Combination of Artificial Neural Networks and Numerical Modeling for Predicting Deformation Modulus of Rock Masses

IF 1.2 4区 工程技术 Q3 MINING & MINERAL PROCESSING Archives of Mining Sciences Pub Date : 2023-07-20 DOI:10.24425/ams.2020.133196
Narges Sadat Tayarani, S. Jamali, Mehdi Motevalli Zadeh
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引用次数: 1

Abstract

The deformation modulus of the rock mass as a very important parameter in rock mechanic projects generally is determined by the plate load in-situ tests. While this test is very expensive and time-con-suming, so in this study a new method is developed to combin artificial neural networks and numerical modeling for predicting deformation modulus of rock masses. For this aim, firstly, the plate load test was simulated using a Finite Difference numerical model that was verified with actual results of the plate load test in Pirtaghi dam galleries in Iran. Secondly, an artificial neural network is trained with a set of data resulted from numerical simulations to estimate the deformation modulus of the rock mass. The results showed that an ANN with five neurons in the input layer, three hidden layers with 4, 3 and 2 neurons, and one neuron in the output layer had the best accuracy for predicting the deformation modulus of the rock mass.
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人工神经网络与数值模拟相结合预测岩体变形模量
岩体的变形模量是岩石力学工程中一个非常重要的参数,通常通过板载原位试验来确定。虽然这种测试非常昂贵且耗时,但在本研究中,开发了一种将人工神经网络和数值建模相结合的新方法来预测岩体的变形模量。为此,首先,使用有限差分数值模型模拟了板载试验,并与伊朗Pirtaghi大坝廊道板载试验的实际结果进行了验证。其次,利用数值模拟得到的一组数据训练人工神经网络来估计岩体的变形模量。结果表明,输入层有五个神经元,三个隐藏层有4个、3个和2个神经元,输出层有一个神经元的神经网络预测岩体的变形模率最高。
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来源期刊
Archives of Mining Sciences
Archives of Mining Sciences 工程技术-矿业与矿物加工
CiteScore
2.40
自引率
16.70%
发文量
0
审稿时长
20 months
期刊介绍: Archives of Mining Sciences (AMS) is concerned with original research, new developments and case studies in mining sciences and energy, civil engineering and environmental engineering. The journal provides an international forum for the publication of high quality research results in: mining technologies, mineral processing, stability of mine workings, mining machine science, ventilation systems, rock mechanics, termodynamics, underground storage of oil and gas, mining and engineering geology, geotechnical engineering, tunnelling, design and construction of tunnels, design and construction on mining areas, mining geodesy, environmental protection in mining, revitalisation of postindustrial areas. Papers are welcomed on all relevant topics and especially on theoretical developments, analytical methods, numerical methods, rock testing, site investigation, and case studies.
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