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Closed-loop Feedback Control for Production Optimization of Intelligent Wells under Uncertainty

机译:不确定条件下智能井生产优化的闭环反馈控制

摘要

Important challenges still remain in the development of optimized control techniques for intelligent wells, particularly with respect to properly incorporating the impact of reservoir uncertainty. Most optimization methods are model-based and are effective only if the model or ensemble of models used in the optimization capture all possible reservoir behaviors at the individual well and completion level. This is rarely the case. Moreover, reservoir simulation models are rarely predictive at the spatial and temporal scales required to identify control actions. We suggest that simple, closed-loop feedback control strategies, triggered by monitoring at the surface or downhole, can increase NPV and mitigate reservoir uncertainty. We do not neglect reservoir model predictions entirely; rather, we use a model-based approach to optimize adjustable parameters in the feedback control strategies. ududWe evaluate the benefits of closed-loop feedback control using downhole and/or surface monitoring sensors and inflow control valves (ICVs), in comparison to uncontrolled (open-hole) production, open-loop inflow control using fixed control devices (FCDs) sized prior installation, and a heuristic reactive inflow control approach using surface and downhole monitoring and ICVs. For benchmarking purposes, we also compare our feedback control approaches against the optimal dynamic solution found using model-based control and assuming a perfectly predictive model is available. The benefits of closed-loop feedback control are evaluated for three different reservoir and production scenarios. The first scenario is a synthetic thin oil-rim reservoir producing via aquifer influx using a single long horizontal well. The second is a high-resolution sector model from Troll West, which hosts a thin oil-rim, overlain by a large gas cap and underlain by an active aquifer, with oil produced via a single long horizontal well. The third reservoir production scenario is the SPE Brugge field model, a reference model for comparing history matching and production optimization strategies. The Brugge field is a synthetic example of a geologically complex oil reservoir, produced by water flooding using 10 vertical injector wells and 20 vertical producer wells. ududIn all the scenarios investigated, we find that our closed-loop control algorithm, based on direct feedback between reservoir monitoring and inflow valve settings, yields close-to-optimal gains in NPV compared to uncontrolled production. Moreover, despite the simplicity of the direct feedback control approach, the NPV returned is higher than open-loop or heuristic control approaches, particularly when reservoir behavior is unexpected. In contrast to model-based optimization techniques, our direct feedback control approach is straightforward to implement and can be easily applied in real field cases.
机译:在开发用于智能井的优化控制技术方面,仍然存在重要的挑战,特别是在适当考虑储层不确定性影响方面。大多数优化方法都是基于模型的,并且仅在优化中使用的模型或模型集合捕获了单个井和完井水平上所有可能的储层行为时才有效。这种情况很少发生。此外,储层模拟模型在识别控制动作所需的时空尺度上很少具有预测性。我们建议,通过在地表或井下进行监测而触发的简单,闭环反馈控制策略可以增加NPV并减轻储层的不确定性。我们不会完全忽略储层模型的预测。相反,我们使用基于模型的方法来优化反馈控制策略中的可调参数。 ud ud与非受控(裸眼)生产,使用固定控制装置进行开环流入控制相比,我们评估了使用井下和/或地面监测传感器以及流入控制阀(ICV)进行闭环反馈控制的优势( FCD)大小与事先安装大小相同,并采用地面和井下监测和ICV进行启发式反应式流入控制。为了进行基准测试,我们还将反馈控制方法与使用基于模型的控制并假设可以使用完美预测模型的最佳动态解决方案进行比较。针对三种不同的油藏和生产场景,评估了闭环反馈控制的优势。第一种情况是使用单个长水平井通过含水层注水生产的合成薄油边储层。第二个是来自Troll West的高分辨率部门模型,该模型拥有一个薄的油圈,上面有一个大的气顶覆盖,下面是一个活跃的含水层,并通过一个长的水平井生产石油。第三种储层生产方案是SPE Brugge油田模型,这是一个用于比较历史匹配和生产优化策略的参考模型。布鲁日油田是地质复杂的油藏的合成示例,该油藏是通过使用10口垂直注入井和20口垂直生产井注水来生产的。 ud ud在所有调查的方案中,我们发现,基于储层监控和进水阀设置之间的直接反馈,我们的闭环控制算法与非受控生产相比,在NPV中产生了接近最佳的收益。此外,尽管直接反馈控制方法简单,但返回的NPV仍比开环或启发式控制方法高,尤其是在储层行为意外的情况下。与基于模型的优化技术相比,我们的直接反馈控制方法易于实现,并且可以轻松地应用于实际案例中。

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    Dilib Fahad Ahmed;

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  • 年度 2014
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