Introduction
Glacier melt plays a key role in the hydrology of glacierized catchments. Run-off from mountain glaciers is an important resource for irrigation, hydropower generation and potable water in mountainous regions (e.g. Reference Pfeffer and BrethertonSchaefli and others, 2007; Reference Huss, Bauder, Funk and HockHuss and others, 2008b). Accurate quantification of snow and ice melt on glaciers is therefore crucial for human activities. Melting is also important for the mass balance of mountain glaciers. Glaciers change their volume under the influence of climate conditions (e.g. Reference Huss, Farinotti, Bauder and FunkHuss and others, 2009), and their mass loss significantly contributes to changes in global sea level (e.g. Reference Klok, Greuell and OerlemansMeier and others, 2007). To predict future glacier evolution and its impact on human society, we must be able to estimate their melt rates from projected climate variables.
Glacier melt can be computed by energy-balance models (e.g. Reference Jonsell, Hock and HolmgrenKlok and Oerlemans, 2002; Reference HockHock and Holmgren, 2005; Reference Arnold, Rees, Hodson and KohlerArnold and others, 2006). Solving the energy balance of the glacier surface involves the capture of complex processes, but such models require field observations that are difficult to acquire. Alternatively, glacier melt is often computed from air-temperature records by using temperature-index melt models (e.g. Reference BraithwaiteBraithwaite, 1995; Reference Oerlemans, Giesen and van den BroekeOhmura, 2001; Reference HockHock, 2003; Reference Schaefli, Hingray and MusyShea and others, 2009). Taking into account the expected spatial distribution of solar radiation improves computations of temporal and spatial glacier melt patterns (e.g. Reference DeWalle and RangoHock, 1999). Such models have been tested against glacier discharge data, but their ability to reproduce small-scale spatial melt variation has not been well studied because high-resolution field data are lacking. Distributed temperature-index melt models do include some geometrical effects which determine the amount of potential solar radiation, such as shading by surrounding mountains and the angle of incidence of the solar beam on the glacier surface. Other key variables such as ice-surface albedo and wind-mediated sensible and latent heat exchanges are more difficult to take into account, but are equally important. Albedo is particularly important on mountain glaciers (e.g. Reference MeierOerlemans and others, 2009), but its spatial and temporal variability is difficult to model; it must be measured on the glacier (e.g. Reference Brock, Willis and SharpBrock and others, 2000) or by using satellite data (e.g. Reference Klok and OerlemansKlok and others, 2003).
To study spatial variations in glacier surface melt on the scale of tens of metres in the crucial region of a glacier terminus, we carried out field measurements on the terminus of Rhonegletscher, Switzerland. This paper reports surface melt rate and albedo measurements from July to September 2009. Both variables varied substantially over the studied area. The field data were compared with a distributed temperature-index melt model to evaluate the ability of the latter to reproduce small-scale melt patterns. The small-scale melt pattern is especially important for Rhonegletscher, which is rapidly thinning under the influence of factors related to proglacial lake formation. The non-uniform melt rates on the surface of the glacier control the evolution of the terminus and future development of the lake.
Method
Study site
Rhonegletscher is a temperate valley glacier with a length of 9 km and an area of about 16km2 in 2007 (Fig. 1a; Reference Bauder, Funk and HussBauder and others, 2007). Having retreated 1700m from 1878 to 2000, the glacier terminus is now at the top of a steep cliff (Reference Shea, Moore and StahlSugiyama and others, 2007). Because the current terminus is located over a depression in the bedrock, a new proglacial lake formed in 2005. The impact of this lake on the glacier is drawing intense glaciological and public attention. The terminus of the glacier is thinning at an increasing rate (Reference Sugiyama, Bauder, Zahno and FunkSugiyama and others, 2008) as a result of rising air temperature, elevated ice-flow speed (Reference Sugiyama, Tsutaki, Nishimura, Blatter, Bauder and FunkTsutaki and others, 2011) and rapid ice dissipation by melting and fragmentation into the lake. Our study site is the region extending approximately 1 km upstream of the glacier from the terminus (Fig. 1b).
Surface melt measurements
The surface melt rate was measured by inserting aluminium ablation stakes 2–4m in length into the glacier (see Fig. 1b for the stake locations). We installed 44 stakes in July 2009 and monitored their lengths above the surface every 1–10 days. The stakes were redrilled before they melted out. The mean melt rate was calculated over the entire study period from 6 July to 6 September 2009. Because of ice surface roughness and tilt of the stakes, the precision of individual readings was 10–30 mm. Because the reading error accumulates when the stakes were redrilled, the accuracy in the total melt was about 100 mm. The total melt over the study period in the region was >2m in ice thickness; thus, the error in the mean melt rate was <5%. The readings were converted to water equivalent (w.e.) by assuming the density of ice to be 900 kg m-3.
Albedo measurements
The surface albedo was measured between 1100 and 1600 h on 5 August 2009 in the vicinity of the ablation stakes. The cloud cover on that day was <10% according to visual observation. The upward and downward radiation energies were measured with an albedo meter (EKO Instruments MR-21) and recorded with a datalogger (Hioki 3645). The albedo meter was held 1 m from the ice surface, and the radiation was measured for at least 1 min. The albedo was computed from the radiation energies and incident angle of the solar radiation following the standard procedure (Reference Ishikawa, Owens and SturmanJonsell and others, 2003; Dewalle and Rango, 2008). The fluctuation in the radiation energies during the 1 min measurement period was <5% (1–2% in general), and the standard deviation in the downward radiation energy over the entire survey period was 4.5%.
Meteorological observations
Meteorological observations were carried out on the western flank of the glacier at 2531ma.s.l. (Fig. 1a) using an automatic weather station (Vaisala WXT510), installed at a height of 1.8m from a rock surface, that measured air temperature, precipitation, humidity and wind speed. Sensors measured these variables at 10 s intervals; mean values were recorded every 5 min with a datalogger (Campbell CR1000).
Melt model
We used the following numerical model to compute two-dimensional (2-D) snow and ice melt-rate (M (mw.e. d-1)) distributions over the study period on a regular grid of 25×25 m:
where fM is a melt factor (m w.e. d-1 ˚C-1), r s and r i are radiation factors for snow and ice surfaces (m3W-1 d-1 ˚C-1), I is the daily total potential solar radiation (Wm-2) and T m is daily mean temperature (˚C). The temperature at the elevation of the gridcell is calculated from the weather station data using a lapse rate of dT/dz. The snow/ice surface condition is distinguished by monitoring snow depth computed from modelled snowmelt and solid precipitation. The above model is based on the distributed temperature-index model reported by Reference DeWalle and RangoHock (1999; see also Reference Bauder, Funk and HussHuss and others, 2008a). The dependence of radiation efficiency on surface inclination and shading by surrounding topography is quantified by computing I for each gridpoint from the incident angle of solar radiation and a digital elevation model (DEM), as described by Reference HockHock (1999). In the case of a conventional degree-day model, the second term in Equation (1) can be neglected and the parameter fM is called the ‘degree-day factor’.
To apply the model to Rhonegletscher, the parameters fM and rs/i in Equation (1) and dT/dz were calibrated so that (1) the mean misfit of computed total melt with the field data was close to zero and (2) the root-mean-square error was minimized. These parameters were assumed to be constant in space and time. We used a DEM constructed by photogrammetrical evaluation of aerial photographs taken in September 2007 (25m resolution, ±0.3m accuracy) (Reference Bauder, Funk and HussBauder and others, 2007). Daily mean air temperatures from the above-mentioned weather station were used to drive the computation.
Results
Meteorological data
Meteorological data obtained from 6 July to 6 September 2009 are shown in Figure 2. During the study period, the mean air temperature was 6.9˚C, with a standard deviation of 3.51˚C, the total precipitation was 261.0 mm and the mean wind speed was 4.0 m s-1. There was a snowfall event during 17–18 July, resulting in a 0.05–0.1m thick snow cover on the glacier.
Surface melt
Figure 3a shows a map of the mean melt rate for the period 6 July to 6 September 2009. Ablation stake data are listed in Table 1. The mean melt rate over all measurement sites was 56.1 mm w.e. d-1, with a standard deviation of 7.5 mm w.e. d-1. Measurements at the stakes were interpolated in space with cubic spline interpolation to obtain the overall spatial distribution. The 2-D melt pattern shows substantial spatial variation. Over an elevation range of only 100 m, the melt rate varied by a factor of more than two. For example, there is a spot of low melt in the upper reaches of the study area (32.8mm w.e. d-1 at stake 23), and the melt rate is generally smaller in the northeast part of the studied area. The greatest melt was observed near the eastern margin at stake 2 (71.9mm w.e. d-1). The melt pattern near the terminus is spatially complex. In general, the melt rate increases down-glacier and from the glacier centre to the margins (Fig. 3a).
The spatial pattern of the melt rate was analysed by computing semivariance:
where xi is the ith stake location and h is the so-called {lagged distance. The sum is } taken over N(h)≡(i, j) : h -50m < |x i -x j | < h + 50m(e.g. Reference CressieCressie, 1993). The semivariance, γ(h), represents the measure of variance between the data separated by the lagged distance. For example, a low γ(h) value indicates that a pair of observations are similar to each other when the distance between the measurement sites is approximately h. A plot of semivariance against the lagged distance is referred to as a semivariogram, which demonstrates the similarity between observations as a function of the distance between the data (Fig. 3c). The semivariance is relatively large in the distance range h < 200 m, showing relatively high local variability in the melt rate. Its increase at h 400m indicates that the correlation rapidly decreases at this distance.
Albedo
Figure 3b shows the 2-D distribution of surface albedo measured on 5 August 2009. Individual measurements are listed in Table 1. The albedo clearly decreases from the centre to the margins and down-glacier towards the terminus. The highest albedo, 0.33, was observed in the upper reaches at stake 23. The albedo drops below 0.2 in the area below stakes 2, 5, 8 and 37. The lowest observed value was 0.06, on a debris-covered surface near the terminus at stakes 13 and 16. These albedos on Rhonegletscher are similar to those measured near the terminus of other mountain glaciers. Reference Brock, Willis and SharpBrock and others (2000) reported a value of approximately 0.1 at the terminus of Haut Glacier d’Arolla, Switzerland, whereas Reference Klok and OerlemansKlok and others (2003) reported approximately 0.2 at Morteratschgletscher, Switzerland. Reference Ishikawa, Owens and SturmanJonsell and others (2003) measured 0.06 as the lowest albedo in Storglaciären, Sweden, at a sediment-covered site near the margin.
The semivariogram of the albedo shows features different from that of the melt rate (Fig. 3c). The semivariance is small at short lagged distances, indicating that the albedo values are similar when they are compared within a small scale. It progressively increases within the range 0 < h < 300 m, which implies the albedo is spatially uncorrelated in the region beyond 300 m.
Model results
The model was calibrated to reproduce the observations from 6 July to 6 September 2009. The best-fitting parameter values were fM = 1.50 × 10-4 m w.e. d-1 ˚C-1, r s = 1.32 ×10-5 m3W-1 d-1 ˚C-1, r i = 2.20 × 10-5 m3W-1 d-1 ˚C-1 and dT/dz = -9.0 × 10-3˚C m-1. Figure 4 compares the computed melt rates at mesh gridpoints with the data obtained at the ablation stakes (see also Table 1). The mean difference between the measured and computed melt rates was –0.03mm w.e. d-1, and the root-mean-square error was 6.7 mm w.e. d-1. The computed melt pattern reproduces several important features of the observational data (Fig. 5a): the melt rate increases down-glacier and there is a low-melt region in the northeast part. Nevertheless, the model predicts weaker spatial variations overall, that is, the high and low melt rates are under- and overestimated, respectively. The discrepancy reaches –24% and +56% at stakes 2 and 23, respectively (Fig. 5b; Table 1). Moreover, the calculated melt rate near the terminus increases from north to south, contrary to the observations.
Discussion
Our measurements revealed a complex spatial melt pattern over the terminus of Rhonegletscher. The mean melt rate during the observation period at stake 2 was more than double that at stake 23. The melt rate generally increases down-glacier, but the spatial variations cannot be explained by surface elevation alone. Degree-day factors (DDFs) were calculated for every ablation stake by linear regression of cumulative melt on the sum of positive degree-days over the entire study period. Measured air temperature was extrapolated to the stake elevation using a lapse rate of 6.5 × 10-3˚C m-1. DDFs vary from 5.2 mm w.e. d-1 ˚C-1 to 11.2 mm w.e. d-1 ˚C-1 for stakes 23 and 2, respectively. These values are within the range of previously reported DDFs on ice surfaces (Reference Braithwaite and ZhangBraithwaite and Zhang, 2000; Reference HockHock, 2003), but the extent of the spatial variation is greater than those obtained for other glaciers (Reference HockHock, 2003).
One of the reasons for this spatial variation is the surface albedo. The melt rate was small at stake 23 because the albedo was high, as shown in Figure 3a and b. The complex melt pattern near the terminus also corresponds to the albedo pattern. For example, the low albedo at stake T11 and high albedo at stake 53 coincide with large and small melt rates, respectively. The albedo was lower near the glacier margins, consistent with the trend in melt rate, because ice was contaminated by dark particles related to the emergence of basal ice and the surface was covered with more debris. A scatter plot of DDFs versus albedo at each ablation stake demonstrates the important influence of albedo on the melt rate (Fig. 6a). A linear regression of the data yields a relationship between the DDF and albedo, α, of: DDF= -8.2α + 10.2, with a correlation coefficient of r = -0.49 and a p-value of 0.0006 (the probability of obtaining ∣r∣ > 0.49 assuming the true correlation is zero). Below the line connecting stakes 2, 5, 8 and 37, the albedo dropped and the melt rate increased. In this region, the decrease in albedo seems to be related to the presence of crevasses. Meltwater washed away surface particles in the smooth upper reaches, but surface water flow was impeded in the heavily crevassed lower reaches (Fig. 7a). It should also be noted that the crevassed surface traps more solar radiation than a flat surface, which increases net energy absorption in the region (Reference Pellicciotti, Brock, Strasser, Burlando, Funk and CorripioPfeffer and Bretherton, 1987).
The observed melt pattern cannot be explained with only albedo variations, as implied by the different spatial statistical features obtained by the semivariance analysis (Fig. 3c). Another important effect is shading by the surrounding topography. A side-wall to the southeast of the glacier terminus shaded the eastern side of the study area for several hours each morning (Fig. 7b). The low-melt-rate region around stakes 34 and 35 coincides with this area of low potential radiation (Fig. 3a). This effect is taken into account by the potential solar radiation term in the model and is clearly recognizable in Figure 8. The reduced melt rate was therefore reproduced by the computed melt pattern, although its magnitude was smaller than the observation. Correlation of the DDF to the absorbed potential radiation (I(1 - α)) is more significant (Fig. 6b; r = 0.55 and p = 0.0001) than the correlation of the DDF to the albedo.
The very strong melt observed at stake 2 is difficult to explain. Albedo increased towards the margins, but the melt rate was greater near the western margin than on the other side of the glacier. Seasonal variation in albedo is often important in the ablation area (e.g. Reference Brock, Willis and SharpBrock and others, 2000), but no significant change in surface conditions was recognized in this region over the study period. The surface was steeply inclined towards the south in the western part of the glacier, but the model, which includes the incident angle of solar radiation, does not produce a similar pattern. We speculate that the increase in melt rate arises from the absorption of longwave radiation emitted by the bare bedrock on the western flank, which has been exposed by the retreat of the glacier in this region (Fig. 7c). A similar effect has been observed at Franz Josef Glacier, New Zealand (Reference Huss, Funk and OhmuraIshikawa and others, 1992).
Comparing the field data to the computed results confirms the ability of the distributed temperature-index model to include the effects of potential solar radiation. However, several important features in the spatial melt distribution were insufficiently captured. It is clear from the observation at stake 23, for example, that variations in ice albedo are one of the most influential factors not included in the model. Albedo can be included as an additional model parameter (e.g. Reference OhmuraPellicciotti and others, 2005); however, our measurements show that its spatial variation is large and does not follow a predictable pattern (Fig. 3b). This implies that albedo would have to be measured over the glacier, which is often not feasible. To compute an accurate estimate of total meltwater production in a region, simple temperature-index models should not be calibrated on single-ablation-stake data; the data may be influenced by high small-scale variations in melt rate, as demonstrated by our measurements.
Conclusion
We measured glacier surface melt in the terminus of Rhonegletscher at a resolution of 20–100 m. The surface melt rate obtained at 44 stakes over the summer of 2009 showed significant spatial variability. The DDFs obtained from the measured melt at the stakes over a 2 month period ranged from 5.2 to 11.2 mm w.e. d-1 ˚C-1 within an area extending 1 km from the glacier terminus. Part of the variation can be plausibly explained by differences in surface albedo. Our measurements of albedo range from 0.06 to 0.33, and the highest albedo coincided with low melt rate. The albedo generally decreased from the glacier centre to the margins, in agreement with the observed melt rate variations. The influence of shading by surrounding topography is evident from the field data. The melt rate decreased in the northeast part of the study site, where the potential solar radiation was smaller due to shading by mountain ridges to the east of the glacier. However, some features of the 2-D melt pattern are still difficult to explain. The greatest melt rate was observed near the western margin. Radiation from rock walls close to the glacier is a possible source of the heat energy.
We computed melt rates over the glacier surface using a distributed temperature-index melt model. The model was calibrated using the field data, and the computed spatial melt pattern was compared to observations. The model successfully reproduced the decrease in melt rate due to the shading. Geometrical effects can therefore be taken into account by the model. The model results deviate from the observations by +56% and –24% at the lowest and highest melt rates, respectively. Care should therefore be taken when using such models to investigate a spatial melt pattern at high resolution. Model calibration should be carried out with data sampled in a wide range of ice-surface albedo and other conditions in order to obtain accurate total melt.
Acknowledgements
We thank M. Funk, A. Bauder and members of the Rhonegletscher field campaign in 2009 for their help in the field. Materials for the field campaign were loaned by the Section of Glaciology, Swiss Federal Institute of Technology (VAW), ETH Zürich. The manuscript was substantially improved by constructive review comments provided by two anonymous referees and the scientific editor, D. MacAyeal. This research was funded by the Japanese Ministry of Education, Science, Sports and Culture, Grant-in-Aid, 20540418, 2008–10 and the Global Center of Excellence Program, MEXT, Japan.