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Time scale of resilience loss: Implications for managing critical transitions in water quality

机译:弹性丧失的时间尺度:对管理水质关键转变的意义

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摘要

Regime shifts involving critical transitions are a type of rapid ecological change that are difficult to predict, but may be preceded by decreases in resilience. Time series statistics like lag-1 autocorrelation may be useful for anticipating resilience declines; however, more study is needed to determine whether the dynamics of autocorrelation depend on the resolution of the time series being analyzed, i.e., whether they are time-scale dependent. Here, we examined timeseries simulated from a lake eutrophication model and gathered from field measurements. The field study involved collecting high frequency chlorophyll fluorescence data from an unmanipulated reference lake and a second lake undergoing experimental fertilization to induce a critical transition in the form of an algal bloom. As part of the experiment, the fertilization was halted in response to detected early warnings of the algal bloom identified by increased autocorrelation. We tested these datasets for time-scale dependence in the dynamics of lag-1 autocorrelation and found that in both the simulation and field experiment, the dynamics of autocorrelation were similar across time scales. In the simulated time series, autocorrelation increased exponentially approaching algal bloom development, and in the field experiment, the difference in autocorrelation between the manipulated and reference lakes increased sharply. These results suggest that, as an early warning indicator, autocorrelation may be robust to the time scale of the analysis. Given that a time scale can be shortened by increasing sampling frequency, or lengthened by aggregating data during analysis, these results have important implications for management as they demonstrate the potential for detecting early warning signals over a wide range of monitoring frequencies and without requiring analysts to make situation-specific decisions regarding aggregation. Such an outcome provides promise that data collection procedures, especially by automated sensors, may be used to monitor and manage ecosystem resilience without the need for strict attention to time scale.
机译:涉及关键过渡的政权转移是一种快速的生态变化,很难预测,但可能会在复原力下降之前出现。诸如lag-1自相关之类的时间序列统计信息可能有助于预测弹性下降;然而,需要进行更多的研究来确定自相关的动力学是否取决于所分析的时间序列的分辨率,即它们是否与时标有关。在这里,我们检查了根据湖泊富营养化模型模拟的时间序列,并从实地测量中收集了时间序列。现场研究涉及从未经操纵的参比湖和接受实验施肥的第二个湖中收集高频叶绿素荧光数据,以诱导藻华形式的关键转变。作为实验的一部分,由于检测到通过增加的自相关性识别出的藻华的早期预警,中止了施肥。我们测试了滞后1自相关动力学中这些数据集的时标依赖性,发现在仿真和现场实验中,自相关动力学在整个时标上都是相似的。在模拟的时间序列中,随着藻华的发展,自相关呈指数增加,而在野外实验中,受控制的湖泊和参考湖泊之间的自相关差异急剧增加。这些结果表明,作为预警指标,自相关可能对分析的时间尺度具有鲁棒性。鉴于可以通过增加采样频率来缩短时间尺度,或者通过在分析过程中汇总数据来延长时间尺度,这些结果对管理具有重要意义,因为它们证明了在广泛的监测频率上检测早期预警信号的潜力,而无需分析师制定针对具体情况的汇总决策。这样的结果保证了数据收集程序,尤其是通过自动传感器的数据收集程序,可以用于监视和管理生态系统的弹性,而无需严格关注时间尺度。

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