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首页> 外文期刊>Bulletin of engineering geology and the environment >Intelligent modelling of sandstone deformation behaviour using fuzzy logic and neural network systems
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Intelligent modelling of sandstone deformation behaviour using fuzzy logic and neural network systems

机译:基于模糊逻辑和神经网络系统的砂岩变形行为智能建模

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AbstractA realistic analysis of rock deformation in response to any change in stresses is heavily dependent on the reliable determination of the rock properties as analysis inputs. Young’s modulus (E) provides great insight into the magnitude and characteristics of the rock mass/material deformation, but direct determination of Young’s modulus in the laboratory is time-consuming and costly. Therefore, basic rock properties such as point load strength index, P-wave velocity and Schmidt hammer rebound number have been used to estimate Young’s modulus. These rock properties can be easily measured in the laboratory. The main aim of this study was to develop two intelligent models based upon fuzzy logic and biological nervous systems in order to estimate Young’s modulus of sandstone for a set of known index properties drawn from laboratory tests. The database required to construct these models comprised a series of drill cores (96 samples of sandstone) from site investigation operations for a hydroelectric roller-compacted concrete (RCC) dam located in the Malaysian state of Sarawak. In the final stage of the present study, using the same data sets, multiple regression (MR) analysis was also proposed for comparison with the prediction results of both the fuzzy inference system (FIS) and artificial neural network (ANN) models. The ANN model was found to be far superior to FIS and MR in terms of several performance indices including root-mean-square error and ranking. Thus, from the results of this study, it was concluded that the models proposed herein could be utilised to estimate theEof similar rock types in practice.
机译: Abstract 对应力变化做出反应的岩石变形的现实分析在很大程度上取决于可靠地确定岩石特性作为分析输入。杨氏模量( E )可以很好地了解岩石质量/材料变形的大小和特征,但是在实验室中直接确定杨氏模量既费时又费钱。因此,基本岩石特性(例如点载荷强度指数,P波速度和施密特锤回弹数)已用于估算杨氏模量。这些岩石特性可以在实验室中轻松测量。这项研究的主要目的是开发两个基于模糊逻辑和生物神经系统的智能模型,以便根据实验室测试得出的一组已知指标特性来估算砂岩的杨氏模量。构造这些模型所需的数据库包括一系列位于马来西亚砂拉越州的水电碾压混凝土(RCC)大坝的现场调查作业的钻芯(96个砂岩样品)。在本研究的最后阶段,使用相同的数据集,还提出了多元回归(MR)分析,以与模糊推理系统(FIS)和人工神经网络(ANN)模型的预测结果进行比较。在包括均方根误差和排名在内的几个性能指标方面,发现ANN模型远优于FIS和MR。因此,从这项研究的结果可以得出结论,本文提出的模型可用于估算实际中类似岩石类型的 E

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