[Comparison of Three Remote Sensing Indices in Revealing the Vegetation Growth Dynamics in Nepal from 2000 to 2020].

Q2 Environmental Science
Zi-Yuan Liu, De-Cheng Zhou, Lu Hao, Jiang-Wen Fan, Liang-Xia Zhang
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引用次数: 0

Abstract

Remote sensing indices have been widely used to monitor the vegetation growth dynamics induced by climate change and human activities, and yet the consistency of the vegetation dynamics revealed by different remote sensing indices in mountains is unclear. Using Nepal as a case study, this study explored the spatial-termporal consistencies of the three widely-used remote sensing indices (i.e., normalized difference vegetation index (NDVI), leaf area index (LAI), and net primary production (NPP)) in quantifying the vegetation growth dynamics in mountainous regions. The results indicated that the spatial distributions of the multi-year mean estimates varied greatly by remote sensing index, especially in the low-altitude regions. The maximum NDVI, LAI, and NPP occurred in the low, medium, and high mountain regions, respectively. Although all three indices showed an overall increasing tendency from a long-term perspective, the area percentage of the lands with a significant trend was obviously larger in NDVI (82%) than that in NPP (58%) and LAI (56%). In addition, the land area percentages with vegetation growth enhancement decreased gradually by the rise of altitude for both the NDVI and LAI indices but decreased after an increase for the NPP index. Only 9.6% of the lands showed consistent long-term trends (with the same change directions and significant levels) in the three indices on a per-pixel basis. Our findings highlight the large uncertainties of remote sensing indices in monitoring vegetation growth dynamics in mountainous areas, and the importance of developing reinforced remote sensing products in future efforts.

[比较三种遥感指数以揭示 2000 至 2020 年尼泊尔植被生长动态]。
遥感指数已被广泛用于监测气候变化和人类活动引起的植被生长动态,但不同遥感指数所揭示的山区植被动态的一致性尚不明确。本研究以尼泊尔为例,探讨了三种广泛使用的遥感指数(归一化差异植被指数(NDVI)、叶面积指数(LAI)和净初级生产力(NPP))在量化山区植被生长动态方面的空间-地域一致性。结果表明,不同遥感指标的多年平均估算值的空间分布差异很大,特别是在低海拔地区。最大的 NDVI、LAI 和 NPP 分别出现在低、中、高山地区。虽然从长远角度看,三个指数总体上都呈上升趋势,但NDVI(82%)明显大于NPP(58%),而NDVI(82%)明显大于NPP(58%)。58%)和 LAI(56和 LAI(56%)。此外,随着海拔的升高,NDVI 和 LAI 指数中植被生长增强的土地面积百分比逐渐减少,而 NPP 指数中植被生长增强的土地面积百分比则在海拔升高后减少。仅有 9.6% 的土地在三个指数上呈现出一致的长期趋势(变化方向一致且水平显著)。以每个像素为单位,三个指数的变化趋势一致(变化方向相同且水平显著)。我们的研究结果凸显了遥感指数在监测山区植被生长动态方面的巨大不确定性,以及在未来工作中开发强化遥感产品的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Huanjing Kexue/Environmental Science
Huanjing Kexue/Environmental Science Environmental Science-Environmental Science (all)
CiteScore
4.40
自引率
0.00%
发文量
15329
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