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How to measure ecosystem stability? An evaluation of the reliability of stability metrics based on remote sensing time series across the major global ecosystems

机译:如何衡量生态系统的稳定性?基于主要全球生态系统中遥感时间序列的稳定性指标可靠性评估

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Increasing frequency of extreme climate events is likely to impose increased stress on ecosystems and to jeopardize the services that ecosystems provide. Therefore, it is of major importance to assess the effects of extreme climate events on the temporal stability (i.e., the resistance, the resilience, and the variance) of ecosystem properties. Most time series of ecosystem properties are, however, affected by varying data characteristics, uncertainties, and noise, which complicate the comparison of ecosystem stability metrics (ESMs) between locations. Therefore, there is a strong need for a more comprehensive understanding regarding the reliability of stability metrics and how they can be used to compare ecosystem stability globally. The objective of this study was to evaluate the performance of temporal ESMs based on time series of the Moderate Resolution Imaging Spectroradiometer derived Normalized Difference Vegetation Index of 15 global land-cover types. We provide a framework (i) to assess the reliability of ESMs in function of data characteristics, uncertainties and noise and (ii) to integrate reliability estimates in future global ecosystem stability studies against climate disturbances. The performance of our framework was tested through (i) a global ecosystem comparison and (ii) an comparison of ecosystem stability in response to the 2003 drought. The results show the influence of data quality on the accuracy of ecosystem stability. White noise, biased noise, and trends have a stronger effect on the accuracy of stability metrics than the length of the time series, temporal resolution, or amount of missing values. Moreover, we demonstrate the importance of integrating reliability estimates to interpret stability metrics within confidence limits. Based on these confidence limits, other studies dealing with specific ecosystem types or locations can be put into context, and a more reliable assessment of ecosystem stability against environmental disturbances can be obtained
机译:极端气候事件发生频率的增加可能会给生态系统带来更大压力,并危及生态系统提供的服务。因此,评估极端气候事件对生态系统特性的时间稳定性(即抵抗力,复原力和变化)的影响至关重要。然而,大多数生态系统时间序列都受到变化的数据特征,不确定性和噪声的影响,这使得不同地区之间的生态系统稳定性指标(ESM)的比较变得复杂。因此,强烈需要对稳定性指标的可靠性以及如何将其用于在全球范围内比较生态系统稳定性进行更全面的了解。这项研究的目的是基于中等分辨率成像光谱仪导出的15种全球土地覆盖类型的归一化植被指数的时间序列来评估时间ESM的性能。我们提供了一个框架(i)根据数据特征,不确定性和噪声评估ESM的可靠性,以及(ii)将可靠性估计值纳入未来针对气候干扰的全球生态系统稳定性研究中。我们通过(i)全球生态系统比较和(ii)比较2003年干旱对生态系统稳定性的影响来测试我们框架的性能。结果表明,数据质量对生态系统稳定性准确性的影响。与时间序列的长度,时间分辨率或缺失值的数量相比,白噪声,偏置噪声和趋势对稳定性指标的准确性影响更大。此外,我们证明了集成可靠性估计值以解释置信范围内的稳定性指标的重要性。基于这些置信度限制,可以将针对特定生态系统类型或位置的其他研究放到上下文中,并且可以获得针对环境干扰的更加可靠的生态系统稳定性评估。

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