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Measurement, modeling, and remote sensing of snow cover in areas of heterogeneous vegetation

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Field Value
Title Measurement, modeling, and remote sensing of snow cover in areas of heterogeneous vegetation
Names Selkowitz, David (creator)
Nolin, Anne W. (advisor)
Date Issued 2005-11-11 (iso8601)
Note Graduation date: 2006
Abstract Numerous studies have demonstrated that vegetation canopies affect snow
accumulation and ablation processes. In addition, estimates of remotely sensed snow
covered area can be biased by the presence of an overlying vegetation canopy.
Consequently, any attempts to measure, model, or map the distribution of snow in a
region with heterogeneous vegetation cover would benefit from a more complete
understanding of both the relationship between vegetation density and snow cover on
the ground as well as the relationship between remotely sensed snow covered area
and actual snow covered area under various vegetation densities. The research
presented here explores both of these relationships.
Chapter 2 describes, qualitatively and quantitatively, the relationship between
canopy gap fraction (the inverse of canopy density) and snow accumulation at fine
spatial scales in Glacier National Park, Montana. Gap fraction and snow cover data
from two winters were compared along eight vegetation-snow transects representing
a range of landscape types, including dense forest, variable density forests with
openings, forest-grassland mosaics, and burned-unburned forest mosaics. The data
suggest that the relationship between gap fraction and snow accumulation depends on the range of gap fraction values considered. For gap fraction values less than
40%, a significant positive linear relationship exists between gap fraction and snow
accumulation. For gap fraction values between 40% and 90%, the relationship is
poorly defined, most likely due to the influence of the spatial patterning of
vegetation on wind scouring/deposition of snow which cannot be captured by a
simple metric such as gap fraction. When gap fraction exceeds - 90%, snow cover is
almost always shallow or nonexistent due to wind scouring and high solar radiation
loads. The poorly defined relationship between gap fraction and snow accumulation
in the range of 40-90% gap fraction is not highly problematic because this gap
fraction range represents only 24% of the landscape, and the 60-90% range of gap
fraction where the gap fraction-snow accumulation relationship is least pronounced
represents only 5% of the landscape. The results from these vegetation-snow
surveys indicate that at fine spatial scales where topographic variability is minimal,
canopy density can explain a substantial portion of the variability in snow
accumulation that would otherwise remain unexplained. The high variance in snow
accumulation in the 60-90% gap fraction range and the relatively small sample size
presented here make it unrealistic, however, to infer an optimum gap fraction for
snow accumulation in Glacier National Park or anywhere else.
Chapter 3 provides an assessment of methods for modeling and mapping
spatiotemporal variability in snow cover in Glacier National Park. SnowModel, a
relatively new physically-based snow evolution model that accounts for the influence
of vegetation on snow processes, was used to simulate the spatial distribution of
snow water equivalent at hourly time steps for an 850 km2 model domain in eastern Glacier National Park. The standard implementation of SnowModel uses an image
of land cover type to adjust snow accumulation and ablation for the effects of
vegetation. In this non-standard implementation, the model was parameterized using
a weighting scheme that allowed the model to utilize a Landsat-derived image of gap
fraction to adjust snow accumulation and ablation in a more precise manner than
would have been possible if only land cover type information was available. In situ
measurements suggest the model did a reasonable job simulating snow evolution
patterns and the differences in snow evolution associated with different vegetation
densities. Weaknesses in this implementation of SnowModel appear to be its
tendency to overestimate snow in the easternmost portion of the model domain
(where a significant rain shadow effect exists) and overestimate snow in exposed
areas. Due to a lack of in situ measurements at the scale of the model output, it was
not possible to conclusively determine if the incorporation of fine scale (28.5 m
pixel) information on forest canopy density improved model accuracy.
MODIS-derived images of binary and fractional snow covered area were also
evaluated. The binary product consistently mapped a higher percentage of the study
area as snow covered than the fractional product. Spatial patterns of snow covered
area were similar for the MODIS-derived products and the results from the
implementation of SnowModel. Unfortunately, the remotely sensed snow covered
area products could not be used to evaluate the model's treatment of snow evolution
under different vegetation conditions because gap fraction influences the mapping of
snow covered area for the remotely sensed products. Understanding how remotely
sensed estimates of snow covered area are influenced by gap fraction density will hopefully allow for these products to be used as a validation tool for spatially
distributed model results in areas of heterogeneous vegetation in the future.
Genre Thesis
Topic Snow -- Montana -- Glacier National Park -- Remote sensing
Identifier http://hdl.handle.net/1957/9874

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