particle tracking model, works with the ROMS output file(qck.nc, his.nc)

Overview

particle-tracking-model-for-ROMS

particle tracking model, works with the ROMS output file(qck.nc, his.nc)

description

this is a 2-dimensional particle tracking model based on ROMS output files, including his.nc, qck.nc.

features and numerical schemes

  • 4th order RK method is applied to the particle movement progress.
  • support time backward tracking.
  • diffusion is implemented by random walk algorithm.

usage

  1. edit the parameter is para.py, the meaning are explained in the comment
  2. cd to the path where "start_tracking.py" is in, run:
python ./start_tracking.py

if on linux platform:

python3 ./start_tracking.py
Owner
xusheng
xusheng
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