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基于PCA-BP神经网络的岩石爆破平均粒径预测 被引量:13
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作者 史秀志 郭霆 +1 位作者 尚雪义 姬露露 《爆破》 CSCD 北大核心 2016年第2期55-61,共7页
岩石爆破平均粒径的预测对岩石采装及二次破碎具有重要意义,然而常规的神经网络预测岩石爆破平均粒径存在较大的误差。为更加合理准确预测岩石爆破粒径分布,选取台阶高度与钻孔荷载比(H/B),间距与荷载比(S/B),荷载与孔径比(B/D),炮泥与... 岩石爆破平均粒径的预测对岩石采装及二次破碎具有重要意义,然而常规的神经网络预测岩石爆破平均粒径存在较大的误差。为更加合理准确预测岩石爆破粒径分布,选取台阶高度与钻孔荷载比(H/B),间距与荷载比(S/B),荷载与孔径比(B/D),炮泥与荷载比(T/B),粉因数(Pf),弹性模量(E)和现场块度大小(XB)7个主要影响岩石爆破粒径的因素,并结合BP神经网络较好的预测性,以及主成分分析(PCA)能消除自变量间的相关性和减少BP神经网络输入数据的特点,建立了基于PCA-BP神经网络的岩石爆破粒径预测模型。以48组实测数据为例,对7个影响因素进行主成分分析,最终降为4个主成分,进而将其作为BP神经网络的输入因子,对岩石爆破粒径进行了预测。结果表明:BP神经网络与最小二乘法预测的平均误差分别为15.71%、27.32%,而PCA-BP神经网络预测平均误差仅为9.21%,实现了对岩石爆破粒径的较准确预测。综上所知,PCA-BP神经网络模型为岩石爆破平均粒径预测提供了一种科学、可靠的方法。 展开更多
关键词 岩石爆破粒径 主成分分析法 BP神经网络 预测模型 最小二乘法
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Support vector machines approach to mean particle size of rock fragmentation due to bench blasting prediction 被引量:21
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作者 史秀志 周健 +2 位作者 吴帮标 黄丹 魏威 《Transactions of Nonferrous Metals Society of China》 SCIE EI CAS CSCD 2012年第2期432-441,共10页
Aiming at the problems of the traditional method of assessing distribution of particle size in bench blasting, a support vector machines (SVMs) regression methodology was used to predict the mean particle size (X50... Aiming at the problems of the traditional method of assessing distribution of particle size in bench blasting, a support vector machines (SVMs) regression methodology was used to predict the mean particle size (X50) resulting from rock blast fragmentation in various mines based on the statistical learning theory. The data base consisted of blast design parameters, explosive parameters, modulus of elasticity and in-situ block size. The seven input independent variables used for the SVMs model for the prediction of X50 of rock blast fragmentation were the ratio of bench height to drilled burden (H/B), ratio of spacing to burden (S/B), ratio of burden to hole diameter (B/D), ratio of stemming to burden (T/B), powder factor (Pf), modulus of elasticity (E) and in-situ block size (XB). After using the 90 sets of the measured data in various mines and rock formations in the world for training and testing, the model was applied to 12 another blast data for validation of the trained support vector regression (SVR) model. The prediction results of SVR were compared with those of artificial neural network (ANN), multivariate regression analysis (MVRA) models, conventional Kuznetsov method and the measured X50 values. The proposed method shows promising results and the prediction accuracy of SVMs model is acceptable. 展开更多
关键词 rock fragmentation BLASTING mean panicle size (X50) support vector machines (SVMs) PREDICTION
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