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An adaptive robust optimization scheme for water-flooding optimization in oil reservoirs using residual analysis * * The authors acknowledge financial support from the Recovery Factory program sponsored by Shell Global Solutions International.

机译:使用残差分析的油藏注水优化自适应鲁棒优化方案 * * 作者感谢美国经济复苏计划的财政支持壳牌全球解决方案国际组织赞助的工厂计划。

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摘要

Model-based dynamic optimization of the water-flooding process in oil reservoirs is a computationally complex problem and suffers from high levels of uncertainty. A traditional way of quantifying uncertainty in robust water-flooding optimization is by considering an ensemble of uncertain model realizations. These models are generally not validated with data and the resulting robust optimization strategies are mostly offline or open-loop. The main focus of this work is to develop an adaptive or online robust optimization scheme using residual analysis as a major ingredient. The models in an ensemble are confronted with data and an adapted ensemble is formed with only those models that are not invalidated. As a next step, the robust optimization is again performed (i.e., updated/adjusted) with this adapted ensemble. The adapted ensemble gives a less conservative description of uncertainty and also reduces the high computational cost involved in robust optimization. Simulation example shows that an increase in the objective function value with a reduction of uncertainty on these values is obtained with the developed adaptive robust scheme compared to an open-loop offline robust strategy with the full ensemble and an adaptive scheme using Ensemble Kalman Filter (EnKF), which is one of the most common parameter estimation methods in reservoir simulations.
机译:基于模型的油藏注水过程动态优化是一个计算复杂的问题,并且存在高度不确定性。鲁棒注水优化中量化不确定性的传统方法是考虑不确定性模型实现的整体。这些模型通常不使用数据进行验证,因此产生的强大的优化策略大多是脱机或开环的。这项工作的主要重点是开发一种将残差分析作为主要成分的自适应或在线鲁棒优化方案。集成中的模型面临数据,并且仅使用那些没有失效的模型形成适应性集成。下一步,利用这种适应的集合再次进行鲁棒优化(即,更新/调整)。调整后的集合对不确定性的描述不太保守,并且减少了鲁棒优化中涉及的高计算成本。仿真示例表明,与具有完整集成的开环离线鲁棒策略和使用Ensemble Kalman滤波器(EnKF)的自适应方案相比,通过开发的自适应鲁棒方案可以提高目标函数值,并减少这些值的不确定性。 ),这是储层模拟中最常用的参数估计方法之一。

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