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Design of blasting pattern in proportion to the peak particle velocity (PPV): Artificial neural networks approach

机译:与峰值粒子速度(PPV)成比例的爆破设计:人工神经网络方法

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摘要

Ground vibration is a side effect of blasting and causes the destruction of buildings and other surrounding facilities. Different damage mitigation standards have been presented in this connection. Ground vibration is affected by parameters of blasting pattern design, distance from blasting site and explosive weight. In this research, ground vibrations data generated by 20 blasts in Sarcheshmeh copper mine, Kerman, at 47 locations have been recorded. The artificial neural network (ANN) has been trained using these peak particle velocity (PPV) data and other parameters such as block volume and explosive type employed. The trained network is capable of presenting appropriate specifications for the safe blasting pattern, considering the structure in question and its allowable vibration. The network outputs include burden, spacing and total weight of explosive used. To verify training corrections, network was tested and correlation coefficients of 0.651, 0.77 and 0.963 were obtained for the total explosive weight, burden and spacing, respectively. The effects of explosive type were studied with due regards to recorded data.
机译:地面振动是爆炸的副作用,会导致建筑物和其他周围设施的破坏。在这方面提出了不同的损害减轻标准。地面振动受爆破设计参数,距爆破地点的距离和炸药重量的影响。在这项研究中,记录了在47个地点的克尔曼萨奇什梅铜矿中发生的20次爆炸产生的地面振动数据。人工神经网络(ANN)已使用这些峰值粒子速度(PPV)数据和其他参数(例如使用的块体积和炸药类型)进行了训练。考虑到所讨论的结构及其允许的振动,训练有素的网络能够为安全爆破模式提供适当的规范。网络输出包括负担,间隔和所用炸药的总重量。为了验证训练的正确性,对网络进行了测试,得出爆炸物总重量,负担和间距的相关系数分别为0.651、0.77和0.963。在适当考虑记录数据的情况下研究了爆炸物类型的影响。

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