Research Article Open Access

Soil Degradation Risk Prediction Integrating RUSLE with Geo-information Techniques, the Case of Northern Shaanxi Province in China

Mushtak T. Jabbar1 and Xiaoling Chen1
  • 1 Stat key laboratory of information engineering in surveying, mapping and remote sensing (LIESMARS) wuhan university, wuhan 430079, people's, China

Abstract

This research integrated the Revised Universal Soil Loss Equation (RUSLE) with RS, GIS and GPS techniques to quantify soil erosion risk and the northern part of Shaanxi province in China was taken as a case. A system was established for rating soil erodibility, slope length/gradient, rainfall erosivity and conservation practices. The rating values served as inputs into a modified Revised Universal Soil Loss Equation (RUSLE) to calculate the risk for soil degradation processes, namely, soil water erosion. Two Landsat TM senses in 1987 and 1999, respectively, were used to produce land use/ cover maps of the study area based on the maximum likelihood classification method. These maps were then used to generate the conservation practice factor in the RUSLE. ERmapper and Arc/Info software were used to manage and manipulate thematic data, to process satellite images and tabular data source. In term of statistic analysis 3985.9 km2 (33.12%) of land area had slight to moderate soil erosion risk, 1583.5 km2 (13.16%) had moderately high soil erosion risk, 2941.4 km2 (24.44%) had high soil erosion risk and 3522.1 km2 (29.27%) of the total land area was in a very high soil erosion risk. The study area, in general, is exposed to high risk of soil water erosion.

American Journal of Applied Sciences
Volume 2 No. 2, 2005, 550-556

DOI: https://doi.org/10.3844/ajassp.2005.550.556

Submitted On: 27 April 2006 Published On: 28 February 2005

How to Cite: Jabbar, M. T. & Chen, X. (2005). Soil Degradation Risk Prediction Integrating RUSLE with Geo-information Techniques, the Case of Northern Shaanxi Province in China. American Journal of Applied Sciences, 2(2), 550-556. https://doi.org/10.3844/ajassp.2005.550.556

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Keywords

  • Geoinformation Techniques
  • Soil Erosion
  • RUSLE
  • Shaanxi
  • China