Title: ASPECTS OF NON EQUILIBRIUM
1ASPECTS OF NON EQUILIBRIUM
- Mapping of stochastic equations to Hamilton
equations of motion
Hans Fogedby Aarhus University and Niels Bohr
Institute Denmark
2Outline
- Equilibrium
- Non equilibrium
- Quantum analogue
- Weak noise - WKB
- Dynamical equations of motion
- Phase space discussion
- Brownian motion
- Oscillator
- Kardar-Parisi-Zhang equation for interface
- Summary and conclusion
3EQUILIBRIUM
Ensemble known - Boltzmann/Gibbs scheme
- P0 Equilibrium distribution
- H(C) Hamiltonian (energy)
- C Configuration
- kBT Temperature
- F Free energy
- S Entropy
-
Boltzmann factor
Partition function
Thermodynamics
Ising model
- HI Ising Hamiltonian
- si Spin, si 1
- J NN Coupling
- si Configuration
- H Magnetic field
- M Magnetic moment
4NON EQUILIBRIUM
Ensemble unknown - Master/Langevin/Fokker-Planck
scheme
Master equation
- Open systems
- Biophysics
- Soft matter
- Turbulence
- Interface growth
- etc
Langevin equation
Fokker-Planck equation
5QUANTUM ANALOGUE
Fokker Planck equation
- Distribution corresponds to wave function
- Fokker-Planck equation corresponds to Schrödinger
equation - Noise yields kinetic energy
- Drift yields potential energy
- Small noise strength corresponds to small Planck
constant - Weak noise corresponds to small quantum
fluctuations - i.e. the correspondence limit
Diffusion
Drift
Transformation
Schrödinger equation
Kinetic energy
p-dependent potential
6WEAK NOISE
Langevin equation
- Noise drives x into a stationary
- stochastic state
- Noise strength singular parameter
- ?0, relaxational behavior
- ?0, stationary behavior
- Cross over time diverges as ? ? 0
Drift
Noise
Noise correlations
Noise strength
Working hypothesis Weak noise limit captures
interesting physics
7WEAK NOISE
Fokker-Planck equation
Action
WKB ansatz
Variational principle
Hamilton-Jacobi equation
- Principle of least action operational
- in weak noise limit
- Stochastic problem replaced by
- dynamical problem
- Application of dynamical system theory
- Dynamical action S is weight function
Hamiltonian
8DYNAMICAL EQUATIONS
Hamiltonian
Weak noise recipe
Equations of motion
- Solve equations of motion for orbit from xi to x
in time T - Momentum p is slaved variable
- Evaluate action S for orbit
- Evaluate transition probability according to WKB
ansatz - Stationary distribution obtained in long time
limit for fixed x
Noise replaced By momentum
Equation for momentum
Action and distribution
WKB
9PHASE SPACE DISCUSSION
Hamiltonian
Equations of motion
Action
- Long time orbits on H0 manifolds
- H0 manifolds yield stationary state
- Saddle point - infinite waiting time
- (Markov behavior)
10BROWNIAN MOTION
- Basic random process
- Model for diffusion
- Wide applications in statistical physics
Solutions
Action and distribution
Langevin equation
Gaussian, width T
Phase space
Hamiltonian (free particle)
Equations of motion
11OSCILLATOR (overdamped)
- Simple random process
- Wide applications in statistical physics and
biophysics - E.g. suspended Brownian particle in viscous medium
Mean square displacement
Fokker-Planck equation
Distribution
Langevin equation
Stationary distribution
Gaussian
12Weak noise approach
Langevin equation
Action
Hamiltonian
Distribution
Stationary distribution
Equation of motion
Gaussian
13Phase space discussion
Stationary manifold
Finite time orbit
Infinite time orbit
Transient manifold
Saddle point (long time orbit passes close to SP)
14KARDAR PARISI ZHANG EQUATION
- Generic non equilibrium model
- Describes aspects of growing interfaces
- Field theoretical Langevin equation
- Scaling properties
- Related to turbulence
- Related to disordered systems
- Weak noise method can be applied
15KARDAR PARISI ZHANG EQUATION
- h(r,t) height profile
- ? damping
- ? growth parameter
- F drift
- ?(r,t) noise
- ? noise strength
16KPZ - scaling
Dynamical scaling hypothesis
- Saturation width w
- System size L
- Roughness exponent ?
- Dynamic exponent z
- Scaling function F
17KPZ - scaling
DRG phase diagram
- Dynamical Renormalization
- Group (DRG) calculation
- d2 lower critical dimension
- Expansion in d-2
- Strong coupling fixed point
- in d1, z3/2
- Kinetic phase transition for
- dgt2
- d4 upper critical dimension
Scaling law
DRG equation
18Weak noise approach
KPZ equation
Action
Cole-Hopf transformation to diffusive field w
Distribution
Hamiltonian
Phase space
Field equations of motion
19Pattern formation
Program
- Find localized solutions to static field
equations - Boost static solutions to moving growth modes
- Construc dynamical network of dynamical growth
modes
New parameters
Diffusion equation
Static field equations
Non linear Schrödinger equation
20Diffusion equation
Radial diffusion equation
Solutions for w, height h and slope u
21Non linear Schrödinger equation
Radial NLSE
Solutions for w, height h and slope u
22Galilei transformation
Galilei boost
Growth modes in 2D
Moving growth modes
23Dynamical network
24Growth in d1
25Dipole modes in 2D
Moving height mode
Moving slope mode
264-monopole height profile in 2D
27SUMMARY AND CONCLUSION
- Nonperturbative asymptotic weak noise approach
- Equivalent to the WKB approximation in QM
- Stochastic problem mapped to dynamical problem
- Stochastic equation replaced by dynamical
equations - Principle of least action operational in weak
noise limit - Canonical phase space representation
- Application of dynamical system theory
- Application to the KPZ equation - many body
formulation
28The End
29Bound state solution for the NLSE
Solution of radial NLSE by Runge-Kutta
(matlab) In d1
Bound states (numerical)
w_(r)
1D domain wall
In higher d bound state narrows, amplitude
increases In d4 bound state disappears!
r
30Upper critical dimension
General remarks
- Upper critical dimension usually considered in
scaling context - Mode coupling gives d4 above d4 maybe glassy,
complex behavior (Moore et al.) - DRG shows singular behavior in d4 (Wiese)
- Numerics inconclusive!
- Issue of upper critical dimension unclear and
controversial - In present context we interprete upper critical
dimension as dimension beyond which growth modes
cease to exist - Numerical computation of bound state shows
- d4
DRG phase diagram
31Proof by Derricks theorem
- NLSE from variational
- principle yields Identity 1
- Scale transformation
- yields Identity 2
- Identity 2 involves
- dimension d
- Demanding finite norm of
- bound state implies dlt4
- Above d4 no bound state
- no growth
32Scaling in 1D
Dipole mode
Dynamics
Dispersion law
- Stochastic interpretration
- Spectrum of dipole mode
- Gapless dispersion
- Spectral representation
- Comparison with dynamical scaling ansatz
- Dispersion law exponent yields dynamical exponent
z
Spectral representation
Dynamical scaling
Dynamical scaling exponent
33Scaling in higher D
Dipole mode
Action
Distribution
Pair velocity
Displacement
Distance in time T
Hurst exponent
Dipole random walk
Hurst exponent vs d
Dynamic exponent