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Well production forecasting based on ARIMA-LSTM model considering manual operations

机译:基于ARIMA-LSTM模型的井生产预测考虑手动操作

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摘要

Accurate and efficient prediction of well production is essential for extending a well's life cycle and improving reservoir recovery. Traditional models require expensive computational time and various types of formation and fluid data. Besides, frequent manual operations are always ignored because of their cumbersome processing. In this paper, a novel hybrid model is established that considers the advantages of linearity and nonlinearity, as well as the impact of manual operations. This integrates the autoregressive integrated moving average (ARIMA) model and the long short term memory (LSTM) model. The ARIMA model filters linear trends in the production time series data and passes on the residual value to the LSTM model. Given that the manual open-shut operations lead to nonlinear fluctuations, the residual and daily production time series are composed of the LSTM input data. To compare the performance of the hybrid models ARIMA-LSTM and ARIMA-LSTM-DP (Daily Production time series) with the ARIMA, LSTM, and LSTM-DP models, production time series of three actual wells are analyzed. Four indexes, namely, root mean squared error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE), and similarity (Sim) values are evaluated to calculate the prediction accuracy. The results of the experiments indicate that the single ARIMA model has a good performance in the steady production decline curves. Conversely, the LSTM model has obvious advantages over the ARIMA model to the fluctuating nonlinear data. And coupling models (ARIMA-LSTM, ARIMA-LSTM-DP) exhibit better results than the individual ARIMA, LSTM, or LSTM-DP models, wherein the ARIMA-LSTM-DP model performs even better when the well production series are affected by frequent manual operations. (c) 2020 Elsevier Ltd. All rights reserved.
机译:对井生产的准确和有效预测对于延长井的生命周期并改善水库恢复至关重要。传统模型需要昂贵的计算时间和各种类型的形成和流体数据。此外,由于其繁琐的处理,常常手动操作总是被忽略。在本文中,建立了一种新的混合模型,其考虑了线性和非线性的优点,以及手动操作的影响。这集成了自回归集成移动平均(ARIMA)模型和长短期内存(LSTM)模型。 Arima模型过滤生产时间序列数据中的线性趋势,并通过了LSTM模型的残余值。鉴于手动开关操作导致非线性波动,剩余和日常生产时间序列由LSTM输入数据组成。为了比较Hybrid模型Arima-LSTM和ARIMA-LSTM-DP(日本生产时间序列)与Arima,LSTM和LSTM-DP模型的性能,分析了三种实际井的生产时间序列。四个索引,即根均方误差(RMSE),平均误差(MAE),平均值百分比误差(MAPE),以及相似性(SIM)值以计算预测准确性。实验结果表明,单个Arima模型在稳定的生产下降曲线中具有良好的性能。相反,LSTM模型在ARIMA模型上具有明显的优势,以波动的非线性数据。和耦合模型(ARIMA-LSTM,ARIMA-LSTM-DP)表现出比各个ARIMA,LSTM或LSTM-DP模型更好的结果,其中当井生产系列受到频繁影响时,ARIMA-LSTM-DP模型更好地执行更好手动操作。 (c)2020 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Energy》 |2021年第1期|119708.1-119708.13|共13页
  • 作者单位

    China Univ Petr East China Sch Petr Engn Qingdao 266580 Peoples R China|China Univ Petr East China Key Lab Unconvent Oil & Gas Dev Minist Educ Qingdao 266580 Peoples R China|Univ Houston Dept Petr Engn Houston TX 77204 USA;

    China Univ Petr East China Sch Petr Engn Qingdao 266580 Peoples R China|Univ Houston Dept Petr Engn Houston TX 77204 USA;

    China Univ Petr East China Sch Petr Engn Qingdao 266580 Peoples R China;

    China Univ Petr East China Sch Petr Engn Qingdao 266580 Peoples R China;

    China Univ Petr East China Sch Petr Engn Qingdao 266580 Peoples R China;

    China Univ Petr East China Sch Petr Engn Qingdao 266580 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Production forecasting; Hybrid model; ARIMA; LSTM; Daily production time series;

    机译:生产预测;混合模型;Arima;LSTM;日常生产时间序列;
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