Bayesian Predictive Performance Assessment of Rate-Time Models for Unconventional Production Forecasting

L. R. Maraggi, L. Lake, M. P. Walsh
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Abstract

A common industry practice is to select a particular model from a set of models to history match oil production and estimate reserves by extrapolation. Future production forecasting is usually done in this deterministic way. However, this approach neglects: a) model uncertainty, and b) quantification of uncertainty of future production forecasts. The current study evaluates the predictive accuracy of rate-time models to forecast production over a set of tight oil wells of West Texas. We present the application of an accuracy metric that evaluates the uncertainty of our models' estimates: the expected log predictive density (elpd). This work assesses the predictive performance of two empirical models—the Arps hyperbolic and the logistic growth models—and two physics-based models—scaled slightly compressible single-phase and scaled two-phase (oil and gas) solutions of the diffusivity equation. These models are arbitrarily selected for the purpose of illustrating the statistical procedure shown in this paper. First, we perform classical regression with the models and evaluate their predictive performance using frequentist (point estimates) metrics such as R2, the Akaike information criteria (AIC), and hindcasting. Second, we generate probabilistic production forecasts using Bayesian inference for each model. Third, we evaluate the predictive accuracy of the models using the elpd accuracy metric. This metric evaluates a measure of out-of-sample predictive performance. We apply both adjusted-within-sample and cross-validation techniques. The adjusted within-sample method is the widely applicable information criteria (WAIC). The cross-validation techniques are hindcasting and leave-one-out (LOO-CV) method. The results of this research are the following. First, we illustrate that the assessment of a model's predictive accuracy depends on whether we use frequentist or Bayesian approaches. This is an important finding in this work. The frequentist approach relies on point estimates while the Bayesian approach considers the uncertainty of our models' estimates. From a frequentist or classical standpoint, all of the models under study yielded very similar results which made it difficult to determine which model yielded the best predictive performance. From a Bayesian standpoint, however, we determined that the logistic growth model yielded a best match in 81 of 130 wells in our sample play and the two-phase physics-based model yielded a best match in 39 of the wells. In addition, we show that WAIC and LOO-CV present similar results for each model, a thing to expect because of their asymptotical equivalence. Finally, Our observations regarding the different models are subject to the dataset under study wherein a majority of the wells are in transient flow. The present study provides tools to evaluate the predictive accuracy of models used to forecast (extrapolate) production of tight oil wells. The elpd is an accuracy metric useful to evaluate the uncertainty of our models' estimates and compare their predictive performance since it assesses distributions instead of point estimates. To our knowledge, the proposed approach is a novel and an appropriate technique to evaluate the predictive accuracy of models to forecast hydrocarbon production.
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非常规油气产量预测速率-时间模型的贝叶斯预测性能评价
一个常见的行业做法是从一组模型中选择一个特定的模型来进行历史匹配石油产量,并通过外推法估计储量。未来产量预测通常采用这种确定性方法。然而,这种方法忽略了:a)模型的不确定性,以及b)量化未来产量预测的不确定性。目前的研究评估了速率时间模型对西德克萨斯致密油井产量预测的准确性。我们提出了一种评估模型估计不确定性的精度度量的应用:期望对数预测密度(elpd)。本研究评估了两种经验模型的预测性能——Arps双曲模型和logistic增长模型——以及两种基于物理的模型——扩散系数方程的微压缩单相和缩放两相(石油和天然气)解。这些模型是为了说明本文所示的统计过程而任意选择的。首先,我们对模型进行经典回归,并使用频率(点估计)指标(如R2、赤池信息标准(AIC)和后投)评估它们的预测性能。其次,我们对每个模型使用贝叶斯推理生成概率生产预测。第三,我们使用elpd精度度量来评估模型的预测精度。该度量评估样本外预测性能的度量。我们应用样本内调整和交叉验证技术。样本内调整法是广泛应用的信息准则。交叉验证技术主要有后推法和留一法。本研究的结果如下:首先,我们说明了模型预测准确性的评估取决于我们是使用频率主义者还是贝叶斯方法。这是这项工作的一个重要发现。频率论方法依赖于点估计,而贝叶斯方法考虑了模型估计的不确定性。从频率主义者或经典的观点来看,所有被研究的模型都产生了非常相似的结果,这使得很难确定哪个模型产生了最好的预测性能。然而,从贝叶斯的角度来看,我们确定在样本区130口井中,逻辑增长模型在81口井中获得了最佳匹配,两阶段物理模型在39口井中获得了最佳匹配。此外,我们表明,WAIC和LOO-CV在每个模型中都呈现出相似的结果,这是由于它们的渐近等价而可以预期的。最后,我们对不同模型的观察结果取决于所研究的数据集,其中大多数井处于瞬态流动状态。本研究提供了工具来评估用于预测(外推)致密油井产量的模型的预测精度。elpd是一种精度度量,用于评估模型估计的不确定性,并比较它们的预测性能,因为它评估分布而不是点估计。据我们所知,所提出的方法是一种新的、合适的技术来评估模型预测油气产量的预测精度。
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