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Frontiers of Earth Science

ISSN 2095-0195

ISSN 2095-0209(Online)

CN 11-5982/P

邮发代号 80-963

2019 Impact Factor: 1.62

Frontiers of Earth Science  2021, Vol. 15 Issue (4): 922-935   https://doi.org/10.1007/s11707-021-0936-3
  本期目录
Examining the efficacy of revegetation practices in ecosystem restoration programs: insights from a hotspot of sandstorm in northern China
Ziqiang DU1,2,3, Rong RONG1,2,3, Zhitao WU1,2,3(), Hong ZHANG1,4
1. Institute of Loess Plateau, Shanxi University, Taiyuan 030006, China
2. Shanxi Key Laboratory for Ecological restoration of Loess Plateau, Taiyuan 030006, China
3. Field Scientific Observation and Research Station of the Ministry of Education of Shanxi Subalpine Grassland Ecosystem, Taiyuan 030006, China
4. College of Environmental & Resource Sciences, Shanxi University, Taiyuan 030006, China
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Abstract

Retrospectively evaluating the efficacy of revegetation practices is helpful in planning and implementing future ecosystem restoration programs (ERP). Having a good understanding of how human activities can affect vegetation cover, both before and after ERP, is particularly important in sandstorm hotspot areas. The Beijing–Tianjin Sandstorm Source Region (BTSSR) is one such area. We conducted an investigation into vegetation dynamics within the BTSSR. This was done using remote sensing data in conjunction with climate data sets and land use data spanning the 1982–2014 period. The relationships between climatic factors (such as precipitation and temperature), and vegetative change were modeled using a neural network method. By a process of residual analysis, the proportions of human-induced vegetative change both before and after the ERP were established. Our results show that: 1) before the ERP (1982–2000), 40.96% of the study area exhibited significantly progressive vegetation changes (p<0.05). This proportion decreased to encompass only 20.23% of the study area in the period following the ERP (2001–2014). 2) 89.55% of the study area showed signs of human-induced vegetation degradation before the ERP. Between 2001 and 2014 however, following ERP, this figure fell to only 27.78%. 3) ERP implementation led to visible improvements in vegetative conditions within the BTSSR, especially in areas where ecological restoration measures were directly and anthropogenically applied. These results highlight the benefits that positive human action (i.e., revegetation initiatives implemented under the framework of an ERP) have brought to the BTSSR.

Key wordsvegetation dynamics    human activities    ERP    neural network model    Beijing–Tianjin sandstorm source region
收稿日期: 2020-12-28      出版日期: 2022-01-20
Corresponding Author(s): Zhitao WU   
 引用本文:   
. [J]. Frontiers of Earth Science, 2021, 15(4): 922-935.
Ziqiang DU, Rong RONG, Zhitao WU, Hong ZHANG. Examining the efficacy of revegetation practices in ecosystem restoration programs: insights from a hotspot of sandstorm in northern China. Front. Earth Sci., 2021, 15(4): 922-935.
 链接本文:  
https://academic.hep.com.cn/fesci/CN/10.1007/s11707-021-0936-3
https://academic.hep.com.cn/fesci/CN/Y2021/V15/I4/922
Fig.1  
Fig.2  
Fig.3  
Fig.4  
Fig.5  
Fig.6  
Correlation Period Significant negative/% Non-significant negative/% Non-significant positive/% Significant positive%
NDVI_T 1982–2000 0.10 13.91 64.30 21.69
2001–2014 3.78 70.69 24.52 1.01
NDVI_P 1982–2000 0.01 5.25 59.66 35.08
2001–2014 0.24 4.93 51.71 43.12
NDVI_SPEI 1982–2000 0.05 11.35 71.70 16.90
2001–2014 0.20 4.99 53.12 41.69
Tab.1  
Fig.7  
Period 1991–2000 2001–2014
Significant Degradation/% 26.58 0.19
Slight Degradation/% 62.97 27.59
Slight improvement/% 9.36 63.00
Significant improvement/% 1.09 9.22
Tab.2  
Fig.8  
Fig.9  
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