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cwpmatlab

于 2020-12-10 发布 文件大小:474KB
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  cwp组织开发的matlab代码,用以研究各向异性介质中的地震传播规律,计算反射系数,速度,密度等(Contents of this directory are Matlab packages to perform the following tasks. NOLIN_Rp, Petr Jilek, (NOnLinear Inversion of Rp reflection coefficients) package REFLCOEF, Petr Jilek, displacement reflection coefficients at a planar interface and reflectivity modeling for P incident on anisotropic media (up to monoclinic) having a horizontal symmetry plane. LIN_Rp, Petr Jilek, joint linear inversion of approximate PP and PS wave reflection coefficients: current version designed for anisotropic media including isotropic, HTI, VTI, and orthorhombic symmetry. Multi_Comp_Stack_Vel_Tomo, Vladimir Grechka and Andres Pech, joint tomographic inversion of the NMO ellipses, reflection slopes, and zero-offset traveltimes of PP- and SS-waves. )

文件列表:

cwpmatlab\CWPMatlab\LIN_Rp\BIAS\Azim_ReflCoef.m
cwpmatlab\CWPMatlab\LIN_Rp\BIAS\Bias_reduce.m
cwpmatlab\CWPMatlab\LIN_Rp\BIAS\Invert_phase1_alignt_BIAS.m
cwpmatlab\CWPMatlab\LIN_Rp\BIAS\S_evaluation
cwpmatlab\CWPMatlab\LIN_Rp\G_inv.m
cwpmatlab\CWPMatlab\LIN_Rp\Invert_aligned_phase1.m
cwpmatlab\CWPMatlab\LIN_Rp\Invert_HTIaligned_phase2.m
cwpmatlab\CWPMatlab\LIN_Rp\Invert_HTIxHTI_phase2.m
cwpmatlab\CWPMatlab\LIN_Rp\Invert_ORTaligned_phase2.m
cwpmatlab\CWPMatlab\LIN_Rp\Invert_ORT_phase1.m
cwpmatlab\CWPMatlab\LIN_Rp\Invert_ORT_phase2.m
cwpmatlab\CWPMatlab\LIN_Rp\Invert_VTI_phase1.m
cwpmatlab\CWPMatlab\LIN_Rp\Invert_VTI_phase2.m
cwpmatlab\CWPMatlab\LIN_Rp\README
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\artConGN.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\artConGNinv.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\artData.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\artInv.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\bondTransf.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\checkRec.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\christoffel.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\Clean.sh
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\compVnmo.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\constants.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\curvInt.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\cyl2ell.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\effCyl.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\ell2cyl.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\fminsRT.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\funInt.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\funSnell.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\fzero.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\global2refl.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\grechka2Cij.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\groupVel.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\hitInt.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\initGuess.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inputCij.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inputInt.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inputRayCode.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inputSouRec.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inputVelCon.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\intCyl.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\Interfaces.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inverCij.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inverInt.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inverIntZ.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inverRayCode.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\invershot.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\inverVelCon.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\local2global.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\normInt.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\pderInt.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\plotCont.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\plotInvErrBar.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\plotInvRes.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\plotModel.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\plotRay.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\plotTTIinv30deg.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\qNewton.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\README
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\README.bak
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\shooting.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\shooting2.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\thomsen2Cij.m
cwpmatlab\CWPMatlab\Multi_Comp_Stack_Vel_Tomo\tsvankin2Cij.m
cwpmatlab\CWPMatlab\NOLIN_Rp\BarGraph.m
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\Data.in.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\EVOLUTION.out.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\EVOLUTION_S.out.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\HTImodel.in.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\INFO.out.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\INFO_S.out.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\InitModels.in.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\README.FILE
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\RESULT.out.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\FILE\RESULT_S.out.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\GraphIt.m
cwpmatlab\CWPMatlab\NOLIN_Rp\InitModels.in
cwpmatlab\CWPMatlab\NOLIN_Rp\LIB\Graph.tar.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\LIB\Obj_Rcf.tar.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\LIB\Mmake_Obj_Rcf_lib
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\LIB\Mmake_Optimize_lib
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\LIB\Obj_Rcf_src.tar.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\LIB\Optim_src.tar.gz
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\LIB\sortrowsc.mexglx
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\MisfitSort
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\MisfitSort.m
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\Mmake_MisfitSort
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\ORTmodel.in
cwpmatlab\CWPMatlab\NOLIN_Rp\MAKEXE\README.MAKEXE
cwpmatlab\CWPMatlab\NOLIN_Rp\mfput.log
cwpmatlab\CWPMatlab\NOLIN_Rp\MisfitSort.m
cwpmatlab\CWPMatlab\NOLIN_Rp\ModelMisfit.m
cwpmatlab\CWPMatlab\NOLIN_Rp\NonLinGrad_pri.m
cwpmatlab\CWPMatlab\NOLIN_Rp\NonLinGrad_sec.m
cwpmatlab\CWPMatlab\NOLIN_Rp\README.MAIN
cwpmatlab\CWPMatlab\NOLIN_Rp\Read_in.m
cwpmatlab\CWPMatlab\NOLIN_Rp\Sort.m
cwpmatlab\CWPMatlab\README

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