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首页> 外文期刊>Journal of geodynamics >Bayesian surface reconstruction of geodetic uplift rates: Mapping the global fingerprint of Glacial Isostatic Adjustment
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Bayesian surface reconstruction of geodetic uplift rates: Mapping the global fingerprint of Glacial Isostatic Adjustment

机译:大地上升速率的贝叶斯表面重建:绘制冰川等压调整的整体指纹图

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We use a global compilation of geodetic (GPS) rates to reconstruct vertical land motion (VLM) using a Bayesian inference method. Trends of VLM are derived from almost 15,000 GPS position time-series retrieved from the Nevada Geodetic Laboratory. Our Transdimensional Regression (TR) method is based on Voronoi tessellation and self-adapts to the level of spatial structure contained in the database. It is thus suitable for our strongly heterogeneous dataset, both in terms of the geographical distribution and level of uncertainties, and provides at each location a probability density function for the rate of VLM. We apply the TR method to a set of globally distributed regions. At high latitudes the signal is dominated by Glacial Isostatic Adjustment (GIA); fast uplift rates are observed across the previously ice-covered areas, while subsidence characterizes the surrounding peripheral forebulges. Other long-wavelengths processes, like dynamic topography, occasionally overprint and out-pace the GIA signal. Short-wavelength processes can be disentangled; remarkable examples are the sharp boundary between the uplifting Himalaya and subsiding foreland Ganges plain, the fast subsiding Central Valley of California, or the subsiding Galveston area (Texas) and Mississippi delta. In an attempt to visualize the global signature of GIA, we assembled the regional maps and filtered out the short-wavelength components. Comparison to independent models (dynamic model predictions of GIA) or data (relative sea level change along coastlines) reveals that our map of VLM is robust and dominated by GIA. Conversely, in regions where TR predictions are robust, departure between the two classes of models (dynamic predictions and TR) either reveals that other processes than GIA may locally contribute to the signal, or to incorrect model predictions. For example, on the edges of formerly ice-covered regions, TR predicts larger negative gradients of uplift rates than dynamical models, most probably due to the poor knowledge of the effective Theological structure of the Earth that alters the predictions of dynamic GIA models.
机译:我们使用大地测量(GPS)速率的全局汇编来使用贝叶斯推断方法重建垂直陆地运动(VLM)。 VLM的趋势来自从内华达州大地测量实验室获得的近15,000个GPS位置时间序列。我们的跨维度回归(TR)方法基于Voronoi细分,可自适应数据库中包含的空间结构级别。因此,就地理分布和不确定性水平而言,它都适合于我们的高度异构数据集,并在每个位置提供了VLM速率的概率密度函数。我们将TR方法应用于一组全球分布的区域。在高纬度地区,信号受冰川等静压调整(GIA)支配;在以前的冰雪覆盖的地区观察到快速的上升速度,而沉降则是周围外围隆起的特征。其他长波过程,例如动态形貌,有时会叠印并超过GIA信号。短波过程可以解开。喜马拉雅山隆起与塌陷的前陆恒河平原,加利福尼亚的中央谷地快速塌陷,加尔维斯顿地区(德克萨斯州)和密西西比三角洲之间的尖锐边界便是明显的例子。为了可视化GIA的全球特征,我们组装了区域地图并滤除了短波分量。与独立模型(GIA的动态模型预测)或数据(沿海岸线的相对海平面变化)进行比较后,我们发现,VLM的地图是可靠的,并且由GIA主导。相反,在TR预测可靠的区域中,两类模型(动态预测和TR)之间的偏离揭示出GIA以外的其他过程可能会局部影响信号或导致模型预测不正确。例如,在以前冰雪覆盖的区域的边缘,TR预测的上升速率的负梯度要比动力学模型大,这很可能是由于对地球有效神学结构的了解不足,从而改变了动态GIA模型的预测。

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