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Coal seam surface modeling and updating with multi-source data integration using Bayesian Geostatistics

机译:使用贝叶斯地统计学的多源数据集成进行煤层表面建模和更新

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摘要

A reliable coal seam surface model needs to reconcile all available geological data such as boreholes, cross-sections, and coal seam floor contour maps. In addition, the model should be updated when local geological information such as coal seam observations is available. This paper develops a Bayesian Geostatistical approach for coal seam surface modeling using multi-source geological data in different stages and at different scales. The proposed approach contains two major components: Bayesian maximum entropy (BME) nonlinear estimation method to incorporate boreholes, cross-sections, and coal seam floor contour maps obtained in geological survey stage, and Bayesian inference (BI) method to assimilate coal seam point observations and geological sketches of tunnels obtained in mining stage. Coal seam surface elevations and its uncertainties are first estimated using BME method. The regional estimates are then used in BI method as prior knowledge, and updated when coal seam observations at a local scale are available. This provides a systematic and rigorous framework to incorporate multi-source geological data, and an effective way to improve the accuracy of coal seam surface models. The proposed approach is illustrated through a case study of a 3D subsurface modeling of the Wang-feng-gang Coal Mine, China. The coal seam surface estimates are compared with those of Ordinary kriging and Bayesian kriging methods, and compared with observed values along two tunnels in mining process.
机译:可靠的煤层表面模型需要协调所有可用的地质数据,例如井眼,断面和煤层底板轮廓图。此外,当可获得当地地质信息(例如煤层观测)时,应更新模型。本文使用不同阶段,不同规模的多源地质数据,开发了一种用于煤层表面建模的贝叶斯地统计方法。所提出的方法包括两个主要部分:结合地质勘探阶段获得的井眼,横截面和煤层底板轮廓图的贝叶斯最大熵(BME)非线性估计方法,以及吸收煤层点观测值的贝叶斯推断(BI)方法。采矿阶段获得的隧道地质图。首先使用BME方法估算煤层表面高程及其不确定性。然后,将区域估计值用作BI方法的先验知识,并在可获得本地规模的煤层观测值时进行更新。这为整合多源地质数据提供了系统而严格的框架,也是提高煤层表层模型准确性的有效途径。通过对中国王凤岗煤矿3D地下模型的案例研究来说明所提出的方法。将煤层表面估计值与普通克里金法和贝叶斯克里金法进行了比较,并与采矿过程中沿两条隧道的观测值进行了比较。

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