Production Decline Prediction of Shale Gas using Hybrid Models

P. Manda, D. Nkazi
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引用次数: 1

Abstract

Hybrid models have frequently been used for shale gas production decline prediction by manipulating the unique strength of each of the known decline models. The use of a combination of models provides a more precise predicting model for forecasting time series data as compared to an individual model. In this study, the forecasting performance of decline curve hybrid models and ANN-ARIMA hybrid models are evaluated and compared with Arps’, Duong’s, the Power Law Exponential Decline, Autoregressive Integrated Moving Average (ARIMA) and Artificial Neutral Network (ANN) models, respectively. The variable used to assess the models was the respective flow rate, q(t) monitored over a period of time (T). The results have shown that the single model approach can outperform hybrid models. The average deviation of the two best models indicates a central tendency of the production data around the mean. Subsequently, the spread in the data between the actual and predicted values is found to be less. It can thus be concluded that the ARIMA and ANN models have the best forecasting accuracy for production decline in shale gas compared to the other models.
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基于混合模型的页岩气产量递减预测
混合模型经常被用于页岩气产量递减预测,通过操纵每个已知递减模型的独特强度。与单个模型相比,组合模型的使用为预测时间序列数据提供了更精确的预测模型。本文对下降曲线混合模型和ANN-ARIMA混合模型的预测性能进行了评价,并分别与Arps模型、Duong模型、幂律指数下降模型、自回归综合移动平均(ARIMA)模型和人工神经网络(ANN)模型进行了比较。用于评估模型的变量是在一段时间(t)内监测的各自的流量q(t)。结果表明,单一模型方法优于混合模型。两个最佳模型的平均偏差表明生产数据在平均值附近有集中趋势。随后,发现数据中实际值与预测值之间的差较小。因此可以得出结论,与其他模型相比,ARIMA和ANN模型对页岩气产量下降的预测精度最好。
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