English

Generating stochastic trajectories with global dynamical constraints

Statistical Mechanics 2022-01-06 v2 Probability

Abstract

We propose a method to exactly generate Brownian paths xc(t)x_c(t) that are constrained to return to the origin at some future time tft_f, with a given fixed area Af=0tfdtxc(t)A_f = \int_0^{t_f}dt\, x_c(t) under their trajectory. We derive an exact effective Langevin equation with an effective force that accounts for the constraint. In addition, we develop the corresponding approach for discrete-time random walks, with arbitrary jump distributions including L\'evy flights, for which we obtain an effective jump distribution that encodes the constraint. Finally, we generalise our method to other types of dynamical constraints such as a fixed occupation time on the positive axis Tf=0tfdtΘ[xc(t)]T_f=\int_0^{t_f}dt\, \Theta\left[x_c(t)\right] or a fixed generalised quadratic area Af=0tfdtxc2(t)\mathcal{A}_f=\int_0^{t_f}dt \,x_c^2(t).

Keywords

Cite

@article{arxiv.2110.07573,
  title  = {Generating stochastic trajectories with global dynamical constraints},
  author = {Benjamin De Bruyne and Satya N. Majumdar and Henri Orland and Gregory Schehr},
  journal= {arXiv preprint arXiv:2110.07573},
  year   = {2022}
}

Comments

32 pages, 7 figures

R2 v1 2026-06-24T06:53:47.437Z