Hydrography change detection: the usefulness of surface channels derived From LiDAR DEMs for updating mapped hydrography

Journal of the American Water Resources Association
By: , and 

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Abstract

The 1:24,000-scale high-resolution National Hydrography Dataset (NHD) mapped hydrography flow lines require regular updating because land surface conditions that affect surface channel drainage change over time. Historically, NHD flow lines were created by digitizing surface water information from aerial photography and paper maps. Using these same methods to update nationwide NHD flow lines is costly and inefficient; furthermore, these methods result in hydrography that lacks the horizontal and vertical accuracy needed for fully integrated datasets useful for mapping and scientific investigations. Effective methods for improving mapped hydrography employ change detection analysis of surface channels derived from light detection and ranging (LiDAR) digital elevation models (DEMs) and NHD flow lines. In this article, we describe the usefulness of surface channels derived from LiDAR DEMs for hydrography change detection to derive spatially accurate and time-relevant mapped hydrography. The methods employ analyses of horizontal and vertical differences between LiDAR-derived surface channels and NHD flow lines to define candidate locations of hydrography change. These methods alleviate the need to analyze and update the nationwide NHD for time relevant hydrography, and provide an avenue for updating the dataset where change has occurred.
Publication type Article
Publication Subtype Journal Article
Title Hydrography change detection: the usefulness of surface channels derived From LiDAR DEMs for updating mapped hydrography
Series title Journal of the American Water Resources Association
DOI 10.1111/jawr.12027
Volume 49
Issue 2
Year Published 2013
Language English
Publisher American Water Resources Association
Publisher location Middleburg, VA
Contributing office(s) Earth Resources Observation and Science (EROS) Center
Description 19 p.
First page 371
Last page 389
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