Integration of seismic refraction tomography and electrical resistivity data inversion results using spectral clustering method for evaluation of the quality of the subsurface rock mass


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ب مُه محمدی، اب اًلقاسم کامکار ریحاوی وشری علمی_پژی شَی م ىُدسی
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