ALPS 2 Tutorials:MC-01 Equilibration
Contents
- 1 Equilibration
- 1.1 Example: Classical Monte Carlo (local updates) simulations
Equilibration
Rule of thumb: All Monte Carlo simulations have to be equilibrated before taking measurements.
Example: Classical Monte Carlo (local updates) simulations
As an example, we will implement a classical Monte Carlo simulation implemented in the Ising model on a finite square lattice of size 482.
Preparing and running the simulation from the command line
The parameter file parm1a:
LATTICE="square lattice" T=2.269186 J=1 THERMALIZATION=10000 SWEEPS=50000 UPDATE="local" MODEL="Ising" {L=48;}
We first convert the input parameters to XML and then run the application spinmc:
parameter2xml parm1a spinmc --Tmin 10 --write-xml parm1a.in.xml
Preparing and running the simulation using Python
The following describes what is going on within the script file tutorial1a.py.
The headers:
import pyalps parms = [{ 'LATTICE' : "square lattice", 'MODEL' : "Ising", 'L' : 48, 'J' : 1., 'T' : 2.269186, 'THERMALIZATION' : 10000, 'SWEEPS' : 50000, }]
Write into XML input file and run the application spinmc:
input_file = pyalps.writeInputFiles('parm1a',parms) pyalps.runApplication('spinmc', input_file, Tmin=10, writexml=True)
Evaluating the simulation and preparing plots using Python
The header:
import pyalps;
We first get the list of all result files via:
files = pyalps.getResultFiles(prefix='parm1a')
and then extract, say the timeseries of the |Magnetization| measurements:
ts_M = pyalps.loadTimeSeries(files[0], '|Magnetization|');
We can then visualize graphically:
import matplotlib.pyplot as plt plt.plot(ts_M) plt.show()
Based on the timeseries, the user will then judge for himself/herself whether the simulation has reached equilibration.
A convenient tool: pyalps.checkSteadyState
ALPS Python provides a convenient tool to check whether a measurement observable(s) has (have) reached steady state equilibrium. Read here to see how it works.
Here is an example (observable: |Magnetization|) (default: 63% confidence interval) :
import pyalps data = pyalps.loadMeasurements(pyalps.getResultFiles(prefix='parm1a'), '|Magnetization|'); data = pyalps.checkSteadyState(data);
and if you want a 90% confidence interval:
data = pyalps.checkSteadyState(data, confidenceInterval=0.9);
Setting up and running the simulation in Vistrails (in preparation)
To run the simulation in Vistrails open the file mc-01b-equilibration.vt.