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Journal of Arid Land  2022, Vol. 14 Issue (8): 849-866    DOI: 10.1007/s40333-022-0100-2     CSTR: 32276.14.s40333-022-0100-2
Research article     
Monitoring rock desert formation caused by two different origins (ice-snow melting and drying) in the Qinghai-Tibet Plateau of China by considering topographic and meteorological elements
JIA Wei1,2, SHI Peijun3,4,*(), WANG Jing'ai1,4,5, MA Weidong2, XIA Xingsheng2,3, ZHOU Yuantao2
1Key Laboratory of Tibetan Plateau Land Surface Processes and Ecological Conservation (Ministry of Education), Qinghai Normal University, Xining 810008, China
2School of Geographical Sciences, Qinghai Normal University, Xining 810008, China
3Academy of Plateau Science and Sustainability, Qinghai Normal University, Xining 810008, China
4Key Laboratory of Environmental Change and Natural Disaster, Ministry of Education, Beijing Normal University, Beijing 100875, China
5Faculty of Geographical Science, Beijing Normal University, Beijing 100875, China
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Abstract  

Monitoring rock desert formation caused by two different origins (ice-snow melting and drying) through remote sensing is crucial to our understanding of the interaction between the underlying surface of different rock desert and land-atmosphere types, as well as the relationship between bare land and soil erosion. A number of achievements have been made in remote sensing monitoring of desert areas, but there is a lack of accurate classification and remote sensing identification of rock desert types based on formation mechanism. In this study, the north and south sides of the eastern Kunlun Mountains in the northern part of the Qinghai-Tibet Plateau of China were taken as the study areas. Landsat operational landscape imager, digital elevation model, and precipitation and temperature grid data were used as data sources. By identifying the bare areas based on the normalized difference vegetation index (NDVI), we used the multi-element fusion method of contours, isotherms, and isohyets to identify the rock desert types in the ice-snow melting and dry areas. The results showed that: (1) the rock desert areas identified by remote sensing based on topographic and meteorological elements were highly accurate, with an overall accuracy of 88.45% and kappa coefficient of 0.77. The multi-element fusion method of contours, isotherms, and isohyets could effectively identify the rock desert types in the ice-snow melting and dry areas; (2) the optimal segmentation range of the ice-snow melting and dry areas was 3600 m contour, -2°C-2°C isotherms, and 100-130 mm isohyets. The areas with elevation less than 3600 m, annual average temperature higher than 2°C, and average annual precipitation less than 100 mm were rock desert in the dry areas. The range of -2°C-2°C isotherms and 100-130 mm isohyets was the transition area between the ice-snow melting and dry areas. The areas with elevation higher than 3600 m, annual average temperature less than -2°C, and average annual precipitation higher than 130 mm were rock desert in the ice-snow melting areas; and (3) the identification accuracy of the bare areas based on the NDVI method was better, specifically, the identification accuracy of plain bare areas was generally better than that of mountain bare areas. The remote sensing identification method considers not only the topographic factors that have great influence on the spatial distribution of the two types of rock desert areas, but also the meteorological factors, which can provide a scientific reference for the effective identification of the two types of rock desert areas.



Key wordsrock desert in the ice-snow melting areas      rock desert in the dry areas      contours      isotherms      isohyets      Qinghai-Tibet Plateau     
Received: 14 May 2022      Published: 30 August 2022
Corresponding Authors: * SHI Peijun (E-mail: spj@bnu.edu.cn)
Cite this article:

JIA Wei, SHI Peijun, WANG Jing'ai, MA Weidong, XIA Xingsheng, ZHOU Yuantao. Monitoring rock desert formation caused by two different origins (ice-snow melting and drying) in the Qinghai-Tibet Plateau of China by considering topographic and meteorological elements. Journal of Arid Land, 2022, 14(8): 849-866.

URL:

http://jal.xjegi.com/10.1007/s40333-022-0100-2     OR     http://jal.xjegi.com/Y2022/V14/I8/849

Fig. 1 Material composition and spatial distribution characteristics of the rock desert in the ice-snow melting areas (hand-painted by Prof. SHI Peijun)
Fig. 2 Material composition and spatial distribution characteristics of rock desert in the dry areas (hand-painted by Prof. SHI Peijun). The mountains are located on the southern side of the valley plain, the direction of the mountains is east-west.
Fig. 3 Overview of the study area
Fig. 4 Remote sensing identification process of the rock desert in the ice-snow melting and dry areas. OLI, operational landscape imager; DEM, digital elevation model.
Fig. 5 Landsat8 OLI images of the study area. (a and b), the images of plain areas; (c and d), the images of mountain areas. P136R034, P137R034, P136R035, and P137R035 are the path/row numbers of the remote sensing image used.
Plain areas Mountain areas
Land use type NDVI threshold Land use type NDVI threshold
Water, residential land, and industrial land ≤ ‒0.10 Water, residential land ≤ ‒0.10
Bare land -0.10-0.12 Ice-snow covered land -0.10-0.00
Vegetation ≥0.12 Bare land 0.00-0.08
Vegetation ≥0.08
Table 1 Normalized difference vegetation index (NDVI) threshold of each land use type in the bare areas
Type Producer's
accuracy (pixel)
User's
accuracy (pixel)
Producer's
accuracy (%)
User's
accuracy (%)
Overall
accuracy (%)
Kappa
coefficient
Plain areas Bare areas 90/92 90/93 97.83 96.78 96.21 0.91
Non-bare areas 37/40 37/39 92.50 94.87
Mountain areas Bare areas 41/47 41/45 87.23 91.11 91.38 0.82
Non-bare areas 65/69 65/71 94.20 91.55
Whole study areas Bare areas 131/139 131/138 94.24 94.93 93.95 0.88
Non-bare areas 102/109 102/110 93.58 92.73
Table 2 Accuracy verification results of the bare areas identification
Type Producer's accuracy (Pixel) User's accuracy (Pixel) Producer's accuracy (%) User's accuracy (%) Overall accuracy (%) Kappa coefficient
Rock desert in the ice-snow melting areas 36/42 36/43 85.71 83.72 88.45 0.77
Rock desert in the dry areas 80/88 80/86 90.91 93.02
Transition area 7/9 7/10 77.78 70.00
Table 3 Accuracy verification results of identification of rock desert in the ice-snow melting and dry areas and transition area
Fig. 6 Calculation results of the NDVI based on OLI images. (a and b), the images in the plain areas; (c and d), the images in the mountain areas. P136R034, P137R034, P136R035, and P137R035 are the Path/Row numbers of the remote sensing image used.
Fig. 7 Identification results of the bare areas based on the NDVI method
Fig. 8 Extraction results of contours (a), isotherms (b), and isohyets (c)
Fig. 9 Identification results overlay multi-factor analysis for the two types of rock desert areas
Fig. 10 NDVI (a1-d1) and NDVI density segmentation (a2-d2) results in the plain areas
Fig. 11 NDVI (a1-d1) and NDVI density segmentation (a2-d2) results in the mountain areas
Fig. 12 Variation trend of annual average temperature (a) and average annual precipitation (b) from 1991 to 2018
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