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首页> 外文期刊>International journal of remote sensing >Mapping pasture biomass in Mongolia using Partial Least Squares, Random Forest regression and Landsat 8 imagery
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Mapping pasture biomass in Mongolia using Partial Least Squares, Random Forest regression and Landsat 8 imagery

机译:使用偏最小二乘,随机森林回归和Landsat 8影像绘制蒙古的牧场生物量

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摘要

The aim of this study was to develop a robust methodology to estimate pasture biomass across the huge land surface of Mongolia (1.56 x 10(6) km(2)) using high-resolution Landsat 8 satellite data calibrated against field-measured biomass samples. Two widely used regression models were compared and adopted for this study: Partial Least Squares (PLS) and Random Forest (RF). Both methods were trained to predict pasture biomass using a total of 17 spectral indices derived from Landsat 8 multi-temporal satellite imagery as predictor variables. For training, reference biomass data from a field survey of 553 sites were available. PLS results showed a satisfactory correlation between field measured and estimated biomass with coefficient of determination (R-2) = 0.750 and Root Mean Square Error (RMSE) = 101.10 kg ha(-1). The RF regression gave similar results with R-2 = 0.764, RMSE = 98.00 kg ha(-1). An examination of feature importance found the following vegetation indices to be the most relevant: Green Chlorophyll Index (CLgreen), Simple Ratio (SR), Wide Dynamic Range Vegetation Index (WDRVI), Enhanced Vegetation Index EVI1 and Normalized Difference Vegetation Index (NDVI) indices. With respect to the spectral reflectances, Red and Short Wavelength Infra-Red2 (SWIR2) bands showed the strongest correlation with biomass. Using the developed PLS models, a spatial map of pasture biomass covering Mongolia at a spatial resolution of 30 m was generated. Our study confirms the high potential of RF and PLS regression (PLSR) models to predict pasture biomass. The computationally simpler PLSR model is preferred for applications involving large regions. This method can be implemented easily, provided that sufficient reference data and cloud-free observations are available.
机译:这项研究的目的是使用针对实地测量的生物量样本校准的高分辨率Landsat 8卫星数据,开发一种鲁棒的方法来估算蒙古大片土地(1.56 x 10(6)km(2))上的牧场生物量。比较了两个广泛使用的回归模型,并将其用于本研究:偏最小二乘(PLS)和随机森林(RF)。两种方法都经过训练以使用Landsat 8多时相卫星图像中的17个光谱指数作为预测变量来预测草场生物量。为了进行培训,可获得来自553个站点的现场调查的参考生物量数据。 PLS结果表明,实地测量的生物量与估计的生物量之间具有令人满意的相关性,测定系数(R-2)= 0.750,均方根误差(RMSE)= 101.10 kg ha(-1)。 RF回归得到的结果相似,R-2 = 0.764,RMSE = 98.00 kg ha(-1)。对特征重要性的检查发现以下植被指数最相关:绿叶绿素指数(CLgreen),简单比率(SR),宽动态范围植被指数(WDRVI),增强植被指数EVI1和归一化差异植被指数(NDVI)索引。关于光谱反射率,红色和短波红外2(SWIR2)波段显示出与生物量的最强相关性。使用已开发的PLS模型,以30 m的空间分辨率生成了覆盖蒙古的牧场生物量的空间图。我们的研究证实了RF和PLS回归(PLSR)模型预测牧场生物量的巨大潜力。对于涉及大区域的应用,首选计算简单的PLSR模型。只要有足够的参考数据和无云的观测资料,这种方法就可以轻松实现。

著录项

  • 来源
    《International journal of remote sensing》 |2019年第8期|3204-3226|共23页
  • 作者单位

    Mongolian Acad Sci, Inst Geog & Geoecol, Ulaanbaatar, Mongol Peo Rep;

    Univ Nat Resources & Life Sci, Inst Surveying Remote Sensing & Land Informat, Vienna, Austria;

    Mongolian Acad Sci, Inst Geog & Geoecol, Ulaanbaatar, Mongol Peo Rep;

    Mongolian Acad Sci, Inst Geog & Geoecol, Ulaanbaatar, Mongol Peo Rep;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
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