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History Matching and Uncertainty Quantification - Multiobjective Particle Swarm Optimisation Approach

机译:历史匹配与不确定性量化 - 多目标粒子群优化方法

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Quantifying uncertainty in hydrocarbon production forecasts is critical in the petroleum industry because of the dominant role uncertainty quantification plays in reservoir management decisions. An efficient application of global optimisation methods to history matching and uncertainty quantification of real complex reservoirs has been an extensively an active area of research. The goals of these methods are to navigate the parameter space for multiple good fitting models quickly and identify as many different optima as possible. Obtaining multiple optima can result in an ensemble of history matches that has divergent prediction profiles for more accurate and reliable predictive uncertainty estimates. The present study extends the application of particle swarm optimisation to handle multi-objective optimisation in reservoir history matching context. Previous research studies in assisted history matching primarily focused on optimising a single objective function in which all the production data coming from the wells are aggregated into a single misfit value. The single misfit value is constructed by summing the weighted squared differences between historical and simulated production data. In the multi- objective optimisation scheme, multiple objectives can be defined representing each or some of the weighted squared difference of a production type. By constructing multiple objectives that measure the contribution of each objective in the multi-objective optimisation scheme, it can be possible to find a set of solutions which optimally balances the different objectives simultaneously while maintaining solution diversity. The advantage of this construction is that the tradeoffs between the objectives can be explored and explicitly exploited in the course of optimisation to find all possible combination of good fitting model solutions that have similar match quality. In history matching, it is desirable to have various solutions that map to relatively similar low misfit values that can represent all the possible geological scenarios. The new multi-objective particle swarm optimisation uses a crowding distance mechanism jointly with a mutation operator to preserve the diversity of solutions. In this paper, the multi-objective particle swarm optimisation scheme has been investigated on history matching a well-known synthetic reservoir simulation model and the results were compared with a single objective methodology. Analyses of history matching quality and predictive uncertainty estimation based on the resulted models have been conducted to obtain the uncertainty predictions envelopes for both strategies. The comparative results suggest that, for the reservoir under consideration, the multi- objective particle swarm approach obtains better history matches and has achieved over twofold faster convergence speed than the single objective approach. The benefits of using multi-objective scheme by comparison with the single objective scheme to obtain a diverse set of history matches while reducing the number of simulations required for achieving a similar matching performance have led to more reliable predictions.
机译:由于储层管理决策中的主要作用不确定性量化在石油行业中,量化碳氢化合物生产预测的不确定性至关重要。有效地应用全球优化方法对真实复杂的储层的历史匹配和不确定性量化已经是一个广泛的活跃的研究领域。这些方法的目标是快速浏览多个良好拟合模型的参数空间,并尽可能多地识别不同的Optima。获取多个Optima可以导致历史匹配的集合,其具有具有不同预测配置文件的历史匹配,以获得更准确和可靠的预测性不确定性估计。本研究扩展了粒子群优化在储存历史匹配背景下处理多目标优化的应用。以前的辅助历史匹配的研究主要专注于优化单一目标函数,其中来自来自井的所有生产数据被聚集成单一的错量值。通过求和历史和模拟生产数据之间的加权平方差异来构建单一的错误值。在多目标优化方案中,可以定义多个目标,其表示生产类型的每个加权平方差异。通过构建测量各目标在多目标优化方案中贡献的多个目标,可以找到一组解决方案,该解决方案在保持解决方案多样性的同时同时最佳地平衡不同的目标。这种结构的优势在于,在优化过程中,可以探索目标之间的权衡,以找到具有类似匹配质量的良好拟合模型解决方案的所有可能组合。在历史匹配中,希望具有各种解决方案,即映射到相对相似的低错位值,可以代表所有可能的地质场景。新的多目标粒子群优化优化使用拥挤的距离机制与突变操作员共同保护解决方案的多样性。本文在匹配众所周知的合成储层模拟模型的历史上研究了多目标粒子群优化方案,并将结果与​​单一物镜方法进行比较。已经进行了基于所产生模型的历史匹配质量和预测不确定性估计的分析,以获得两种策略的不确定性预测。比较结果表明,对于所考虑的储层,多目标粒子群方法获得更好的历史匹配,并且已经比单个客观方法更快地实现了更快的会聚速度。使用多目标方案与单个客观方案进行比较的好处,以获得各种历史匹配,同时减少实现类似匹配性能所需的模拟的数量导致了更可靠的预测。

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