Is Decline Curve Analysis the Right Tool for Production Forecasting in Unconventional Reservoirs?

Oscar M. Molina, Laura Santos, F. Herrero, Agustin Monaco, Darren Schultz
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引用次数: 1

Abstract

This study presents a novel metaheuristic algorithm that uses a physics-based model for multi-fractured horizontal wells (MFHW) to accurately predict the estimated ultimate recovery (EUR) for unconventional reservoirs. The metaheuristic algorithm creates a sizeable number of stochastic simulations and keeps the simulation results from those random models that closely reproduce observed production data. Unlike other optimization methods, the proposed algorithm does not aim at finding the exact solution to the problem but a group of sufficiently accurate solutions that help to construct the partial solution to the optimization problem as a function of production history. Results from this work provide sufficient evidence as to why traditional decline curve analysis (DCA) is not a suitable solution for production forecasting in unconventional reservoirs. Two case studies are discussed in this work where results from both modeling strategies are compared. Evolutionary prediction of EUR over time using DCA behaves erratically, regardless of the amount of historical production data available to the regression model. Such erratic behavior can, in turn, yield an erroneous estimation of key economic performance indicators of an asset. In contrast, the proposed metaheuristic algorithm delivers precise and accurate results consistently, achieving a significant reduction of uncertainties as more production data becomes available. In conclusion, the proposed partial optimization approach enables the accurate calculation of important metrics for unconventional reservoirs, including production forecasting and expected productive life of an asset.
递减曲线分析是非常规油藏产量预测的正确工具吗?
本研究提出了一种新的元启发式算法,该算法使用基于物理的多裂缝水平井(MFHW)模型来准确预测非常规油藏的估计最终采收率(EUR)。元启发式算法创建了相当数量的随机模拟,并保留了这些随机模型的模拟结果,这些模型与观察到的生产数据非常接近。与其他优化方法不同,该算法的目标不是找到问题的精确解,而是一组足够精确的解,这些解有助于构建作为生产历史函数的优化问题的部分解。本文的研究结果充分证明了传统的递减曲线分析(DCA)并不适合非常规油藏的产量预测。本文讨论了两个案例研究,比较了两种建模策略的结果。无论回归模型中可用的历史生产数据的数量如何,使用DCA对EUR随时间的演化预测都是不规律的。这种不稳定的行为反过来又会导致对资产关键经济表现指标的错误估计。相比之下,提出的元启发式算法提供了精确和准确的结果,随着更多的生产数据可用,显著减少了不确定性。总之,所提出的局部优化方法能够准确计算非常规油藏的重要指标,包括产量预测和资产的预期生产寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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