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Journal of Arid Land  2025, Vol. 17 Issue (12): 1785-1805    DOI: 10.1007/s40333-025-0035-5     CSTR: 32276.14.JAL.02500355
Research article     
Comparison of different vegetation indices for estimating vegetation changes and analyzing driving factors in a semi-arid area, China
MA Yutao1,2, GONG Jie1,2,*(), JIN Tiantian1,2, XU Tianyu1,2, KAN Guobin1,2
1Key Laboratory of Western China's Environmental Systems (Ministry of Education), College of Earth and Environmental Sciences, Lanzhou University, Lanzhou 730000, China
2Center for Remote Sensing of Ecological Environments in Cold and Arid Regions, Lanzhou University, Lanzhou 730000, China
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Abstract  

Climate warming and humidification trends have significantly influenced vegetation growth patterns in Chinese semi-arid areas. Exploring vegetation dynamics is crucial for understanding regional ecosystem structure and improving the efforts of ecosystem restoration. However, the applicability of various vegetation indices (VIs) in these arid areas remains uncertain. Evaluating the applicability of multiple VIs for vegetation monitoring can elucidate the variability of VIs performance at regional scale. Therefore, this study selected the Zuli River Basin (ZLRB), a typical loess hilly watershed in the semi-arid areas of China. Using Landsat data, we calculated the Normalized Difference Vegetation Index (NDVI), Enhanced Vegetation Index (EVI), and kernel NDVI (kNDVI) for the ZLRB from 1990 to 2020. We analyzed the spatiotemporal variations of these VIs using trend analysis and the Mann-Kendall test, and quantified the contributions of climate change (considering time-lag effects) and human activities to VIs changes through wavelet and residual analyses. Results indicated that VIs generally exhibited an upward trend in the ZLRB, with significant improvements observed in 54.91% of the area for NDVI, 31.69% for EVI, and 33.71% for kNDVI. Among them, NDVI outperformed EVI and kNDVI in capturing vegetation changes in the semi-arid area. VIs responded to precipitation with 1-month time lag and no time lag to temperature during growing season. Moreover, precipitation had a stronger positive correlation with VIs than temperature. Climate change was identified as the dominant driver of vegetation dynamics in the ZLRB, accounting for 93.12% of NDVI variation, while human activities contributed only 6.88%. Comparative analysis of VIs suggests that NDVI was more suitable for describing vegetation changes in the typical arid area of the ZLRB. Our findings underscore the importance of selecting appropriate VIs for targeted ecological restoration and sustainable land management.



Key wordsvegetation indices      spatiotemporal change      time-lag effect      climate change      human activities      the Zuli River Basin     
Received: 25 April 2025      Published: 31 December 2025
Corresponding Authors: *GONG Jie (E-mail: jgong@lzu.edu.cn)
Cite this article:

MA Yutao, GONG Jie, JIN Tiantian, XU Tianyu, KAN Guobin. Comparison of different vegetation indices for estimating vegetation changes and analyzing driving factors in a semi-arid area, China. Journal of Arid Land, 2025, 17(12): 1785-1805.

URL:

http://jal.xjegi.com/10.1007/s40333-025-0035-5     OR     http://jal.xjegi.com/Y2025/V17/I12/1785

Classification Categorization criterion
Significant increase Slope>0, P<0.01
Insignificant increase Slope>0, 0.01≤P<0.05
Insignificant increase Slope>0, P≥0.05
Insignificant change Slope=0
Insignificant decrease Slope<0, P≥0.05
Insignificant decrease Slope<0, 0.01≤P<0.05
Significant decrease Slope<0, P<0.01
Table 1 Quantitative categorization criteria for dynamic changes in vegetation indices (VIs) of the Zuli River Basin (ZLRB)
Fig. 1 Analysis of inter-annual variation, anomalies, and the Mann-Kendall trends of three different vegetation indices (VIs) in the Zuli River Basin (ZLRB) from 1990 to 2020. (a), NDVI (Normalized Difference Vegetation Index); (b), EVI (Enhanced Vegetation Index); (c), kernel NDVI (kNDVI). UF, unformatted fit; UB, underidentification bias. The shaded area indicates significance at the 95.00% confidence level.
Fig. 2 Spatial change trends of VIs (a-c) and their proportions (d-f) to each land use type in the ZLRB from 1990 to 2020
Fig. 3 Spatiotemporal variation trends of climatic variables in the ZLRB from 1990 to 2020. (a), spatial variation trend in annual average temperature; (b), temporal variation trend of annual average temperature; (c), spatial variation trend in annual average precipitation; (d), temporal variation trend of annual average precipitation.
Fig. 4 Wavelet change analysis of monthly NDVI, precipitation, and temperature of the ZLRB from 1990 to 2020 and their corresponding lagged months. (a1-a3), wavelet power spectra of NDVI, precipitation, and temperature; (b1 and c1), cross wavelet transforms of NDVI-temperature and NDVI-precipitation; (b2 and c2), wavelet coherence transforms of NDVI-temperature and NDVI-precipitation; (b3 and c3), time-lagged response months of temperature and precipitation. The arrows in Figure b1, b2, c1, and c2 represent the relative phase relationship between two sequences. The negative lag values in Figure b3 and c3 indicate that NDVI leads climate variables, while the positive lag values indicate that NDVI lags behind climate variables.
Fig. 5 Spatial distribution of partial correlation coefficients of VIs with temperature (a-c) and precipitation (d-f) of the ZLRB from 1990 to 2020
Fig. 6 Effects of climatic variables on inter-annual variations of VIs in the ZLRB. (a-c), contribution of temperature to inter-annual variation of VIs; (d-f), contribution of precipitation to inter-annual variation of VIs.
Fig. 7 Contributions of climate change (a1, b1, and c1) and human activities (a2, b2, and c2) to inter-annual variations of VIs and proportion of each land use type (a3, b3, and c3) affected by precipitation-lag (Pre), temperature-lag (Tem), climate change (C), and human activities (H) on VIs in the ZLRB
Fig. 8 Linear fitting relationships between Landsat-8 VIs and Sentinel-2 VIs. (a), NDVI; (b), EVI; (c), kNDVI. RMSE, Root Mean Square Error.
Fig. 9 Comparison of localized characteristics of typical areas of VIs in the ZLRB from 1990 to 2020. (a), typical area and land use type; (b1-b3, c1-c3, d1-d3, and e1-e3), annual average of VIs; (b4-b6, c4-c6, d4-d6, and e4-e6), annual trend of VIs.
[1]   Allen M A, Roberts D A, McFadden J P. 2021. Reduced urban green cover and daytime cooling capacity during the 2012-2016 California drought. Urban Climate, 36: 100768, doi:10.1016/j.uclim.2020.100768.
[2]   Bai X L, Zhao W Z, Luo W C, et al. 2024. Effect of climate change on the seasonal variation in photosynthetic and non-photosynthetic vegetation coverage in desert areas, Northwest China. CATENA, 239: 107954, doi:10.1016/j.catena.2024.107954.
[3]   Bai Y. 2021. Analysis of vegetation dynamics in the Qinling-Daba Mountains region from MODIS time series data. Ecological Indicators, 129: 108029, doi:10.1016/j.ecolind.2021.108029.
[4]   Baldin C M, Casella V M. 2025. Comparison of planet scope and Sentinel-2 spectral channels and their alignment via linear regression for enhanced index derivation. Geosciences, 15(5): 184, doi:10.3390/geosciences15050184.
[5]   Bera D, Dutta D, Poddar S, et al. 2025. Meteorological drought dynamics and climatic interactions in the arid and semi-arid regions of western India. Journal of Environmental Management, 387: 125836, doi:10.1016/j.jenvman.2025.125836.
[6]   Camps-Valls G, Campos-Taberner M, Moreno-Martínez Á, et al. 2021. A unified vegetation index for quantifying the terrestrial biosphere. Science Advances, 7(9): eabc7447, doi:10.1126/sciadv.abc7447.
[7]   Cao S X. 2011. Impact of China's large-scale ecological restoration program on the environment and society in arid and semiarid areas of China: Achievements, problems, synthesis, and applications. Critical Reviews in Environmental Science and Technology, 41(4): 317-335.
[8]   Chen D, Wei W, Chen L D, et al. 2024a. Response of soil nutrients to terracing and environmental factors in the Loess Plateau of China. Geography and Sustainability, 5(2): 230-240.
[9]   Chen L, Wei W, Tong B, et al. 2024b. Long-term terrace change and ecosystem service response in an inland mountain province of China. CATENA, 234: 107586, doi:10.1016/j.catena.2023.107586.
[10]   Chen L L, Li Z H, Zhang C L, et al. 2025. Spatiotemporal changes of vegetation in the northern foothills of Qinling Mountains based on kNDVI considering climate time-lag effects and human activities. Environmental Research, 270: 120959, doi:10.1016/j.envres.2025.120959.
[11]   Chen Y, Zhang T B, Zhu X, et al. 2024c. Quantitatively analyzing the driving factors of vegetation change in China: Climate change and human activities. Ecological Informatics, 82: 102667, doi:10.1016/j.ecoinf.2024.102667.
[12]   Cheng M M, Wang Z H, Wang S D, et al. 2024. Determining the impacts of climate change and human activities on vegetation change on the Chinese Loess Plateau considering human-induced vegetation type change and time-lag effects of climate on vegetation growth. International Journal of Digital Earth, 17(1): 2336075, doi:10.1080/17538947.2024.2336075.
[13]   Ding Y X, Li Z, Peng S Z. 2020. Global analysis of time-lag and -accumulation effects of climate on vegetation growth. International Journal of Applied Earth Observation and Geoinformation, 92: 102179, doi:10.1016/j.jag.2020.102179.
[14]   Dong C Y, Yan Y, Guo J, et al. 2023a. Drought-vulnerable vegetation increases exposure of disadvantaged populations to heatwaves under global warming: A case study from Los Angeles. Sustainable Cities and Society, 93: 104488, doi:10.1016/j.scs.2023.104488.
[15]   Dong S J, Xin L J, Li S F, et al. 2023b. Extent and spatial distribution of terrace abandonment in China. Journal of Geographical Sciences, 33(7): 1361-1376.
[16]   Dong T F, Liu J G, Qian B S, et al. 2020. Estimating crop biomass using leaf area index derived from Landsat 8 and Sentinel-2 data. ISPRS Journal of Photogrammetry and Remote Sensing, 168: 236-250.
[17]   Fan F F, Xiao C W, Feng Z M, et al. 2023. Impact of human and climate factors on vegetation changes in mainland Southeast Asia and Yunnan Province of China. Journal of Cleaner Production, 415: 137690, doi:10.1016/j.jclepro.2023.137690.
[18]   Fu Y, Tan X P, Yao Y L, et al. 2024. Uncovering optimal vegetation indices for estimating wetland plant species diversity. Ecological Indicators, 166: 112367, doi:10.1016/j.ecolind.2024.112367.
[19]   Gong X W, Li Y Q, Wang X Y, et al. 2022. Quantitative assessment of the contributions of climate change and human activities on vegetation degradation and restoration in typical ecologically fragile areas of China. Ecological Indicators, 144: 109536, doi:10.1016/j.ecolind.2022.109536.
[20]   Gu Z P, Chen X W, Ruan W F, et al. 2024. Quantifying the direct and indirect effects of terrain, climate and human activity on the spatial pattern of kNDVI-based vegetation growth: A case study from the Minjiang River Basin, Southeast China. Ecological Informatics, 80: 102493, doi:10.1016/j.ecoinf.2024.102493.
[21]   Guo B B, Zhang J, Meng X Y, et al. 2020. Long-term spatio-temporal precipitation variations in China with precipitation surface interpolated by ANUSPLIN. Scientific Reports, 10(1): 81, doi:10.1038/s41598-019-57078-3.
[22]   Henchiri M, Liu Q, Essifi B, et al. 2020. Spatio-temporal patterns of drought and impact on vegetation in North and West Africa based on multi-satellite data. Remote Sensing, 12(23): 3869, doi:10.3390/rs12233869.
[23]   Higgins S I, Conradi T, Muhoko E. 2023. Shifts in vegetation activity of terrestrial ecosystems attributable to climate trends. Nature Geoscience, 16(2): 147-153.
[24]   Hu M, Zhao X E, Chen F, et al. 2025. Increasing evidence of an anthropogenic signal in drought variations on the river source areas of southeastern Tibetan Plateau. Journal of Hydrology, 660: 133508, doi:10.1016/j.jhydrol.2025.133508.
[25]   Huang C L, Xu J, Shan L X. 2023. Long-term variability of vegetation cover and its driving factors and effects over the Zuli River Basin in Northwest China. Sustainability, 15(3): 1829, doi:10.3390/su15031829.
[26]   Huang Y, Wei W, Chen S N, et al. 2024. Effects of terracing with Platycladus orientalis plantations on water budget in the dryland of Loess Plateau in China. Ecological Engineering, 209: 107405, doi:10.1016/j.ecoleng.2024.107405.
[27]   Huete A, Didan K, Miura T, et al. 2002. Overview of the radiometric and biophysical performance of the MODIS vegetation indices. Remote Sensing of Environment, 83(1-2): 195-213.
[28]   Jia X X, Shao M A, Zhu Y J, et al. 2017. Soil moisture decline due to afforestation across the Loess Plateau, China. Journal of Hydrology, 546: 113-122.
[29]   Kolecka N. 2021. Greening trends and their relationship with agricultural land abandonment across Poland. Remote Sensing of Environment, 257: 112340, doi:10.1016/j.rse.2021.112340.
[30]   Li J, Wang J L, Zhang J, et al. 2022a. Growing-season vegetation coverage patterns and driving factors in the China-Myanmar Economic Corridor based on Google Earth Engine and geographic detector. Ecological Indicators, 136: 108620, doi:10.1016/j.ecolind.2022.108620.
[31]   Li X R, Zhang Z S, Tan H J, et al. 2014. Ecological restoration and recovery in the wind-blown sand hazard areas of northern China: Relationship between soil water and carrying capacity for vegetation in the Tengger Desert. Science China Life Sciences, 57(5): 539-548.
[32]   Li X W, Zulkar H, Wang D Y, et al. 2022b. Changes in vegetation coverage and migration characteristics of center of gravity in the arid desert region of Northwest China in 30 recent years. Land, 11(10): 1688, doi:10.3390/land11101688.
[33]   Lian X H, Jiao L M, Liu Z J, et al. 2022. Multi-spatiotemporal heterogeneous legacy effects of climate on terrestrial vegetation dynamics in China. GIScience & Remote Sensing, 59(1): 164-183.
[34]   Liu H X, Zhang A B, Liu C, et al. 2021. Analysis of the time-lag effects of climate factors on grassland productivity in Inner Mongolia. Global Ecology and Conservation, 30: e01751, doi:10.1016/j.gecco.2021.e01751.
[35]   Liu J, Wei L H, Zheng Z P, et al. 2023a. Vegetation cover change and its response to climate extremes in the Yellow River Basin. Science of the total Environment, 905: 167366, doi:10.1016/j.scitotenv.2023.167366.
[36]   Liu L Y, Gou X H, Wang X J, et al. 2024a. Relationship between extreme climate and vegetation in arid and semi-arid mountains in China: A case study of the Qilian Mountains. Agricultural and Forest Meteorology, 348: 109938, doi:10.1016/j.agrformet.2024.109938.
[37]   Liu M, Zhai H L, Zhang X C, et al. 2024b. Time-lag and accumulation responses of vegetation growth to average and extreme precipitation and temperature events in China between 2001 and 2020. Science of the Total Environment, 945: 174084, doi:10.1016/j.scitotenv.2024.174084.
[38]   Liu Y, Liu H H, Chen Y, et al. 2022a. Quantifying the contributions of climate change and human activities to vegetation dynamic in China based on multiple indices. Science of the Total Environment, 838: 156553, doi:10.1016/j.scitotenv.2022.156553.
[39]   Liu Y C, Li Z, Chen Y N, et al. 2022b. Evaluation of consistency among three NDVI products applied to High Mountain Asia in 2000-2015. Remote Sensing of Environment, 269: 112821, doi:10.1016/j.rse.2021.112821.
[40]   Liu Y Y, Yang Y, Wang Q, et al. 2019. Evaluating the responses of net primary productivity and carbon use efficiency of global grassland to climate variability along an aridity gradient. Science of the Total Environment, 652: 671-682.
[41]   Liu Z M, Rong L, Wei W. 2023b. Impacts of land use/cover change on water balance by using the SWAT model in a typical loess hilly watershed of China. Geography and Sustainability, 4(1): 19-28.
[42]   Ma L L, Ma J, Yan P, et al. 2025. Planted forests in China have higher drought risk than natural forests. Global Change Biology, 31(2): e70055, doi:10.1111/gcb.70055.
[43]   Ma M Y, Wang Q M, Liu R, et al. 2023. Effects of climate change and human activities on vegetation coverage change in northern China considering extreme climate and time-lag and -accumulation effects. Science of the Total Environment, 860: 160527, doi:10.1016/j.scitotenv.2022.160527.
[44]   Ma Y R, Guan Q Y, Sun Y F, et al. 2022. Three-dimensional dynamic characteristics of vegetation and its response to climatic factors in the Qilian Mountains. CATENA, 208: 105694, doi:10.1016/j.catena.2021.105694.
[45]   Mo K L, Chen Q W, Chen C, et al. 2019. Spatiotemporal variation of correlation between vegetation cover and precipitation in an arid mountain-oasis river basin in northwest China. Journal of Hydrology, 574: 138-147.
[46]   Naeem S, Zhang Y Q, Tian J, et al. 2020. Quantifying the impacts of anthropogenic activities and climate variations on vegetation productivity changes in China from 1985 to 2015. Remote Sensing, 12(7): 1113, doi:10.3390/rs12071113.
[47]   Piao S L, Nan H J, Huntingford C, et al. 2014. Evidence for a weakening relationship between interannual temperature variability and northern vegetation activity. Nature Communications, 5(1): 5018, doi:10.1038/ncomms6018.
[48]   Prăvălie R, Sîrodoev I, Nita I A, et al. 2022. NDVI-based ecological dynamics of forest vegetation and its relationship to climate change in Romania during 1987-2018. Ecological Indicators, 136: 108629, doi:10.1016/j.ecolind.2022.108629.
[49]   Qiu R N, Li X, Han G, et al. 2022. Monitoring drought impacts on crop productivity of the U.S. Midwest with solar-induced fluorescence: GOSIF outperforms GOME-2 SIF and MODIS NDVI, EVI, and NIRv. Agricultural and Forest Meteorology, 323: 109038, doi:10.1016/j.agrformet.2022.109038.
[50]   Qu S, Wang L C, Lin A W, et al. 2020. Distinguishing the impacts of climate change and anthropogenic factors on vegetation dynamics in the Yangtze River Basin, China. Ecological Indicators, 108: 105724, doi:10.1016/j.ecolind.2019.105724.
[51]   Rusterholz H P, Binggeli D, Baur B. 2020. Successful restoration of abandoned terraced vineyards and grasslands in Southern Switzerland. Basic and Applied Ecology, 42: 35-46.
[52]   Sebastiani A, Salvati R, Manes F. 2023. Comparing leaf area index estimates in a Mediterranean forest using field measurements, Landsat 8, and Sentinel-2 data. Ecological Processes, 12(1): 28, doi:10.1186/s13717-023-00441-0.
[53]   Shen F X, Yang L, Zhang L, et al. 2023. Quantifying the direct effects of long-term dynamic land use intensity on vegetation change and its interacted effects with economic development and climate change in Jiangsu, China. Journal of Environmental Management, 325: 116562, doi:10.1016/j.jenvman.2022.116562.
[54]   Shi S Y, Yu J J, Wang F, et al. 2021. Quantitative contributions of climate change and human activities to vegetation changes over multiple time scales on the Loess Plateau. Science of the Total Environment, 755: 142419, doi:10.1016/j.scitotenv.2020.142419.
[55]   Song X Y, Xie P J, Sun W Y, et al. 2024. The greening of vegetation on the Loess Plateau has resulted in a northward shift of the vegetation greenness line. Global and Planetary Change, 237: 104440, doi:10.1016/j.gloplacha.2024.104440.
[56]   Tang J J, Liu D D, Shang C J, et al. 2024. Impacts of land use change on surface infiltration capacity and urban flood risk in a representative karst mountain city over the last two decades. Journal of Cleaner Production, 454: 142196, doi:10.1016/j.jclepro.2024.142196.
[57]   Tian P, Tian X J, Geng R, et al. 2023. Response of soil erosion to vegetation restoration and terracing on the Loess Plateau. CATENA, 227: 107103, doi:10.1016/j.catena.2023.107103.
[58]   Tomás R, Li Z, Lopez-Sanchez J M, et al. 2016. Using wavelet tools to analyse seasonal variations from InSAR time-series data: A case study of the Huangtupo landslide. Landslides, 13(3): 437-450.
[59]   Villani L, Castelli G, Yimer E A, et al. 2024. Impacts of climate change and vegetation response on future aridity in a Mediterranean catchment. Agricultural Water Management, 299: 108878, doi:10.1016/j.agwat.2024.108878.
[60]   Wang Q, Moreno-Martínez Á, Muñoz-Marí J, et al. 2023a. Estimation of vegetation traits with kernel NDVI. ISPRS Journal of Photogrammetry and Remote Sensing, 195: 408-417.
[61]   Wang S J, Chen F, Chen Y P, et al. 2025a. Greening of Eurasia's center driven by low-latitude climate warming. Forest Ecosystems, 13: 100330, doi:10.1016/j.fecs.2025.100330.
[62]   Wang S N, Zhou Q C, Wu Y J, et al. 2024a. Drought lag and its cumulative effects on vegetation dynamics and response to atmospheric circulation factors in Yinshanbeilu, Inner Mongolia. Global Ecology and Conservation, 54: e03087, doi:10.1016/j.gecco.2024.e03087.
[63]   Wang Y H, Yang A X, Shen W H, et al. 2024b. Spatial patterns, determinants, future trends, and implications for the sustainable use of terraces abandonment in China. Journal of Cleaner Production, 467: 142860, doi:10.1016/j.jclepro.2024.142860.
[64]   Wang Z, Wang Y C, Liu Y, et al. 2023b. Spatiotemporal characteristics and natural forces of grassland NDVI changes in Qilian Mountains from a sub-basin perspective. Ecological Indicators, 157: 111186, doi:10.1016/j.ecolind.2023.111186.
[65]   Wang Z Z, Fu B J, Wu X T, et al. 2025b. Exploring the interdependencies of ecosystem services and social-ecological factors on the Loess Plateau through network analysis. Science of the Total Environment, 960: 178362, doi:10.1016/j.scitotenv.2024.178362.
[66]   Wu D H, Zhao X, Liang S L, et al. 2015. Time-lag effects of global vegetation responses to climate change. Global Change Biology, 21(9): 3520-3531.
[67]   Wu L Z, Ma X F, Dou X, et al. 2021. Impacts of climate change on vegetation phenology and net primary productivity in arid Central Asia. Science of the Total Environment, 796: 149055, doi:10.1016/j.scitotenv.2021.149055.
[68]   Xu Y M, Qin Y M, Li B, et al. 2025. Estimating vegetation aboveground biomass in Yellow River Delta coastal wetlands using Sentinel-1, Sentinel-2 and Landsat-8 imagery. Ecological Informatics, 87: 103096, doi:10.1016/j.ecoinf.2025.103096.
[69]   Yang S K, Liu J, Wang C H, et al. 2022. Vegetation dynamics influenced by climate change and human activities in the Hanjiang River Basin, Central China. Ecological Indicators, 145: 109586, doi:10.1016/j.ecolind.2022.109586.
[70]   Yeditha P K, Anusha G S, Nandikanti S S S, et al. 2023. Development of monthly scale precipitation-forecasting model for Indian Subcontinent using wavelet-based deep learning approach. Water, 15(18): 3244, doi:10.3390/w15183244.
[71]   Yu X J, Zhang L X, Zhou T J, et al. 2024. Higher atmospheric aridity-dominated drought stress contributes to aggravating dryland productivity loss under global warming. Weather and Climate Extremes, 44: 100692, doi:10.1016/j.wace.2024.100692.
[72]   Zhang D N, Zuo X X, Zang C F. 2021. Assessment of future potential carbon sequestration and water consumption in the construction area of the Three-North Shelterbelt Programme in China. Agricultural and Forest Meteorology, 303: 108377, doi:10.1016/j.agrformet.2021.108377.
[73]   Zhang X Y, Jia W W, Lu S X, et al. 2024. Ecological assessment and driver analysis of high vegetation cover areas based on new remote sensing index. Ecological Informatics, 82: 102786, doi:10.1016/j.ecoinf.2024.102786.
[74]   Zhang Y, Zhang C B, Wang Z Q, et al. 2016. Vegetation dynamics and its driving forces from climate change and human activities in the Three-River Source Region, China from 1982 to 2012. Science of the Total Environment, 563-564: 210-220.
[75]   Zhang Z H, Zhang F, Zhang Z Z, et al. 2023. Study on water quality change trend and its influencing factors from 2001 to 2021 in Zuli River Basin in the northwestern part of the Loess Plateau, China. Sustainability, 15(8): 6360, doi:10.3390/su15086360.
[76]   Zhao J P, Guo E H, Wang Y F, et al. 2023. Ecological drought monitoring of Inner Mongolia vegetation growing season based on kernel temperature vegetation drought index (kTVDI). Chinese Journal of Applied Ecology, 34(11): 2929-2937. (in Chinese)
[77]   Zheng K, Wei J Z, Pei J Y, et al. 2019a. Impacts of climate change and human activities on grassland vegetation variation in the Chinese Loess Plateau. Science of the Total Environment, 660: 236-244.
[78]   Zheng K, Ye J S, Jin B C, et al. 2019b. Effects of agriculture, climate, and policy on NDVI change in a semi-arid river basin of the Chinese Loess Plateau. Arid Land Research and Management, 33(3): 321-338.
[79]   Zhong Q K, Li Z. 2024. Long-term trends of vegetation greenness under different urban development intensities in 889 global cities. Sustainable Cities and Society, 106: 105406, doi:10.1016/j.scs.2024.105406.
[80]   Zhu C C, Tian J, Tian Q J, et al. 2023a. Using NDVI-NSSI feature space for simultaneous estimation of fractional cover of non-photosynthetic vegetation and photosynthetic vegetation. International Journal of Applied Earth Observation and Geoinformation, 118: 103282, doi:10.1016/j.jag.2023.103282.
[81]   Zhu L Y, Sun S, Li Y, et al. 2023b. Effects of climate change and anthropogenic activity on the vegetation greening in the Liaohe River Basin of northeastern China. Ecological Indicators, 148: 110105, doi:10.1016/j.ecolind.2023.110105.
[82]   Zhu Z, Wang S X, Woodcock C E. 2015. Improvement and expansion of the Fmask algorithm: Cloud, cloud shadow, and snow detection for Landsats 4-7, 8, and Sentinel 2 images. Remote Sensing of Environment, 159: 269-277.
[83]   Zuo D P, Han Y, Xu Z X, et al. 2021. Time-lag effects of climatic change and drought on vegetation dynamics in an alpine river basin of the Tibet Plateau, China. Journal of Hydrology, 600: 126532, doi:10.1016/j.jhydrol.2021.126532.
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