One of the complex processes in spectral analysis of surface waves (SASW) data analysis is the inversion procedure. An initial soil profile needs to be assumed at the beginning of the inversion analysis, which involves calculating the theoretical dispersion curve. If the assumption of the starting soil profile model is not reasonably close, the iteration process might lead to nonconvergence or take too long to be converged. Automating the inversion procedure will allow us to eval-uate the soil stiffness properties conveniently and rapidly by means of the SASW method. Multilayer perceptron (MLP), random forest (RF), support vector regression (SVR), and linear regression (LR) algorithms were implemented in order to automate the inversion. For this purpose, the dispersion curves obtained from 50 field tests were used as input data for all of the algorithms. The results illustrated that SVR algorithms could potentially be used to estimate the shear wave velocity of soil.
CITATION STYLE
Mitu, S. M., Rahman, N. A., Nayan, K. A. M., Zulkifley, M. A., & Rosyidi, S. A. P. (2021). Implementation of machine learning algorithms in spectral analysis of surface waves (Sasw) inversion. Applied Sciences (Switzerland), 11(6), 1–26. https://doi.org/10.3390/app11062557
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