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首页> 外文期刊>International Journal of Rock Mechanics and Mining Sciences >The application of neural networks to Rock Engineering Systems (RES)
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The application of neural networks to Rock Engineering Systems (RES)

机译:神经网络在岩石工程系统(RES)中的应用

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摘要

This paper proposes a new approach for applying neural networks in Rock Engineering Systems (RES) based on the learning abilities of neural networks. By considering the analysis of the coding method's for the interaction matrix in RES and the learning processes of neural networks such as the Back Propagation (BP) method neural networks can provide a useful mapping from om system inputs to system outputs for rock engineering, so that the influence of inputs on outputs can be obtained. Then the results of the neural network analysis can be presented in a similar way to the global interaction matrix used in RES to present the fully-coupled system results. The neural network procedures are explained first, with illustrative demonstrations for simultaneous equations. Then, the link with the RES type of analysis is explained, together with some demonstration examples for rock engineering data sets. The specific analysis procedure is presented and then wider rock engineering examples are given relating to the characteristics of rock masses and engineering parameters. The main presentation tools used in this neural network approach are the Relative Strength Effect (RSE) and the Global Relative Strength Effect (GRSE) matrix. There is discussion of the value of this approach and an indication of the likely areas of future development. (C) 1998 Elsevier Science Ltd. [References: 19]
机译:本文基于神经网络的学习能力,提出了一种在岩石工程系统(RES)中应用神经网络的新方法。通过考虑对RES中交互矩阵的编码方法的分析以及诸如反向传播(BP)方法之类的神经网络的学习过程,神经网络可以为岩石工程提供从om系统输入到系统输出的有用映射,从而可以得到输入对输出的影响。然后,可以类似于RES中使用的全局交互矩阵来呈现神经网络分析的结果,以呈现完全耦合的系统结果。首先说明神经网络过程,并举例说明联立方程。然后,说明了与RES类型的分析的链接,以及一些岩石工程数据集的演示示例。提出了具体的分析程序,然后给出了与岩体特征和工程参数有关的更广泛的岩石工程实例。这种神经网络方法中使用的主要表示工具是相对强度效应(RSE)和全局相对强度效应(GRSE)矩阵。讨论了这种方法的价值,并指出了未来发展的可能领域。 (C)1998 Elsevier Science Ltd. [引用:19]

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