Bathymetry Data and Models: Best Practices

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Bathymetry Data and Models: Best Practices Barry Eakins & Lisa Taylor The NOAA National Geophysical Data Center Over 600 data types - from the core of the Earth to the surface of the Sun

NGDC Bathymetry Data & Models

NGDC Coastal DEMs NOAA s National Geophysical Data Center (NGDC) builds and distributes highresolution, coastal digital elevation models (DEMs) that integrate ocean bathymetry and land topography to support NOAA s mission to understand and predict changes in Earth s environment, and conserve and manage coastal and marine resources to meet our Nation s economic, social, and environmental needs. DEMs should be as accurate as possible to minimize error in the modeling of coastal processes. Good practices throughout DEM development help to ensure this. integrated bathymetry and topography 1/3 arc-second (~10 m) to 1 arc-second (~30 m) common vertical datum (NAVD 88, MHW) Perspective image of the Northern Gulf Coast 1 arc-second DEM.

NGDC Coastal DEMs http://www.ngdc.noaa.gov/mgg/coastal/coastal.html

Gift Horse? Take your DEM with a grain of salt. or You should assess your gift DEM. Best Practice: Know your DEM.

DEM Uncertainty Rule of thumb: DEM vertical uncertainty > 1% horizontal cell size.

Coastal DEM Best Practices http://www.ngdc.noaa.gov/mgg/coastal/coastal.html

Strategy: Plan Ahead 1. Determine the purpose of the DEM. DEMs have many uses (e.g., modeling of tsunamis, storm surges, or coastal currents), each of which may have specific requirements. 2. Select DEM parameters (extent, cell size, vertical datum, file format, etc.) that will best support the intended use. 3. Choose a gridding technique that will minimize errors when interpolating across large areas without data. 4. Collect data in an area larger than the DEM to avoid anomalies along DEM edges. Pago Pago, American Samoa DEM data sources. Data were collected in an area 5% larger than DEM extents to prevent gridding edge effects. The DEM was also extended to encompass the smaller U.S. islands to the east. A second, higher-resolution DEM (orange box) was built where data are denser. White areas lack depth measurements. Check: Search the Internet for DEMs of your study area to see if an existing one is suitable.

Strategy: Know Your Data 1. Determine what data are available and carefully assess that data, so that you know their inherent problems and limitations. 2. Verify that metadata are correct. 3. Determine if data overlapped by newer surveys need to be eliminated. This may or may not be necessary depending upon if there has been significant morphologic change between the two survey years. An example of anomalies created from overlapping and inconsistent data sets. More recent or higher-resolution data sets are usually more accurate, and the other data may need to be eliminated. Hint: Review journal articles, company survey reports, and local government documents to find data sets in the region that are not accessible on the Internet.

Strategy: Pay Attention to Detail 1. Organize your file structure to help keep track of file types, data edits, and datum conversions. This helps others review your work. 2. Double-check all data conversions and transformations for possible software or processing errors. 3. Determine how detailed your coastline needs to be, and what features should be included or excluded, such as piers. Example of varying coastline needs. Two coastlines were developed for the region surrounding the Los Angeles and Long Beach harbors. The red coastline does not include the large wharves resting on pilings and was used to build an intermediate model of seafloor relief. The white coastline, which includes the wharves, was used to clip the seafloor relief model and ensure that the wharves had positive elevation values in the final DEM. To do: Document all data sources and processing steps when building the DEM, so that users can reconstruct your work.

Strategy: Convert to Common Datum 1. Convert all data to a common horizontal datum and file format, so that overlapping data sets can be directly compared to each other. 2. When necessary (i.e. when the cell size is small, 30 meters or less), convert data to a common vertical datum to minimize anomalies along the coastline. 3. Where available, use VDatum (http://vdatum.noaa.gov/) to convert between vertical datums. Otherwise, use datum offsets measured at local tide stations (http://tidesandcurrents.noaa.gov/). Check: Look for inconsistencies between overlapping data sets, especially along the boundaries of data sets.

Strategy: Thoroughly Evaluate DEM 1. Statistically compare DEM cell elevations with source data sets to ensure that the DEM accurately represents source elevation values. 2. Visually compare the DEM with satellite images, topographic maps, nautical charts, and aerial and personal photographs to ensure that the DEM represents current morphology. 3. Compare DEM cell elevation values with independent measurements of elevation that were not used in DEM development, such as geodetic monuments (http://www.ngs.noaa.gov). A histogram comparing a source data set s elevations with the DEM. Large discrepancies need to be evaluated to determine their origin. Comparison of DEM contours with a georeferenced USGS topographic contour map. Areas where the two contour sets diverge may indicate changes in morphology or errors in the DEM. Hint: Search the Internet for personal photographs of your study area. They may show coastal morphology and be useful for visually evaluating your DEM.

Primary Data Sources Data Types Bathymetry Hydrographic surveys Trackline bathymetry Multibeam swath sonar Topography Coastal lidar USGS NED SRTM ASTER Coastlines NOAA nautical charts Agencies NOAA NGDC Coastal Services Center Office of Coast Survey National Geodetic Survey USGS USACE FEMA State and local governments Academia Businesses International

Data and DEM Issues Source Data Inaccurate metadata Piers in coastlines Vegetation and buildings in lidar (not processed to bare earth) Water-surface values Morphologic change since collection Mixed vertical datums in one dataset Sound velocity errors (multibeam) Random spikes, craters Features not represented in any dataset Software introduces errors during processing Shifted data which are shifted? DEMs Determining relationship between different vertical datums Interpolation over large data gaps select appropriate gridding technique Registration grid/node v. cell/pixel Edge effects from no data buffer Topographic creep DEMs approximate Earth s surface Topographic creep

USGS NED Topography NAVD 88 MHW MHW 1.285 m above NAVD88

Companion DEMs Build companion structured and unstructured DEMs of same area using same cleaned elevation data Part of the Hurricane Forecast Improvement Program Build companion DEMs of Southern LA

Companion DEM Methodology

NGDC DEMs Online http://www.ngdc.noaa.gov/mgg/coastal/coastal.html Includes thorough documentation (report and metadata) on source datasets and DEM development.

DEMs 101 http://www.ngdc.noaa.gov/mgg/coastal/coastal.html barry.eakins@noaa.gov

The NOAA National Geophysical Data Center 325 Broadway, E/GC Boulder, CO 80305-3328 USA Phone: 303-497-6826 Email: ngdc.info@noaa.gov Web: http://www.ngdc.noaa.gov/