A Back Allocation Methodology to Estimate the Real-Time Flow and Assist Production Monitoring

G. Chaves, D. D. Monteiro, Virgílio José Martins Ferreira
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Abstract

Commingle production nodes are standard practice in the industry to combine multiple segments into one. This practice is adopted at the subsurface or surface to reduce costs, elements (e.g. pipes), and space. However, it leads to one problem: determine the rates of the single elements. This problem is recurrently solved in the platform scenario using the back allocation approach, where the total platform flowrate is used to obtain the individual wells’ flowrates. The wells’ flowrates are crucial to monitor, manage and make operational decisions in order to optimize field production. This work combined outflow (well and flowline) simulation, reservoir inflow, algorithms, and an optimization problem to calculate the wells’ flowrates and give a status about the current well state. Wells stated as unsuited indicates either the input data, the well model, or the well is behaving not as expected. The well status is valuable operational information that can be interpreted, for instance, to indicate the need for a new well testing, or as reliability rate for simulations run. The well flowrates are calculated considering three scenarios the probable, minimum and maximum. Real-time data is used as input data and production well test is used to tune and update well model and parameters routinely. The methodology was applied using a representative offshore oil field with 14 producing wells for two-years production time. The back allocation methodology showed robustness in all cases, labeling the wells properly, calculating the flowrates, and honoring the platform flowrate.
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一种估算实时流量和辅助生产监控的逆向分配方法
混合生产节点是将多个部分组合成一个的行业标准实践。这种做法在地下或地面采用,以减少成本、元件(如管道)和空间。然而,它导致了一个问题:确定单个元素的速率。在平台场景中,这个问题经常使用回分配方法来解决,其中使用平台总流量来获得单口井的流量。为了优化油田生产,井的流量对于监测、管理和制定作业决策至关重要。该工作结合了流出(井和管线)模拟、油藏流入、算法和优化问题来计算井的流量,并给出了当前井的状态状态。不适合井表示输入数据、井模型或井的行为不符合预期。井的状态是有价值的操作信息,可以进行解释,例如,指示是否需要进行新井测试,或者作为模拟运行的可靠性。井流量的计算考虑了三种情况:可能、最小和最大。实时数据作为输入数据,生产井测试用于常规调整和更新井模型和参数。以某代表性海上油田14口生产井为例,进行了2年的生产实践。反向分配方法在所有情况下都显示出鲁棒性,正确标记井,计算流量,并尊重平台流量。
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