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首页> 外文期刊>Natural Hazards and Earth System Sciences Discussions >Leveraging time series analysis of radar coherence and normalized difference vegetation index ratios to characterize pre-failure activity of the Mud Creek landslide, California
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Leveraging time series analysis of radar coherence and normalized difference vegetation index ratios to characterize pre-failure activity of the Mud Creek landslide, California

机译:利用时间序列分析雷达相干性和归一化差异植被指标比例,以表征泥溪滑坡,加利福尼亚州的失败活动

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Assessing landslide activity at large scales has historically been a challenging problem. Here, we present a different approach on radar coherence and normalized difference vegetation index?(NDVI) analyses – metrics that are typically used to map landslides post-failure – and leverage a time series analysis to characterize the pre-failure activity of the Mud Creek landslide in California. Our method computes the ratio of mean interferometric coherence or NDVI on the unstable slope relative to that of the surrounding hillslope. This approach has the advantage that it eliminates the negative impacts of long temporal baselines that can interfere with the analysis of interferometric synthetic aperture?(InSAR) data, as well as interferences from atmospheric and environmental factors. We show that the coherence ratio of the Mud Creek landslide dropped by 50?% when the slide began to accelerate 5?months prior to its catastrophic failure in?2017. Coincidentally, the NDVI ratio began a near-linear decline. A similar behavior is visible during an earlier acceleration of the landslide in?2016. This suggests that radar coherence and NDVI ratios may be useful for assessing landslide activity. Our study demonstrates that data from the ascending track provide the more reliable coherence ratios, despite being poorly suited to measure the slope's precursory deformation. Combined, these insights suggest that this type of analysis may complement traditional InSAR analysis in useful ways and provide an opportunity to assess landslide activity at regional scales.
机译:评估大鳞片的滑坡活动历史上是一个具有挑战性的问题。在这里,我们在雷达相干和归一化差异植被指数上提出了不同的方法?(NDVI)分析 - 通常用于映射失败后山体滑坡的度量 - 并利用时间序列分析来表征泥溪的失败前活动加利福尼亚山滑坡。我们的方法计算了相对于周围山坡的不稳定斜率上的平均干涉式相干性或NDVI的比率。这种方法具有以下优点:它消除了可以干扰干涉性合成孔径的分析的长时间基线的负面影响?(INSAR)数据以及大气和环境因素的干扰。我们表明,当幻灯片开始加速5月5日,泥溪滑坡的相干比率下降了50?%?2017年灾难性失败巧合,NDVI比率开始近线性下降。在2016年早期加速期间,在山体滑坡的早期加速期间是可见的类似行为。这表明雷达相干性和NDVI比率可用于评估滑坡活动。我们的研究表明,尽管适合测量坡度的前兆变形,所以来自上升轨道的数据提供了更可靠的相干比率。结合,这些见解表明,这种类型的分析可以以有用的方式补充传统的INSAR分析,并提供了在区域尺度上评估滑坡活动的机会。

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