4/9/2025, 3:16:17 PM 星期三
Research on a rate of penetration (ROP) prediction model based on feature selection integrated with particle swarm optimization (PSO)
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Affiliation:

1.School of Mechanical and Electrical Engineering, Chengdu University of Technology, Chengdu Sichuan 610059, China;2.Chengdu Environmental Engineering Construction Co., Ltd, Chengdu Sichuan 610000, China;3.College of Environment and Civil Engineering, Chengdu University of Technology, Chengdu Sichuan 610059, China

Clc Number:

P634

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    Abstract:

    Traditional rate of penetration (ROP) prediction models have often been constrained by issues such as high data dimensionality and feature correlation, resulting in limited efficiency and accuracy of ROP prediction. To address these issues, a ROP prediction algorithm model based on particle swarm optimization (PSO) with integrated feature selection has been proposed in this paper. Based on data preprocessing, 3 key parameters, threshold_1, threshold_2, and threshold_3, have been chosen as optimization targets, and a fitness function has been constructed by combining historical data and the PSO algorithm, thereby establishing the ROP prediction model. Subsequently, the proposed ROP prediction method has been validated using actual drilling data and compared with traditional machine learning algorithm models. Experimental results show that the proposed PSO-based integrated feature selection algorithm achieves higher efficiency and accuracy in feature selection. Compared to before optimization, the accuracy of the 4 machine learning ROP prediction models trained using the optimized integrated feature selection results is improved by 59%, 1%, 3%, and 1%, respectively. Compared to models trained using all features, the accuracy has been improved by 24%, 2%, 4%, and 3%, respectively. This paper provides an effective feature selection method for cases where too many feature parameters have been extracted in drilling engineering. It offers significant guidance for the practical application of feature selection algorithms in the engineering field.

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History
  • Received:June 27,2024
  • Revised:July 30,2024
  • Adopted:September 11,2024
  • Online: March 25,2025
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