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首页> 外文期刊>Journal of the Geological Society of India >Artificial neural network or empirical criteria? A comparative approach in evaluating maximum charge per delay in surface mining - Sungun copper mine
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Artificial neural network or empirical criteria? A comparative approach in evaluating maximum charge per delay in surface mining - Sungun copper mine

机译:人工神经网络还是经验标准?评估露天采矿每延迟最大电荷的比较方法-Sungun铜矿

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Ground vibration due to blasting causes damages in the existence of the surface structures nearby the mine. The study of vibration control plays an important role in minimizing environmental effects of blasting in mines. Ground vibration regulations primarily rely on the peak particle velocity (PPV, mm/s). Prediction of maximum charge weight per delay (Q, kg) by distance from blasting face up to vibration monitoring point as well as allowable PPV was proposed in order to perform under control blasting and therefore avoiding damages on structures nearby the mine. Various empirical predictor equations have proposed to determine the PPV and maximum charge per delay. Maximum charge per delay is calculated by using PPV predictors indirectly or Q predictor directly. This paper presents the results of ground vibration measurement induced by bench blasting in Sungun copper mine in Iran. The scope of this study is to evaluate the capability of two different methods in order to predict maximum charge per delay. A comparison between two ways of investigations including empirical equations and artificial neural network (ANN) are presented. It has been shown that the applicability of ANN method is more promising than any under study empirical equations.
机译:爆破引起的地面振动会破坏矿井附近的表面结构。振动控制的研究在使矿山爆破对环境的影响最小化方面起着重要作用。地面振动规定主要取决于峰值粒子速度(PPV,mm / s)。提出了根据从爆破面到振动监测点的距离以及允许的PPV来预测每个延迟的最大装料重量(Q,kg),以进行可控的爆破,从而避免破坏矿井附近的建筑物。提出了各种经验预测方程来确定PPV和每个延迟的最大电荷。通过间接使用PPV预测变量或直接使用Q预测变量来计算每个延迟的最大电荷。本文介绍了伊朗Sungun铜矿的台式爆破引起的地面振动测量结果。本研究的范围是评估两种不同方法的能力,以便预测每个延迟的最大电荷。介绍了两种研究方法之间的比较,包括经验方程和人工神经网络(ANN)。结果表明,人工神经网络方法的适用性比任何正在研究的经验方程式更有希望。

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