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首页> 外文期刊>The Cryosphere >Observing traveling waves in glaciers with remote sensing: new flexible time series methods and application to Sermeq Kujalleq (Jakobshavn Isbr?), Greenland
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Observing traveling waves in glaciers with remote sensing: new flexible time series methods and application to Sermeq Kujalleq (Jakobshavn Isbr?), Greenland

机译:观察带遥感的冰川的行程波浪:新的灵活时间序列方法和应用于Sermeq Kujalleq(Jakobshavn Isbr?),格陵兰岛

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The recent influx of remote sensing data provides new opportunities for quantifying spatiotemporal variations in glacier surface velocity and elevation fields. Here, we introduce a flexible time series reconstruction and decomposition technique for forming continuous, time-dependent surface velocity and elevation fields from discontinuous data and partitioning these time series into short- and long-term variations. The time series reconstruction consists of a sparsity-regularized least-squares regression for modeling time series as a linear combination of generic basis functions of multiple temporal scales, allowing us to capture complex variations in the data using simple functions. We apply this method to the multitemporal evolution of Sermeq Kujalleq (Jakobshavn Isbr?), Greenland. Using 555?ice velocity maps generated by the Greenland Ice Mapping Project and covering the period?2009–2019, we show that the amplification in seasonal velocity variations in?2012–2016 was coincident with a longer-term speedup initiating in?2012. Similarly, the reduction in post-2017 seasonal velocity variations was coincident with a longer-term slowdown initiating around?2017. To understand how these perturbations propagate through the glacier, we introduce an approach for quantifying the spatially varying and frequency-dependent phase velocities and attenuation length scales of the resulting traveling waves. We hypothesize that these traveling waves are predominantly kinematic waves based on their long periods, coincident changes in surface velocity and elevation, and connection with variations in the terminus position. This ability to quantify wave propagation enables an entirely new framework for studying glacier dynamics using remote sensing data.
机译:近期遥感数据的涌入为量化冰川表面速度和高度场中的时空变化提供了新的机会。这里,我们引入了一种灵活的时间序列重建和分解技术,用于从不连续数据形成连续,时间依赖的表面速度和高度场,并将这些时间序列划分为短期和长期变化。时间序列重建由用于建模时间序列的稀疏性定期化最小二乘因子作为多个时间尺度的通用基函数的线性组合,允许我们使用简单的功能捕获数据的复杂变化。我们将这种方法应用于Mulmeq Kujalleq(Jakobshavn Isbr?),格陵兰岛的多立体演变。使用555?格陵兰冰映射项目生成的冰速度图和覆盖时间(2009-2019),我们表明,2012-2016的季节性速度变化的放大与2012年的长期加速度一致巧合。同样,2017年后季节性速度变化的减少与周围的长期放缓相结合?2017年。为了了解这些扰动如何通过冰川传播,我们介绍一种用于量化所得行波的空间变化和频率相关的相速度和衰减长度尺度的方法。我们假设这些行驶波主要基于它们的长时间,表面速度和高度的重合变化以及与终端位置的变化的连接。这种量化波传播的能力使得能够使用遥感数据研究冰川动态的全新框架。

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