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Binary 4D seismic history matching, a metric study

机译:二进制4D地震历史匹配,度量研究

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This paper explores 4D seismic history matching and it specifically focuses on the objective function used during the optimisation with seismic data. The objective function is calculated by using binary maps, where one map is obtained from the observed seismic data and the other is from one realisation of the optimisation algorithm from the simulation model. In order to decide which set of parameters is a relevant update for the simulation model, an efficient way is required to measure how similar these two binary images are, during their evaluation within the objective function. Behind this aspect of quantification of the similarities or dissimilarities lies the metric notion, or the art of measuring distances. Four metrics are proposed with this study, the well-known Hamming distance, two widely used metrics, the Hausdorff distance and Mutual Information and a recent metric, called the Current Measure Metric. These metrics will be tested and compared on different case scenarios, designed in accordance to a real field case (gas exsolution) before being used in the second part of the paper. Despite its simplicity, the Hamming distance gives positive results, but the Current Measure Metric appears to be a more efficient choice to cover a wider range of scenarios, these conclusions remain true when tested on synthetic and real dataset in a history matching exercise. Some practical aspects of binary map processes will be examined through the paper, as it is shown that it is more proper to use a derivative free optimisation algorithm and a proper metric should be more inclined to capture global features than local features. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文探讨了4D地震历史匹配,并特别关注地震数据优化过程中使用的目标函数。目标函数是通过使用二元图计算的,其中一个图是从观测到的地震数据中获得的,另一个是从仿真模型中优化算法的一种实现中获得的。为了确定哪组参数是仿真模型的相关更新,需要一种有效的方法来测量这两个二进制图像在目标函数中的评估过程中的相似程度。相似性或相异性量化这一方面的背后是度量概念或距离测量技术。这项研究提出了四个度量标准,即著名的汉明距离,两个广泛使用的度量标准,Hausdorff距离和互信息,以及一个最近的度量标准,称为“当前度量标准”。这些指标将在不同的案例场景下进行测试和比较,并根据实际案例(气体排放)设计,然后在本文的第二部分中使用。尽管汉明距离很简单,但是它给出了积极的结果,但是“当前度量标准”似乎是覆盖更广泛场景的更有效的选择,当在历史匹配练习中对合成数据集和真实数据集进行测试时,这些结论仍然成立。本文将研究二元映射过程的一些实际方面,因为它表明使用无导数优化算法更合适,并且适当的度量应该比局部特征更倾向于捕获全局特征。 (C)2016 Elsevier Ltd.保留所有权利。

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