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Statistical Ensembles

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Classical phase space is 6N variables (pi, qi) and a Hamiltonian ... TYPE argon 256 48. POTENTIAL argon argon 1 1. 1. 2.5. DENSITY 1.05. TEMPERATURE 1.15 ... – PowerPoint PPT presentation

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Title: Statistical Ensembles


1
Statistical Ensembles
  • Classical phase space is 6N variables (pi, qi)
    and a Hamiltonian function H(q,p,t).
  • We may know a few constants of motion such as
    energy, number of particles, volume...
  • Ergodic hypothesis each state consistent with
    our knowledge is equally likely the
    microcanonical ensemble.
  • Implies the average value does not depend on
    initial conditions.
  • A system in contact with a heat bath at
    temperature T will be distributed according to
    the canonical ensemble
  • exp(-H(q,p)/kBT )/Z
  • The momentum integrals can be performed.
  • Are systems in nature really ergodic? Not always!

2
Ergodicity
  • Fermi- Pasta- Ulam experiment (1954)
  • 1-D anharmonic chain V ?(q i1-q i)2? (q
    i1-q i)3
  • The system was started out with energy with the
    lowest energy mode. Equipartition would imply
    that the energy would flow into the other modes.
  • Systems at low temperatures never come into
    equilibrium. The energy sloshes back and forth
    between various modes forever.
  • At higher temperature many-dimensional systems
    become ergodic.
  • Area of non-linear dynamics devoted to these
    questions.

3
  • Let us say here that the results of our
    computations were, from the beginning, surprising
    us. Instead of a continuous flow of energy from
    the first mode to the higher modes, all of the
    problems show an entirely different behavior.
    Instead of a gradual increase of all the higher
    modes, the energy is exchanged, essentially,
    among only a certain few. It is, therefore, very
    hard to observe the rate of thermalization or
    mixing in our problem, and this wa s the initial
    purpose of the calculation.
  • Fermi, Pasta, Ulam (1954)

4
  • Equivalent to exponential divergence of
    trajectories, or sensitivity to initial
    conditions. (This is a blessing for numerical
    work. Why?)
  • What we mean by ergodic is that after some
    interval of time the system is any state of the
    system is possible.
  • Example shuffle a card deck 10 times. Any of the
    52! arrangements could occur with equal
    frequency.
  • Aside from these mathematical questions, there is
    always a practical question of convergence. How
    do you judge if your results converged? There is
    no sure way. Why? Only experimental tests.
  • Occasionally do very long runs.
  • Use different starting conditions.
  • Shake up the system.
  • Compare to experiment.

5
Statistical ensembles
  • (E, V, N) microcanonical, constant volume
  • (T, V, N) canonical, constant volume
  • (T, P N) constant pressure
  • (T, V , ?) grand canonical
  • Which is best? It depends on
  • the question you are asking
  • the simulation method MC or MD (MC better for
    phase transitions)
  • your code.
  • Lots of work in last 2 decades on various
    ensembles.

6
Definition of Simulation
  • What is a simulation?
  • An internal state S
  • A rule for changing the state Sn1 T (Sn)
  • We repeat the iteration many time.
  • Simulations can be
  • Deterministic (e.g. Newtons equationsMD)
  • Stochastic (Monte Carlo, Brownian motion,)
  • Typically they are ergodic there is a
    correlation time T. for times much longer than
    that, all non-conserved properties are close to
    their average value. Used for
  • Warm up period
  • To get independent samples for computing errors.

7
Problems with estimating errors
  • Any good simulation quotes systematic and
    statistical errors for anything important.
  • Central limit theorem after enough averaging,
    any statistical quantity approaches a normal
    distribution.
  • One standard deviation means 2/3 of the time the
    correct answer is within ? of the estimate.
  • Problem in simulations is that data is correlated
    in time. It takes a correlation time to be
    ergodic
  • We must throw away the initial transient and
    block successive parts to estimate the mean value
    and error.
  • The error and mean are simultaneously determined
    from the data. We need at least 20 independent
    data points.

8
Estimating Errors
  • Trace of A(t)
  • Equilibration time.
  • Histogram of values of A ( P(A) ).
  • Mean of A (a).
  • Variance of A ( v ).
  • estimate of the mean ?A(t)/N
  • estimate of the variance,
  • Autocorrelation of A (C(t)).
  • Correlation time (k ).
  • The (estimated) error of the (estimated) mean (s
    ).
  • Efficiency 1/(CPU time error 2)

9
Statistical thinking is slippery
  • Shouldnt the energy settle down to a constant
  • NO. It fluctuates forever. It is the overall
    mean which converges.
  • My procedure is too complicated to compute
    errors
  • NO. Run your whole code 10 times and compute the
    mean and variance from the different runs
  • The cumulative energy has converged.
  • BEWARE. Even pathological cases have smooth
    cumulative energy curves.
  • Data set A differs from B by 2 error bars.
    Therefore it must be different.
  • This is normal in 1 out of 10 cases.

10
Characteristics of simulations.
  • Potentials are highly non-linear with
    discontinuous higher derivatives either at the
    origin or at the box edge.
  • Small changes in accuracy lead to totally
    different trajectories. (the mixing or ergodic
    property)
  • We need low accuracy because the potentials are
    not very realistic. Universality saves us a
    badly integrated system is probably similar to
    our original system. This is not true in the
    field of non-linear dynamics or, in studying the
    solar system
  • CPU time is totally dominated by the calculation
    of forces.
  • Memory limits are not too important.
  • Energy conservation is important roughly
    equivalent to time-reversal invariance. allow
    0.01kT fluctuation in the total energy.

11
The Verlet Algorithm
  • The nearly universal choice for an integrator is
    the Verlet (leapfrog) algorithm
  • r(th) r(t) v(t) h 1/2 a(t) h2 b(t) h3
    O(h4) Taylor expand
  • r(t-h) r(t) - v(t) h 1/2 a(t) h2 - b(t) h3
    O(h4) Reverse time
  • r(th) 2 r(t) - r(t-h) a(t) h2 O(h4) Add
  • v(t) (r(th) - r(t-h))/(2h) O(h2) estimate
    velocities
  • Time reversal invariance is built in ? the
    energy does not drift.

8
2
3
4
5
1
6
7
9
10
11
12
13
12
How to set the time step
  • Adjust to get energy conservation to 1 of
    kinetic energy.
  • Even if errors are large, you are close to the
    exact trajectory of a nearby physical system with
    a different potential.
  • Since we dont really know the potential surface
    that accurately, this is satisfactory.
  • Leapfrog algorithm has a problem with round-off
    error.
  • Use the equivalent velocity Verlet instead
  • r(th) r(t) h v(t) (h/2) a(t)
  • v(th/2) v(t)(h/2) a(t)
  • v(th)v(th/2) (h/2) a(th)

13
Spatial Boundary Conditions
  • Important because spatial scales are limited.
    What can we choose?
  • No boundaries e.g. droplet, protein in vacuum.
    If droplet has 1 million atoms and surface layer
    is 5 atoms thick? 25 of atoms are on the
    surface.
  • Periodic Boundaries most popular choice because
    there are no surfaces (see next slide) but there
    can still be problems.
  • Simulations on a sphere
  • External potentials
  • Mixed boundaries (e.g. infinite in z, periodic in
    x and y)

14
Periodic distances
  • Minimum Image Convention take the closest
    distancerM min ( rnL)
  • Potential is cutoff so that V(r)0 for rgtL/2
    since force needs to be continuous. How about
    the derivative?
  • Image potential
  • VI ? v(ri-rjnL)
  • For long range potential this leads to the Ewald
    image potential. You need a back ground and
    convergence method (more later)

-L -L/2 0 L/2 L
x
15
Complexity of Force Calculations
  • Complexity is defined as how a computer algorithm
    scales with the number of degrees of freedom
    (particles)
  • Number of terms in pair potential is N(N-1)/2 ?
    O(N2)
  • For short range potential you can use neighbor
    tables to reduce it to O(N)
  • (Verlet) neighbor list for systems that move
    slowly
  • bin sort list (map system onto a mesh and find
    neighbors from the mesh table)
  • Long range potentials with Ewald sums are O(N3/2)
    but Fast Multipole Algorithms are O(N) for very
    large N.

16
Constant Temperature MD
  • Problem in MD is how to control the temperature.
    (BC in time.)
  • How to start the system? (sample velocities from
    a Gaussian distribution) If we start from a
    perfect lattice as the system becomes disordered
    it will suck up the kinetic energy and cool down.
    (v.v for starting from a gas)
  • QUENCH method. Run for a while, compute kinetic
    energy, then rescale the momentum to correct
    temperature, repeat as needed.
  • Nose-Hoover Thermostat controls the temperature
    automatically by coupling the microcanonical
    system to a heat bath
  • Methods have non-physical dynamics since they do
    not respect locality of interactions. Such
    effects are O(1/N)

17
Quench method
  • Run for a while, compute kinetic energy, then
    rescale the momentum to correct temperature,
    repeat as needed.
  • Control is at best O(1/N)

18
Nose-Hoover thermostat
  • MD in canonical distribution (TVN)
  • Introduce a friction force ?(t)

SYSTEM
T Reservoir
Dynamics of friction coefficient to get canonical
ensemble.
Feedback restores makes kinetic energytemperature
Q heat bath mass. Large Q is weak coupling
19
Effect of thermostat
  • System temperature fluctuates but how quickly?
  • Q1
  • Q100

DIMENSION 3 TYPE argon 256 48. POTENTIAL argon
argon 1 1. 1. 2.5 DENSITY 1.05 TEMPERATURE
1.15 TABLE_LENGTH 10000 LATTICE 4 4 4 4 SEED
10 WRITE_SCALARS 25 NOSE 100. RUN MD 2200 .05
20
  • Thermostats are needed in non-equilibrium
    situations where there might be a flux of energy
    in or out of the system.
  • It is time reversable, deterministic and goes to
    the canonical distribution but
  • How natural is the thermostat?
  • Interactions are non-local. They propagate
    instantaneously
  • Interaction with a single heat bath
    variable-dynamics can be strange. Be careful to
    adjust the mass
  • REFERENCES
  • S. Nose, J. Chem. Phys. 81, 511 (1984) Mol.
    Phys. 52, 255 (1984).
  • W. Hoover, Phys. Rev. A31, 1695 (1985).

21
Constant Pressure
  • To generalize MD, follow similar procedure as for
    the thermostat for constant pressure. The size
    of the box is coupled to the internal pressure
  • Volume is coupled to virial pressure
  • Unit cell shape can also change.

22
Parrinello-Rahman simulation
  • 500 KCl ions at 300K
  • First P0
  • Then P44kB
  • System spontaneously changes from rocksalt to
    CsCl structure

23
  • Can automatically find new crystal structures
  • Nice feature is that the boundaries are flexible
  • But one is not guaranteed to get out of local
    minimum
  • One can get the wrong answer. Careful free
    energy calculations are needed to establish
    stable structure.
  • All such methods have non-physical dynamics since
    they do not respect locality of interactions.
  • Non-physical effects are O(1/N)
  • REFERENCES
  • H. C. Andersen, J. Chem. Phys. 72, 2384 (1980).
  • M. Parrinello and A. Rahman, J. Appl. Phys. 52,
    7158 (1981).

24
Brownian dynamics
  • Put a system in contact with a heat bath
  • Will discuss how to do this later.
  • Leads to discontinuous velocities.
  • Not necessarily a bad thing, but requires some
    physical insight into how the bath interacts with
    the system in question.
  • For example, this is appropriate for a large
    molecule (protein or colloid) in contact with a
    solvent. Other heat baths in nature are given by
    phonons and photons,

25
Monitoring the simulation
  • Static properties pressure, specific heat etc.
  • Density
  • Pair correlation in real space and fourier space.
  • Order parameters How to tell a liquid from a
    solid

26
Thermodynamic properties
  • Internal energykinetic energy potential energy
  • Kinetic energy is kT/2 per momentum
  • Specific heat mean squared fluctuation in
    energy
  • pressure can be computed from the virial theorem.
  • compressibility, bulk modulus, sound speed
  • But we have problems for the basic quantities of
    entropy and free energy since they are not ratios
    with respect to the Boltzmann distribution. We
    will discuss this later.

27
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28
Microscopic Density
  • ?(r) lt ?i ?(r-r i) gt
  • Or you can take its Fourier Transform
  • ? k lt ?i exp(ikri) gt
  • (This is a good way to smooth the density.)
  • A solid has broken symmetry (order parameter).
    The density is not constant.
  • At a liquid-gas transition the density is also
    inhomgeneous.
  • In periodic boundary conditions the k-vectors are
    on a grid k2?/L (nx,ny,nz) Long wave length
    modes are absent.
  • In a solid Lindemanns ratio gives a rough idea
    of melting
  • u2 lt(ri-zi)2gt/d2

29
Order parameters
  • A system has certain symmetries translation
    invariance.
  • At high temperatures one expect the system to
    have those same symmetries at the microscopic
    scale. (e.g. a gas)
  • BUT as the system cools those symmetries are
    broken. (a gas condenses).
  • At a liquid gas-transition the density is no
    longer fixed droplets form. The density is the
    order parameter.
  • At a liquid-solid transition, both rotational
    symmetry and translational symmetry are broken
  • The best way to monitor the transition is to look
    for the dynamics of the order parameter.

30
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31
Electron Density during exchange2d Wigner
crystal (quantum)
32
Snapshots of densities
  • Liquid or crystal or glass? Blue spots are
    defects

33
Density distribution within a helium droplet
  • During addition of molecule, it travels from the
    surface to the interior.

Red is high density, blue low density of helium
34
Pair Correlation Function, g(r)
  • Primary quantity in a liquid is the probability
    distribution of pairs of particles. Given a
    particle at the origin what is the density of
    surrounding particles
  • g(r) lt ?iltj ? (ri-rj-r)gt (2 ?/N2)
  • Density-density correlation
  • Related to thermodynamic properties.

35
g(r) in liquid and solid helium
  • First peak is at inter-particle spacing. (shell
    around the particle)
  • goes out to rltL/2 in periodic boundary
    conditions.

36
(The static) Structure Factor S(K)
  • The Fourier transform of the pair correlation
    function is the structure factor
  • S(k) lt?k2gt/N (1)
  • S(k) 1 ? ?dr exp(ikr) (g(r)-1) (2)
  • problem with (2) is to extend g(r) to infinity
  • This is what is measured in neutron and X-Ray
    scattering experiments.
  • Can provide a direct test of the assumed
    potential.
  • Used to see the state of a system
  • liquid, solid, glass, gas? (much better than g(r)
    )
  • Order parameter in solid is ?G

37
  • In a perfect lattice S(k) will be non-zero only
    on the reciprocal lattice vectors G S(G) N
  • At non-zero temperature (or for a quantum system)
    this structure factor is reduced by the
    Debye-Waller factor
  • S(G) 1 (N-1)exp(-G2u2/3)
  • To tell a liquid from a crystal we see how S(G)
    scales as the system is enlarged. In a solid,
    S(k) will have peaks that scale with the number
    of atoms.
  • The compressibility is given by
  • We can use this is detect the liquid-gas
    transition since the compressibility should
    diverge as k approaches 0. (order parameter is
    density)

38
Crystal liquid
39
Here is a snapshot of a binary mixture. What
correlation function would be important?
40
  • In a perfect lattice S(k) will be non-zero only
    on the reciprocal lattice vectors S(G) N
  • At non-zero temperature (or for a quantum system)
    this structure factor is reduced by the
    Debye-Waller factor
  • S(G) 1 (N-1)exp(-G2u2/3)
  • To tell a liquid from a crystal we see how S(G)
    scales as the system is enlarged. In a solid,
    S(k) will have peaks that scale with the number
    of atoms.
  • The compressibility is given by
  • We can use this is detect the liquid gas
    transition since the compressibility should
    diverge. (order parameter is density)

41
Dynamical Properties
  • Fluctuation-Dissipation theorem
  • Here A e-iwt is a perturbation and ? (w) e-iwt
    is the response of B. We calculate the average on
    the lhs in equilibrium (no external
    perturbation).
  • Fluctuations we see in equilibrium are
    equivalent to how a non-equilibrium system
    approaches equilibrium. (Onsager regression
    hypothesis)
  • Density-Density response function is S(k,w) can
    be measured by scattering and is sensitive to
    collective motions.

42
Diffusion Coefficient
  • Diffusion constant is defined by Ficks law and
    controls how systems mix
  • Microscopically we calculate
  • Alder-Wainwright discovered long-time tails on
    the velocity autocorrelation function so that the
    diffusion constant does not exist in 2D

43
Mixture simulation with CLAMPS
Initial condition Later
44
Transport Coefficients
  • Diffusion Particle flux
  • Viscosity Stress tensor
  • Heat transport energy current
  • Electrical Conductivity electrical current
  • These can also be evaluated with non-equilibrium
    simulations use thermostats to control.
  • Impose a shear flow
  • Impose a heat flow
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