Application of Novel Predictive Analytics for Data Allocation of Commingled Production in Smart Fields

M. Chia, M. H. Yakup, M. Tamin, Nicholas Aloysius Surin, Khairul Akmal B Mazzlan, Muhammad Rinadi, A. Hassan
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引用次数: 1

Abstract

This paper details out the application of a predictive analysis tool to ‘S’ Field's commingled production, aiming to enhance production allocation and reservoir understanding without the need of well intervention and a reduced frequency of zonal rate tests and data acquisition. Allocation of the production data to its respective reservoirs is performed via a novel Multi-Phase Allocation method (MPA), taking into account the water production trending evolution derived from relative permeability behavior of oil-water in each reservoir to compute flow rates for liquid phases over time. The precision of the derived rates is constrained by actual zonal rates tests through Inflow Control Valves (ICVs). This method will be cross referenced against ‘S’ Field's existing zonal rate calculation algorithm, utilizing input data from well tests results and real time pressure and temperature data. The MPA method demonstrates improvement in the allocation of production data as compared to the conventional KH-methodology as MPA takes into account the water cut trending between reservoirs. Leveraging on ICVs to obtain actual zonal rate measurements, this greatly reduces the range of uncertainty in the allocation process. MPA derived production split ratios closely match the split ratios derived from the ‘S’ Field's existing zonal rate calculation algorithm, which utilizes input data from well tests results and real time pressure and temperature data from down hole gauges. It is observed that the usage of actual measured zonal rate tests reduces the range of uncertainty of the MPA data. A combination of novel multi-phase deliverability models coupled with smart field technologies such as intelligent completions and real-time surveillance and analysis tools will increase the accuracy of the back allocation of multi-phase production data in commingled reservoirs.
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新型预测分析在智能领域混合生产数据分配中的应用
本文详细介绍了一种预测分析工具在S油田混合生产中的应用,旨在提高产量分配和对油藏的了解,而不需要进行油井干预,减少层间速率测试和数据采集的频率。通过一种新的多相分配方法(MPA)将生产数据分配到各自的油藏,考虑到每个油藏中油水相对渗透率行为得出的产水趋势演变,以计算液相随时间的流速。通过流入控制阀(icv)进行的实际层间速率测试限制了导出速率的精度。该方法将与S油田现有的层间速率计算算法进行交叉参考,利用来自试井结果的输入数据以及实时压力和温度数据。与传统的kh方法相比,MPA方法在分配生产数据方面有所改进,因为MPA考虑了储层之间的含水率趋势。利用icv来获得实际的区域速率测量,这大大减少了分配过程中的不确定性范围。MPA推导出的产量分割比与S油田现有的层间速率计算算法得出的分割比非常吻合,该算法利用了试井结果的输入数据和井下压力表的实时压力和温度数据。结果表明,采用实际测量的分层速率试验,减小了MPA数据的不确定度范围。新型多相产能模型与智能完井、实时监控和分析工具等智能油田技术相结合,将提高混合油藏多相生产数据回分配的准确性。
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