Cite this paper:
ZHANG Xin, LIU Yuqi, CHEN Yongxin. Development of a location-weighted landscape contrast index based on the minimum hydrological response unit[J]. Journal of Oceanology and Limnology, 2018, 36(4): 1236-1243

Development of a location-weighted landscape contrast index based on the minimum hydrological response unit

ZHANG Xin1, LIU Yuqi1,2, CHEN Yongxin1,2
1 Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing 100101, China;
2 University of Chinese Academy of Sciences, Beijing 100049, China
Abstract:
The changing patterns of watersheds in a landscape, driven by human activities, play an important role in non-point source pollution processes. This paper aims to improve the location-weighted landscape contrast index using remote sensing and GIS technology to account for the effects of scale and ecological processes. The hydrological response unit (HRU) with a single land use and soil type was used as the smallest unit. The relationship between the landscape index and typical ecological processes was established by describing the influence of the landscape pattern on non-point source pollution. To verify the research method, this paper used the Yanshi River basin as a study area. The results showed that the relative intensity of non-point source pollution in different regions of the watershed and the location-weighted landscape contrast index based on the minimum HRU can qualitatively reflect the risk of regional nutrient loss.
Key words:    landscape spatial load contrast index|minimum hydrological response unit|remote sensing|non-point source pollution   
Received: 2017-03-12   Revised:
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Articles by ZHANG Xin
Articles by LIU Yuqi
Articles by CHEN Yongxin
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