Title of article :
ADAPTIVE NEURO FUZZY INFERENCE SYSTEM BASED ON FUZZY C–MEANS CLUSTERING ALGORITHM, A TECHNIQUE FOR ESTIMATION OF TBM PENETRATION RATE
Author/Authors :
fattahi, h. arak university of technology - department of mining engineering, ايران
From page :
159
To page :
171
Abstract :
The tunnel boring machine (TBM) penetration rate estimation is one of the crucial and complex tasks encountered frequently to excavate the mechanical tunnels. Estimating the machine penetration rate may reduce the risks related to high capital costs typical for excavation operation. Thus establishing a relationship between rock properties and TBM penetration rate can be very helpful in estimation of this vital parameter. However, establishing relationship between rock properties and TBM penetration rate is not a simple task and cannot be done using a simple linear or nonlinear method. Adaptive neuro fuzzy inference system based on fuzzy c–means clustering algorithm (ANFIS–FCM) is one of the robust artificial intelligence algorithms proved to be very successful in recognition of relationships between input and output parameters. The aim of this paper is to show the application of ANFIS–FCM in estimation of TBM performance. The model was applied to available data given in open source literatures. The results obtained show that the ANFIS– FCM model can be used successfully for estimation of the TBM performance.
Keywords :
adaptive neuro fuzzy inference system , TBM , rock properties , penetration rate estimation , fuzzy c–means clustering algorithm
Journal title :
International Journal of Optimization in Civil Engineering
Journal title :
International Journal of Optimization in Civil Engineering
Record number :
2566662
Link To Document :
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