Entropy-driven particle swarm optimization for reservoir modelling under geological uncertainty – application to a fractured reservoir

B. Steffens, V. Demyanov, D. Arnold, H. Lewis
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Abstract

Summary In this work we introduce a novel reservoir modelling workflow where modelling is assisted by an entropy-driven particle swarm optimizer. Producing a representative range of reservoir models that cover geological uncertainties in an effective way is a challenging task. We therefore make use of entropy to ensure that the ensemble of generated models adequately reflects the available information and provides diversity that reflects the associated variability in fluid flow behavior. The workflow is tested on a synthetic case study of a fractured reservoir. The results indicate that the entropy-driven PSO is able to prevent the diversity of the ensemble of models from collapsing whilst staying within the bounds of a predefined expected dynamic flow response. It is also shown that the entropy-driven PSO outperforms a standard PSO in this task. Secondary outcomes from the workflow, such as a spatial entropy map, provide a great tool for further uncertainty assessment and can be used to identify swept or unswept reservoir regions and the regions where more information is needed to reduce the uncertainty.
地质不确定性条件下储层建模的熵驱动粒子群优化——在裂缝性储层中的应用
在这项工作中,我们介绍了一种新的油藏建模工作流程,其中建模是由熵驱动的粒子群优化器辅助的。有效地建立具有代表性的储层模型是一项具有挑战性的任务。因此,我们利用熵来确保生成的模型集合充分反映了可用的信息,并提供了反映流体流动行为相关变异性的多样性。该工作流程在裂缝性油藏的综合案例研究中进行了测试。结果表明,熵驱动的粒子群算法能够防止模型集合的多样性崩溃,同时保持在预定义的预期动态流响应范围内。在此任务中,熵驱动的粒子群算法优于标准粒子群算法。工作流程的次要结果,如空间熵图,为进一步的不确定性评估提供了一个很好的工具,可以用来识别扫描或未扫描的储层区域,以及需要更多信息来减少不确定性的区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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