Lin Thurber CVM

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The Lin Thurber et al (2010) CVM is seismic velocity models of the California crust and uppermost mantle using a regional-scale double-difference tomography algorithm. The details are described in:

  • Lin, G., C. H. Thurber, H. Zhang, E. Hauksson, P. Shearer, F. Waldhauser, T. M. Brocher, and J. Hardebeck (2010), A California statewide three-dimensional seismic velocity model from both absolute and differential Times, Bull. Seism. Soc. Am., 100, in press.
Fig 1: Lin Thurber CVM Vp Map at 1km Depth
Fig 3: Lin Thurber CVM Vs Maps at 1km Depth

These preliminary maps are based on querying the model at an elevation offset of -1000.0m from MSL. We will need to add a DEM to UCVM in order to properly query this model by depth. The model is referenced using inverse bilinear interpolation of the original model boundaries.

As seen in the plots, the Vp model is higher resolution (~10km) than the Vs Model (~30km).

Original Model Format

Recently, we determined the seismic velocity model of the California crust and uppermost mantle using a regional-scale double-difference tomography algorithm. Our model is the first 3D seismic velocity model for the entire state of California based on local and regional arrival time data that has ever been developed. It has improved areal coverage compared to the previous northern and southern California models, and extends to greater depth due to the inclusion of substantial data at large epicentral distances.

FILE  FORMAT DESCRIPTION
-117.7230    37.8242     1.00     250.00       0.00     5.0390     109.13
lon    lat  dep   x   y   vp   DWS (derivative weight sum)
Map views of the P-wave velocity model at 1 and 4 km depth slices. Pink dots represent relocated earthquakes. Black lines denote coast line and lakes, gray lines rivers and surface traces of mapped faults. The white contours enclose the areas where the derivative weight sum is greater than 50 (Image Credit: Guoqing Lin