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Using Decline Curve Analysis, Volumetric Analysis, and Bayesian Methodology to Quantify Uncertainty in Shale Gas Reserve Estimates

机译:使用下降曲线分析,体积分析和贝叶斯方法对页岩气储量估算的不确定性进行量化

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摘要

Probabilistic decline curve analysis (PDCA) methods have been developed to quantify uncertainty in production forecasts and reserves estimates. However, the application of PDCA in shale gas reservoirs is relatively new. Limited work has been done on the performance of PDCA methods when the available production data are limited. In addition, PDCA methods have often been coupled with Arp?s equations, which might not be the optimum decline curve analysis model (DCA) to use, as new DCA models for shale reservoirs have been developed. Also, decline curve methods are based on production data only and do not by themselves incorporate other types of information, such as volumetric data. My research objective was to integrate volumetric information with PDCA methods and DCA models to reliably quantify the uncertainty in production forecasts from hydraulically fractured horizontal shale gas wells, regardless of the stage of depletion.In this work, hindcasts of multiple DCA models coupled to different probabilistic methods were performed to determine the reliability of the probabilistic DCA methods. In a hindcast, only a portion of the historical data is matched; predictions are made for the remainder of the historical period and compared to the actual historical production. Most of the DCA models were well calibrated visually when used with an appropriate probabilistic method, regardless of the amount of production data available to match. Volumetric assessments, used as prior information, were incorporated to further enhance the calibration of production forecasts and reserves estimates when using the Markov Chain Monte Carlo (MCMC) as the PDCA method and the logistic growth DCA model.The proposed combination of the MCMC PDCA method, the logistic growth DCA model, and use of volumetric data provides an integrated procedure to reliably quantify the uncertainty in production forecasts and reserves estimates in shale gas reservoirs. Reliable quantification of uncertainty should yield more reliable expected values of reserves estimates, as well as more reliable assessment of upside and downside potential. This can be particularly valuable early in the development of a play, because decisions regarding continued development are based to a large degree on production forecasts and reserves estimates for early wells in the play.
机译:已经开发了概率下降曲线分析(PDCA)方法来量化产量预测和储量估计中的不确定性。但是,PDCA在页岩气藏中的应用相对较新。当可用的生产数据有限时,在PDCA方法的性能方面所做的工作有限。另外,PDCA方法经常与Arp?s方程结合使用,这可能不是要使用的最佳下降曲线分析模型(DCA),因为已开发出用于页岩储层的新DCA模型。同样,下降曲线方法仅基于生产数据,而本身并不包含其他类型的信息,例如体积数据。我的研究目标是将体积信息与PDCA方法和DCA模型相集成,以可靠地量化水力压裂水平页岩气井的产量预测中的不确定性,而不论其消耗阶段如何。在这项工作中,多个DCA模型的后兆与不同概率进行方法以确定概率DCA方法的可靠性。在后播中,仅部分历史数据被匹配;对历史时期的剩余时间进行预测,并将其与实际历史产量进行比较。当使用适当的概率方法使用时,无论可用的生产数据量如何,大多数DCA模型都可以在视觉上进行很好的校准。当使用马尔可夫链蒙特卡洛(MCMC)作为PDCA方法和逻辑增长DCA模型时,纳入了作为先验信息的体积评估,以进一步增强对产量预测和储量估算的校准。 ,逻辑增长DCA模型和体积数据的使用提供了一个集成程序,可以可靠地量化页岩气储层产量预测和储量估计中的不确定性。对不确定性进行可靠的量化,应该可以得出更可靠的储量估计预期值,以及对上升和下降潜力的更可靠评估。这在油气田开发的早期特别有价值,因为有关持续开发的决策在很大程度上取决于该油田早先井的产量预测和储量估算。

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