The Oregon LiDAR Hydrography Pilot Project
Evaluation of Existing GIS Hydrological Toolsets for Modeling Stream
Networks with LiDAR and Updating the National Hydrography Dataset (NHD)
Bill Kaiser (USFS), Craig Ducey (BLM), and Dan Wickwire (BLM)
August 9, 2010
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Table of Contents
ACKNOWLEDGEMENTS ..................................................................................................................................... 3
INTRODUCTION ..................................................................................................................................................... 4
D8 FLOW DIRECTION SENSITIVITY ANALYSIS AT PANTHER CREEK ............................................ 7
Summary and Future Recommendations ............................................................................................ 14
INTEGRATION OF LiDAR DERIVED STREAM NETWORKS INTO NHD ......................................... 16
Introduction .................................................................................................................................................... 16
Evaluation and Issues .................................................................................................................................. 18
LiDAR-based Stewardship Process ........................................................................................................ 21
Labor Cost Estimates .................................................................................................................................. 23
OVERALL CONCLUSIONS AND RECOMMENDATIONS ........................................................................ 23
LITERATURE CITED .......................................................................................................................................... 25
SELECTED REFERENCES ................................................................................................................................ 26
ACRONYMS ........................................................................................................................................................... 27
3
ACKNOWLEDGEMENTS
The authors would like to thank all team members and reviewers for their important
contributions to this project:
Jay Stevens, BLM
Tamiko Stone, BLM
Don Hsiao, BLM
Chester Novak, BLM
Brian Staab, USFS
Chris Park, USFS
Emmor Nile, ODF
Bob Harmon, OWRD
Any remaining errors in the report are the responsibility of the authors.
4
INTRODUCTION
The Oregon hydrography LiDAR pilot project, sponsored by the State of Oregon,
evaluates the use of LiDAR-based Digital Elevation Models (DEMs) to semi-automatically
model stream networks for inclusion into the National Hydrography Dataset (NHD).
Project conclusions and recommendations will guide future LiDAR derived delineations by
Pacific Northwest Hydrography Framework (PNWHF) partners.
Geospatial representations of surface water features stored in the NHD require
continuous updating as land surface conditions change or more accurate data sources
become available. To help satisfy this demand, terrain analysis of DEMs are frequently
used to automate the delineation of stream networks (Tarboton et al. 1991, Osborn et al.
2001). These techniques possess several benefits over traditional surveys and manual
interpretations of topographic maps. Specifically, results can be reproduced at reduced
resource costs and are typically more easily integrated with other geospatial datasets for
subsequent research. The raster data structure of DEMs, however, can make estimating
flow direction and accumulation challenging when defining stream networks in areas of
internal drainage or low-relief (Garbrecht and Martz 2000). Depending on the spatial
resolution of the DEMs, fine-scale hydrologic features may be unobservable, resulting in
oversimplifications of the stream network (Saunders 2000).
DEMs produced from LiDAR (Light Detection and Ranging) data provide
measurements of the earth’s surface with improved accuracy, precision, and resolution
compared to existing USGS National Elevation Dataset (NED) products (Lewis 2006).
These enhancements are especially pronounced in forested areas where the ground is not
visible (Lefsky et al. 2002) (Figure 1). Recent LiDAR acquisitions over large portions of
western Oregon represent an opportunity to significantly improve the accuracy of NHD
stream features. Presently, no standard guidelines exist for either deriving stream
networks from LiDAR or integrating the results into the NHD. The absence of agreed-upon
guidelines increases the likelihood that inconsistent stream network delineations will be
submitted to NHD. In addition, challenges associated with terrain analysis of high-
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resolution elevation data for automatically delineating stream networks are not completely
documented.
Figure 1. Visual comparison between (A) 3 foot natural color aerial photography, (B) 10 meter
USGS National Elevation Dataset DEM, and (C) 3 foot LiDAR DEM products at Panther Creek, OR.
Hillshading is used to improve visualization of DEMs. Blue lines are existing NHD streams.
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This report reviews the existing ESRI ArcGIS Hydrological Tools (ESRI 2008)
commonly used to generate stream features from DEM-based flow direction and
accumulation estimates. Initial evaluations of a second, publicly-available hydrological
toolset, “Terrain analysis using Digital Elevation Models” (TauDEM) (Tarboton 2009) were
also conducted. As indicated above, the report establishes a proposed framework for
delineating stream networks using LiDAR and a process for integrating the resulting
dataset into the NHD. Labor related cost estimates associated with the entire process are
also provided to PNWHF partners. This assessment is conducted using LiDAR DEMs
acquired over the Panther Creek and Ashland Creek 12 digit Hydrologic Units (HU) pilot
areas in Oregon (Figure 2).
Figure 2. Location of the Panther Creek and Ashland Creek 12 digit HU pilot areas.
This report fulfils the overall objectives of the project charter. However, some
discrepancies between the charter and this report exist in light of a greater understanding
of the required scope and content once the project was underway. Specifically, four pilot
areas were narrowed down to the two shown in Figure 2. The charter also stipulated that
only COTS (commercial-off-the-shelf) software was to be used, but the team began
investigating the use of an academic software package.
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D8 FLOW DIRECTION SENSITIVITY ANALYSIS AT PANTHER CREEK
The suite of tools available in ESRI ArcGIS for extracting hydrological information
from raster models of terrain elevation are based on an eight direction pour point (D8)
conceptualization of surface water movement. In this approach, water flows from each cell
into one of its eight adjacent neighbors in the direction of steepest descent. Assuming no
surface water is impeded or lost to groundwater or evapotranspiration, the total amount of
water flowing through a given cell is measured by calculating the cumulative area of all
contributing upslope cells. Streams are defined by selecting cells whose flow accumulation
values exceed a predetermined threshold. Breaks in the connectivity of modeled stream
networks occur at areas of internal drainage called sinks or pits. These situations exist
wherever a cell or cluster of spatially connected cells is surrounded by higher elevations in
all directions, and are resolved by artificially raising elevation values within the sink until a
valid flow direction can be determined.
The recommended workflow for applying the ESRI ArcGIS hydrology tools is
accomplished in seven successive steps (Figure 3). In its simplest form, analysts can affect
the outcome of the modeling process by:
a. Adjusting the spatial extent and/or cell size of the DEM,
b. Defining alternative Z-limits for filling sinks, and
c. Selecting different stream initiation flow accumulation thresholds.
Spatial extent refers to the total area of the landscape under investigation. Drainage
basins, for example, are conventionally used to define the spatial extent in hydrological
applications. The grid cell size establishes the minimum observation unit and is
functionally equivalent to the analysis grain. Altering either the spatial extent or cell size
produces a corresponding change in the spatial variability characteristic of specific
landscapes.
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The default option to fill all sinks can be controlled by adjusting the Z-limit
parameter and expressly defining the maximum allowable elevation difference between
the bottom of a sink and its outlet pour point. For example, a sink with an elevation
difference form it pour point equal to 4 feet would not be filled with a Z-limit set at 3 feet.
As stated previously, flow accumulation modeled across a surface will terminate at any
sinks left in a DEM and create discontinuities in the resulting stream network.
Furthermore, sinks act as pour points when delineating drainage basins representing
upslope contributing areas. These consequences are typically undesirable unless evidence
supporting inclusion of a sink is available prior to analysis.
DEM Pre-processing (Cell Size)
Fill Areas of Internal Drainage (All Sinks or Specific Z-limits)
Calculate Flow Accumulation
Define Streams with Flow Accumulation Thresholds
Convert Streams to Lines within Drainage Basin Extent
Calculate Flow Direction Identify Drainage Basin Extent
(All Sinks Filled)
Figure 3. The process workflow for generating stream networks with LiDAR-derived
DEMs using ESRI ArcGIS D8 hydrology tools. Boxes with bold outlines identify steps
accepting alternative model parameters.
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* http://www.oregongeology.com/sub/projects/olc/default.htm
Flow accumulation measures the total number of upslope pixels draining into each
DEM cell, and is used to model stream locations and events (e.g., periodicity) along the
network. By converting pixel counts to areal measurements, stream channel initiation
points and transitions in periodicity can be identified by specifying flow accumulation
thresholds characteristic of the landscape being studied. Lower thresholds predict stream
channels further upslope, resulting in higher density stream networks.
For this report, we evaluated stream networks generated using variations in the
ESRI ArcGIS D8 hydrology tool input parameters and a 3-foot cell size digital elevation
model (DEM) interpolated from a LiDAR dataset acquired at Panther Creek, OR in August
2008. The LiDAR point-cloud acquisition and interpolation specifications for generating
the bare-earth surface satisfy requirements set by the Oregon LiDAR Consortium (OLC)*.
The DEM covers an approximately 6,700 acre area located within the western 30% of the
Panther Creek WBD sixth-field watershed (Figure 4).
Figure 4. The 2008 Panther Creek LiDAR acquisition covers the western portion of the Panther
Creek 12-digit hydrological unit.
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We compared results at cell sizes equal to 3, 6, 9, 12, and 15 feet after resampling of
the original DEM using a cubic convolution algorithm. At each cell size, we filled all sinks
and at Z-limits of 6 and 3 feet. Flow accumulations thresholds were identified along each of
the 15 stream networks at one acre intervals between 2 and 8+ acres (Figure 5). The
analysis extent was limited to those streams occurring within the drainage basin most
closely approximating the geometry of the Panther Creek WBD 12-digit hydrological unit
watershed. These basins were generated using the DEMs at each cell size where all sinks
were filled. All processing steps were automated using Python scripting.
Increasing cell size led to a corresponding expansion in the minimum length of
stream channel line segments evident by a “stair-step” appearance along flow paths. The
more homogenous patterns in flow direction resulted in a steady decrease in mean stream
segment sinuosity and a greater propensity for line segments to follow straight-line paths
over longer distances (Table 1). Overall, the density of streams within the modeled
drainage basins was nearly constant with cell size. Flow accumulation values greater than
2 acres, however, exhibited a high spatial variability depending on the image cell size and
treatment of sinks. When all sinks were filled, flow accretion into road-side ditches in the
watershed’s upper limits depreciated our confidence in the positional accuracy and
accumulation values of higher-order streams. Specifically, water that would, in reality, pass
under roads through culverts was instead diverted into ditches and carried downstream
long distances until eventually spilling over the top of roads. As ditches were averaged out
of the surface models at larger cell sizes, the frequency of these events diminished at the
expense of finer-scale details. Flow line termination points were generally unpredictable
when sinks were present, and did not exclusively coincide with likely culvert positions.
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Figure 5. A subset of results for the D8 flow direction sensitivity analysis at Panther Creek. The tendency for surface flow to become
trapped and carried within upslope ditches along roadways is evident in all frames except those where the cell size is adjusted to 15 feet.
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Table 1. The effects of increasing cell size on the overall density and mean stream segment
sinuosity within the corresponding drainage basin extent. An example stream segment provides
visual evidence of the loss of local precision that occurs with increasing cell size.
Cell Size Stream Density
(All Sinks Filled)
Mean Stream
Segment Sinuosity Example Stream Segment
3 ft 0.00281 1.212
6 ft 0.00270 1.177
9 ft 0.00265 1.162
12 ft 0.00261 1.144
15 ft 0.00254 1.129
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We observed fewer areas of internal drainage with increasing pixel grain (Table 2).
Relative to all sinks, the number of areas filled with 6 and 3 foot Z-limits, however,
generally increased with cell size. Approximately 35% of all sinks present in the original
DEM surface were removed by re-sampling the pixel grain to 15 feet. As expected, limiting
the number of sinks filled by specifying maximum elevation differences to pour points
generated discontinuous stream networks.
Table 2. The percentage of all cells elevated to fill areas of internal drainage for Panther Creek
DEMs at different spatial resolutions.
Pixel Grain (feet) All Sinks Z-limit = 6 feet Z-limit = 3 feet
3 1.21% 1.17% 1.11%
6 1.01% 0.96% 0.91%
9 0.91% 0.85% 0.81%
12 0.85% 0.80% 0.75%
15 0.78% 0.75% 0.69%
Discontinuities in the modeled stream networks occurred wherever sinks were not
filled (Figure 5). Inconsistencies in sink locations between the rescaled surfaces led to high
variability in flow accumulation estimates and, consequently, contrasting representations
of the hydrological stream network. If addressed with high-quality ancillary road
information, not filling all sinks may be useful for identifying potential culvert locations
within the study area. Known culvert locations could be serve as break-points to either
modify the existing surface models or inform conversion of the original LiDAR point cloud
to new DEMs.
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Summary and Future Recommendations
No single combination of cell size, sink depth, or flow accumulation threshold
produced completely satisfactory results. Spurious stream segments branching off main
channels occurring at each cell size suggested flow accumulation thresholds were not
constant throughout the study area. Stream channel predictions appeared qualitatively
better or worse in different regions of the study area depending on which combination of
parameters was used. Attempts to rectify issues with flow lines generated after all sinks
were filled were frustrated by the large number of streams captured by road ditches and
complex channel definitions in areas experiencing active soil movement. Increasing cell
size alleviated many of these situations, but resulted in only slight improvements in stream
geometry predictions over the existing NHD and well below the potential accuracy and
precision of the original LiDAR dataset.
Stream features modeled using the ESRI ArcGIS D8 hydrology tools do not account
for the numerous biophysical and human processes influencing the hydrology at Panther
Creek. Consequently, the model results are accurate if the landscape is viewed as an
impervious surface devoid of vegetation and without human modification. Future
modeling efforts including ancillary information predictive of the spatial patterns resulting
from these types of processes combined with spatial metrics descriptive of topographic
conditions are likely to extend beyond the sophistication of the ESRI toolset. Trials
conducted during this pilot exercise suggest adjusting the measurement scale while
maintaining the cell size using alternative image processing techniques such as Gaussian
convolution have the potential to more effectively mitigate localized variance in the LiDAR
dataset. Future research should also consider more realistic models of flow direction such
as the D-Infinity approach and the influence of topographic conditions beyond a focal cell’s
eight immediate neighbors (Tarboton, 2009)
Panther Creek represents a unique opportunity to explore the use of LiDAR for
stream channel delineation. Presently, five LiDAR acquisitions spanning the past four years
are available for conducting comparative analysis within the study area. A multi-partner
LiDAR research consortium with participants from the BLM, EPA, NRCS, non-government
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groups, and others are investigating the value of LiDAR for a wide-range of environmental
science applications. These efforts are being informed by extensive field-based information
including weather monitoring, vegetation and stream surveys, soil classifications, etc.
Incorporating these data in future work identifying stream channels with LiDAR will allow
more detailed evaluations of the accuracy and precision of results, the effects of alternative
image pre-processing techniques, differences between multiple LiDAR acquisitions, as well
as help reduce subjectivity during parameterization (e.g., stream initiation flow
accumulation thresholds).
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INTEGRATION OF LiDAR DERIVED STREAM NETWORKS INTO NHD
Introduction
PNWHF partners are currently updating the NHD using a variety of data sources.
The partners have implemented agreed upon stewardship processes that accommodate
these various data sources. The partnership anticipates that the percentage of NHD
updates derived from LiDAR elevation data will increase through time. This project
evaluated methodologies for updating the NHD with LiDAR derived stream networks
within the context of established stewardship agreements and procedures.
Generating a stream network from the LiDAR DEM is only the first step in
integrating these data in to the NHD. Processes that incorporate existing NHD edit tools
and stewardship relationships needed to be developed to support these LiDAR based edits.
Secondly, labor costs associated with these types of edits needed to be determined to assist
PNWHF partner organizations in their planning of future workloads. NHD updates
resulting from the two pilot areas have been used to develop cost estimates for labor
associated with these updates.
The project team incorporated the use of the NHD GeoEdit toolset for this
evaluation. This toolset has been developed by the U.S. Geological Survey (USGS) to
support NHD updates although its effectiveness on large edits with significant changes in
stream geometry has been under question. The LiDAR-based delineations for Panther
Creek and Ashland have these characteristics so the project team evaluated the use of the
NHD GeoEdit toolset to support these NHD edits. The Ashland Creek HU is the pilot area
used in the NHD integration discussion as it went through the entire update and review
process required by the NHD and the PNWHF protocols.
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Figure 6. Perennial (dark blue) and intermittent (light blue) stream channels derived using the D8
hydrology model within the Ashland Creek 12-digit hydrologic unit..
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Evaluation and Issues
The LiDAR hydrologic algorithms produce candidate stream lines on the basis of
flow direction that is derived from the elevation and slope grids. They do not take into
account important natural and anthropogenic features that can affect the flow of water.
Performing an NHD update that is based on these LiDAR sources relies on a variety of
ancillary data including current imagery, existing NHD, Digital Raster Graphics (DRG), etc.
This information is vital in resolving ambiguous data issues resulting from use of the LiDAR
delineations. New information not reflected on the DRG or USGS topographic map, such as
dam spillways, road and ditch intersections can assist the editor. The most recent NAIP
(National Agriculture Imagery Program) infrared imagery in Oregon is an excellent
resource that is available to resolve problems.
The issue of stream periodicity, e.g. perennial vs. intermittent, generated many
discussions by the project team. Some members wanted to incorporate other data such as
precipitation, soils, or stream gage data to help in this determination. In the end the USFS
and BLM hydrologists were adamant that GIS editors should not determine the periodicity.
Instead, the USFS hydrologists provided flow accumulation thresholds (thirty acres for
perennial and fifteen acres for intermittent streams) in the Ashland Creek area for defining
periodicity. On the other hand, the BLM hydrologist requested points along the stream to
symbolize different flow accumulation thresholds to help determine inception points and
periodicity during his review.
In general, there is a need to preserve NHD reach codes1 because the reach codes
may have important information tied to them (e.g., information related to Clean Water Act,
sections 303(d) and 305(b)). Even though the states of Washington and Oregon have not
tied their Clean Water Act reporting requirements to the NHD in the past, the
Environmental Protection Agency (EPA) has integrated these reports with the NHD reach
codes in their national database as well as their public web sites. It should be noted that
1 See the EPA web site http://www.epa.gov/waters/about/geography.html for a good explanation of the reach code and how impaired waters (as defined by the Clean Water Act) are tied to the specific reach codes.
19
State of Washington – Department of Ecology is in the process of migrating its Clean Water
Act data to the NHD.
It is critical to preserve these reach codes wherever possible, and this is the
rationale behind the instructions given to the editors for preserving reach codes whenever
a stream possessed a valid GNIS name or was depicted on the medium resolution
(1:100,000 scale) NHD. The medium resolution NHD dataset is currently housed in a
separate database from the high resolution NHD.
The NHD Geoeditor utilizes a Task Assistant to control the edit workflow while
revising the NHD. To preserve the existing GNIS names and reach codes, the editor chooses
REPLACE NHD FLOWLINE under NHD FLOWLINE TOOLS. For those streams that do not
have a valid GNIS name or do not appear in the medium resolution NHD, it is recommended
to use the ADD NHD FLOWLINE IMPORT NHD FLOWLINE GEOMETRY. Figure 9 depicts
the named streams in the original NHD, which represents 39% of the streams.
Using LiDAR to derive waterbodies such as lakes or two dimensional rivers was
outside the scope of this project. However, we did use the new NAIP imagery to update the
shape of one reservoir in Ashland Creek. The existing NHD geometry was incorrect at
Reeder Reservoir and artificial paths had to be moved. The recommendation to preserve
the artificial paths in NHD waterbodies is important because aquatic habitat or water
quality information may be tied to existing artificial paths and preserving these paths
minimizes event migration costs.
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Figure 7. Ashland Creek Watershed – the light blue lines represent streams with GNIS names and
make up approximately 39% of the total stream length in the original NHD dataset. These would be
edited with REPLACE NHD FLOWLINE tool from the Task Assistant.
One useful way of thinking about the differences in the stream data derived from
LiDAR vs. the NHD is to compare the stream length divided by the area of the watershed. In
the Ashland Creek watershed, for example, this ratio is 80.93 km/15,786 acres for the
original NHD and 140.24 km/15,786 acres for the LiDAR-based stream network.2 Other
statistical information such as perennial and intermittent stream length from before and
after the LiDAR Ashland Creek update is given in Table 3.
2 The reason for mixing units is the original stream length in the NHDFlowline attribute table is in kilometers and the Hydrologic Units are traditionally defined in acres.
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Table 3. Stream length information from before and after the LiDAR update for Ashland
Creek.
Ashland Creek NHD Original LiDAR Percentage change
Total Stream Length
(km)
80.93 140.24 +73 %
Acres 15786 15786
Perennial streams
(km)
72.34 100.50 + 39%
Intermittent streams
(km)
8.59 39.74 + 462 %
GNIS streams (km) 31.56 32.13 + 2%
LiDAR-based Stewardship Process
BLM and the Forest Service hydrologists at the districts and forest levels act as data
stewards for NHD streams and lakes data. Consequently, they must play an integral part in
any process that updates the surface waters on their agency’s lands. The workflow
proposed by this pilot project includes at least two reviews by these data stewards (Figure
8). In addition, the LiDAR update process for the NHD has to go through the existing
stewardship review process of the PNWHFP partnership.
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Figure 8. Flowchart illustrating the interactions between the spatial analysts, GIS editor, and NHD
data steward leading to the submission of LiDAR-based streams to the NHD.
1. Spatial analyst
delineates stream network
from LiDAR, generates
supporting data layers
(e.g., hillshade and
contours), and provides
required metadata
documentation
2. GIS editor reviews
stream network, records
comments and initial edits,
and prepares data layers
for NHD data steward.
3. NHD data steward
reviews GIS editor’s
comments and initial edits,
annotates areas of
concern, and makes
recommendations.
4. GIS editor modifies
stream network based on
NHD data steward’s
review. Interaction
between GIS editor and
NHD data steward
repeated, as necessary.
5. After NHD data
steward’s approval, GIS
editor finalizes metadata
documents before
preparing NHD update.
6. Following NHD
stewardship procedures,
any affected parties are
notified of pending update,
and LiDAR-based streams
are submitted to the USGS.
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Labor Cost Estimates
The cost estimate to update the NHD is presented in hours rather than dollars as
each agency’s personnel or contractor costs may vary. It is important to note that the NHD
integration and update was performed by a highly skilled NHD GIS editor. The total
editing hours required to update the NHD in Ashland Creek were 30 hours/15,786 acres. If
we extrapolate this time to the average size of a 10 digit Hydrologic Unit (formerly 5th Field
HUC) in Oregon which is approximately 117,650 acres, then it would take the editor
approximately 220 hours/117,650 acres to accomplish this work. However, some
efficiencies of scale may be gained by working in an entire 10-digit HU. On the other hand,
in an agricultural area that contains many lakes and rivers that require artificial paths, the
editing time could increase. Therefore, it is recommended that a complete 10-digit HU be
updated in Phase 2 of the project to obtain more realistic metrics of the time involved in
updating the NHD with LiDAR-derived data.
OVERALL CONCLUSIONS AND RECOMMENDATIONS
Automatically deriving acceptable LiDAR-based stream networks using traditional
spatial analyst tools proved to be difficult and time consuming. The project team made
contact with several other agencies using these tools and these projects all reported similar
problems. Many of these agencies abandoned an automated approach and performed
head-up digitizing from a LiDAR-based shaded relief. These difficulties forced the project
team to investigate a toolset based on the principles of terrain analysis, TauDEM. This
toolset proved to be effective in overcoming most, but not all problems encountered with
the out-of-the-box spatial analyst tools. Therefore, it is recommended that future efforts to
delineate stream networks using LiDAR-based DEMs in areas further evaluate the TauDEM
tool-set. Spatial analyst tools using the D8 flow direction model may generate an
acceptable network, but requires interactive editing before a stream network meeting NHD
requirements is generated.
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Integrating the LiDAR stream network requires the use of ancillary data such as the
NAIP imagery, DRGs, and the original NHD. Special emphasis is placed on preserving
streams with existing GNIS names even though this could make the editing process more
expensive. The time required to integrate these stream data into the NHD appears to be
high enough to justify a cost-benefit analysis before embarking on an update of one or
more 10-digit HUs. Stewardship review and communication with other PNWHF partners
are critical components for a successful NHD update based upon LiDAR.
Since only two small 12-digit HUs on the west side of the Cascades were included in
the first phase of this pilot, the team recommends updating a complete 10-digit HU to
better calibrate the costs and technical processes. In addition, the team recommends
picking a HU with a greater percentage of private ownership so that an institutional
process can be defined to review the new hydrographic data that is derived from LiDAR.
Not all areas or jurisdictions have on-the-ground experts available to review updates like
the Forest Service, BLM, and the Oregon Department of Forestry. Possible HUs should
contain flatter, agricultural areas or a greater percentage of suburban development.
Another consideration for future work is that the HU contain larger number of lakes and
wide streams with artificial paths to not only better estimate the time involved editing, but
to help clarify the cost of any event migration required from a LiDAR update of the NHD.
And finally, this project should be placed into the context of national efforts that
utilize LiDAR to update the NHD. The national NHD steering committee is interested in
defining procedures and estimating costs to integrate LiDAR-derived stream networks into
the NHD. It is imperative that the PNWHF communicate their results to this group as well
as being able to learn from other initiatives that are taking place around the nation.
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LITERATURE CITED
ESRI. 2008. ArcGIS 9.3. Environmental Systems Research Institue, Inc. (ESRI), Redlands, CA, USA. Garbrecht, J. and Martz, L.W. 2000. Digital elevation model issues in water resources modeling. In: Maidment, D. and Djokic, D., eds. Hydrologic and Hydraulic Modeling Support with Geographic Information Systems. Redlands, California: Environmental Systems Research Institute, Inc.: 1-27. Lefsky, M.A., Cohen, W.B., Parker, G.G., and Harding, D.J. 2002. Lidar remote sensing for ecosystem studies. BioScience. 52: 19-30. Lewis, D. 2006. Seeing landslides with LiDAR. Cascadia. 4: 1,3,8. Osborn, K., List, J., Gesch, D., Crowe, J., Merrill, G., Constance, E., Mauck, J., Lund, C., Caruso, V., and Kosovich, J. 2001. National Digital Elevation Program (NDEP). In: Maune, D.F., ed. Digital Elevation Model Technologies and Applications: The DEM Users Manual. Bethesda, Maryland: American Society for Photogrammetry and Remote Sensing: 83-120. Saunders, W. 2000. Preparation of DEMs for use in environmental modeling analysis. In: Maidment, D. and Djokic, D., eds. Hydrologic and Hydraulic Modeling Support with Geographic Information Systems. Redlands, California: Environmental Systems Research Institute, Inc.: 30-51. Tarboton, D.G., Bras, R.L., and Rodriguez-Iturbe, I. 1991. On the extraction of channel networks from digital elevation data. Hydrological Processes. 5:81-100. Tarboton, D.G. 2009. Terrain Analysis Using Digital Elevation Models (TauDEM) 4.0. http://hydrology.neng.usu.edu/taudem/
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SELECTED REFERENCES
Passalacqua, P., Do Trung, T., Foufoula-Georgiou, E., Sapiro, G., and Dietrich, W.E. 2010. A geometric framework for channel network extraction from LiDAR: Nonlinear diffusion and geodesic paths. Journal of Geophysical Research 115:
F01002, doi:10.1029/2009JF001254 Poppenga, S.K., Worstell, B.B., Stoker, J.M., and Greenlee, S.K. 2009. Comparison of surface flow features from LiDAR-derived digital elevation models with historical elevation and hydrography data for Minnehaha County, South Dakota: U.S. Geological Survey Scientific Investigations Report 2009–5065, 24 p. Tarboton, D.G. 1997. A new method for the determination of flow directions and upslope areas in grid digital elevation models. Water Resources Research 33: 309-319. Tveite, H. 1999. An accuracy assessment method for geographical line data sets based on buffering. International Journal of Geographical Information Science 13: 27-47. Wilson J.P. and Gallant J.C. 2000. Digital terrain analysis. In: Wilson J.P., Gallant J.C., eds. Terrain analysis: principles and applications. New York: John Wiley and Sons 1-27.
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ACRONYMS
BLM – Bureau of Land Management
DEM – Digital Elevation Model
GIS – Geographic Information System
HU – Hydrologic Unit
LiDAR - Light Detection and Ranging
NAIP - National Agriculture Imagery Program
NED – National Elevation Dataset
NHD – National Hydrography Dataset
ODF – Oregon Department of Forestry
OWRD – Oregon Water Resources Department
PNWHF – Pacific Northwest Hydrography Framework
TauDEM – Terrain Analysis Using Digital Elevation Models
USFS – U.S. Forest Service
USGS – U.S. Geological Survey