Intelligent prediction of rock bolt debonding employing the fractal theory and relevance vector machine (FT-RVM) with piezoceramic transducers
Yang Liu,
Yixuan Bai,
Nanyan Hu
et al.
Abstract:A new intelligent prediction model incorporated fractal theory and relevance vector machine (FT-RVM) was proposed to detect the debonding status of the rock bolt by using the piezoceramic transducer-induced stress waves. In the FT-RVM model, the original signals under different debonding status are firstly decomposed by the wavelet packet decomposition, the box dimension of decomposed signal is extracted by fractal theory (FT). The fractal box dimension of decomposed signals and root mean square value of the o… Show more
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