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Satellite-based vegetation optical depth as an indicator of drought-driven tree mortality

机译:基于卫星植被光学深度作为干旱驱动的树死亡率的指标

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Drought-induced tree mortality events are expected to increase in frequency under climate change. However, monitoring and modeling of tree mortality is limited by the high spatial variability in vegetation response to climatic drought stress and lack of physiologically meaningful stress variables that can be monitored at large scales. In this study, we test the hypothesis that relative water content (RWC) estimated by passive microwave remote sensing through vegetation optical depth can be used as an empirical indicator of tree mortality that both integrates variations in plant drought stress and is accessible across large areas. The hypothesis was tested in a recent severe drought in California, USA. The RWC showed a stronger threshold relationship with mortality than climatic water deficit (CWD) - a commonly used mortality indicator - although both relationships were noisy due to the coarse spatial resolution of the data (0.25 degrees or approximately 25 km). In addition, the threshold for RWC was more uniform than that for CWD when compared between Northern and Southern regions of California. A random forests regression (machine learning) with 32 variables describing topography, climate, and vegetation characteristics predicted forest mortality extent i.e. fractional area of mortality (FAM) with satisfactory accuracy-coefficient of determination R-tmt(2) = 0.66, root mean square error = 0.023. Importantly, RWC was more than twice as important as any other variable in the model in estimating mortality, confirming its strong link to mortality rates. Moreover, RWC showed a moderate ability to aid in forecasting mortality, with a relative importance of RWC measured one year in advance of mortality similar to that of other relevant explanatory variables measured in the mortality year. The results of this study present a promising new approach to estimate drought stress of forests linked to mortality risk.
机译:在气候变化下,预计干旱诱导的树死亡率事件预计会增加频率。然而,树死亡率的监测和建模受到对气候干旱胁迫的高空间变异性的限制,并且可以在大尺度上监测的生理学上有意义的压力变量。在这项研究中,我们测试了通过植被光学深度的被动微波遥感估计的相对含水量(RWC)的假设可以用作树质死亡率的经验指标,即整合植物干旱胁迫的变化,并且可以在大面积上进入。在美国加利福尼亚州最近的一个严重干旱中测试了假设。 RWC与死亡率的阈值关系呈现出比气候水缺陷(CWD) - 一种常用的死亡率指标 - 尽管由于数据的粗糙空间分辨率(0.25度或约25公里),但两种关系都是嘈杂的。此外,在加利福尼亚州北部和南部地区的比较时,RWC的阈值比CWD更均匀。随机森林回归(机器学习),具有32个变量,描述地形,气候和植被特征预测森林死亡率范围,即死亡率分数(FAM),令人满意的精度系数R-TMT(2)= 0.66,根均线错误= 0.023。重要的是,RWC在估计死亡率模型中的任何其他变量的两倍以上是重要的,确认其与死亡率的强烈联系。此外,RWC显示了适度的帮助预测死亡率的能力,在死亡率提前一年测量的RWC的相对重要性类似于在死亡年度中测量的其他相关解释性变量的预测。本研究的结果表明了一个有希望的新方法来估计与死亡率风险相关的森林的干旱胁迫。

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