Volume 9, Issue 2 (4-2019)                   IJOCE 2019, 9(2): 343-353 | Back to browse issues page

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Fattahi H. TUNNEL BORING MACHINE PENETRATION RATE PREDICTION BASED ON RELEVANCE VECTOR REGRESSION. IJOCE 2019; 9 (2) :343-353
URL: http://ijoce.iust.ac.ir/article-1-394-en.html
Abstract:   (15978 Views)
key factor in the successful application of a tunnel boring machine (TBM) in tunneling is the ability to develop accurate penetration rate estimates for determining project schedule and costs. Thus establishing a relationship between rock properties and TBM penetration rate can be very helpful in estimation of this vital parameter. However, this parameter cannot be simply predicted since there are nonlinear and unknown relationships between rock properties and TBM penetration rate. Relevance vector regression (RVR) 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 RVR in prediction of TBM performance. The model was applied to available data given in open source literatures. In this model, uniaxial compressive strengths of the rock (UCS), the distance between planes of weakness in the rock mass (DPW) and rock quality designation (RQD) were utilized as the input parameters, while the measured TBM penetration rates was the output parameter. The performances of the proposed predictive model was examined according to two performance indices, i.e., coefficient of determination (R2) and mean square error (MSE). The obtained results of this study indicated that the RVR is a reliable method to predict penetration rate with a higher degree of accuracy.
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Type of Study: Research | Subject: Applications
Received: 2018/12/17 | Accepted: 2018/12/17 | Published: 2018/12/17

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