A Dynamic Bayesian Network (DBN) model for probabilistic estimation
of tunnel construction time (and costs) is presented. It considers two main types
of uncertainties: those associated with ordinary variability in the construction
performance and those associated with severe delays caused by extraordinary
events such as tunnel collapses or major organizational problems. A method for
learning the model parameters from analysis of data from past projects is shown.
The proposed DBN model is applied to a case study of a two-lane road tunnel
excavated with a conventional tunneling method. The model parameters are learnt
using data from one reference tunnel.
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