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A linear mixed-effects model of biomass and volume of trees using Landsat ETM+ images.

机译:使用Landsat ETM +图像的生物量和树木体积的线性混合效应模型。

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Using forest inventory data and Landsat ETM+ data, linear fixed-effects models and linear mixed-effects models are developed based on the allometric growth model. The surface area of the normalized difference vegetation index (NDVIsa) is developed from the triangulated irregular network (TIN) with the aid of image-processing and the three-dimensional analysis extensions of Environmental Systems Research Institute's ArcView GIS software. The NDVIsa is used as the predictor, and it implies the area of trees for both site and area. Linear fixed-effects and linear mixed-effects models based on the allometric growth model are developed to fit the relationships between either biomass or volume and NDVIsa. Linear mixed-effects model with both intercept and slope having random-effects best fits the data, and the relatively high R2 (approximately 0.57) was achieved. This linear mixed-effects model is significantly different from the linear fixed-effects model and the linear mixed-effects model with only intercept having random-effects. The best fitted linear mixed-effects model discovers different spatial characteristics of biomass and volume of trees across the whole state of Georgia, USA. The Piedmont ecoregion has positive allometric characteristics, the Upper Coastal Plain has negative allometry, whereas the other three ecoregions have isometric characteristics. At last, the linear mixed-effects models were compared with the extreme situation, fitting linear fixed-effects models within each region. Model diagnostics indicated that the linear mixed-effects models were the best modelling approach..
机译:利用森林清单数据和Landsat ETM +数据,基于异速生长模型开发线性固定效应模型和线性混合效应模型。归一化植被指数(NDVIsa)的表面积是由三角不规则网络(TIN)借助图像处理和环境系统研究所的ArcView GIS软件的三维分析扩展而开发的。 NDVIsa用作预测变量,它表示站点和区域的树木面积。开发了基于异速生长模型的线性固定效应和线性混合效应模型,以适应生物量或体积与NDVIsa之间的关系。截距和斜率都具有随机效应的线性混合效应模型最适合该数据,并且获得了相对较高的R2(约0.57)。该线性混合效应模型与线性固定效应模型和仅具有随机效应的截距的线性混合效应模型明显不同。最佳拟合的线性混合效应模型在美国乔治亚州的整个州发现了生物量和树木体积的不同空间特征。皮埃蒙特(Piedmont)生态区具有正等速线特征,上沿海平原具有负等速角线,而其他三个生态区具有等距线特征。最后,将线性混合效应模型与极端情况进行了比较,拟合了每个区域内的线性固定效应模型。模型诊断表明,线性混合效应模型是最好的建模方法。

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