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A fuzzy based Bayesian Belief Network approach for railway bridge condition monitoring and fault detection

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Figure

Figure 1 FE model of the steel truss railway bridge
Figure 2 Displacements of the top chord on the right hand side of
Table 1 Linguistic probability scale and fuzzy membership function
Figure 4 Linguistic scale for relative importance.
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