Liu Longhe’s research while affiliated with China University of Mining and Technology and other places

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Publications (1)


The flowchart of the research methodology.
Geographical map of Block IX of the Thar Coalfield region [modified after (Ahmed et al., 2020)].
Three-dimensional surface plots of the original dataset: (A) UCS and (B) E.
Correlation matrix of the original dataset.
Optimized models by PSO framework.

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Hybrid PSO with tree-based models for predicting uniaxial compressive strength and elastic modulus of rock samples
  • Article
  • Full-text available

February 2024

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117 Reads

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6 Citations

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Qin Xiaowei

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Xin Wei

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Liu Longhe

The mechanical characteristics of rocks, specifically uniaxial compressive strength (UCS) and elastic modulus (E), serve as crucial factors in ensuring the integrity and stability of relevant projects in mining and civil engineering. This study proposes a novel hybrid PSO (particle swarm optimization) with tree-based models, such as gradient boosting regressor (GBR), light gradient boosting machine (LightGBM), random forest (RF), and extreme gradient boosting (XGBoost) for predicting UCS and E of rock samples from Block IX of the Thar Coalfield in Pakistan. A total of 122 datasets were divided into training and testing sets, with an 80:20 ratio, respectively, to develop the predictive models. Key performance metrics, including the coefficient of determination (R ²), mean absolute error (MAE), and root mean square error (RMSE), were employed to assess the model’s predictive performance. The results indicate that the PSO-XGBoost model demonstrated the highest accuracy in predicting UCS and E, outperforming the other models, which exhibited inferior predictive performance. Furthermore, this study utilized the SHAP (Shapley Additive exPlanations) machine learning method to enhance our understanding of how each input feature variable influences the output values of UCS and E. In conclusion, the proposed framework offers significant advantages in evaluating the strength and deformation of rocks at Thar Coalfield, with promising applications in the field of mining and rock engineering.

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Citations (1)


... Moreover, Shahani et al. [65,66,69] developed four gradient boosting machine learning algorithms, namely, gradient boosted regression (GBR), Catboost, light gradient boosting machine (LightGBM), and extreme gradient boosting (XGBoost), to predict the UCS of soft sedimentary rocks of the Block-IX at Thar Coalfield, Pakistan. Wet density, moisture, dry density, and Brazilian tensile strength have been used as input variables and 106-point dataset was allocated identically for each algorithm with a ratio of 70/30 for the training and testing phases respectively. ...

Reference:

Prediction rotary drilling penetration rate in lateritic soils using machine learning models
Hybrid PSO with tree-based models for predicting uniaxial compressive strength and elastic modulus of rock samples