Application of accuracy improvement algorithms for extraction of topographic information and drainage network from DEM using GIS

Sunanda Nagabathula, Srinivasa Rao Yammani
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Abstract

The extraction of drainage network and watershed information is prerequisite for the study of watershed characteristics like morphometric analysis, which provides a basis for hydrological planning and modeling. The advanced tools of algorithms, Shuttle Radar Topographic Mission (SRTM) Digital Elevation Model (DEM) data and Geographical Information System (GIS) software are used to extract drainage networks and their watershed boundaries. These tools are complicated to use or produce more errors in the extraction of elevation and drainage networks when applied to flat areas. For removal of errors and to improve the accuracy in preparation of DEM and extraction of drainage network, Burada Kalava River Basin, Andhra Pradesh, India has been taken for application of accuracy improvement algorithms. An automatic generation of drainage network and watershed using digital elevation model results in positional errors due to variations in slope and topography. This study aimed to generate a catchment area and stream network that closely represent the natural stream network and the streams’ real positions. The step-by-step methodology using GRASS-interfaced Quantum GIS algorithms are given for pre-processing of DEM data to improve the positional accuracy before automatic extraction of the stream network and catchment area to resemble the real situation of the watershed. Secondly, efforts are made to analyze the DEM during automatic generation of the stream network and catchment area by assigning various area threshold values, including the application of pour point coordinates in improving the stream network and watershed characteristics. The results are verified and validated with the field information in order to improve the accuracy levels of DEM quality in generation of drainage network and catchment area.
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应用精度改进算法,利用地理信息系统从 DEM 提取地形信息和排水管网
提取排水管网和流域信息是研究流域特征(如形态分析)的先决条件,这为水文规划和建模提供了基础。先进的算法工具、航天飞机雷达地形任务(SRTM)数字高程模型(DEM)数据和地理信息系统(GIS)软件被用来提取排水网络及其流域边界。这些工具使用起来比较复杂,或者在应用于平坦地区时,在提取高程和排水网络时会产生更多误差。为了消除误差,提高 DEM 制作和排水管网提取的精度,印度安得拉邦的 Burada Kalava 河流域采用了精度改进算法。由于坡度和地形的变化,使用数字高程模型自动生成排水管网和流域会产生位置误差。本研究的目的是生成一个能紧密代表自然溪流网络和溪流实际位置的集水区和溪流网络。在自动提取溪流网络和集水区以反映流域的真实情况之前,给出了使用 GRASS 集成量子 GIS 算法对 DEM 数据进行预处理以提高定位精度的分步方法。其次,在自动生成溪流网络和集水区的过程中,通过分配不同的面积阈值对 DEM 进行分析,包括在改善溪流网络和流域特征时倾点坐标的应用。其结果与实地信息进行了验证和确认,以提高 DEM 质量在生成溪流网络和集水区时的精度水平。
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