飞岩、空爆和地面振动的神经网络预测及其在ZCDC矿山的应用

Charles Chewu, Tonderai Chikwere, Desire Runganga, None Elia Chipfupi, Tatenda Nyamagudza
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引用次数: 0

摘要

当炸药在爆孔中爆炸时,大约20%到30%的能量仅用于破碎岩体,而大部分能量以地面振动、飞石和空气爆炸的形式损失。在矿区附近建造的职工住宅、矿山办公室、加工厂和工程车间,有被爆炸危害破坏的危险。此外,由于飞石,矿石损失、矿石稀释、设备损坏、矿山道路和电力线的情况也很严重。为了评估和减少这些负面影响,对飞岩、地面振动和空气冲击波进行了监测,并生成了预测模型。使用贝叶斯正则化算法训练、验证和测试了一个三层、前馈反向传播的9-10-3网络架构。从该矿获得的100条监测爆破记录作为人工神经网络预测模型的输入参数。随后运行多元回归分析预测模型,并与人工神经网络模型的预测结果进行比较。根据这项研究的发现,人工神经网络模型被证明是最适合现场预测的。为了确定每个输入参数对飞岩、地面振动和空气爆破的相对影响,还进行了敏感性分析,最后进行了爆破优化,成功地将爆破引起的冲击减少了30%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Flyrocks, Airblasts and Ground Vibrations Using Neural Computing and Applications at ZCDC Mine
When an explosive detonates in a blasthole, approximately 20 to 30% of the energy is only utilized for fragmenting the rock mass whilst the bulk of the energy is lost in the form of ground vibrations, flyrocks and airblasts. Employees’ residences, mine offices, processing plants and engineering workshops built close to the mining area and are in danger of being damaged by blast induced hazards. In addition, due to flyrocks there was a high level of ore losses, ore dilution, equipment damages, mine roads and powerlines. To assess and reduce these negative impacts, monitoring of flyrocks, ground vibrations and airblast was carried out and generate a prediction model. A three-layer, feed-forward back-propagation of a 9-10-3 network architecture was trained, validated, and tested using the Bayesian regularization algorithm. A total of 100 monitored blast records obtained from the mine were used as input parameters for the ANN prediction model. Subsequently a Multivariate Regression analysis prediction model was run and used to compare with the results obtained from ANN model. Based on the study's findings, an ANN model proved to be the best for field predictions.To determine the relative impact of each input parameter on flyrocks, gound vibration, and Airblast, a sensitivity analysis was also carried out and lastly blast optimization which managed to reduce blast induced impacts by over 30%.
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