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README | ||
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log.13Oct16.vacf.2d.g++.8 |
README
This directory has 2 scripts that compute the diffusion coefficient of a 2d Lennard-Jones fluid using 2 different methods. See the discussion in Section 6.22 of the manual for an overview of the methods and pointers to doc pages for the commands which implement them. These scripts are provided for illustration purposes. No guarantee is made that the systems are fully equilibrated or that the runs are long enough to generate good statistics and highly accurate results. ------------- These are the 2 methods for computing the diffusion coefficient. The first computes the slope of the mean-squared displacement (MSD) of the atoms. The second time-integrates the velocity-auto-correlation function (VACF) for the system. In both cases a single time origin is used. This allows the diffusion coefficient to be estimated on-the-fly using variables in the LAMMPS input scripts. For better statistics you typically want to use multiple time origins, post-processing the data from dump files. in.msd.2d = mean-squared displacement (MSD) in.vacf.2d = velocity auto-correlation function (VACF) Both systems have 3200 atoms and run for 100000 timesteps, after equilibration. The scripts were both run on 8 processors. They both run in about 10 seconds and produce the accompanying log files. The state point of the LJ fluid is rho* = 0.6, T* = 1.0, and Rcut = 2.5 sigma. ------------- Here is how to extract the diffusion coefficient from the log file output for each method. (1) in.msd.2d The 3rd column of output is the instantaneous mean-squared displacment, which grows over time. The 4th column estimates the slope of the MSD from its two end-points, and uses it to compute the diffusion coefficient. The 5th column fits a straight line to the entire (growing) set of MSD data and uses the slope of the line to compute the diffusion coefficient. You can see that both measures give roughly the same answer and rapidly become roughly constant for the 100K step simulation. Dcoeff = 0.36 (2) in.vacf.2d The 3rd column of output is the instantaneous velocity auto-correlation function (VACF). The 4th column is the time-integration of the VACF (for every timestep), integrated up to that point in time, converted into the diffusion coefficient. You can see the VACF approach gives a more noise, fluctuating value for the diffusion coefficient, compared to the MSD approach. Dcoeff = 0.25 to 0.45