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Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland Ecosystem

机译:湿地生态系统关键转变的遥感预警信号

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The response of an ecosystem to external drivers may not always be gradual and reversible. Discontinuous and sometimes irreversible changes, called ‘regime shifts’ or ‘critical transitions’, can occur. The likelihood of such shifts is expected to increase for a variety of ecosystems, and it is difficult to predict how close an ecosystem is to a critical transition. Recent modelling studies identified indicators of impending regime shifts that can be used to provide early warning signals of a critical transition. The identification of such transitions crucially depends on the ability to monitor key ecosystem variables, and their success may be limited by lack of appropriate data. Moreover, empirical demonstrations of the actual functioning of these indicators in real-world ecosystems are rare. This paper presents the first study which uses remote sensing data to identify a critical transition in a wetland ecosystem. In this study, we argue that a time series of remote sensing data can help to characterize and determine the timing of a critical transition. This can enhance our abilities to detect and anticipate them. We explored the potentials of remotely sensed vegetation (NDVI), water (MNDWI), and vegetation-water (VWR) indices, obtained from time series of MODIS satellite images to characterize the stability of a wetland ecosystem, Dorge Sangi, near the lake Urmia, Iran, that experienced a regime shift recently. In addition, as a control case, we applied the same methods to another wetland ecosystem in Lake Arpi, Armenia which did not experience a regime shift. We propose a new composite index (MVWR) based on combining vegetation and water indices, which can improve the ability to anticipate a critical transition in a wetland ecosystem. Our results revealed that MVWR in combination with autocorrelation at-lag-1 could successfully provide early warning signals for a critical transition in a wetland ecosystem, and showed a significantly improved performance compared to either vegetation (NDVI) or water (MNDWI) indices alone.
机译:生态系统对外部驱动程序的响应可能并不总是渐进和可逆的。可能会发生不连续的,有时是不可逆的变化,称为“政权转移”或“关键过渡”。预计对于各种生态系统,这种转变的可能性会增加,并且很难预测生态系统与关键过渡之间的距离。最近的建模研究确定了即将发生的政权转移的指标,这些指标可用于提供关键过渡的预警信号。对此类过渡的识别关键取决于监测关键生态系统变量的能力,其成功可能因缺乏适当数据而受到限制。而且,在现实世界的生态系统中,这些指标的实际功能的实证研究很少。本文提出了第一项使用遥感数据确定湿地生态系统中关键转变的研究。在这项研究中,我们认为遥感数据的时间序列可以帮助表征和确定关键过渡的时间。这可以增强我们检测和预测它们的能力。我们探索了从MODIS卫星图像的时间序列获得的遥感植被(NDVI),水(MNDWI)和植被-水(VWR)指数的潜力,以表征乌尔米亚湖附近湿地生态系统Dorge Sangi的稳定性伊朗,最近经历了政权转移。此外,作为对照,我们将相同的方法应用于亚美尼亚亚皮尼亚湖的另一个湿地生态系统,该湿地生态系统没有发生制度转移。我们提出了一种基于植被和水分指数相结合的新的综合指数(MVWR),它可以提高预测湿地生态系统中关键转变的能力。我们的结果表明,MVWR与滞后1的自相关可以成功地为湿地生态系统中的关键转变提供预警信号,并且与单独的植被(NDVI)或水(MNDWI)指数相比,其性能显着提高。

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