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基于BP神经网络的深埋隧洞地应力预测研究
引用本文:孙炜锋,谭成轩,王志明,张春山,吴树仁.基于BP神经网络的深埋隧洞地应力预测研究[J].地质力学学报,2007,13(3):227-232.
作者姓名:孙炜锋  谭成轩  王志明  张春山  吴树仁
作者单位:1.中国地质科学院地质力学研究所, 北京 100081
基金项目:国家自然科学基金 , 中国地质调查局区域地质调查项目
摘    要:深部地应力的测量一直是工程界难题之一。由于研究手段和测试技术的限制, 深部地应力很难测到, 或者部分数据不理想。本文将BP神经网络方法引入地应力场研究, 选取深度、岩芯密度(天然密度)、岩芯弹模、岩芯的三轴抗压强度(10MPa围压)、岩芯的声发射地应力测值、岩芯裂隙率6个参数作为地应力预测研究的主要指标, 在此模型的基础上对秦岭深埋隧洞地应力测量数据进行了拟合分析, 并对深部的地应力做了预测。结果表明用BP神经网络模型进行深埋隧洞地应力大小的预测是可行的。 

关 键 词:深埋隧洞    地应力预测    人工神经网络
文章编号:1006-6616(2007)03-0227-06
收稿时间:2006-06-29
修稿时间:2006年6月29日

PREDICTION OF CRUSTAL STRESS OF DEEP-BURIED TUNNELS BASED ON BP ARTIFICIAL NEURAL NETWORK
SUN Wei-feng,TAN Cheng-xuan,WANG Zhi-ming,ZHANG Chun-shan,WU Shu-ren.PREDICTION OF CRUSTAL STRESS OF DEEP-BURIED TUNNELS BASED ON BP ARTIFICIAL NEURAL NETWORK[J].Journal of Geomechanics,2007,13(3):227-232.
Authors:SUN Wei-feng  TAN Cheng-xuan  WANG Zhi-ming  ZHANG Chun-shan  WU Shu-ren
Institution:1.Institute of Geomechanics, CAGS, Beijing 1000812.No 1. Water and Electricity Construction Company of Zhejiang Province, Hangzhou 310051, Zhejiang
Abstract:The measurement of the crustal stress at depth is a difficult problem in geological engineering projects.The crustal stress is hard to determine or measuring data are not ideal because of the limitation of unduly simple research means and measuring techniques.On the other hand, satisfying results can be achieved by artificial neural network (ANN)even though the data have deficiencies such as data noise, partial absence, lack of cognition because of the native advantages:self-learning, self-adaptability, robust, error tolerance and generalization.Based on the BP artificial neural network method, this paper provides a prediction model for the crustal stress values using 6 factors:depth, field density, elastic modulus, triaxial compressive strength (10 MPa confining pressure), acoustic emission stress measurements and fissure density.The authors made hydrofracturing stress measurements in the Qinling deep-buried long tunnel by using the BP artificial neural network model, perpormed a fitting analysis of the measured data and predicted the crustal stress at depth.The main conclusion is that the BP artificial network model is feasible in the prediction of the crustal stress value of deep-buried tunnels.
Keywords:deep-buried tunnel  prediction of the crustal stress value  artificial neural network
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