Title: GIS Applications in
1GIS Applications in Environmental Modelling
David E. Atkinson Laboratory for Paleoclimatology
and Climatology Department of Geography University
of Ottawa
2The strength of Geographic Information Systems
- Quantitative combination of multiple data sources
for a given area - Analysis - insight into a specific problem
- flood analysis - will a specific area be flooded
- classic business example - where to place a store
- These take information about things like property
location and river flood stages and combine them
to determine if a given area will be flooded for
a given magnitude of event - Prediction - generate or model a result - a new
type of data, usually an entire field - in these cases information about processes known
to control the parameter under investigation are
combined in the GIS to predict occurrences of the
unknown parameter - My personal focus is the predicitive/modelling
aspect of GIS various will be covered here
3Example groups
- Temperature modeling
- My model for the Canadian Arctic Archipelago
- Chris Dalys PRISM model
- Dan Cornfords Minimum temperature model
- Watershed model - erosion, water balance
- U of New Hampshire Gulf of Maine project
- Permafrost model - occurrence, temperature, depth
- Fred Wright and Caroline Duchesne of the
Geological Survey of Canada - Vegetation model
- New Canada Plant Hardiness index map
- Cellular automata - not GIS per se, but could be
implemented - Mike Sawada and I model for dynamic ecological
modeling
4- Begin with the more detailed examples
- Better feel for how they work
- Then apply to the more generally described
examples - Begin with my work Estimation of surface air
temperature over the Canadian Arctic Archipelago
5- First must consider the reasons for conducting
the modeling - Guides the methodology, because
- Identifies what type of supporting data are
required - Controls complexity of approach, including issues
of scale - Sets acceptable error limits
- Usually reasons are either
- Provision of more accurate data field for input
into other work, eg permafrost model - Generation of more accurate data or investigation
of processes - My practical requirement improve temperature
data accuracy - But
- Theoretical side test hypothesis about the
processes controlling temperature - Situational context in the CAA governing why do
this
6Physical features and topography of the Canadian
Arctic Archipelago
meters ASL
7A closer look at the Devon Ice Cap...
8Weather stations of theMeteorological Service of
Canada in the Canadian Arctic Archipelago
January, 2000
9Existing weather observing situation in the CAA
- MSC network in the CAA
- data paucity (low density) and bias (coastal
locations) - represents trends, synoptic ok, but cannot be
used for meso/regional - e.g. Cogley and McCann, 1976 or Ted Lewis, 1999
- This weakness has been recognized and attempts
have been made to improve meso-scale resolution - Maxwell (1980, 1982) - experience and sporadic
historical stations to subjectively modify
long-term means - Alt and Maxwell (1990) - incorporation of
short-term non-standard observing stations to
provide information in key areas. - Jacobs (1990) - strategic placement of AWS for
several seasons, transfer function to AES
stations, surrogate data generation for full
record
10So what can sporadic data do?
11Cogley and McCann, 1976
12Empirical modeling of climatic fields
- GIS approach to guide and improve climate
parameter (temperature) interpolation in a
data-sparse region - Essential concept processes acting on
temperature can be parameterized in aspects of
location - Method
- Upper air temperature observations. to guide
estimates of temperature at elevation - Low-level winds used to determine on-shore
advective exposure - Icefield cooling effect
- Verification Used MSC and PCSP surface
observations for spot verification - 65 of residuals within /-1.4 C
13Basis for the temperature estimation
14- Consider the scale
- Base spatial scale 1 kilometer grid
- What features are resolved, ie icefields,
valleys, fiords - What controls on temperature are possible?
- Which of these is important at this scale?
- Examples
- surface differences on the order of 10s of meters
- Effects of elevation
- Synoptic patterns
- Maritime flow off the ocean (ice)
15Base temperature estimate
- Take observed temperatures and interpolate them
over the domain - This is the traditional approach
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18Recall the topography of this region
meters ASL
19Base temperature estimate
- OR incorporate at least the fact that temperature
changes with elevation - This is not a new concept but now we can better
quantify it - How to put this in the model?
- Two ways
- Specification
- Empirical observation
- Specification input a set rate of change (a
lapse rate), such as the Dry Adiabatic Lapse Rate - Observation or can use observed temperature
data, if available - Set of instruments up a mountain (which is rare)
- Upper air observations made using weather balloon
- Observational approach is superior because it
incorporates features that were present at that
time and place
20Base temperature estimate
- Temperatures at elevation estimated using
upper-air data - High-order polynomial fitted to ascent curves
- Upper air data are not always present at all
levels using a polynomial allows us to smoothly
represent the upper air profile, and thus the
rate of change of temperature with elevation.
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22Base temperature estimate
- Weak surface inversion sometimes present
- All UA stations in the archipelago are within 1
km of the ocean - Assumption summer surface inversion caused by
proximity to ocean and must be removed to
accurately represent regions free of a coastal
influence
23and an example inversion removal
24and an example inversion removal
25Ascent profile for MSC Resolute Bay Mean
estimated profile and individual measurements for
July 6-19, 1985
26- Now instead of interpolating a temperature over
the entire grid, we can interpolate the
polynomial coefficients over the image - Recreate an equation in every pixel
- solve the for temperature, pixel by pixel, using
the elevation value from that pixel
27Schematic representation of base temperature
estimation
VB
28Influence of wind
- Now we have a base temperature estimate for each
pixel in the region - But the maritime influence has been
(deliberately) removed - Now must re-insert a maritime influence, confined
appropriately - How to do this?
- Resolve winds from the upper air data, and
- Any coastal area with the wind blowing onshore is
then subject to a wind-induced modification
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30Wind effect filter operation
31Wind effect filter results
- Arrows indicate wind direction
- Local resultant winds are extracted from the
800mb level - A wind effect potential is calculated for
exposed pixels
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37PRISM Parameter elevation Regression on
Independent Slopes Model
- Chris Daly, Oregon State
- Selected for the new Climate Atlas of the US
- Matches parameters
- All pixels have parameter list generated
- Interpolation is guided such that pixels most
similar to a station will take that stations
value
38PRISM Parameter elevation Regression on
Independent Slopes Model
- Parameters include
- Distance
- Stations farther away will be less similar
- Elevation
- Many climatic factors affected by elevation
- Cluster
- Geostatistical concept clumping tends to cause
overrepresentation - Vertical layer
- Within boundary layer or not
- Topographic facet
- Aspect facing
- Coastal proximity
- Distance from and orientation with respect to
coast - Effective terrain
- For precipitation
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40Dan Cornfords Minimum Temperature Model
- Parameters include (based on analyses)
- DEM derived altitude
- Distance to nearest coast
- Distance to nearest drainage feature
- Percentage tree cover
- Landcover derived radiative properties
- Percentage land within 25 km radius
- Difference between cell elevation and maximum
within 5 km - Distance to nearest urban feature
- Katabatic flow accumulation
- Mean altitude with 50 km
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42Gulf of Maine Watershed Model
- Parameters include
- DEM (USGS GTOPO30)
- 2-minute resolution river location grid (derived
from DEM) - Land cover (derived from NOAA data)
- Soil data
- Climate data
- Stream discharge data
- Atmospheric deposition
- Water quality data (Chemical inputs)
- Outputs include
- Runoff
- Evapotranspiration
- shallow groundwater
- soil moisture variations
43Geological Survey of Canada Permafrost model
- Parameters include
- Elevation
- Temperature
- Surficial material
- Covering
- Generates
- Occurrence of permafrost
- Temperature at top of permafrost
- Thickness of permafrost
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46Thanks to Fred Wright and Caroline Duchesne of
the Geological Survey of Canada, Terrain Sciences
Division For the Mackenzie Valley Permafrost
modeling information
47Agriculture Canada Plant Hardiness Zones
- Parameters include
- Canadian plant survival data
- minimum winter temperatures
- length of the frost-free period
- summer rainfall
- maximum temperature
- snow cover
- January rainfall
- maximum wind speed
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49Cellular Automata Modeling
- Grid-based approach to modelling dynamic
environments with sub-grid level interaction - Simple ecosystems
- 2 and 3-dimensional dispersion modelling
- Spatial extent is defined as a grid (although
there are squares, triangles and hexagons) - Each cell is homogenous and can take only one
state - Most famous CA is The Game of Life, a simple CA
by Conway that appeared in Scientific American in
1970
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51Cellular Automata Modeling
- Cell state is (partially) dependent upon
interactions with neighbours - Local-scale interactions
- Environmental gradients can also be modeled
- Simulate something like coastal-to-inland
progression - Note that gradient forcing can also be temporal
- Run by discrete time-steps
- system is evaluated, changes made, next time step
executed
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58Thank you!