首页> 外文期刊>Journal of vibration and control: JVC >Prediction of blast-induced ground vibration using empirical models and artificial neural network (Bakhtiari Dam access tunnel, as a case study)
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Prediction of blast-induced ground vibration using empirical models and artificial neural network (Bakhtiari Dam access tunnel, as a case study)

机译:用经验模型和人工神经网络预测爆炸诱导的地面振动(Bakhtiari Dam Access Tunnel,如案例研究)

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Blasting operation is among the most common methods of rock excavation in the civil engineering and mining operations. Ground vibration is the most unfavorable effect of blasting operation such that failure to accurately control this problem causes damage to adjacent structures. In this regard, geotechnical engineers face the challenge of accurately predicting blast-induced ground vibrations. Geographical location of Bakhtiari Dam (located in the southwest of Iran) is needed to construct an access road to its nearest city through the rough topography. To establish the access road in the plan, blasting operation methods have been used. In this study, blast-induced ground vibrations in the study area are evaluated using five common functional forms of the empirical model and their corrected regression coefficient for the area. Then, the ground vibrations generated in the study area were predicted by designing an artificial neural network model. For this purpose, the maximum charge per delay, the distance between the blast point and monitoring stations, and the ground vibration values were surveyed for 80 blast events, and their necessary parameters were determined. A total of 64 datasets were used to obtain the coefficients of the empirical models and to create the artificial neural network model. In addition, 16 datasets were used to estimate the performance and accuracy of each model. To measure the accuracy of the constructed models, some statistical parameters were also used. The results show that in the study area, the artificial neural network model presents the most accurate and appropriate model for predicting blast-induced ground vibrations. The neural network proposed in this research is suggested for areas with geological features resembling those of the present study.
机译:爆破操作是土木工程和采矿业务中最常见的岩石挖掘方法之一。地面振动是爆破操作中最不利的效果,使得无法准确控制这个问题导致相邻结构的损坏。在这方面,岩土工程师面临准确预测爆炸诱导的地面振动的挑战。需要粗糙地形需要Bakhtiari Dam(位于伊朗西南部)的地理位置,以通过粗略的地形构建通往最近的城市的通道。要建立计划中的通道道路,已经使用了爆破操作方法。在该研究中,使用经验模型的五种常见功能形式和该地区的校正回归系数进行评估研究区域中的爆炸诱导的地面振动。然后,通过设计人工神经网络模型来预测研究区域中产生的地面振动。为此目的,每次延迟的最大电荷,喷射点和监测站之间的距离以及对80例爆炸事件进行调查的距离以及地面振动值,并确定了它们必要的参数。共使用64个数据集来获得经验模型的系数并创建人工神经网络模型。此外,使用16个数据集来估计每个模型的性能和准确性。为了测量构造模型的准确性,还使用了一些统计参数。结果表明,在研究领域,人工神经网络模型提出了最准确和适当的模型,用于预测爆炸诱导的地面振动。在该研究中提出的神经网络被建议用于与本研究中那些类似的地质特征的地区。

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