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Application of Deep Learning for Division of Petroleum Reservoirs

Author(s): Yaqiong Qin; Zhaohui Ye; Conghui Zhang

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Abstract: Traditional methods of dividing petroleum reservoirs are inefficient, and the accuracy of onehidden-layer BP neural network is not ideal when applied to dividing reservoirs. This paper proposes to use the deep learning models to solve the reservoir division problem. We apply multiple-hidden-layer BP neural network and convolutional neural network models, and adjust the network structures according to the characteristics of the reservoir problem. The results show that the deep learning models are better than onehidden- layer BP neural network, and the performance of the convolutional neural network is very close to the artificial work.

DOI: https://doi.org/10.1051/matecconf/201824603004

Year: 2018

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