Ghojoghi Eslam, Ebrahimi Farsangi Mohamad Ali, Mansouri Hamid, Rashedi Esmat
Mining Engineering, Department of Mining Engineering, Shahid Bahonar University of Kerman, Iran.
Communication Engineering, Faculty of Electrical and Computer Engineering, Graduate University of Advanced Technology, Kerman, Iran.
Heliyon. 2024 Sep 18;10(19):e37876. doi: 10.1016/j.heliyon.2024.e37876. eCollection 2024 Oct 15.
Flyrock represents a significant and fundamental challenge in surface mine blasting, carrying inherent risks to humans and the environment. Consequently, accurate prediction, minimization, and identification of the factors influencing flyrock distance are imperative for effective control and mitigation of its destructive consequences. Machine learning and artificial intelligence methodologies have emerged as viable means to predict and simulate in different scientific fields. This study employs Deep Neural Network in conjunction with three optimization algorithms including the JAYA Algorithm, Multi-Verse Optimization Algorithm, and Gravitational Search Algorithm to predict blasting flyrock distance. The developed model consists of a combination of seven input parameters, encompassing both blasting design parameters and rock geomechanical properties. The output of the Deep Neural Networks model is the flyrock distance. For the training and testing of the model, a dataset comprising of 245 blasting records, collected from Songun copper mine, Iran, was utilized. The DNN model yielded an R2 value of 0.96 and an MSE value of 34.11. These results demonstrate the high accuracy and predictive capability of the model. Furthermore, the application of three optimization algorithms resulted in similar optimized parameter values, which minimized flyrock distances.
飞石是露天矿爆破中一项重大且基本的挑战,对人类和环境存在固有风险。因此,准确预测、最小化并识别影响飞石距离的因素对于有效控制和减轻其破坏性后果至关重要。机器学习和人工智能方法已成为不同科学领域进行预测和模拟的可行手段。本研究采用深度神经网络结合三种优化算法,即JAYA算法、多宇宙优化算法和引力搜索算法来预测爆破飞石距离。所开发的模型由七个输入参数组合而成,包括爆破设计参数和岩石地质力学特性。深度神经网络模型的输出为飞石距离。为了对模型进行训练和测试,使用了从伊朗松贡铜矿收集的包含245条爆破记录的数据集。深度神经网络模型的R2值为0.96,均方误差值为34.11。这些结果证明了该模型的高精度和预测能力。此外,三种优化算法的应用产生了相似的优化参数值,从而使飞石距离最小化。