A New Method for Intelligent Prediction of Drilling Overflow and Leakage Based on Multi-Parameter Fusion
Abstract
:1. Introduction
2. Commonly Used Overflow and Leakage Monitoring Methods
3. GA-BP Neural Network Drilling Overflow and Leakage Prediction Model
3.1. BP Neural Network Algorithm
3.2. Genetic Algorithm
3.2.1. Working Principle
3.2.2. Select Fitness Function
3.2.3. BP Neural Network Model Optimized by Genetic Algorithm
- (1)
- Acquisition of downhole parameters required for input;
- (2)
- Pre-processing the collected data to remove the maximum and minimum values from the data to avoid possible erroneous data from interfering with the prediction results;
- (3)
- Splitting the pre-processed data into two groups, one as the training set data and the other as the test set data;
- (4)
- Import the training set data into the prediction model for training, and then import the test set data into the prediction model for prediction evaluation after the training is completed.
3.2.4. Prediction Model Design Process
4. Case Study and Field Application
4.1. Prediction Model Parameter Settings
4.2. Error Assessment
- (1)
- For MAE, the range is [0, +∞), MAE = 0 means the predicted value matches the true value perfectly, the larger the error, the larger the value of MAE;
- (2)
- For MSE, the range is [0, +∞), MSE = 0 means the perfect model, the larger the error, the larger the value;
- (3)
- For RMSE, the range is [0, +∞), which is more intuitive in order of magnitude compared to MSE, RMSE = 0 means that the predicted value matches the true value perfectly, and the larger the error, the larger the value.
4.3. Simulation of Prediction Results
5. Conclusions
- (1)
- In this study, a genetic algorithm is introduced to optimize a BP neural network; combined with the relevant theories of drilling, a new downhole overflow and leakage prediction method is proposed. By selecting 14 kinds of parameters that may affect the occurrence of downhole overflow and leakage, a lot of training is carried out to obtain the optimal weight and threshold values of the model. Compared with the conventional BP neural network prediction results, it is found that the prediction accuracy of the new method is significantly improved.
- (2)
- The GA-BP neural network prediction model established in this paper is different from the conventional monitoring methods of drilling mud overflow and leakage. The model does not involve the internal mechanism parameters of the drilling system, so as to avoid the influence of complex downhole parameters on the prediction accuracy.
- (3)
- By comparing the prediction results with the actual measurements in the field, it is found that the model results predicted by the GA-BP neural network are in good agreement with the actual measured results, and the prediction quality is high. MAE, MSE, and RMSE are 0.038279, 0.022519, and 0.15006, respectively, and the prediction error of total overflow and leakage is 7.75%, which proves the effectiveness and accuracy of the GA-BP neural network in overflow prediction.
- (4)
- The prediction of wellbore mud overflow and leakage using the GA-BP neural network can provide data support for actual drilling and technical support for engineering applications. After predicting the occurrence of overflow and leakage, the drilling engineers prevent the risk and ensured that the drilling operation is carried out safely by making early deployment of the well.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Liao, M.Y. Neural network-based multi-parameter fusion for drilling process condition monitoring and fault diagnosis. J. China Univ. Pet. 2007, 4, 149–152. Available online: https://kns.cnki.net/kcms/detail/detail.aspx?FileName=SYDX200704032&DbName=CJFQ2007 (accessed on 11 July 2022).
- Wang, L. Research on Key Parameters of Drilling Leak Prevention and Plugging Based On BP Neural Network. Master’s Thesis, Southwest Petroleum University, Chengdu, China, 2019. [Google Scholar] [CrossRef]
- Li, M. Research on the Theory and Interpretation Method of Pressure Fluctuation in Pressure-Controlled Drilling Wellbore. Ph.D. Thesis, China University of Petroleum, Beijing, China, 2015. [Google Scholar]
- He, M. Research on the Theory and Control Method of Real-Time Interpretation of Pressure-Controlled Drilling Overflow. Ph.D. Thesis, China University of Petroleum, Beijing, China, 2016. [Google Scholar]
- Stokka, S.L.; Andersen, J.O.; Freyer, J.; Welde, J. Gas Kick Warner—An Early Gas Influx Detection Method. In Proceedings of the SPE/IADC Drilling Conference, Amsterdam, The Netherlands, 22–25 February 1993. [Google Scholar]
- Bryant, T.M.; Grosso, D.S.; Wallace, S.N. Gas-Influx Detection with MWD Technology. SPE Drill. Eng. 1991, 6, 273–278. [Google Scholar] [CrossRef]
- Orban, J.J.; Zanker, K.J. Accurate Flow-Out Measurements for Kick Detection, Actual Response to Controlled Gas Influxes. In Proceedings of the IADC/SPE Drilling Conference, Dallas, TX, USA, 28 February–2 March 1988. [Google Scholar]
- Schubert, J.J.; Wright, J.C. Early Kick Detection Through Liquid Level Monitoring in the Wellbore. In Proceedings of the IADC/SPE Drilling Conference, Dallas, TX, USA, 3–6 March 1998. [Google Scholar]
- Zhu, H.-G.; Wang, S.-J.; Li, Z.-Q.; Yan, X.-L.; Song, W.-Q.; Gong, P.-B. A New Timely and High-Precision Monitoring and Metering System for Early Overflow and Leakage. Nat. Gas Ind. 2018, 38, 102–106. [Google Scholar]
- Dale, Y.Y. Research and Design of Ground Monitoring and Diagnosis System for Early Overflow Leakage. Master’ Thesis, Southwest Petroleum University, Sichuan, China, 2014. [Google Scholar]
- Zhao, Z.; Chen, W.H.; Wu, X.M.; Chen, P.C.Y.; Liu, J. LSTM network: A deep learning approach for short-term traffic forecast. IET Intell. Transp. Syst. 2017, 11, 68–75. [Google Scholar] [CrossRef]
- Kuremoto, T.; Kimura, S.; Kobayashi, K.; Obayashi, M. Time Series Forecasting Using a Deep Belief Network with Restricted Boltzmann Machines. Neurocomputing 2014, 137, 47–56. [Google Scholar] [CrossRef]
- Yu, M.Y.; Shi, Y.B.; Zhao, W.J. Sensor single gas Quantitative Identification Based on BP Algorithm. Instrum. Technol. Sens. 2011, 8, 17–20. Available online: https://kns.cnki.net/kcms/detail/detail.aspx?FileName=YBJS201108007&DbName=CJFQ2011 (accessed on 11 July 2022).
- Han, W.-D.; Wang, C.-J. Research on Drilling Accident Prediction Based on Optimized BP Neural Network. China Pet. Chem. Stand. Qual. 2022, 42, 118–120. [Google Scholar]
- Holland, J.H. Adaptation in Natural and Artificial Systems: An Introductory Analysis with Applications to Biology, Control, and Artificial Intelligence; The MIT Press: Cambridge, MA, USA, 1975. [Google Scholar]
- Yao, S.; Yanlan, Y.; Hua, Y. Verification of improved genetic algorithm in MSPSP problems. Comput. Syst. Appl. 2020, 29, 235–241. [Google Scholar]
- Xiong, Y.; Dong, W. A Review on the Application of Genetic Algorithm in Classical Cryptanalysis. J. Univ. Inf. Eng. 2021, 22, 577–583. [Google Scholar]
- Zheng, L.; Hao, Z. Overview of Genetic Algorithms. Comput. Eng. Appl. 2003, 21, 50–53+96. Available online: https://kns.cnki.net/kcms/detail/detail.aspx?FileName=JSGG200321016&DbName=CJFQ2003 (accessed on 11 July 2022).
- He, S.Z.; Yang, X.Z.; Chen, X.J. Comparison of Support Vector Machines and BP Networks for Fire Image Detection. J. Intell. Syst. 2011, 6, 339–343. [Google Scholar]
Monitoring Location | Monitoring Methods | Monitoring Principle | Advantages and Disadvantages | Calculate the Amount of Overflow and Leakage |
---|---|---|---|---|
Ground | Drilling fluid flowmeter monitoring | Flow conservation | Simple operation, easy to install, overflow and leakage can be monitored simultaneously, but cannot stop metering in time after shutting down the well, with general accuracy | Yes |
Wellhead conduit liquid level monitoring | Expansion principle | Low cost, easy to install, timely monitoring, but general accuracy | No | |
improved flow monitoring | Flow conservation | High accuracy, applicable to the conditions of tripping and inserting a drill pipe | Yes | |
Stand pressure and case pressure monitoring | Pressure balance principle of U-shaped pipe | Timely monitoring, high accuracy, able to cope with a variety of complex downhole conditions, but its system requires repeated testing and calibration | Yes | |
Underground | Drilling with annular pressure monitoring | Measurement with drilling (MWD) | Timely and intuitive monitoring, high accuracy, but high cost, can only be used in open pump conditions | Yes |
Acoustic gas intrusion monitoring | Sound wave propagation theory | Timely monitoring and high accuracy can calculate the overflow and leakage, but the acoustic signal processing is complex and susceptible to interference, and may be judged distorted | Yes |
Serial Number | Bit Depth (m) | Hook Speed (m/s) | Total Pool Volume (m3) | Lag Time (min) | Outlet Flow Rate (L/s) | Stand Pressure (MPa) | Measured Back Pressure (MPa) | Bit ECD (g/cc) | Amount of Mud Overflow and Leakage (m3) |
---|---|---|---|---|---|---|---|---|---|
1 | 7357.218 | −7.90577 | 130.6053 | 1171.991 | 0.308443 | 2.582324 | 0.103547 | 1.194486 | 0.00583 |
2 | 7359.945 | 0.157718 | 129.7675 | 166.7977 | 0.65213 | 19.01798 | 0.202857 | 1.254109 | −0.83214 |
3 | 7358.348 | −0.00000224 | 130.0333 | 157.4996 | 0.700712 | 18.50629 | 0.191837 | 1.254788 | −0.56667 |
4 | 7361.483 | 0.0789 | 129.0595 | 162.7799 | 0.6359367 | 18.92549 | 0.2116311 | 1.254612 | −1.540223 |
5 | 7363.75 | 0.0789 | 128.2953 | 165.256 | 0.606788 | 19.48083 | 0.1884698 | 1.254103 | −2.304578 |
6 | 7365.363 | 0.0736 | 124.2411 | 165.2879 | 0.5954524 | 19.23505 | 0.2127033 | 1.254432 | −6.35863 |
7 | 7367.853 | 0.1103576 | 124.7853 | 166.9601 | 0.6035493 | 19.16029 | 0.2088668 | 1.254383 | −5.814759 |
8 | 7363.297 | 0.8625321 | 131.034 | 1133.94 | 0.1417158 | 1.692577 | 0.1181593 | 1.23978 | 0.4341111 |
9 | 7368.765 | 0.0986 | 132.9345 | 166.9787 | 0.4321674 | 18.76371 | 0.1940234 | 1.253989 | 2.334592 |
Parameters | Numerical Value |
---|---|
Maximum number of training sessions | 10,000 |
Number of neurons in the hidden layer | 8 |
Neural network learning rate | 0.01 |
Training target error | 0.00065 |
Whether to add a momentum factor | No |
Prediction Models | MAE | MSE | RMSE |
---|---|---|---|
BP | 0.06736 | 0.067281 | 0.25939 |
GA-BP | 0.038279 | 0.022519 | 0.15006 |
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Li, M.; Zhang, H.; Zhao, Q.; Liu, W.; Song, X.; Ji, Y.; Wang, J. A New Method for Intelligent Prediction of Drilling Overflow and Leakage Based on Multi-Parameter Fusion. Energies 2022, 15, 5988. https://doi.org/10.3390/en15165988
Li M, Zhang H, Zhao Q, Liu W, Song X, Ji Y, Wang J. A New Method for Intelligent Prediction of Drilling Overflow and Leakage Based on Multi-Parameter Fusion. Energies. 2022; 15(16):5988. https://doi.org/10.3390/en15165988
Chicago/Turabian StyleLi, Mu, Hengrui Zhang, Qing Zhao, Wei Liu, Xianzhi Song, Yangyang Ji, and Jiangshuai Wang. 2022. "A New Method for Intelligent Prediction of Drilling Overflow and Leakage Based on Multi-Parameter Fusion" Energies 15, no. 16: 5988. https://doi.org/10.3390/en15165988
APA StyleLi, M., Zhang, H., Zhao, Q., Liu, W., Song, X., Ji, Y., & Wang, J. (2022). A New Method for Intelligent Prediction of Drilling Overflow and Leakage Based on Multi-Parameter Fusion. Energies, 15(16), 5988. https://doi.org/10.3390/en15165988