8000 GitHub - chrisdicaprio/solvis: NSHM opensha inversion solution analysis python module
[go: up one dir, main page]
More Web Proxy on the site http://driver.im/
Skip to content

chrisdicaprio/solvis

 
 

Repository files navigation

solvis

a demo to try some techniques for analysis of opensha modular solution files.

  • opensha modular documentation
  • pandas, geopanda references

goals

From a typical modular opensha Inversion Solution archive, we want to produce views that allow deep exploration of the solution and rupture set characteristics. Features:

  • user can choose from regions already defined in the solution
  • user can select ruptures matching
    • parent fault
    • named fault (fault system)
    • constraint region (from TargetMFDs)
  • user can create new region polygons
  • user can compare selections (e.g. Wellington East vs Wellington CBD vs Hutt Valley)
  • for a given query result show me dimensions...
    • mag, length, area, rate, section count, parent fault count, jump-length, jump angles, slip (various), partication, nucleation
    • filter, group on any of the dimensions

From here the user can answer questions like ....

  • create a MFD histogram in 0.01 bins from 7.0 to 7.30 (3O bins) for the WHV fault system

  • list all ruptures between 7.75 and 8.25, involving the TVZ, ordered by rupture-length

  • given a user-defined-function udfRuptureComplexity(rupture) rank ruptures in Region X by complexity, then by magnitude

  • regional MFD

    • participation (sum of rate) for every rupture though a point
    • nucleation/blame/culpability rate summed over the region normalised by the area of an area (region, named fault)

install

git clone
pip3 install .

Run

python3 -m demo

or python3 demo.py

Plotting

f = plt.figure() #nx = int(f.get_figwidth() * f.dpi) #ny = int(f.get_figheight() * f.dpi) f.figimage(data) plt.show()

About

NSHM opensha inversion solution analysis python module

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%
0