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首页> 外文期刊>Journal of African earth sciences >Optimization of a nonlinear model for predicting the ground vibration using the combinational particle swarm optimization-genetic algorithm
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Optimization of a nonlinear model for predicting the ground vibration using the combinational particle swarm optimization-genetic algorithm

机译:组合粒子群优化遗传算法优化地面振动非线性模型

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摘要

When particle's wave velocity resulting from mining blasts exceeds a certain level, then the intensity of produced vibrations incur damages to the structures around the blasting regions. Development of mathematical models for predicting the peak particle velocity (PPV) based on the properties of the wave emission environment is an appropriate method for better designing of blasting parameters, since the probability of incurred damages can considerably be mitigated by controlling the intensity of vibrations at the building sites. In this research, first out of 11 blasting and geo-mechanical parameters of rock masses, four parameters which had the greatest influence on the vibrational wave velocities were specified using regression analysis. Thereafter, some models were developed for predicting the PPV by nonlinear regression analysis (NLRA) and artificial neural network (ANN) with correlation coefficients of 0.854 and 0.662, respectively. Afterward, the coefficients associated with the parameters in the NLRA model were optimized using optimization particle swarm-genetic algorithm. The values of PPV were estimated for 18 testing dataset in order to evaluate the accuracy of the prediction and performance of the developed models. By calculating statistical indices for the test recorded maps, it was found that the optimized model can predict the PPV with a lower error than the other two models. Furthermore, considering the correlation coefficient (0.75) between the values of the PPV measured and predicted by the optimized nonlinear model, it was found that this model possesses a more desirable performance for predicting the PPV than the other two models. (C) 2017 Elsevier Ltd. All rights reserved.
机译:当采矿爆破产生的粒子波速超过一定水平时,产生的振动强度会破坏爆破区域周围的结构。基于波发射环境的特性来预测峰值粒子速度(PPV)的数学模型的开发是一种更好设计爆破参数的合适方法,因为可以通过控制振动强度来大大降低发生损坏的可能性。建筑工地。在这项研究中,首先在岩体的11个爆破和岩土力学参数中,使用回归分析指定了对振动波速度影响最大的四个参数。此后,开发了一些模型来通过非线性回归分析(NLRA)和人工神经网络(ANN)预测PPV,相关系数分别为0.854和0.662。然后,使用优化粒子群遗传算法对与NLRA模型中的参数相关的系数进行优化。为评估18个测试数据集的PPV值,以评估预测模型的准确性和性能。通过计算测试记录图的统计指标,发现优化的模型可以预测PPV,而其误差低于其他两个模型。此外,考虑到由优化的非线性模型测量和预测的PPV值之间的相关系数(0.75),发现该模型比其他两个模型具有更理想的PPV预测性能。 (C)2017 Elsevier Ltd.保留所有权利。

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