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Correlating radar backscatter with components of biomass in loblolly pine forests

机译:火炬松森林中雷达反向散射与生物量成分的相关性

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A multifrequency, multipolarization airborne SAR data set was utilized to examine the relationship between radar backscatter and the aboveground biomass. This data set was also used to examine the potential of SAR to estimate aboveground biomass in these forests. The total aboveground biomass in the test stands used in this study ranged from >1-50 kg m/sup -2/. Not only was total aboveground biomass considered, but the biomass of the tree boles, branches, and needles/leaves. Significant correlations were found in all three frequencies of radar imagery used in this study (C-, L- and P-band), At P- and L-bands, the greatest sensitivity to change in biomass occurred in the HH and VH polarized channels, while at C-band, the greatest sensitivity was in the VH polarized channel. The results of the correlation analyses support modeling studies which show the dominant scattering mechanisms from these pines should be double-bounce, ground-trunk scattering and canopy volume scattering. To produce equations to estimate biomass, a stepwise, multiple-linear regression approach was used, using all the radar channels as independent variables, and the log of the biomass components as the dependent variables. The results of this regression analysis produced equations with high coefficients of linear correlation and low standard errors of the regression equation for estimating total stand, bole and total stem biomass. Statistically-significant regression equations were also generated for large stem, small stem and needle/leaf biomass. Even though the biomass estimation algorithms had high correlation coefficients and low standard errors, when the predicted biomass estimates were expressed in arithmetic terms and compared to actual values, low levels of accuracy were found. A second method was developed using total stem biomass to estimate the other components, with total stem biomass being estimated from the radar image intensity values. This two-step method reduced the coefficient of variation to between 16 and 27% for all biomass components.
机译:利用多频,多极化机载SAR数据集检查雷达反向散射与地上生物量之间的关系。此数据集还用于检查SAR潜力,以评估这些森林中的地上生物量。本研究中使用的试验台地上总生物量范围为> 1-50 kg m / sup -2 /。不仅考虑了地上总生物量,而且还考虑了树的树干,树枝和针叶的生物量。在这项研究中使用的所有三个雷达图像频率(C,L和P波段)中都发现了显着的相关性,在P波段和L波段,对生物量变化的最大敏感性出现在HH和VH极化通道中在C波段时,最大的灵敏度是在VH极化信道中。相关分析的结果支持建模研究,这些研究表明,这些松树的主要散射机制应为双反弹,地面-躯干散射和冠层体积散射。为了生成估算生物量的方程式,使用了逐步的多元线性回归方法,将所有雷达通道用作自变量,并将生物量成分的对数用作因变量。该回归分析的结果产生了具有高线性相关系数和较低标准误差的方程,这些方程可用于估算总林分,树干和总茎生物量。对于大茎,小茎和针叶生物量,也产生了具有统计意义的回归方程。即使生物量估计算法具有较高的相关系数和较低的标准误差,但当将预测的生物量估计值以算术术语表示并与实际值进行比较时,发现准确性较低。开发了第二种方法,该方法使用总茎生物量估算其他成分,并从雷达图像强度值估算总茎生物量。对于所有生物质成分,此两步方法将变异系数降低到16%至27%。

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