English

The optimizing mode classification stabilization of sampled stochastic jump systems via an improved hill-climbing algorithm based on Q-learning

Optimization and Control 2024-07-09 v2 Systems and Control Systems and Control Statistics Theory Statistics Theory

Abstract

This paper addresses the stabilization problem of stochastic jump systems (SJSs) closed by a generally sampled controller. Because of the controller's switching and state both sampled, it is challenging to study its stabilization. A new stabilizing method deeply depending on the mode classifications is proposed to deal with the above sampling situation, whose quantity is equal to a Stirling number of the second kind. For the sake of finding the best stabilization effect among all the classifications, a convex optimization problem is developed, whose globally solution is proved to be existent and can be computed by an augmented Lagrangian function. More importantly, in order to further reduce the computation complexity but retaining a better performance as much as possible, a novelly improved hill-climbing algorithm is established by applying the Q-learning technique to provide an optimal attenuation coefficient. A numerical example is offered so as to verify the effectiveness and superiority of the methods proposed in this study.

Keywords

Cite

@article{arxiv.2402.17539,
  title  = {The optimizing mode classification stabilization of sampled stochastic jump systems via an improved hill-climbing algorithm based on Q-learning},
  author = {Guoliang Wang},
  journal= {arXiv preprint arXiv:2402.17539},
  year   = {2024}
}

Comments

I want to withdraw it, because I find there are some important errors, but I cannot correct at the current moment

R2 v1 2026-06-28T15:01:59.570Z