A Cognitive Data-Driven Single-Well Modeling Workflow for Reservoir Deliverability Predictions – Expanding the Wireline Formation Tester Application Envelope

Abdul Bari, Mohammad Rasheed Khan, M. S. Tanveer, Muhammad Hammad, Asad Mumtaz Adhami, S. Siddiqi, T. Zubair, Hamza Ali, M. Sarili, Anwar Ali, Saad bin Abrar, Shahnawaz Aziz
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Abstract

In today's dynamically challenging E&P industry, exploration activities demand for out-of-the-box measures to make the most out of the data available at hand. Instead of relying on time consuming and cost-intensive deliverability testing, there is a strong push to extract maximum possible information from time- and cost-efficient wireline formation testers in combination with other openhole logs to get critical reservoir insight. Consequently, driving efficiency in the appraisal process by reducing redundant expenditures linked with reservoir evaluation. Employing a data-driven approach, this paper addresses the need to build single-well analytical models that combines knowledge of core data, petrophysical evaluation and reservoir fluid properties. Resultantly, predictive analysis using cognitive processes to determine multilayer productivity for an exploratory well is achieved. Single Well Predictive Modeling (SWPM) workflow is developed for this case which utilizes plethora of formation evaluation information which traditionally resides across siloed disciplines. A tailor-made workflow has been implemented which goes beyond the conventional formation tester deliverables while incorporating PVT and numerical simulation methodologies. Stage one involved reservoir characterization utilizing Interval Pressure Transient Testing (IPTT) done through the mini-DST operation on wireline formation tester. Stage two concerns the use of analytical modeling to yield exact solution to an approximate problem whose end-product is an estimate of the Absolute Open Flow Potential (AOFP). Stage three involves utilizing fluid properties from downhole fluid samples and integrating with core, OH logs, and IPTT answer products to yield a calibrated SWPM model, which includes development of a 1D petrophysical model. Additionally, this stage produces a 3D simulation model to yield a reservoir production performance deliverable which considers variable rock typing through neural network analysis. Ultimately, stage four combines the preceding analysis to develop a wellbore production model which aids in optimizing completion strategies. The application of this data-driven and cognitive technique has helped the operator in evaluating the potential of the reservoir early-on to aid in the decision-making process for further investments. An exhaustive workflow is in place that can be adopted for informed reservoir deliverability modeling in case of early well-life evaluations.
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面向油藏产能预测的认知数据驱动单井建模工作流程——扩展电缆地层测试器的应用范围
在当今充满挑战的勘探开发行业中,勘探活动需要开箱即用的措施,以最大限度地利用现有数据。相比于耗时且成本高的产能测试,现在的趋势是将电缆地层测试与其他裸眼测井数据相结合,通过时间和成本效益的方式获取尽可能多的信息,从而获得关键的储层信息。因此,通过减少与储层评价相关的冗余支出,提高评价过程的效率。本文采用数据驱动的方法,解决了建立单井分析模型的需求,该模型结合了岩心数据、岩石物理评价和储层流体性质的知识。因此,可以利用认知过程进行预测分析,以确定探井的多层产能。针对这种情况,开发了单井预测建模(SWPM)工作流程,该流程利用了大量的地层评估信息,而这些信息通常存在于各个学科之间。在结合PVT和数值模拟方法的同时,实施了定制的工作流程,超越了传统的地层测试交付。第一阶段是利用分段压力瞬变测试(IPTT)对储层进行表征,该测试是通过电缆地层测试器上的小型dst操作完成的。第二阶段涉及使用解析建模来得到近似问题的精确解,该近似问题的最终结果是对绝对无阻流势(AOFP)的估计。第三阶段包括利用井下流体样本的流体特性,结合岩心、OH测井和IPTT应答产品,生成校准的SWPM模型,其中包括一维岩石物理模型的开发。此外,该阶段通过神经网络分析,生成考虑可变岩石类型的三维模拟模型,从而得出油藏生产动态。最后,第四阶段结合前面的分析,建立井筒生产模型,帮助优化完井策略。这种数据驱动和认知技术的应用,帮助作业者在早期评估储层潜力,从而为进一步投资决策提供帮助。一个详尽的工作流程可以在早期井寿命评估的情况下用于油藏产能建模。
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