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Stochastic Differential Equations Langevin equations Fokker Planck equations Equilibrium distributions correlation functions Purely dissipative Langevin.

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Presentation on theme: "Stochastic Differential Equations Langevin equations Fokker Planck equations Equilibrium distributions correlation functions Purely dissipative Langevin."— Presentation transcript:

1 Stochastic Differential Equations Langevin equations Fokker Planck equations Equilibrium distributions correlation functions Purely dissipative Langevin equation Simple example Generalised stochastic Markov processes Discretized Langevin equations

2 Simplest form of Langevin equation Consider only Gaussian white noise Related to Markov processes Ω characterises width of noise Alternative definition via 1 and 2 point correlation functions (Wick’s theorem):

3 Probability distribution Given value of q at time t=0, q(t 0 )=q 0 1. Brackets denote average over noise 2. Vector q is argument of P. No relation to function q(t)

4 Fokker Planck equation

5 Identity

6 Application

7 Formally integrate Langevin equation q i only depends on times t>t’. Causality dictates we integrate only over range t’ – t. But we require only limit t=t’ which is ill- defined  Problem of Langevin equation  d /dt well defined 2 is not  Circumvent by discretizing time or ‘smearing out delta function in the noise function  Use symmetry of η(t) with respect to time to obtain θ(0)  1/2

8 Fokker Planck Equation Taking account of initial condition q(t 0 )=q 0, this is identical to Schrödinger equation for matrix elements of, H (generally non-Hermitean) Hamiltonian Formal relation between stochastic differential equations and Euclidean quantum mechanics Averaging over noise yields same results as QM using FP Hamiltonian

9 Dissipative Langevin equation Introduce Transform F-P equation into:

10 Hamiltonian Evolution operator in imaginary time

11 Generalised Markov Process NB: Ambiguity in choosing the particular time for x in the second term on the RHS. Ito chooses t at the beginning of the time step, x I =x(t); Stratonovich chooses x S =x(t+ε/2) Resolve by working with the discrete Langevin system

12 Ito & Stratonovich

13 Discrete Langevin Equation Average over noise v is at time t; average over anterior times is performed by integration over q(t). Noise, v(t) and q(t) are uncorrelated, as consequence of Langevin equ. The q(t) distribution is P(q,t) and noise distribution is:

14 Fokker Planck 1

15 Fokker Planck Equation 2 Stationary solution:

16 Interpretation


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