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Blasting is the primary technical method of mining mineral resources, the accurate prediction of blasting fragmentation after blasting has a key impact on controlling mining operation costs and reducing environmental pollution. To that end, a powerful artificial intelligence (AI) model, named Gaussian Process Regression (GPR), was proposed to predict the mean fragment size (MFS) of broken rock after blasting. To improve the prediction performance of GPR model, the newly bio-inspired Artificial Hummingbirds Algorithm (AHA) was employed to select the optimal hyperparameter's combinations. Additionally, the other regression models including the artificial neural networks (ANN), support vector regression (SVR), and standard GPR, were also developed to compare the prediction performance with the proposed hybrid AHA-GPR model. Two cases collected from Chilean copper mine and an Indian coal mine were used to verify the model performance, mainly using two performance metrics and the Taylor diagram analysis to determine the best prediction model. The AHA-GPR model achieved R-2 values of 0.88 and 0.85, with RMSE values of 11.40 and 9.50 for the Copper mine database, and R-2 values of 0.93 and 0.90, with RMSE values of 0.02 and 0.03 for the Coal mine database. These results demonstrate that the AHA-GPR model outperforms other predictive models, establishing it as the most reliable approach in both case studies. Besides, this AI model-based approach offers researchers and mining engineers an improved approach to predict the rock fragmentation after blasting, facilitating thorough analysis of blasting design before mining operations and enabling precise forecasting of blasting outcomes. Furthermore, the sensitivity analysis further provided essential insights to optimize the blasting designs.
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EARTH SCIENCE INFORMATICS
ISSN: 1865-0473
Year: 2025
Issue: 3
Volume: 18
2 . 7 0 0
JCR@2023
CAS Journal Grade:4
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 2
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