Oil well production prediction based on CNN-LSTM model with self-attention mechanism

IF 9 1区 工程技术 Q1 ENERGY & FUELS Energy Pub Date : 2023-08-08 DOI:10.1016/j.energy.2023.128701
Shaowei Pan , Bo Yang , Shukai Wang , Zhi Guo , Lin Wang , Jinhua Liu , Siyu Wu
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引用次数: 0

Abstract

To overcome the shortcomings in current study of oil well production prediction, we propose a combined model (CNN-LSTM-SA) with the convolutional neural network (CNN), the long short-term memory (LSTM) neural network and the self-attention mechanism (SA). The CNN-LSTM-SA model consists of five parts: input layer, CNN module, LSTM layer, self-attention layer and output layer. In this model, CNN is used to extract the spatiotemporal features of the input data, LSTM is used to extract the correlation information, and SA is used to capture the internal correlation. Compared with the traditional machine learning methods, such as linear regression (LR), support vector machine (SVM), random forest (RF), XGBoost and back propagation (BP) neural network; and deep learning methods, such as LSTM, LSTM-SA and CNN-LSTM, the CNN-LSTM-SA model can extract the spatial-temporal features that are hidden in oil well production data more comprehensively. It is enable to mine the internal correlation in oil well production data more precisely, thereby improving the accuracy of oil well production prediction. More specifically, among the existing methods, the CNN-LSTM-SA model achieves the best performance in terms of adaptation to the basic trend of oil well production and the prediction of specific values of oil well production.

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基于自关注机制CNN-LSTM模型的油井产量预测
针对目前油井产量预测研究的不足,提出了一种结合卷积神经网络(CNN)、长短期记忆(LSTM)神经网络和自注意机制(SA)的组合模型(CNN-LSTM-SA)。CNN-LSTM- sa模型由五个部分组成:输入层、CNN模块、LSTM层、自关注层和输出层。在该模型中,使用CNN提取输入数据的时空特征,使用LSTM提取相关信息,使用SA捕获内部相关性。对比传统的机器学习方法,如线性回归(LR)、支持向量机(SVM)、随机森林(RF)、XGBoost和反向传播(BP)神经网络;与LSTM、LSTM- sa和CNN-LSTM等深度学习方法相比,CNN-LSTM- sa模型可以更全面地提取油井生产数据中隐藏的时空特征。它可以更精确地挖掘油井生产数据的内在相关性,从而提高油井生产预测的准确性。具体而言,在现有方法中,CNN-LSTM-SA模型在对油井产量基本趋势的适应能力和油井产量具体值的预测能力方面表现最好。
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来源期刊
Energy
Energy 工程技术-能源与燃料
CiteScore
15.30
自引率
14.40%
发文量
0
审稿时长
14.2 weeks
期刊介绍: Energy is a multidisciplinary, international journal that publishes research and analysis in the field of energy engineering. Our aim is to become a leading peer-reviewed platform and a trusted source of information for energy-related topics. The journal covers a range of areas including mechanical engineering, thermal sciences, and energy analysis. We are particularly interested in research on energy modelling, prediction, integrated energy systems, planning, and management. Additionally, we welcome papers on energy conservation, efficiency, biomass and bioenergy, renewable energy, electricity supply and demand, energy storage, buildings, and economic and policy issues. These topics should align with our broader multidisciplinary focus.
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