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首页> 外文期刊>Journal of geophysical research. Earth Surface: JGR >Bayesian Inference of Subglacial Channel Structures From Water Pressure and Tracer-Transit Time Data: A Numerical Study Based on a 2-D Geostatistical Modeling Approach
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Bayesian Inference of Subglacial Channel Structures From Water Pressure and Tracer-Transit Time Data: A Numerical Study Based on a 2-D Geostatistical Modeling Approach

机译:来自水压和示踪到运输时间数据的贝叶斯渠道结构的推动:基于二维地质统计学建模方法的数值研究

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Characterizing subglacial water flow is critical for understanding basal sliding and processes occurring under glaciers and ice sheets. Development of subglacial numerical models and acquisition of water pressure and tracer data have provided valuable insights into subglacial systems and their evolution. Despite these advances, numerical models, data conditioning, and uncertainty quantification are difficult, principally due to high number of unknown parameters and expensive forward computations. In this study, we aim to infer the properties of a subglacial drainage system in two dimensions using a framework that combines physical and geostatistical processes. The methodology is composed of three main components: (i) a channel generator to produce networks of the subglacial system, (ii) a physical model that computes water pressure and mass transport in steady state, and (iii) Bayesian inversion in which the outputs (pressure and tracer-transit times) are compared with synthetic data, thus allowing for parameter estimation and uncertainty quantification. We evaluate the ability of this framework to infer the subglacial characteristics of a synthetic ice sheet produced by a physically complex deterministic model, under different recharge scenarios. Results show that our methodology captures expected physical characteristics for each meltwater supply condition, while the precise locations of channels remain difficult to constrain. The framework enables uncertainty quantification, and the results highlight its potential to infer properties of real subglacial systems using observed water pressure and tracer-transit times.
机译:表征底透射水流对于理解冰川和冰盖下的基础滑动和过程至关重要。底纤维数值模型的开发和水压的获取和示踪数据已经为子污染系统及其进化提供了有价值的见解。尽管有这些进步,但是数值模型,数据调节和不确定性量化很困难,主要原因是由于大量未知参数和昂贵的前向计算。在这项研究中,我们的目标是使用结合物理和地统计过程的框架推断出底纤维排水系统的性质。该方法由三个主要组件组成:(i)一种频道发生器,用于产生子闪烁系统的网络,(ii)一种物理模型,用于计算稳定状态的水压和质量传输,以及输出的贝叶斯逆转(压力和示踪剂运输时间)与合成数据进行比较,从而允许参数估计和不确定性量化。我们评估该框架在不同的充电情景下推断出通过物理复杂的确定性模型产生的合成冰盖的沉淀特性的能力。结果表明,我们的方法论捕获了每个熔喷供应条件的预期物理特性,而通道的精确位置仍然难以约束。该框架可以实现不确定量化,结果突出了其使用观察到的水压和示踪运输时间来推断实际底透视系统的性能的潜力。

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