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Achievements and Applications of Digital Transformation of Petroleum Engineering Technology
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作者 Ding Jianxin Wang Haitao 《China Oil & Gas》 CAS 2023年第3期34-39,共6页
China has given high priority to digital transformation in recent years,clearly proposing to“accelerate digital development and build Digital China”in the 14th Five-Year Plan,and advancing the deep integration of th... China has given high priority to digital transformation in recent years,clearly proposing to“accelerate digital development and build Digital China”in the 14th Five-Year Plan,and advancing the deep integration of the digital economy and the real economy to provide strong support for constructing a new development pattern.CNPC has carried out the digital transformation of engineering technology in accordance with the requirements of“focusing on business development,management transformation,and technology empowerment,pushing for the change of engineering management and control models,developing the capabilities of intelligent production,networked collaboration,and personalized services,and building an intelligent support platform for the entire life cycle of drilling engineering”. 展开更多
关键词 TRANSFORMATION CONSTRUCTING CNPC
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Interpretation and characterization of rate of penetration intelligent prediction model
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作者 Zhi-Jun Pei Xian-Zhi Song +3 位作者 Hai-Tao Wang Yi-Qi Shi Shou-Ceng Tian Gen-Sheng Li 《Petroleum Science》 SCIE EI CAS CSCD 2024年第1期582-596,共15页
Accurate prediction of the rate of penetration(ROP)is significant for drilling optimization.While the intelligent ROP prediction model based on fully connected neural networks(FNN)outperforms traditional ROP equations... Accurate prediction of the rate of penetration(ROP)is significant for drilling optimization.While the intelligent ROP prediction model based on fully connected neural networks(FNN)outperforms traditional ROP equations and machine learning algorithms,its lack of interpretability undermines its credibility.This study proposes a novel interpretation and characterization method for the FNN ROP prediction model using the Rectified Linear Unit(ReLU)activation function.By leveraging the derivative of the ReLU function,the FNN function calculation process is transformed into vector operations.The FNN model is linearly characterized through further simplification,enabling its interpretation and analysis.The proposed method is applied in ROP prediction scenarios using drilling data from three vertical wells in the Tarim Oilfield.The results demonstrate that the FNN ROP prediction model with ReLU as the activation function performs exceptionally well.The relative activation frequency curve of hidden layer neurons aids in analyzing the overfitting of the FNN ROP model and determining drilling data similarity.In the well sections with similar drilling data,averaging the weight parameters enables linear characterization of the FNN ROP prediction model,leading to the establishment of a corresponding linear representation equation.Furthermore,the quantitative analysis of each feature's influence on ROP facilitates the proposal of drilling parameter optimization schemes for the current well section.The established linear characterization equation exhibits high precision,strong stability,and adaptability through the application and validation across multiple well sections. 展开更多
关键词 Fully connected neural network Explainable artificial intelligence Rate of penetration ReLU active function Deep learning Machine learning
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