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Indirect estimation of deformation modulus of an in situ rock mass: an ANFIS model based on grid partitioning, fuzzy c-means clustering and subtractive clustering

机译:间接估算原位岩体变形模量:基于网格划分,模糊c均值聚类和减法聚类的ANFIS模型

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摘要

Deformability of rock masses influencing their behavior is an important geomechanical property for the rock structures design. Due to the problems in determining the deformability of jointed rock masses at the laboratory-scale, various in situ test methods such as plate loading tests, dilatometer etc. have been developed. Although these methods are currently the best techniques, they are expensive and time consuming, and present operational problems. Furthermore, the influence of the test volume on modulus of deformation depending on the technique used is also important. For these reasons, in this paper, the adaptive network-based fuzzy inference system (ANFIS) was used to build a prediction model for the indirect estimation of deformation modulus of a rock mass. Three ANFIS models were implemented by grid partitioning (GP), subtractive clustering method (SCM) and fuzzy c-means clustering method (FCM). The estimation abilities offered using three ANFIS models were presented by using field data of achieved from road and railway construction sites in Korea. In these models, rock mass rating (RMR), depth, uniaxial compressive strength of intact rock (UCS) and elastic modulus of intact rock (E-i) were utilized as the input parameters, while the deformation modulus of a rock mass was the output parameter. Various statistical performance indexes were utilized to compare the performance of those estimation models. The results achieved indicate that the ANFIS-SCM model has strong potential to indirect estimation of deformation modulus of a rock mass with high degree of accuracy and robustness.
机译:岩体的可变形性影响其行为是岩体结构设计的重要地质力学特性。由于在实验室规模上确定节理岩体的可变形性方面的问题,已经开发了各种原位测试方法,例如板载荷测试,膨胀计等。尽管这些方法目前是最好的技术,但它们昂贵且耗时,并且存在操作问题。此外,取决于所使用的技术,测试体积对变形模量的影响也很重要。由于这些原因,在本文中,使用基于自适应网络的模糊推理系统(ANFIS)建立了间接估算岩体变形模量的预测模型。通过网格划分(GP),减法聚类(SCM)和模糊c均值聚类(FCM)实现了三种ANFIS模型。利用韩国道路和铁路建设现场获得的现场数据,介绍了使用三种ANFIS模型提供的估算能力。在这些模型中,岩石质量等级(RMR),深度,完整岩石的单轴抗压强度(UCS)和完整岩石的弹性模量(Ei)被用作输入参数,而岩石质量的变形模量是输出参数。 。利用各种统计性能指标来比较那些估计模型的性能。所得结果表明,ANFIS-SCM模型具有较高的准确性和鲁棒性,可以间接估算岩体的变形模量。

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