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History matching of petroleum reservoirs employing adaptive genetic algorithm

机译:自适应遗传算法在油气藏历史匹配中的应用

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History matching is an important phase in reservoir modeling and simulation process, where one aims to find a reservoir description that minimizes difference between the observed performance and the simulator output during historic production period. For the automatic history-matching problem through reservoir characterization, a global optimization method called adaptive genetic algorithm (AGA) has been employed. AGA is a relatively new optimization technique which has adaptive genetic operators that dynamically update the crossover and mutation probabilities in each generation according to fitness of population to reach optimal solutions. Only critical parameters such as porosity and permeability distributions have been found by the optimization route, the rest being adjusted manually, if necessary, in the present study. History-matching results from AGA were also compared to those from conventional simple genetic algorithm (SGA). The AGA and SGA techniques were utilized to determine permeability map that resulted in a good match for past field history. The methodology was tested and validated by implementing it on a known 2D synthetic black-oil reservoir, which was subsequently used for a real-field reservoir situated in Cambay Basin, Gujarat, India. AGA methodology was able to outperform the SGA in terms of reduced computation load and improved history match.
机译:历史记录匹配是油藏建模和模拟过程中的一个重要阶段,在此阶段,我们的目标是找到一个油藏描述,以最大程度地减少历史生产期间观察到的性能与模拟器输出之间的差异。对于通过储层表征的自动历史拟合问题,已经采用了一种称为自适应遗传算法(AGA)的全局优化方法。 AGA是一种相对较新的优化技术,具有自适应遗传算子,可根据种群的适应性动态更新每一代中的交叉和突变概率,以达到最佳解。通过优化途径仅发现关键参数,例如孔隙度和渗透率分布,其余参数在本研究中必要时手动调整。还比较了AGA的历史记录匹配结果与常规简单遗传算法(SGA)的历史记录匹配结果。利用AGA和SGA技术确定渗透率图,这与过去的油田历史非常吻合。通过在已知的2D合成黑油储层上实施该方法,对该方法进行了测试和验证,该储层随后被用于印度古吉拉特邦Cambay盆地的实际油田。 AGA方法在减少计算负载和改善历史记录匹配方面能够胜过SGA。

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