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Effect of error in the DEM on environmental variables for predictive vegetation modelling.

机译:DEM中的误差对环境变量的影响,以进行预测性植被建模。

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Predictive vegetation modelling relies on the use of environmental variables, which are usually derived from a base data set with some level of error, and this error is propagated to any subsequently derived environmental variables. In this study, the level of error and uncertainty in environmental variables based on the error propagated from a digital elevation model (DEM) was determined and how it varies for both direct and indirect variables was established. This study was carried out in Kioloa region, New South Wales, Australia. The level of error in a DEM is assessed and used to develop an error model for analysing error propagation to derived environmental variables. We tested both indirect (elevation, slope, aspect, topographic position) and direct (average air temperature, net solar radiation, and topographic wetness index) variables for their robustness to propagated error from the DEM. It is shown that the direct environmental variable net solar radiation is less affected by error in the DEM than the indirect variables aspect and slope, but that regional conditions such as slope steepness and cloudiness can influence this outcome. However, the indirect environmental variable topographic position was less affected by error in the DEM than topographic wetness index. Interestingly, the results disagreed with the current assumption that indirect variables are necessarily less sensitive to propagated error because they are less derived. The results indicate that variables exhibit both systematic bias and instability under uncertainty. There is a clear need to consider the sensitivity of variables to error in their base data sets in addition to the question of whether to use direct or indirect variables.
机译:预测性植被建模依赖于环境变量的使用,环境变量通常是从具有一定误差水平的基础数据集中得出的,并且该误差会传播到任何后续得出的环境变量。在这项研究中,确定了基于数字高程模型(DEM)传播的误差的环境变量的误差和不确定性级别,并确定了直接和间接变量如何变化。这项研究是在澳大利亚新南威尔士州的基洛亚地区进行的。评估DEM中的错误级别,并将其用于开发错误模型,以分析错误传播到派生的环境变量。我们测试了间接变量(海拔,坡度,纵横比,地形位置)和直接变量(平均气温,太阳净辐射和地形湿度指数)对从DEM传播误差的鲁棒性。结果表明,与间接变量的纵横比和坡度相比,直接环境变量的净太阳辐射受DEM误差的影响较小,但是诸如坡度陡峭和混浊之类的区域条件会影响此结果。但是,与地形湿度指数相比,间接环境变量地形位置受DEM误差的影响较小。有趣的是,结果与当前的假设不同,因为当前的假设是间接变量必然对传播的误差不那么敏感,因为它们的推导较少。结果表明,变量在不确定性下既表现出系统性偏差又具有不稳定性。除了使用直接变量还是间接变量的问题之外,显然还需要考虑变量在其基础数据集中对错误的敏感性。

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