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作 者:Xin Liu Meng Sun Bo Lin Shibo Gu
机构地区:[1]Qingdao Institute of Software,College of Computer Science and Technology,China University of Petroleum(East China),Qingdao,266580,China [2]Offshore Oil Production Plant,Shengli Oilfield Branch Company,SINOPEC,Dongying,257237,China
出 处:《Energy Engineering》2025年第3期1053-1072,共20页能源工程(英文)
基 金:funded by National Natural Science Foundation of China,grant number 62071491.
摘 要:Long-termpetroleum production forecasting is essential for the effective development andmanagement of oilfields.Due to its ability to extract complex patterns,deep learning has gained popularity for production forecasting.However,existing deep learning models frequently overlook the selective utilization of information from other production wells,resulting in suboptimal performance in long-term production forecasting across multiple wells.To achieve accurate long-term petroleum production forecast,we propose a spatial-geological perception graph convolutional neural network(SGP-GCN)that accounts for the temporal,spatial,and geological dependencies inherent in petroleum production.Utilizing the attention mechanism,the SGP-GCN effectively captures intricate correlations within production and geological data,forming the representations of each production well.Based on the spatial distances and geological feature correlations,we construct a spatial-geological matrix as the weight matrix to enable differential utilization of information from other wells.Additionally,a matrix sparsification algorithm based on production clustering(SPC)is also proposed to optimize the weight distribution within the spatial-geological matrix,thereby enhancing long-term forecasting performance.Empirical evaluations have shown that the SGP-GCN outperforms existing deep learning models,such as CNN-LSTM-SA,in long-term petroleum production forecasting.This demonstrates the potential of the SGP-GCN as a valuable tool for long-term petroleum production forecasting across multiple wells.
关 键 词:Petroleum production forecast graph convolutional neural networks(GCNs) spatial-geological rela-tionships production clustering attention mechanism
分 类 号:TE343[石油与天然气工程—油气田开发工程]
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