岩石节理峰值抗剪强度的人工神经网络预测

Q3 Earth and Planetary Sciences
Karmen Fifer Bizjak, Rok Vezočnik
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引用次数: 0

摘要

随着计算机技术的发展,人工神经网络在工程地质和岩土工程领域的应用越来越广泛。利用人工神经网络,可以预测岩石在不同应力条件下的地质力学性质或其行为。边坡破坏或岩石地下开挖大多发生在节理处,这对岩土结构的稳定性至关重要。这就是为什么岩石节理的峰值剪切强度是岩体稳定性的最重要参数。接头剪切特性的测试通常很耗时,在研究阶段很难获得合适的测试试样。节理表面的粗糙度、抗拉强度和垂直荷载对岩石节理的峰值剪切强度有很大影响。在本文中,用摄影测量扫描仪测量了接头的表面粗糙度,并通过Robertson直剪试验确定了峰值剪切强度。基于岩石节理的六个输入特征,人工神经网络利用反向传播学习算法,成功地预测了岩石节理的峰值剪切强度。经过训练的人工神经网络预测了相似岩性和地质条件下的峰值剪切强度,平均估计误差为6%。将人工神经网络的计算结果与Grasselli实验模型进行了比较,结果表明与人工神经网络模型相比误差更大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of the peak shear strength of the rock joints with artificial neural networks
With the development of computer technology, artificial neural networks are becoming increasingly useful in the field of engineering geology and geotechnics. With artificial neural networks, the geomechanical properties of rocks or their behaviour could be predicted under different stress conditions. Slope failures or underground excavations in rocks mostly occurred through joints, which are essential for the stability of geotechnical structures. This is why the peak shear strength of a rock joint is the most important parameter for a rock mass stability. Testing of the shear characteristics of joints is often time consuming and suitable specimens for testing are difficult to obtain during the research phase. The roughness of the joint surface, tensile strength and vertical load have a great influence on the peak shear strength of the rock joint. In the presented paper, the surface roughness of joints was measured with a photogrammetric scanner, and the peak shear strength was determined by the Robertson direct shear test. Based on six input characteristics of the rock joints, the artificial neural network, using a backpropagation learning algorithm, successfully learned to predict the peak shear strength of the rock joint. The trained artificial neural network predicted the peak shear strength for similar lithological and geological conditions with average estimation error of 6 %. The results of the calculation with artificial neural networks were compared with the Grasselli experimental model, which showed a higher error in comparison with the artificial neural network model.
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来源期刊
Geologija
Geologija Earth and Planetary Sciences-Geophysics
CiteScore
1.00
自引率
0.00%
发文量
10
审稿时长
10 weeks
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