首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Modeling alpine grassland cover based on MODIS data and support vector machine regression in the headwater region of the Huanghe River, China
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Modeling alpine grassland cover based on MODIS data and support vector machine regression in the headwater region of the Huanghe River, China

机译:基于MODIS数据的高山草地封面,支持黄河河下游地区的MODIS数据和支持向量机回归

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摘要

Monitoring changes in grassland cover is essential in assessment of grassland health as well as the effects of anthropogenic interventions and global climate change on grassland ecosystems. Remote sensing is an effective approach for providing rapid and dynamic monitoring of vegetation cover over large grassland areas. In this study, four types of remote sensing retrieval models (i.e., pixel dichotomy models, univariate vegetation index (VI) regression models, multivariate regression models, and a support vector machine (SVM) model) are built to derive grassland cover based on moderate resolution imaging spectroradiometer (MODIS) data and the measured grassland cover data collected by unmanned aerial vehicle during the grassland peak growing season from 2014 to 2016. The optimal model is then used to map the spatial distribution of grassland cover and its dynamic change in the headwater region of the Huanghe River (Yellow River) (HRHR) of the northeastern Tibetan Plateau over the 16 years period (2001 to 2016). The results show that (1) the pixel dichotomy models based on MODIS VI data are inappropriate for estimating grassland cover in the HRHR when their endmembers (VIsoil and VIved are determined based only on the MODIS data; (2) the multivariate regression models present better performance than the univariate VI (normalized difference vegetation index (NDVI) or enhanced vegetation index (EVI)) models; (3) MODIS NDVI outperforms MODIS EVI for modeling grassland cover in the study area; (4) the SVM model based on nine factors is the optimal model (R-2: 0.75 and RMSE: 6.85%) for monitoring alpine grassland cover in the study area; and (5) majority of the grassland area (59.9%) of the HRHR showed increase in yearly maximum grassland cover from 2001 to 2016, while the average yearly maximum grassland cover for the 16 years exhibited a generally increasing trend from west to east and from north to south. This study provides a more suitable remote sensing inversion model to greatly improve the accuracy of modeling alpine grassland cover in the HRHR, and to better assess grassland health status and the impacts of warming climate to grasslands in regions of remote and harsh environments.
机译:草原封面的监测变化对于评估草地健康以及人为干预和全球气候变化对草地生态系统的影响至关重要。遥感是一种有效的方法,可以在大型草地区域提供植被覆盖的快速和动态监测。在这项研究中,四种类型的遥感检索模型(即像素二分形式模型,单变量植被指数(VI)回归模型,多变量回归模型和支持向量机(SVM)模型)构建为基于中等的草原盖2014年至2016年在草地峰值生长季节在草原峰值生长季节期间由无人航空车辆收集的分辨率成像分光镜(MODIS)数据和测量的草地覆盖数据。然后使用最佳模型来映射草地盖板的空间分布及其动力变化泰国东北高原东北河(黄河)(HRHR)区域(2001年至2016年)。结果表明(1)基于MODIS VI数据的像素二分术模型不适合估算HRHR中的草地盖,当它们的终端(粘膜和VIVED仅基于MODIS数据确定;(2)多元回归模型更好性能而不是单变量VI(归一化差异植被指数(NDVI)或增强的植被指数(EVI))模型;(3)MODIS NDVI在研究区内建模草地封面的MODIS EVI超越;(4)基于九个因素的SVM模型是最佳模型(R-2:0.75和RMSE:6.85%),用于监测研究区域的高山草地封面;(5)大多数草原地区(59.9%)的HRHR显示年度最大草地覆盖2001年至2016年,虽然16岁的平均年度最大草原封面普遍越来越多的趋势从西部到东部,从北到南方。本研究提供了更合适的遥感反演模型,以大大改善a HRHR中高山草地封面的康复,并更好地评估草地健康状况及幽默气候变暖对遥控环境中草原的影响。

著录项

  • 来源
  • 作者单位

    Lanzhou Univ Coll Pastoral Agr Sci &

    Technol Minist Educ Engn Res Ctr Grassland Ind Minist Agr &

    Rural Aff State Key Lab Grassland Agroecosyst Key Lab Grass Lanzhou 730000 Gansu Peoples R China;

    Lanzhou Univ Coll Pastoral Agr Sci &

    Technol Minist Educ Engn Res Ctr Grassland Ind Minist Agr &

    Rural Aff State Key Lab Grassland Agroecosyst Key Lab Grass Lanzhou 730000 Gansu Peoples R China;

    Lanzhou Univ Coll Pastoral Agr Sci &

    Technol Minist Educ Engn Res Ctr Grassland Ind Minist Agr &

    Rural Aff State Key Lab Grassland Agroecosyst Key Lab Grass Lanzhou 730000 Gansu Peoples R China;

    Lanzhou Univ Coll Pastoral Agr Sci &

    Technol Minist Educ Engn Res Ctr Grassland Ind Minist Agr &

    Rural Aff State Key Lab Grassland Agroecosyst Key Lab Grass Lanzhou 730000 Gansu Peoples R China;

    Lanzhou Univ Coll Pastoral Agr Sci &

    Technol Minist Educ Engn Res Ctr Grassland Ind Minist Agr &

    Rural Aff State Key Lab Grassland Agroecosyst Key Lab Grass Lanzhou 730000 Gansu Peoples R China;

    Lanzhou Univ Coll Pastoral Agr Sci &

    Technol Minist Educ Engn Res Ctr Grassland Ind Minist Agr &

    Rural Aff State Key Lab Grassland Agroecosyst Key Lab Grass Lanzhou 730000 Gansu Peoples R China;

    Lanzhou Univ Coll Pastoral Agr Sci &

    Technol Minist Educ Engn Res Ctr Grassland Ind Minist Agr &

    Rural Aff State Key Lab Grassland Agroecosyst Key Lab Grass Lanzhou 730000 Gansu Peoples R China;

    Univ Texas San Antonio Dept Geol Sci Lab Remote Sensing &

    Geoinformat San Antonio TX 78249 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境监测;一般性问题;地球物理学;
  • 关键词

    Tibetan Plateau; Unmanned aerial vehicle; Pixel dichotomy model; Multivariate regression; Accuracy assessment; Trend analysis;

    机译:西藏高原;无人驾驶飞行器;像素二分法模型;多元回归;准确性评估;趋势分析;

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