Title of article :
Ergodicity for SDEs and approximations: locally Lipschitz vector fields and degenerate noise
Author/Authors :
Mattingly، نويسنده , , J.C. and Stuart، نويسنده , , A.M. and Higham، نويسنده , , D.J.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
The ergodic properties of SDEs, and various time discretizations for SDEs, are studied. The ergodicity of SDEs is established by using techniques from the theory of Markov chains on general state spaces, such as that expounded by Meyn–Tweedie. Application of these Markov chain results leads to straightforward proofs of geometric ergodicity for a variety of SDEs, including problems with degenerate noise and for problems with locally Lipschitz vector fields. Applications where this theory can be usefully applied include damped-driven Hamiltonian problems (the Langevin equation), the Lorenz equation with degenerate noise and gradient systems.
me Markov chain theory is then used to study time-discrete approximations of these SDEs. The two primary ingredients for ergodicity are a minorization condition and a Lyapunov condition. It is shown that the minorization condition is robust under approximation. For globally Lipschitz vector fields this is also true of the Lyapunov condition. However in the locally Lipschitz case the Lyapunov condition fails for explicit methods such as Euler–Maruyama; for pathwise approximations it is, in general, only inherited by specially constructed implicit discretizations. Examples of such discretization based on backward Euler methods are given, and approximation of the Langevin equation studied in some detail.
Keywords :
stochastic differential equations , Langevin equation , Monotone , Dissipative and gradient systems , additive noise , Time-discretization , Geometric ergodicity , Hypoelliptic and degenerate diffusions
Journal title :
Stochastic Processes and their Applications
Journal title :
Stochastic Processes and their Applications