Page 124 - Machine Learning for Subsurface Characterization
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100 Machine learning for subsurface characterization


            DPHZ      density porosity log
            DTCO      Delta-T Compressional
            DTSM      Delta-T Shear
            GR        gamma ray log
            KNN       k-nearest neighbor algorithm
            LM        Levenberg-Marquardt algorithm
            NMR       nuclear magnetic resonance
            NPOR      neutron porosity log
            NRMSE     normalized root mean square error
            SSE       sum of squared errors
            TOC       total organic carbon
            VPVS      Shear-to-Compressional Velocity Ratio



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