首页 /研究 /Concentration of Stochastic System Trajectories with Time-varying Contraction Conditions
OTHER

Concentration of Stochastic System Trajectories with Time-varying Contraction Conditions

Zishun Liu, Liqian Ma, Hongzhe Yu, Yongxin Chen

发表年份
2026
访问权限
开放获取

摘要

We establish two concentration inequalities for nonlinear stochastic system under time-varying contraction conditions. The key to our approach is an energy function termed Averaged Moment Generating Function (AMGF). By combining it with incremental stability analysis, we develop a concentration inequality that bounds the deviation between the stochastic system state and its deterministic counterpart. As this inequality is restricted to single time instance, we further combine AMGF with martingale-based methods to derive a concentration inequality that bounds the fluctuation of the entire stochastic trajectory. Additionally, by synthesizing the two results, we significantly improve the trajectory-level concentration inequality for strongly contractive systems. Given the probability level $1-δ$, the derived inequalities ensure an $\mO(\sqrt{\log(1/δ))}$ bound on the deviation of stochastic trajectories, which is tight under our assumptions. Our results are exemplified through a case study on stochastic safe control.

关键词

math.OCeess.SY

相关论文

查看 OTHER 分类全部论文