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Application of the adaptive neuro-fuzzy inference system for prediction of a rock engineering classification system

机译:自适应神经模糊推理系统在岩石工程分类系统预测中的应用

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摘要

The rock engineering classification system is based on six parameters defined by Bieniawski [5], who employed parallel sets of linguistic and numerical criteria that were acknowledged to influence the behaviour of rock masses and the stability of rock structures. Consequently, experts frequently relate rock joints and discontinuities as well as ground water conditions in linguistic terms, with rough calculations. Recently, intelligence system approaches such as artificial neural network (ANN) and neuro-fuzzy methods have been used successfully for time series modelling. Using neuro-fuzzy approaches, which enable the information that is stored in trained networks to be expressed in the form of a fuzzy rule base, would help to overcome this issue. This paper presents the results of a study of the application of neuro-fuzzy methods to predict rock mass rating. We note that the proposed weights technique was applied in this process. We show that neuro-fuzzy methods give better predictions than conventional modelling approaches.
机译:岩石工程分类系统基于Bieniawski [5]定义的六个参数,他们采用了平行的语言和数值标准集,这些标准被认为会影响岩体的行为和岩石结构的稳定性。因此,专家经常用粗略的语言将岩石节理和不连续性以及地下水条件用语言表达出来。近来,诸如人工神经网络(ANN)和神经模糊方法之类的智能系统方法已成功用于时间序列建模。使用神经模糊方法可以使存储在受训网络中的信息以模糊规则库的形式表示,这将有助于克服这一问题。本文介绍了应用神经模糊方法预测岩体质量等级的研究结果。我们注意到,提议的权重技术已应用于此过程中。我们表明,神经模糊方法比常规建模方法能提供更好的预测。

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