Using German forest health monitoring data we investigate the main drivers leading to tree mortality and the association between defoliation and mortality; in particular (a) whether defoliation is a proxy for other covariates (climate, soil, water budget); (b) whether defoliation is a tree response that mitigates the effects of climate change and (c) whether there is a threshold of defoliation which could be used as an early warning sign for irreversible damage. Results show that environmental drivers leading to tree mortality differ by species, but some are always required in the model. The defoliation effect on mortality differs by species but it is always strong and monotonic. There is some evidence that a defoliation threshold exists for spruce, fir and beech. We model tree survival with a smooth additive Cox model allowing for random effects taking care of dependence between neighbouring trees and non-linear functions of spatial time varying and functional predictors on defoliation, climate, soil and hydrology characteristics. Due to the large sample size and large number of parameters, we use parallel computing combined with marginal discretization of covariates. We propose a 'boost forward penalise backward' model selection scheme based on combining component-wise gradient boosting with integrated backward selection.
翻译:利用德国森林健康监测数据,我们调查导致树木死亡的主要驱动因素,以及脱叶与死亡率之间的联系;特别是(a) 脱叶是否替代了其他同系物(气候、土壤、水预算);(b) 脱叶是否是一种减轻气候变化影响的树对策,以及(c) 是否有可用作不可逆损害预警信号的脱叶阈值;结果显示,导致树木死亡的环境驱动因素因物种不同而不同,但在模型中总是需要一些。脱叶对死亡率的影响因物种不同而不同,但始终是强大和单质的。有证据表明,脱叶是其他同系物的替代物(气候、土壤、水预算);(b) 脱叶是否是一种减轻气候变化影响的树对策,以及(c) 脱叶树是否是一种树的典型反应,我们用一种光滑的添加式的Cox模型来模拟树木生存,允许随机效应,同时注意附近树木之间的依赖性,以及空间时间变化和功能预测器在脱叶、气候、土壤和水文学特性方面的非线性功能。由于样本大小很大,我们使用与大量参数平行离散的模型进行平行计算,同时使用共生变异化模型。我们建议采用一个基于先变变的梯式选择,以先变式选择。