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Intelligent Recognition Method of Insufficient Fluid Supply of Oil Well Based on Convolutional Neural Network

DOI: 10.4236/ojogas.2021.63011, PP. 116-128

Keywords: Degree of Insufficient Fluid Supply in Oil Wells, Indicator Diagram, Convolutional Neural Network, Alexnet, Backpropagation Algorithm, ReLu Activation Function, Dropout Regularization

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Abstract:

Traditional methods for judging the degree of insufficient fluid supply in oil wells have low efficiency and limited accuracy. To address this problem, a method for intelligently identifying the degree of insufficient fluid supply in oil wells based on convolutional neural networks is proposed in this paper. Firstly, 5000 indicator diagrams with insufficient liquid supply were collected from the oilfield site, and a sample set was established after preprocessing; then based on the AlexNet model, combined with the characteristics of the indicator diagram, a convolutional neural network model including 4 layers of convolutional layers, 3 layers of down-pooling layers and 2 layers of fully connected layers is established. The backpropagation, ReLu activation function and dropout regularization method are used to complete the training of the convolutional neural network; finally, the performance of the convolutional neural network under different iteration times and network structure is compared, and the super parameter optimization of the model is completed. It has laid a good foundation for realizing the self-adaptive and intelligent matching of oil well production parameters and formation fluid supply conditions. It has certain application prospects. The results show that the accuracy of training and verification of the method exceeds 98%, which can meet the actual application requirements on site.

References

[1]  Li, X., Fu, Z. and Liu, X.D. (2019) Research on the Reasonable Working System of Pumping Wells with Insufficient Liquid Supply. Petrochemical Technology, 26, 197+199.
[2]  Xu, X.Q., Zhou, H.B. and Li, M. (2017) Optimization and Adjustment Method of Pumping Unit Stroke Rate Based on the Area Change of the Hanging Point Indicator. Petrochemical Industry Automation, 53, 44-46.
[3]  Qu, B.L. and Ma, W.G. (2018) Calculation Method and Influence Analysis of Fullness of Rod Pump. Petroleum Machinery, 46, 79-84.
[4]  Li, X.Y., Xie, H.Y., Han, Z.H., Guo, H. and Fan, H. (2020) Research on Application of Convolutional Neural Network in Image Recognition Technology. Energy and Environmental Protection, 42, 73-76.
[5]  Jiao, H.H. (2020) Research on Centrifugal Pump Fault Diagnosis Method Based on Hybrid Domain Features and Convolutional Neural Network. Thesis, Beijing University of Chemical Technology, Beijing.
[6]  Du, Y. (2020) Research on Motor Bearing Fault Diagnosis Based on Deep Learning. Northeast Petroleum University, Heilongjiang.
[7]  Tang, Z.G. (2019) Research on Fault Indicator Diagram Diagnosis Method Based on Convolutional Neural Network. Thesis, Xi’an University of Science and Technology, Xi’an.
[8]  Wang, Y. (2020) Research on Intelligent Monitoring and Risk Prevention and Control Technology of Oil Wells. Henan Science, 38, 63-68.
[9]  He, Y.F., Liu, C. and Wang, X. (2020) Application of Improved AlexNet Model in Fault Diagnosis of Rod Pump. Industrial Safety and Environmental Protection, 46, 22-26.
[10]  Wang, X., He, Y., Li, F., et al. (2021) A Working Condition Diagnosis Model of Sucker Rod Pumping Wells Based on Deep Learning. SPE Production & Operations, 32, 1-10.
[11]  Li, M.J., Li, Z., Qiu, L. and Qiu, Q. (2015) Application of Indicator Diagram Technology in Changqing Oilfield. Petrochemical Industry Automation, 51, 43-45.
[12]  Lee, H. and Whang, M. (2018) Heart Rate Estimated from Body Movements at Six Degrees of Freedom by Convolutional Neural Networks. Sensors, 18, Article No. 1392.
https://doi.org/10.3390/s18051392
[13]  Ghosh, A., Sufian, A., Sultana, F., et al. (2020) Fundamental Concepts of Convolutional Neural Network. In: Balas, V., Kumar, R. and Srivastava, R., Eds., Recent Trends and Advances in Artificial Intelligence and Internet of Things, Springer, Cham, 519-567.
https://doi.org/10.1007/978-3-030-32644-9_36
[14]  El-Sawy, A., El-Bakry, H. and Loey, M. (2016) CNN for Handwritten Arabic Digits Recognition Based on Lenet-5. In: Hassanien, A., Shaalan, K., Gaber, T., Azar, A., Tolba, M., Eds., Proceedings of the International Conference on Advanced Intelligent Systems and Informatics, Springer, Switzerland, 566-575.
https://doi.org/10.1007/978-3-319-48308-5_54
[15]  Krizhevsky, A., Sutskever, I. and Hinton, G.E. (2012) ImageNet Classification with Deep Convolutional Neural Networks. Proceedings of the 25th International Conference on Neural Information Processing Systems, stand university, 2018, 1097-1105.
[16]  Dhar, P., Dutta, S. and Vivekananda, M. (2021) Cross-Wavelet Assisted Convolution Neural Network (AlexNet) Approach for Phonocardiogram Signals Classification. Biomedical Signal Processing and Control, 63, Article ID: 102142.
https://doi.org/10.1016/j.bspc.2020.102142
[17]  Yuan, Y. (2017) Research on Image Quality Evaluation Method Based on Deep Convolutional Network. Thesis, Wuhan University, Wuhan.
[18]  Wang, S.Y. and Teng, G.W. (2018) Optimization Design of ReLU Activation Function in Convolutional Neural Network. Information and Communication, 42-43.
[19]  Zhang, W.F. and Zhou, J. (2019) Research on Fault Diagnosis of Rolling Bearing Based on Dropout-CNN. Light Industry Machinery, 37, 62-67.
[20]  Zhao, X.Q. and Zhang, Q.Q. (2020) Improved Alexnet’s Fault Diagnosis Method for Rolling Bearing under Variable Conditions. Vibration, Test and Diagnosis, 40, 472-480+623.
[21]  Gao, H.Y. (2018) Research and Application of Image Recognition Based on Machine Learning. Master’s Thesis, Central China Normal University, Wuhan.
[22]  Chen, T., Cheng, Y., Gan, Z., et al. (2021) Adversarial Feature Augmentation and Normalization for Visual Recognition.
https://www.researchgate.net/publication/350341593_Adversarial_Feature_Augmentation_and_Normalization_for_Visual_Recognition
[23]  Bi, Z.J. (2015) Research on Parallel Accelerated Training Algorithm of Multi-GPU Multi-layer Neural Network. Thesis, Harbin Institute of Technology, Harbin.
[24]  Wang, Y.M. (2016) Convolutional Neural Network Parallel Algorithm in Multi-GPU Environment. Thesis, University of Science and Technology of China, Hefei.

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