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Accounting for Serial Autocorrelation in Decline Curve Analysis of Marcellus Shale Gas Wells

机译:Marcellus页岩气井曲线分析中的串行自相关

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Current decline models fail to capture all of the behavior in shale gas production histories.That is,upon fitting one of these models,one often sees significant and sustained deviation of the flow rate data points from the decline trend.One way to measure this "lost signal" is to look at the autocorrelation in the residuals about the fitted decline model.Indeed,with many shale gas wells we see significant amounts of autocorrelation,especially when comparing the flow rate at one time to the next(lag one).Theoretically,this serially autocorrelated error can impact decline curve analysis in two ways: 1)inefficient estimation of decline curve parameters,and 2)lost signal in the data.Borrowing from time series statistics,there are two conventional ways of dealing with these potential problems: 1)estimate the decline curve parameters with generalized least squares or generalized nonlinear least squares,and 2)fitting an ARMA model to the residuals and adding it to the fitted decline curve.This paper investigates the practical implications of these two procedures by exercising them over decline curves fit to 8,527 Marcellus shale gas wells(all wells from that play with viable data for the analysis).The study explores the effect that generalized regression methods and ARMA-modeled residuals have on six different decline curves,and performance is measured in terms of sum of squared residuals(a metric for goodness-of-fit,calculated on the training data(first 24 months of each record))and mean absolute percent error(a standard metric for forecasting accuracy,calculated on the testing data(all production rates after 24 months)).We find that inclusion of the ARMA-modeled residuals largely improves the goodness-of-fit for any decline curve,and improves the forecasting accuracy for the Hyperbolic decline curve and Duong's model.The use of generalized least squares or generalized nonlinear least squares has little benefit in fitting the decline curves,except for the Logistic Growth model,where it improves both fit and forecasting accuracy.
机译:目前的下跌机型并没有捕捉到所有的页岩气产量histories.That行为是,在拟合这些车型之一,常常可以看到从下降trend.One方法来衡量这种“流量数据点的显著和持续的偏差丢失信号”是看在约拟合下降model.Indeed残差自相关,许多页岩气井我们看到显著大量的自相关的,尤其是在一个时间比较流速下一个(延迟一个)时.Theoretically这连续自相关的错误可以通过两种方式影响下降曲线分析:从时间序列统计data.Borrowing 1)的下降曲线参数低效估计,以及2)信号丢失,也有处理这些潜在问题的两种传统方式: 1)估计与广义最小二乘下降曲线参数或广义非线性最小二乘,和2)拟合的ARMA模型的残差和它添加到装配下降curve.Thi的论文调查了这两个程序的实际影响通过行使他们在递减曲线拟合8527个马塞勒斯页岩气井(从可行的数据是玩了分析所有孔)。本研究探讨了广义回归方法和ARMA建模效果残差对六种不同的下降曲线和性能在残差平方和(一个度量拟合优度,在训练数据(每个记录的头24个月)来计算)和平均绝对百分误差(一个衡量标准度量预测的准确性,对测试数据计算(24个月后的所有生产速率))。我们发现,列入ARMA模型化的残差很大程度上提高了优度适合任何递减曲线,提高了预测精度双曲递减曲线和平阳的model.The使用广义最小二乘或广义非线性最小二乘在拟合曲线下降多少好处,除了物流增长模型,它改善了配合和预测的准确性。

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