components of the calculator-controlled system included an X—ϓ plotter, impact printer, digital voltmeter, and clock. This equipment was housed in a van parked on the lake shore about 150 m from the mast, in a direction perpendicular to the prevailing wind.

The basic counting interval for wind-speed measurement was 5 min, and all data presented here are five-minute averages. The accumulation of counts over several successive intervals did not significantly reduce the sums of squares of deviations from fitted profiles.

The large number of profiles collected (1579) allowed us to restrict analyses reported in this paper to conditions of neutral stability where diabatic corrections were not required.

Displacement heights were determined using the method proposed by Reference StearnsStearns (1970), but inclusion of this parameter in the logarithmic profile equation significantly increased the variance in the relationship between z0 and u without significantly changing regression estimates. Since it was usually possible to measure instrument heights accurately on the lake surface, the displacement height was assumed equal to zero in the analyses reported here.

Models

The snow-fence design modeled in these experiments was that of the Wyoming Highway Department standard design described by Reference TablerTabler (1974). Prototype dimensions include 2.5 cm thick by 15 cm wide horizontal slats separated by 15 cm spaces, a bottom gap of approximately 0.1H (where H is vertical fence height), a 15° inclination down-wind, and a 5 m panel length.

Models of these fences were constructed from copper-sheathed printed-circuit board or balsa wood, to about a 1/30 scale (Fig. 1). Actual models of heights 5.5 and 12.4 cm were scaled in all dimensions to their 1.8 and 3.8 m prototypes. Magnetic strips glued to the base of the models were used to fasten them to thin steel plates placed on the ice. All models were at least 30H in length to ensure the absence of end-effects in the center of the drift where depths were measured (Reference TablerTabler, 1974).

Fig. 1. 1/30 scale model snow fences on Diamond Lake, 30 January 1979. A portion of the 10 m wind-profile mast can be seen in the background.

A 1/30 scale model was also constructed of a terrain section at mile 253.4 on Wyoming’s Interstate Highway 80. This model was 23 m long in the direction of the wind, about 20 m wide, and was constructed from compacted snow. The surface was made as smooth as possible by troweling, and was stabilized by spraying the completed model lightly with a water and dye solution. Snow accumulation was measured both with and without snow fences, which were installed in the same relative locations as at the prototype site.

Results

Wind-profile parameters

As shown in Figures 2 and 3, the wind-profile parameters z0 and u and their relationship to the 10 m wind speed (U10), varied according to surface conditions. For bare ice, z0 decreased with increasing shear velocity in approximate accord with Nikuradse’s (Reference SuttonSutton, 1953) equation for smooth flow:

(8)

Using the criterion of Inequality (6b), How over the ice surface would remain in the smooth regime up to u = 45 cm/s.

When the ice was more than 75% snow-covered, z0 increased with u for wind speeds above the threshold for snow movement, in a manner consistent with Reference OwenOwen’s (1964) hypothesis. A regression model of the form

(9)

fitted to the data for U10 ≥ 8 m/s, gave B = 1.92±0.19 and r2 = 0.59. Since the 95% confidence interval, shown above, contains the value 2.0, and accepting Owen’s argument that z0 α u2, results from the experiment give more than 75% snow cover:

(10)

where z0 is in cm and u is in cm/s. Equation (10) implies a value for the constant D in Equation (5) of 9.1. These results are compared in Table I with the author’s analyses of data published by Reference LiljequistLiljequist (1957) and Reference BuddBudd and others (1966),

Fig. 2. Roughness height Z0 in Equation (1) as a Junction of shear velocity ufor three categories of snow cover on Diamond Lake. Bars represent 95% confidence intervals about the geometric means of z0for 5 cm/s u classes. Reference BagnoldBagnold’s (1954) equation is plotted with k’ = 0.30 cm and u τ= 230 cm/s.

Fig. 3. Shear velocity u as a function of 10 m wind speed, for three categories of snow cover on Diamond Lake. Bars show 95% confidence intervals about means for 2 m/s U10 classes.

Table I. Estimates for parameters in emprical relationships between z0,u, and U10 > 8m/s

Reference Kikuchi and IshidaKikuchi and Ishida (1976) found their wind profiles were belter represented by Reference BagnoldBagnold’s (1954) equation:

(11)

where k’ is the height of the apparent “focal point” for convergence of wind profiles in saltating flows, and ut is the wind speed at z = k’. Solving Equation (11) for z at u =0 gives

(12)

For our data, k’ was estimated to be 0.19 cm and u t = 215 cm/s (r 2 = 0.59), compared to Bagnold’s values of 0.3 cm and 250 cm/s. Equation (11) fits our data nearly as well as does Equation (9).

When the ice was only 25 to 60% covered with snow, z0 also appeared to be related to u2, but with a different coefficient of proportionality, so that 20-60% snow cover:

(13)

suggesting that saltation roughness is superimposed on that of the underlying surface. The existence of a smaller z 0 on partially snow-covered ice has important consequences for natural modeling, as indicated by Equation (4) allowing smaller models to be used.

The relationship of u to U 10 for U 10 ≥8 m/s, is shown in Figure 3. The hypothesis that u is linearly related to U10 over bare ice, cannot be rejected at the 95% probability level, but curvature is significant for conditions of blowing snow. For u and U 10 in m/s, and U10 ≥ 8 m/s, more than 75% snow cover:

(14)

20-60% snow cover:

(15)

bare ice:

(16)

The departure from linearity arises from the increase in saltation roughness as wind speed increases. Although this suggests U/u is not exactly equal in model and prototype as required by Equation (4), the disparity is rather small. Comparisons with published data are given in Table I.

In summary, these results suggest that the similitude requirements of Equation (4) are closely approximated under natural conditions for the range of data of this study, supporting the hypothesis of self-similarity for wind profiles associated with blowing snow. Equations (10) and (14) can be used to determine prototype wind characteristics.

Modeling trials

Although we have conducted a variety of experiments with small-scale snow fences over the last three years, we will only present here examples of elementary experiments that test the natural similitude hypothesis and demonstrate application of scaling laws to outdoor modeling.

Maximum drift profiles which we have measured behind full-scale fences having heights of 1.8, 2.4, 3.2, and 3.8 m are plotted in Figure 4. These data, collected over the last eight years from snow fences along Interstate Highway 80 in south-east Wyoming, prompted our interest in the natural scaling phenomenon.

A polynomial equation fitted to the full-scale lee-drift profile is

(17)

Fig. 4. Snow profile of drifts behindfull-scale snow fences, at maximum accumulation. Data are from the Interstate Highway 80 snow-fence system between Laramie and Walcott, Wyoming.

where y is snow depth at distance x from the fence, and H is fence height. The up-wind drift is approximated by

(18)

Data for the 5.5 and 12.4 cm models on Diamond Lake are shown in Figure 5, together with the full-scale Equations (17) and (18)s. The model fences are both about 1/30 of their prototype heights.

Surface conditions and wind-profile parameters measured during the model runs are shown in Table II, with prototype wind characteristics estimated from Equation (4). In general, relationships between measured wind-profile parameters are expected to depart from the averages represented by regression equations ((10), (13), (14), and (15)) because of sampling and measurement errors and natural variation. Different estimates for the prototype wind-profile characteristics are therefore obtained depending on whether the dimension ratio is equated to the z 0 or u 2 ratios.

For the 22 January model measurements, the drift profile is seen from Figure 5 to have roughly the same lee-drift geometry as described by Equation (17) for full-scale drifts: maximum depth of 1.2H at 6H from the fence, maximum length of about 30H, and cross sectional area of about 19H 2Geometry of the windward drift is also quite similar in model and prototype, the primary exception being the depth of snow deposition at the fence.

Fig. 5. Comparison of drifts behind 1/30 scale model snow fences on lake ice, with the polynomial equation fitted to the full-scale data of Figure 4.

Table II. Wind-profile parameters for model runs and estimates for prototype wind

Representative stages in drift growth behind the 12.5 cm fence on 22 January are compared with full-scale drifts at approximately the same stages of growth in Figure 6. This comparison suggests that model similitude exists at all stages of deposition.

If air density, particle density, and bulk density of the deposited snow were identical in model and prototype, the time scale proposed by Reference KindKind (1976) would be

(19)

Fig. 6. Stages in snow accumulation behind a 2.44 m full-scale fence, and a 12.4 cm, 1/30 scale model simulating a 3.8 m structure.

Bulk density γ of newly deposited snow varies with air temperature and humidity, size and shape of snow particles, wind speed, and depth of the deposited snow. The mean bulk density of the snow deposited behind the 12.4 cm model fence on 22 January was 100 kg/m3. By comparison, mean bulk density of the drift formed behind a 3.8 m fence is typically about 450 kg/m3 by the end of the accumulation season (Reference TablerTabler, 1980). To account for this difference, Equation (19) can be rewritten as

(20)

where t’ is the time required for equilibrium profiles to be attained

For the 22 January example, 2.7 h were required for the 12.4 cm model to reach equilibrium. Using the values in Table II, the corresponding prototype time would be calculated from Equation (20) as 67 to 80 h, which seems reasonable when compared with times calculated from the mass-transport equation given by Reference BuddBudd and others (1966).

The model run on 30 January, also shown in Figure 5 and with conditions given in Table II, demonstrates profiles that are not in agreement with observed full-scale values. Winds of the magnitude estimated for the prototype (Table II) are seldom encountered at the sites where we have measured the full-scale drifts, and then only as infrequent gusts. We are therefore left with the question of whether or not drifts behind full-scale fences would attain these excessive proportions given persistent 40 to 50 m/s winds and unlimited snow. This example demonstrates the need for restricting small-scale modeling to low wind-speeds, and preferably to ice less than 60% snow-covered if typical prototype winds are to be simulated.

A final example is that provided by the 1/30 model of three rows of snow fence on 1/30 scale model terrain, shown in Figure 7. This particular terrain example was selected for study because we have been measuring snow accumulation at the prototype site since 1971, and have observed the interesting terrain interaction where the uphill topography in front of the lead 1.8 m fence caused a much larger drift than would be expected on level terrain. As a consequence, during heavy snow years the second (3.2 m) fence is nearly buried, even though these two fences are spaced about 46 m apart. Another interesting feature at this site is the apparent inefficiency of the third (3.8 m) fence as indicated by its small drift and an excessive snow accumulation in the road cut.

Fig. 7. Equilibrium drift profile for a 1/30 scale model of cross-section at Mile 253.4, Interstate Highway 80 (Wyoming). Model terrain was constructed on lake ice from compacted snow. Full-scale measurements near the end of an unusually severe winter are shown for comparison.

The model drift is in general agreement with the prototype, predicting burial of the second fence, an abnormally small drift behind the third fence (about 10H shorter than on level terrain), and essentially identical drift slopes in the road cut both with and without fences. The abrupt termination of the prototype drift at the edge of the roadway is the result of snow plows removing the drift. The slope of the snow-drift in the model cut also agrees with that predicted by an empirical regression method developed by Reference TablerTabler (1975) for full-scale drifts. The primary disparity is that the top of the drift behind the lead fence in the model is substantially lower, and displaced further down-wind, than in the full-scale measurement.

It is doubtful whether the wind-speed profiles measured at the instrument mast were representative of this model site, because the model was about 100 m from the mast. There appeared to be less snow cover at the mast, and less blowing snow than at the model. The wind profile parameters (Table II) were more characteristic of bare ice than conditions usually encountered during typical model runs, and consequently the scaled prototype wind estimated from the z 0 ratios does not correspond to that derived from the u 2 ratios. As a further complication, the Z 0 measured over the partially snow-covered ice may not represent the effective (z 0)m over the compacted snow surface of the model terrain.

Despite the fact that prototype winds cannot be specified for this example, there is little doubt that fence-terrain combinations can be successfully modeled under natural conditions, at scale ratios as small as 1/30.

Conclusion and Discussion

Snow-drifts formed by fences appear to be scaled in proportion to fence height over a height range of nearly two orders of magnitude. It is suggested that requirements for dynamic similarity of the flow fields are satisfied over a period of time because z 0 varies approximately as u2 in saltating flows. Satisfaction of requirements for scaling motion of snow particles is less certain, although natural sorting may effectively scale saltating particles over a restricted range of wind speeds. Drifts formed by 1/30 scale models, having heights as small as 5 cm, are proportionately scaled to those behind their full-scale prototypes at all stages of drift growth. This observation, together with the reasonable time required for equilibrium drifts to be attained behind (he models, suggests snow concentration profiles may also exhibit self similarity. The natural scaling of snow-drifts may, in itself, only reflect the dominant role of saltation in the deposition process.

If typical prototype winds are to be simulated using a model scale as small as 1/30, the experiments must be done on partially snow-covered lake ice or a surface of comparable roughness, with winds near the threshold for snow movement. At stronger wind speeds, corresponding to scaled prototype U10 of the order of 40 m/s, model drifts are significantly longer than observed in the full scale at lower wind speeds. This suggests the need for simultaneous wind-profile measurements during outdoor modeling experiments if results are to be properly interpreted with respect to prototype conditions.

The required model scale is determined by the prototype wind speeds to be modeled, and 1/30 appears to be near the practical minimum. An obvious disadvantage of outdoor modeling is the variability of natural conditions. If conditions change appreciably during the course of an experiment, the study must be repeated. Small models are preferable to larger ones in this respect, since less time is required to attain equilibrium. Although it is not known if natural scaling requirements could be met with smaller models, our experience has shown that 5 cm is near the minimum model height considering the precision with which the drifts can be measured and the rate of accumulation relative to the time required for measurement. Near to the threshold wind speeds, about 2.5 h are required for a 12.4 cm snow fence model to reach equilibrium as compared to 0.9 h for a 5.5 cm model.

Results from this study also demonstrate that terrain and snow-fence-terrain combinations can be successfully modeled at scales as small as 1/30, using compacted snow as a construction material.

Natural modeling is a promising technique with which to solve a variety of scientific and practical problems that cannot be practically resolved in full-scale experiments or conventional wind-tunnel or flume studies.

Acknowledgements

The research reported here was supported in part by the Surface Environment and Mining (SEAM) program, USDA Forest Service. The author gratefully acknowledges the assistance of Dr R. A. Schmidt in the design of instrumentation and collection offield data, and his many helpful suggestions throughout the study. The author is also indebted to research technicians Robert L. Jairell and David L. Pluth for their invaluable assistance in the demanding field work.

This paper is respectfully dedicated to Dr Uwe Radok, in recognition of his inspiring scientific and humanistic contributions.

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Figure 0

Fig. 1. 1/30 scale model snow fences on Diamond Lake, 30 January 1979. A portion of the 10 m wind-profile mast can be seen in the background.

Figure 1

Fig. 2. Roughness height Z0 in Equation (1) as a Junction of shear velocity ufor three categories of snow cover on Diamond Lake. Bars represent 95% confidence intervals about the geometric means of z0for 5 cm/s u classes. Bagnold’s (1954) equation is plotted with k’ = 0.30 cm and u τ= 230 cm/s.

Figure 2

Fig. 3. Shear velocity u as a function of 10 m wind speed, for three categories of snow cover on Diamond Lake. Bars show 95% confidence intervals about means for 2 m/s U10 classes.

Figure 3

Table I. Estimates for parameters in emprical relationships between z0,u, and U10 > 8m/s

Figure 4

Fig. 4. Snow profile of drifts behindfull-scale snow fences, at maximum accumulation. Data are from the Interstate Highway 80 snow-fence system between Laramie and Walcott, Wyoming.

Figure 5

Fig. 5. Comparison of drifts behind 1/30 scale model snow fences on lake ice, with the polynomial equation fitted to the full-scale data of Figure 4.

Figure 6

Table II. Wind-profile parameters for model runs and estimates for prototype wind

Figure 7

Fig. 6. Stages in snow accumulation behind a 2.44 m full-scale fence, and a 12.4 cm, 1/30 scale model simulating a 3.8 m structure.

Figure 8

Fig. 7. Equilibrium drift profile for a 1/30 scale model of cross-section at Mile 253.4, Interstate Highway 80 (Wyoming). Model terrain was constructed on lake ice from compacted snow. Full-scale measurements near the end of an unusually severe winter are shown for comparison.