Spatiotemporal variation of vegetation and its future development potential in Gansu province
JIN Feng1,2, GE Wenyan3,4, QIN Wei5, HAN Jianqiao3,4, MA Tao6, ZHENG An2
1. School of Earth and Environmental Sciences, Lanzhou University, Lanzhou, 730000, China; 2. Water Resources Department of Gansu Province, 730000, Lanzhou, China; 3. Northwest A&F University, 712100, Yangling, Shaanxi, China; 4. Institute of Soil and Water Conservation, Chinese Academy of Sciences and Ministry of Water Resources, 712100, Yangling, Shaanxi, China; 5. Soil and Water Conservation Ecological Engineering Technology Research Center of the Ministry of Water Resources, China Institute of Water Resources and Hydropower Research, 100048, Beijing, China; 6. Gansu Institute of Soil and Water Conservation, 730020, Lanzhou, China
摘要为探究甘肃省生态治理成效及未来植被提升空间,基于全省2000—2020年生长季(4—9月) MODIS EVI数据及2020年土地利用/覆被数据,采用线性回归方程及基于滑动窗口的相似栖息地潜力模型分析全省植被覆盖的时空变化特征及未来植被恢复潜力。结果表明:1)2000—2020年间,甘肃省生长季EVI以0.002/a速率显著上升,2012年后有所减缓,2016年以后再次大幅提升,近20年全省植被覆盖整体持续改善。2)2000—2020年甘肃省生长季EVI总体由东南向西北递减,年均变化速率介于-0.006~0.010/a;90%区域的植被覆盖有所改善,以陇东和陇南为主的1/3省域植被覆盖显著快速提升。3)陇南与河西分别为全省同期EVI的高值和低值区,且后者的植被覆盖增加最弱;陇中、陇东的植被覆盖变化相对缓慢。4)省内植被恢复指数成效显著,当前植被恢复潜力实现度较高,剩余植被恢复潜力度较低。其中,47.4%的裸地具备转化为绿地的潜力,草地和林地则分别有28.1%和2.5%的面积具备进一步提升的潜力。总之,近20年来甘肃省植被覆盖整体明显改善,但其空间分异特征尚未改变;剔除非自然植被后,全省整体植被覆盖度仅有10%左右的提升空间。
Abstract:[Background]Being an important part of terrestrial ecosystem, vegetation plays a crucial role in soil maintenance, climate regulation and carbon sequestration. As a typical climate-sensitive and ecologically fragile region, Gansu province is inseparable from vegetation for soil and water conservation and ecological restoration. Therefore, large-scaled soil and water conservation projects and ecological projects have been implemented to restore vegetation and improve ecological environment at the end of the last century and the beginning of this century. This study is aimed to explore the effectiveness of afforestation and the restoration potential of future vegetation in Gansu province.[Methods] The linear regression method and sliding-window similar habitat potential model (SWSHPM) were applied to analyze the spatiotemporal variations of vegetation and its future restoration potential, using MODIS (moderate resolution imaging spectroradiometer) EVI (enhanced vegetation index) data of the growing season (April-September) from 2000 to 2020 and the land use and land cover (LULC) data of 2020.[Results] 1) Generally, EVI increased significantly during the growing season from 2000 to 2020 across the study area, with an average annual growth rate of 0.002/a. The growth rate slowed down from 2012 to 2016 and then speeded up again, indicating the continuous improvement of the overall vegetation coverage in Gansu province during the past 20 years. 2) In terms of spatial variation, EVI decreased from the southeast to the northwest during the growing season in Gansu province, with average annual slopes of -0.006-0.010/a. Besides, the vegetation coverage demonstrated significant and rapid increases in about one-third of the study region, dominated by Longdong and Longnan areas. 3) Longnan and Hexi were the high value and low value areas of EVI, respectively. And the increase of the latter vegetation was the weakest. In addition, spatial variations of EVI in Longzhong and Longdong were relatively small. 4) The vegetation restoration potential index (VRPI) in Gansu province achieved remarkable results. The current vegetation restoration potential achieved degree (VRPAD) was relatively high. The surplus vegetation restoration potential degree (SVRPD) was relatively low. Specifically, 47.4% of the bare land has the potential to be transformed into grassland and forest land. Additionally, 28.1% of grassland area and 2.5% of woodland area had the potential to be improved in the future, respectively.[Conclusions] Overall, the vegetation coverage in Gansu province has improved significantly from 2000 to 2020, while its characteristics of spatial heterogeneity remained unchanged. Besides, there were only about 10% in vegetation coverage for improvement in the future after removing the unnatural vegetation in the study area.
靳峰, 戈文艳, 秦伟, 韩剑桥, 马涛, 郑安. 甘肃省植被时空变化及其未来发展潜力[J]. 中国水土保持科学, 2023, 21(1): 110-118.
JIN Feng, GE Wenyan, QIN Wei, HAN Jianqiao, MA Tao, ZHENG An. Spatiotemporal variation of vegetation and its future development potential in Gansu province. SSWC, 2023, 21(1): 110-118.
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