首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >Improved Characterization of Dryland Degradation Using Trends in Vegetation/ Rainfall Sequential Linear Regression (Sergs-Trend)
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Improved Characterization of Dryland Degradation Using Trends in Vegetation/ Rainfall Sequential Linear Regression (Sergs-Trend)

机译:利用植被/降雨顺序线性回归趋势(Sergs-Trend)改进旱地退化的特征

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Land degradation in drylands has been investigated extensively over recent decades and several remote sensing based techniques attempt to decouple the human influence from the natural climate variability, but are contested in literature. We introduce a novel approach termed SeRGS-TREND that is designed to monitor land degradation by suppressing the impact from climate variability and highlight vegetation disturbances may it be human or climate-induced. SeRGS-TREND is based on the interpretation of the slope of a linear regression analysis within a sequentially moving window along the temporal axis of the time series of remote sensing data. The use of a moving window increases the probability of a statistically significant linear vegetation-rainfall relationship (VRR), which in turn provides an improved statistical basis for the results produced and thereby confidence in the assessment of degradation. We test and compare SeRGS-Trend and the commonly used RESTREND by simulating different degradation scenarios and find that SeRGS reveals both, more significant and more exact information about degradation events (e.g. starting and end point) while keeping the VRR correlation coefficients high, thus rendering results more reliable.
机译:近几十年来,干旱地区的土地退化已经得到了广泛的研究,几种基于遥感的技术试图将人类的影响与自然气候的变化脱钩,但是在文献中却受到争议。我们引入了一种称为SeRGS-TREND的新方法,该方法旨在通过抑制气候变化的影响来监测土地退化,并强调可能是人为或气候引起的植被干扰。 SeRGS-TREND基于对线性回归分析的斜率的解释,该线性回归分析是沿着遥感数据的时间序列的时间轴在顺序移动的窗口内进行的。移动窗口的使用增加了具有统计意义的线性植被-降雨关系(VRR)的可能性,从而为产生的结果提供了改进的统计基础,从而使人们对退化的评估充满信心。我们通过模拟不同的降解情况测试和比较了SeRGS-Trend和常用的RESTREND,发现SeRGS揭示了有关降解事件(例如起点和终点)的更重要,更准确的信息,同时保持了较高的VRR相关系数,因此结果更可靠。

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