Small Watersheds Division in Complex Terrain Region Based on Human-machine Interaction—Taking Hubei Province as an Example
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    Abstract:

    [Objective] The watershed division in complex topography area was conducted in order to provide basic data for regional ecological watershed construction and planning.[Methods] Hubei Province was selected as a case study area, where covers mountainous, hill land, plain, many rivers and lakes. Firstly, small watersheds were extracted automatically by using the ArcGIS base on DEM data. Then, small watersheds in the mountains were merged and revised manually with the assistance of gullies, remote sensing images and residential data. For plains, the conventional gullies were replaced by the high-precision river systems. At last, we analyzed the suitable threshold value, frequency, precision and river network density.[Results] There were 5 806 small watersheds in Hubei Province. The watersheds with areas changed from 30 to 50 km2 account for 60% of the total number. Watersheds with area small than 20 km2 had low-precision and dense in plain. In general, the classification accuracy of small watershed in mountainous area was higher than that in plain area, while the average river network density shows the opposite.[Conclusion] The results show the human-machine interaction correction could be used for the small watershed's division in order to get a better result. The accuracy of automatic division of small watersheds in plain area is lower than that in mountainous area, which needs to be corrected manually with high precision water systems.

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韩培,王志刚,高超,张平仓,任洪玉,董林垚.基于人机交互的地形复杂区小流域划分研究——以湖北省为例[J].水土保持通报英文版,2018,38(6):182-186

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History
  • Received:May 07,2018
  • Revised:June 13,2018
  • Adopted:
  • Online: January 07,2019
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