基于RGPSO-LightGBM的套管磨損深度預(yù)測

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Qin Yanbin,Wang Jian,Wan Zhiguo,et al.Prediction of casing wear depth based on RGPSO-LightGBM[J].Chi-naPetroleumMachinery,2025,53(5):139-146.
關(guān)鍵詞:套管磨損深度;井筒完整性;LightGBM;粒子群優(yōu)化;機器學(xué)習(xí)中圖分類號:TE931 文獻標(biāo)識碼:ADOI:10.12473/CPM.202404075
Prediction of Casing Wear Depth Based on RGPSO-LightGBM
Qin Yanbin 1,2 Wang Jian'Wan Zhiguo1,2Li Linlin3Dou Yihua 1,2 (1.CollegeofMechancalEngnering,Xi'anShiyou University;2.Xi'anKeyLaboratoryofWelboreIntegrityEvaluaion;3.Well Testing Branch of CNPC Bohai Drilling Engineering Company Limited)
Abstract: Traditional casing wear prediction models fail to achieve satisfactory accuracy under ideal assumptions,and the derivation method relying on test data is also time-consuming and costly.This paper presents a casing weardepth prediction model based onreactive global particle swarm optimizationand lightweight gradient boosting machine (RGPSO-LightGBM).First,the Pearson corelation coefficient method and feature importance were used to analyze the report dataof the multi-arm caliper imaging logging tool and the dilling logs and extract key feature values.Then,the LightGBM was used to predict the wear depth,and RGPSO was combined for global optimization on multiple hyperparameters of LightGBM.Finally,the RGPSO-LightGBM model was compared with the BP neural network (BPNN)and extreme gradient boosting(XGBoost)models.The results show that the RGPSOLightGBM model yields the highest goodness of fit ( R2 )up to O. 997 6, indicating better prediction accuracy,robustness and generalization.The research results provide effective basis for inteligent control of subsequent oil and gas well production,and areof great practical significancefor maintaining welbore integrity and ensuring safe production operations of oil and gas wells.
Keywords: casing wear depth; wellbore integrity ; LightGBM; PSO; machine learning
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