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Challenges in adjoint-based optimization of a foam EOR process

机译:基于伴随的泡沫EOR工艺优化面临的挑战

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We apply adjoint-based optimization to a surfactant-alternating gas foam process using a linear foam model introducing gradual changes in gas mobility and a nonlinear foam model giving abrupt changes in gas mobility as function of oil and water saturations and surfactant concentration. For the linear foam model, the objective function is a relatively smooth function of the switching time. For the nonlinear foam model, the objective function exhibits many small-scale fluctuations. As a result, a gradient-based optimization routine could have difficulty finding the optimal switching time. For the nonlinear foam model, extremely small time steps were required in the forward integration to converge to an accurate solution to the semi-discrete (discretized in space, continuous in time) problem. The semi-discrete solution still had strong oscillations in grid-block properties associated with the steep front moving through the reservoir. In addition, an extraordinarily tight tolerance was required in the backward integration to obtain accurate adjoints. We believe the small-scale oscillations in the objective function result from the large oscillations in gridblock properties associated with the front moving through the reservoir. Other EOR processes, including surfactant EOR and near-miscible flooding, have similar sharp changes and may present similar challenges to gradient-based optimization.
机译:我们将基于伴随的优化应用于线性表面活性剂替代气体泡沫过程,该模型使用线性泡沫模型引入气体迁移率的逐步变化,而非线性泡沫模型则根据油和水饱和度和表面活性剂浓度的变化给出气体迁移率的突变。对于线性泡沫模型,目标函数是切换时间的相对平滑函数。对于非线性泡沫模型,目标函数表现出许多小范围的波动。结果,基于梯度的优化例程可能难以找到最佳切换时间。对于非线性泡沫模型,在前向积分中需要极小的时间步长,以收敛到半离散(空间离散,时间连续)问题的精确解决方案。半离散解决方案仍然具有与通过储层的陡峭锋面相关的网格块属性的强烈振荡。另外,在向后集成中需要非常严格的公差以获得准确的伴随。我们认为,目标函数中的小规模振荡是由于与穿越储层的前缘相关的网格块属性的大振荡引起的。其他EOR工艺,包括表面活性剂EOR和近乎混溶的驱油,具有类似的急剧变化,并且可能对基于梯度的优化提出类似的挑战。

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