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A Bayesian approach to inverse modelling of stratigraphy, part 1: method

机译:地层反演的贝叶斯方法,第1部分:方法

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The inference of ancient environmental conditions from their preserved response in the sedimentary record still remains an outstanding issue in stratigraphy. Since the 1970s, conceptual stratigraphic models (e.g. sequence stratigraphy) based on the underlying assumption that accommodation space is the critical control on stratigraphic architecture have been widely used. Although these methods considered more recently other possible parameters such as sediment supply and transport efficiency, they still lack in taking into account the full range of possible parameters, processes, and their complex interactions that control stratigraphic architecture. In this contribution, we present a new quantitative method for the inference of key environmental parameters (specifically sediment supply and relative sea level) that control stratigraphy. The approach combines a fully non-linear inversion scheme with a 'process-response' forward model of stratigraphy. We formulate the inverse problem using a Bayesian framework in order to sample the full range of possible solutions and explicitly build in prior geological knowledge. Our methodology combines Reversible Jump Markov chain Monte Carlo and Simulated Tempering algorithms which are able to deal with variable-dimensional inverse problems and multi-modal posterior probability distributions, respectively. The inverse scheme has been linked to a forward stratigraphic model, BARSIM (developed by Joep Storms, University of Delft), which simulates shallow-marine wave/storm-dominated systems over geological timescales. This link requires the construction of a likelihood function to quantify the agreement between simulated and observed data of different types (e.g. sediment age and thickness, grain size distributions). The technique has been tested and validated with synthetic data, in which all the parameters are specified to produce a 'perfect' simulation, although we add noise to these synthetic data for subsequent testing of the inverse modelling approach. These tests addressed convergence and computational-overhead issues, and highlight the robustness of the inverse scheme, which is able to assess the full range of uncertainties on the inferred environmental parameters and facies distributions.
机译:从地层记录中保存下来的响应推断出古代环境条件仍然是地层学中一个突出的问题。自1970年代以来,以适应性空间是对地层结构的关键控制的基本假设为基础的概念性地层模型(例如层序地层)已被广泛使用。尽管最近这些方法考虑了其他可能的参数,例如沉积物的供应和运输效率,但它们仍然缺乏对可能的参数,过程及其控制地层构造的复杂相互作用的全面考虑。在此贡献中,我们提出了一种新的定量方法,用于推断控制地层的关键环境参数(特别是沉积物供应和相对海平面)。该方法将完全非线性的反演方案与地层的“过程-响应”正演模型结合在一起。我们使用贝叶斯框架来构造反问题,以便对所有可能的解决方案进行采样并明确地建立在先的地质知识中。我们的方法结合了可逆跳跃马尔可夫链蒙特卡洛和模拟回火算法,能够分别处理变维反问题和多模态后验概率分布。该逆方案已与正向地层模型BARSIM(由代尔夫特大学的Joep Storms开发)联系在一起,该模型在地质时标上模拟了浅海浪/风暴为主的系统。该链接要求构造一个似然函数,以量化不同类型的模拟数据和观察数据之间的一致性(例如沉积物年龄和厚度,粒度分布)。该技术已通过合成数据进行了测试和验证,其中指定了所有参数以产生“完美”仿真,尽管我们在这些合成数据中添加了噪声,以用于后续的逆建模方法测试。这些测试解决了收敛性和计算开销问题,并突出了逆方案的鲁棒性,该方案能够评估推断的环境参数和相分布的不确定性的全部范围。

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