China Aero Geophysical Survey and Remote Sensing Center for Natural ResourcesHost
地质出版社Publish
2025 Vol. 37, No. 1
Article Contents

HU Boyang, SUN Jianguo, ZHANG Qian, YANG Yunrui. 2025. Residual trend method based on regional modeling and machine learning for attribution of vegetation changes. Remote Sensing for Natural Resources, 37(1): 46-53. doi: 10.6046/zrzyyg.2023258
Citation: HU Boyang, SUN Jianguo, ZHANG Qian, YANG Yunrui. 2025. Residual trend method based on regional modeling and machine learning for attribution of vegetation changes. Remote Sensing for Natural Resources, 37(1): 46-53. doi: 10.6046/zrzyyg.2023258

Residual trend method based on regional modeling and machine learning for attribution of vegetation changes

More Information
  • Corresponding author: SUN Jianguo  
  • Existing residual trend methods utilize a pixel-by-pixel modeling strategy, in which the ordinary least squares method is employed. These methods suffer certain limitations. On the one hand, the pixel-by-pixel modeling strategy causes each model to contain signal interference from human activities in local space. On the other hand, the ordinary least squares method is unfavorable for simulating commonly observed nonlinear characteristics. This study proposed an entirely new residual trend method based on regional modeling and machine learning. Besides, this study compared two types of environmental variables used to express spatial heterogeneity: ①direct-environmental variables (DEVs) such as terrain, hydrology, and land use; and ②proxy-environmental variables (PEVs) that combine the spatiotemporal series of vegetation and climate. First, a regional modeling strategy was adopted. After DEVs and PEVs were introduced individually, models for the vegetation-climate relationship were built using machine learning. Second, residuals were determined based on the definition of the residual trend method. Finally, the contributions of anthropogenic and climatic factors to vegetation change were assessed. The results indicate that compared to the previous pixel-by-pixel residual trend method that utilizes ordinary least squares, the new residual trend method can simulate the nonlinear features of the vegetation-climate relationship and exhibits enhanced resistance to human signal interference. For the new method, significantly higher performance can be achieved using PEVs compared to DEVs. PEVs can fully utilize the original modeling data, without increasing difficulties with data acquisition and avoiding additional data errors. The residual trend method based on regional modeling and machine learning proposed in this study allows for more effective attribution of vegetation changes.
  • 加载中
  • [1] 孙红雨, 王长耀, 牛铮, 等.中国地表植被覆盖变化及其与气候因子关系──基于NOAA时间序列数据分析[J].遥感学报, 1998, 2(3):204-210.

    Google Scholar

    Sun H Y, Wang C Y, Niu Z, et al.Changes of surface vegetation coverage and its relationship with climate factors in China : Analysis based on NOAA time series data[J].National Remote Sensing Bulletin, 1998, 2(3):204-210.

    Google Scholar

    [2] Intergovernmental Panel on Climate Change (IPCC).Climate change 2013:The physical science basis working group I contribution to the fifth assessment report of the intergovernmental panel on climate change[M].Cambridge:Cambridge University Press, 2014.

    Google Scholar

    [3] Liu Y, Li Y, Li S C, et al.Spatial and temporal patterns of global NDVI trends:Correlations with climate and human factors[J].Remote Sensing, 2015, 7(10):13233-13250.

    Google Scholar

    [4] Evans J, Geerken R.Discrimination between climate and human-induced dryland degradation[J].Journal of Arid Environments, 2004, 57(4):535-554.

    Google Scholar

    [5] Guo E, Wang Y, Wang C, et al.NDVI indicates long-term dynami-cs of vegetation and its driving forces from climatic and anthropogenic factors in Mongolian Plateau[J].Remote Sensing, 2021, 13(4):688.

    Google Scholar

    [6] Radda I A, Kumar B M, Pathak P.Land degradation in Bihar, In-dia:An assessment using rain-use efficiency and residual trend analysis[J].Agricultural Research, 2021, 10(3):434-447.

    Google Scholar

    [7] Li Z D, Wang S, Li C J, et al.The trend shift caused by ecological restoration accelerates the vegetation greening of China’s drylands since the 1980s[J].Environmental Research Letters, 2022, 17(4):044062.

    Google Scholar

    [8] Qu L L, Huang Y X, Yang L F, et al.Vegetation restoration in response to climatic and anthropogenic changes in the Loess Plateau, China[J].Chinese Geographical Science, 2020, 30(1):89-100.

    Google Scholar

    [9] Zhao C L, Yan Y, Ma W Y, et al.RESTREND-based assessment of factors affecting vegetation dynamics on the Mongolian Plateau[J].Ecological Modelling, 2021, 440:109415.

    Google Scholar

    [10] Liu Z J, Liu Y S, Li Y R.Anthropogenic contributions dominate trends of vegetation cover change over the farming-pastoral ecotone of Northern China[J].Ecological Indicators, 2018, 95:370-378.

    Google Scholar

    [11] 金凯, 王飞, 韩剑桥, 等.1982-2015年中国气候变化和人类活动对植被NDVI变化的影响[J].地理学报, 2020, 75(5):961-974.

    Google Scholar

    Jin K, Wang F, Han J Q, et al.Contribution of climatic change and human activities to vegetation NDVI change over China during 1982-2015[J].Acta Geographica Sinica, 2020, 75(5):961-974.

    Google Scholar

    [12] Zhao Y B, Sun R H, Ni Z Y.Identification of natural and anthropogenic drivers of vegetation change in the Beijing-Tianjin-Hebei megacity region[J].Remote Sensing, 2019, 11(10):1224.

    Google Scholar

    [13] Zhou S L, Zhang W C, Wang S H, et al.Spatial-temporal vegetation dynamics and their relationships with climatic, anthropogenic, and hydrological factors in the Amur River Basin[J].Remote Sensing, 2021, 13(4):684.

    Google Scholar

    [14] Chen L F, Zhang H, Zhang X Y, et al.Vegetation changes in coal mining areas:Naturally or anthropogenically Driven?[J].Catena, 2022, 208:105712.

    Google Scholar

    [15] Leroux L, Bégué A, Lo Seen D, et al.Driving forces of recent vegetation changes in the Sahel:Lessons learned from regional and local level analyses[J].Remote Sensing of Environment, 2017, 191:38-54.

    Google Scholar

    [16] Yang L, Shen F X, Zhang L, et al.Quantifying influences of natural and anthropogenic factors on vegetation changes using structural equation modeling:A case study in Jiangsu Province, China[J].Journal of Cleaner Production, 2021, 280:124330.

    Google Scholar

    [17] 刘志红, Tim R.McVicar, Van Niel, 等.专用气候数据空间插值软件ANUSPLIN及其应用[J].气象, 2008, 34(2):92-100.

    Google Scholar

    Liu Z H, McVicar T R, Niel V, et al.Introduction of the professional interpolation software for meteorology data:ANUSPLINN[J].Meteorological Monthly, 2008, 34(2):92-100.

    Google Scholar

    [18] 姚楠, 董国涛, 薛华柱.基于GoogleEarthEngine的黄土高原植被覆盖度时空变化特征分析[J].水土保持研究, 2024, 31(1):260-268.

    Google Scholar

    Yao N, Dong G T, Xue H Z.Analysis on the characteristics of the spatiotemporal change in vegetation coverage on the Loess Plateau using the google earth engine[J].Research of Soil and Water Conservation, 2024, 31(1):260-268.

    Google Scholar

    [19] Drewa P B, Platt W J, Moser E B.Community structure along elevation gradients in headwater regions of longleaf pine savannas[J].Plant Ecology, 2002, 160(1):61-78.

    Google Scholar

    [20] Pei H W, Liu M Z, Jia Y G, et al.The trend of vegetation greening and its drivers in the Agro-pastoral ecotone of Northern China, 2000-2020[J].Ecological Indicators, 2021, 129:108004.

    Google Scholar

    [21] Chaaban F, El Khattabi J, Darwishe H.Accuracy assessment of ESA WorldCover 2020 and ESRI 2020 land cover maps for a region in Syria[J].Journal of Geovisualization and Spatial Analysis, 2022, 6(2):31.

    Google Scholar

    [22] Hasan M A, Mia M B, Khan M R, et al.Temporal changes in land cover, land surface temperature, soil moisture, and evapotranspiration using remote sensing techniques:A case study of Kutupalong Rohingya refugee camp in Bangladesh[J].Journal of Geovisualization and Spatial Analysis, 2023, 7(1):11.

    Google Scholar

    [23] 敖泽建, 王建兵, 蒋友严, 等.2000-2017年甘南牧区植被变化特征及其影响因子[J].沙漠与绿洲气象, 2020, 14(1):95-100.

    Google Scholar

    Ao Z J, Wang J B, Jiang Y Y, et al.Characteristics of vegetation change and influencing factors in Gannan pastoral area from 2000 to 2017[J].Desert and Oasis Meteorology, 2020, 14(1):95-100.

    Google Scholar

    [24] 李文龙, 薛中正, 郭述茂, 等.基于3S技术的玛曲县草地植被覆盖度变化及其驱动力[J].兰州大学学报(自然科学版), 2010, 46(1):85-90, 95.

    Google Scholar

    Li W L, Xue Z Z, Guo S M, et al.Vegetation coverage changes and analysis of the driving forces in Maqu County based on 3S technology[J].Journal of Lanzhou University (Natural Sciences), 2010, 46(1):85-90, 95.

    Google Scholar

    [25] 李丽丽, 王大为, 韩涛.2000-2015年石羊河流域植被覆盖度及其对气候变化的响应[J].中国沙漠, 2018, 38(5):1108-1118.

    Google Scholar

    Li L L, Wang D W, Han T.Spatial-temporal dynamics of vegetation coverage and responding to climate change in Shiyang River basin during 2000-2015[J].Journal of Desert Research, 2018, 38(5):1108-1118.

    Google Scholar

    [26] 胡春艳, 卫伟, 王晓峰, 等.甘肃省植被覆盖变化及其对退耕还林工程的响应[J].生态与农村环境学报, 2016, 32(4):588-594.

    Google Scholar

    Hu C Y, Wei W, Wang X F, et al.Change in vegetation cover as affected by grain for green project in Gansu[J].Journal of Ecology and Rural Environment, 2016, 32(4):588-594.

    Google Scholar

    [27] Zhou W, Gang C, Zhou L, et al.Dynamic of grassland vegetation degradation and its quantitative assessment in the Northwest China[J].Acta Oecologica, 2014, 55:86-96.

    Google Scholar

    [28] 张建永, 李扬, 赵文智, 等.河西走廊生态格局演变跟踪分析[J].水资源保护, 2015, 31(3):5-10.

    Google Scholar

    Zhang J Y, Li Y, Zhao W Z, et al.Tracking analysis on changes of ecological patterns in Hexi Corridor Region [J].Water Resources Protection, 2015, 31(3):5-10.

    Google Scholar

    [29] Wang Q, Adiku S, Tenhunen J, et al.On the relationship of NDVI with leaf area index in a deciduous forest site[J].Remote Sensing of Environment, 2005, 94(2):244-255.

    Google Scholar

  • 加载中
通讯作者: 陈斌, bchen63@163.com
  • 1. 

    沈阳化工大学材料科学与工程学院 沈阳 110142

  1. 本站搜索
  2. 百度学术搜索
  3. 万方数据库搜索
  4. CNKI搜索

Article Metrics

Article views(253) PDF downloads(47) Cited by(0)

Access History

Other Articles By Authors

Catalog

    /

    DownLoad:  Full-Size Img  PowerPoint