基于多个卫星植被光学深度数据绘制全球干旱导致的森林死亡图

IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Remote Sensing of Environment Pub Date : 2024-09-13 DOI:10.1016/j.rse.2024.114406
Xiang Zhang , Xu Zhang , Berhanu Keno Terfa , Won-Ho Nam , Jiangyuan Zeng , Hongliang Ma , Xihui Gu , Wenying Du , Chao Wang , Jian Yang , Peng Wang , Dev Niyogi , Nengcheng Chen
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引用次数: 0

摘要

全球干旱事件的频率和强度不断增加,导致全球森林死亡风险上升。准确了解干旱对森林的影响,尤其是干旱造成的死亡分布情况,对于科学认识全球生态干旱至关重要。大气指标和土壤湿度通常与树木生长相关,并影响树木的水分状况和干旱严重程度;但它们并不能直接代表森林干旱状况。光学植被指数可反映森林死亡率,但受到响应延迟、时间分辨率低和云层污染的影响。因此,目前基于气象和植被变量的全球干旱诱发森林死亡评估方法的准确性仍有待提高。为了应对这一挑战,我们利用植被光学深度(VOD)数据来描述干旱导致的森林冠层水分变化。VOD 是一个描述植被在微波波段透射率的参数,与森林含水量和生物量密切相关,与可见光和近红外遥感信号相比,VOD 波长更长,穿透能力更强。我们计算了 VOD 的年变化(ΔVOD),作为提高全球干旱引起的森林死亡监测和建模精度的补充指标。我们将 VOD 与植被指数、气象数据、地形和其他变量相结合,构建了干旱导致森林死亡的预测模型,并利用该模型生成了一系列描绘干旱导致森林死亡的全球地图。结果表明,与基于植被或气象变量的预测模型相比,与 VOD 相关的变量对死亡率模型的贡献更大。此外,与相对含水量、增强植被指数和气候缺水相比,ΔVOD 与参考死亡率的相关性更高。值得注意的是,通过验证模型与参考死亡率的拟合,我们发现将 ΔVOD 纳入模型后,全球森林死亡率图的精确度从 R2 = 0.45 提高到 R2 = 0.63。通过使用 ΔVOD 与参考死亡率之间的两阶段相关阈值优化训练点,地图精度进一步提高到 R2 = 0.72。这项研究强调了VOD,尤其是ΔVOD,作为植被含水量变化的直接指标,在预测干旱引起的森林死亡率方面的有效性。所获得的2014年至2018年全球森林死亡率地图对于进一步分析全球极端干旱事件诱发的森林碳变化具有重要价值。
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Mapping global drought-induced forest mortality based on multiple satellite vegetation optical depth data

The frequency and intensity of global drought events are continuously increasing, posing an elevated risk of forest mortality worldwide. Accurately understanding the impact of drought on forests, particularly the distribution of mortality due to drought, is crucial for scientifically understanding global ecological drought. Atmospheric indicators and soil moisture are typically correlated with tree growth and influence tree water status and drought severity; however, they do not directly represent forest drought conditions. Optical vegetation indices reflect forest mortality but are affected by response delays, low temporal resolution, and cloud contamination. Therefore, the accuracy of current assessment methods for global drought-induced forest mortality, which are based on meteorological and vegetation variables, still needs improvement. To address this challenge, we utilized vegetation optical depth (VOD) data to characterize the changes in forest canopy moisture due to drought. VOD is a parameter that describes the transmissivity of vegetation in the microwave band and is closely related to forest water content and biomass, with longer wavelengths and greater penetration capabilities than visible and near-infrared remote sensing signals. We calculated the annual variation of VOD (ΔVOD) as a supplementary indicator to enhance the accuracy of monitoring and modeling of global drought-induced forest mortality. We integrated VOD with vegetation indices, meteorological data, terrain, and other variables to construct a predictive model of forest mortality due to drought and used this model to generate a series of global maps depicting drought-induced forest mortality. The results indicated that variables related to VOD contributed significantly to the mortality model compared with those based on vegetation or meteorological variables. Furthermore, ΔVOD exhibited a higher correlation with reference mortality rates compared to relative water content, the enhanced vegetation index, and climate water deficit. Notably, by validating the model fit with reference mortality rates, we found that incorporating ΔVOD into the model improved the accuracy of the global forest mortality map from R2 = 0.45 to R2 = 0.63. By optimizing the training points using a two-stage correlation threshold between ΔVOD and the reference mortality, map accuracy was further improved to R2 = 0.72. This study highlights the effectiveness of VOD, particularly ΔVOD, as a direct indicator of vegetation water content variation, for predicting drought-induced forest mortality. The global forest mortality map obtained from 2014 to 2018 is of significant value for the further analysis of forest carbon variations induced by extreme global drought events.

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来源期刊
Remote Sensing of Environment
Remote Sensing of Environment 环境科学-成像科学与照相技术
CiteScore
25.10
自引率
8.90%
发文量
455
审稿时长
53 days
期刊介绍: Remote Sensing of Environment (RSE) serves the Earth observation community by disseminating results on the theory, science, applications, and technology that contribute to advancing the field of remote sensing. With a thoroughly interdisciplinary approach, RSE encompasses terrestrial, oceanic, and atmospheric sensing. The journal emphasizes biophysical and quantitative approaches to remote sensing at local to global scales, covering a diverse range of applications and techniques. RSE serves as a vital platform for the exchange of knowledge and advancements in the dynamic field of remote sensing.
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