摘要
采用人工神经网络原理,选取影响岩爆的一些主要因素,如地应力、岩石抗压强度、抗拉强度等作为输入参数,建立了岩爆分类与预测的神经网络模型.利用国内外一些工程实例作为学习和训练的样本,并用已经训练稳定的样本对某水电站地下厂房岩爆进行预测.研究表明,与其他岩爆预测方法比较,人工神经网络模型更具有客观性和有效性.
A neural network model is developed for forecasting and classification of rockbursts by selection of some affecting factors as the inputted parameters, such as the geostress and compressive strength and tensile strength of rocks. With some engineering projects at home and aboard taken as learning and training samples, rockburst forecast is performed for an underground hydropower plant by use of the samples that have been trained stably. The results show that, compared with other forecasting methods, the artificial neural network model is objective and effective.
出处
《河海大学学报(自然科学版)》
CAS
CSCD
北大核心
2003年第4期424-427,共4页
Journal of Hohai University(Natural Sciences)
关键词
人工神经网络
岩爆
分类
水电站地下厂房
BP算法
artificial neural network model
rockburst classification
rockburst forecast
BP arithmetic