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Variable selection in regression models used to analyse Global Positioning System accuracy in forest environments

机译:用于分析森林环境中全球定位系统准确性的回归模型中的变量选择

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摘要

Reliable information on the geographic location of individual points using GPS (Global Positioning System) receivers requires an unobstructed line of sight from the points to a minimum of four satellites. This is often difficult to achieve in forest environments, as trunks, branches and leaves can block the GPS signal. Forest canopy can be characterized by means of dasymetric parameters such as tree density and biomass volume, but it is important to know which parameters in particular have a bearing on the accuracy of GPS measurements. We analyzed the relative influence of forest canopy and GPS-signal-related variables on the accuracy of the GPS observations using a methodology based on linear regression models and bootstrapping and compared the results to those for a classical variable-selection method based on hypothesis testing. The results reveal that our methodology reduces the number of significant variables by approximately 50% and that both forestry and GPS-signal-related variables are significant.
机译:使用GPS(全球定位系统)接收器获得的有关各个点的地理位置的可靠信息,要求从点到最少四颗卫星的视线保持畅通。这在森林环境中通常很难实现,因为树干,树枝和树叶会阻塞GPS信号。森林冠层可以通过诸如树木密度和生物量之类的数据参数来表征,但重要的是要知道哪些参数特别影响GPS测量的准确性。我们使用基于线性回归模型和自举的方法,分析了林冠层和与GPS信号相关的变量对GPS观测精度的相对影响,并将结果与​​基于假设检验的经典变量选择方法的结果进行了比较。结果表明,我们的方法将有效变量的数量减少了约50%,并且林业和GPS信号相关的变量均很重要。

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