Reliability of resilience estimation based on multi-instrument time series

Taylor Smith, Ruxandra-Maria Zotta, C. Boulton, T. Lenton, W. Dorigo, N. Boers
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引用次数: 8

Abstract

Abstract. Many widely used observational data sets are comprised of several overlapping instrument records. While data inter-calibration techniques often yield continuous and reliable data for trend analysis, less attention is generally paid to maintaining higher-order statistics such as variance and autocorrelation. A growing body of work uses these metrics to quantify the stability or resilience of a system under study and potentially to anticipate an approaching critical transition in the system. Exploring the degree to which changes in resilience indicators such as the variance or autocorrelation can be attributed to non-stationary characteristics of the measurement process – rather than actual changes in the dynamical properties of the system – is important in this context. In this work we use both synthetic and empirical data to explore how changes in the noise structure of a data set are propagated into the commonly used resilience metrics lag-one autocorrelation and variance. We focus on examples from remotely sensed vegetation indicators such as vegetation optical depth and the normalized difference vegetation index from different satellite sources. We find that time series resulting from mixing signals from sensors with varied uncertainties and covering overlapping time spans can lead to biases in inferred resilience changes. These biases are typically more pronounced when resilience metrics are aggregated (for example, by land-cover type or region), whereas estimates for individual time series remain reliable at reasonable sensor signal-to-noise ratios. Our work provides guidelines for the treatment and aggregation of multi-instrument data in studies of critical transitions and resilience.
基于多仪器时间序列的弹性估计的可靠性
摘要许多广泛使用的观测数据集由几个重叠的仪器记录组成。虽然数据互校准技术通常为趋势分析提供连续可靠的数据,但通常不太注意维护高阶统计数据,如方差和自相关。越来越多的工作使用这些指标来量化所研究系统的稳定性或弹性,并可能预测系统中即将到来的关键过渡。在这种情况下,探索弹性指标(如方差或自相关)的变化在多大程度上可以归因于测量过程的非平稳特征,而不是系统动态特性的实际变化,这一点很重要。在这项工作中,我们使用合成数据和经验数据来探索数据集的噪声结构的变化如何传播到常用的弹性度量中,滞后于一个自相关和方差。我们重点关注遥感植被指标的例子,如不同卫星来源的植被光学深度和归一化差异植被指数。我们发现,混合来自具有不同不确定性的传感器的信号并覆盖重叠的时间跨度所产生的时间序列可能会导致推断的弹性变化存在偏差。当弹性指标被聚合(例如,按土地覆盖类型或区域)时,这些偏差通常更为明显,而在合理的传感器信噪比下,对单个时间序列的估计仍然可靠。我们的工作为关键过渡和恢复力研究中多仪器数据的处理和汇总提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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