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Forecasting U.S. shale gas monthly production using a hybrid ARIMA and metabolic nonlinear grey model

机译:使用混合ARIMA和代谢非线性灰色模型预测美国页岩气月产量

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Changes in shale gas production directly determine natural gas output in the United States (U.S.), and indirectly impact the global gas market. To better forecast shale gas output, we hybridized a nonlinear model with a linear model to develop a metabolic nonlinear grey model-autoregressive integrated moving average model (or MNGM-ARIMA). The proposed hybrid forecasting technique uses a linear model to correct nonlinear predictions, which effectively integrates the advantages of linear and nonlinear models and mitigates their limitations. Based on existing U.S. monthly shale gas output data, we applied the proposed hybrid technique to forecast U.S. monthly shale gas output. The results show that the proposed MNGM-ARIMA technique can produce a reliable forecasting results, with a mean absolute percent error of 2.396%. Then, using the same set of data, we also ran three other forecasting techniques developed by former researchers: the metabolic grey model (MGM), ARIMA, and non-linear grey model (NGM). The results of the comparison show that the proposed MNGM-ARIMA technique has the smallest mean absolute percent error. This indicates the proposed hybrid technique can produce more accurate forecasting results. We therefore conclude that the proposed MNGM-ARIMA technique can service us better forecasting shale gas output, as well as other fuels output. (C) 2018 Elsevier Ltd. All rights reserved.
机译:页岩气产量的变化直接决定美国(美国)的天然气产量,并间接影响全球天然气市场。为了更好地预测页岩气产量,我们将非线性模型与线性模型进行了混合,以开发代谢非线性灰色模型-自回归综合移动平均模型(或MNGM-ARIMA)。提出的混合预测技术使用线性模型来校正非线性预测,从而有效地整合了线性模型和非线性模型的优点并减轻了它们的局限性。根据现有的美国每月页岩气产量数据,我们将提出的混合技术应用于预测美国每月页岩气产量。结果表明,所提出的MNGM-ARIMA技术可以产生可靠的预测结果,平均绝对百分比误差为2.396%。然后,使用相同的数据集,我们还运行了由前研究人员开发的其他三种预测技术:代谢灰色模型(MGM),ARIMA和非线性灰色模型(NGM)。比较结果表明,所提出的MNGM-ARIMA技术具有最小的平均绝对百分比误差。这表明提出的混合技术可以产生更准确的预测结果。因此,我们得出结论,提出的MNGM-ARIMA技术可以为我们更好地预测页岩气产量以及其他燃料产量提供服务。 (C)2018 Elsevier Ltd.保留所有权利。

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