Asymptotical Feedback Set Stabilization of Probabilistic Boolean Control Networks.
- Resource Type
- Article
- Authors
- Zhou, Rongpei; Guo, Yuqian; Wu, Yuhu; Gui, Weihua
- Source
- IEEE Transactions on Neural Networks & Learning Systems. Nov2020, Vol. 31 Issue 11, p4524-4537. 14p.
- Subject
- *PSYCHOLOGICAL feedback
*ALGORITHMS
*MATRIX converters
*SYNCHRONIZATION
- Language
- ISSN
- 2162-237X
In this article, we investigate the asymptotical feedback set stabilization in distribution of probabilistic Boolean control networks (PBCNs). We prove that a PBCN is asymptotically feedback stabilizable to a given subset if and only if (iff) it constitutes asymptotically feedback stabilizable to the largest control-invariant subset (LCIS) contained in this subset. We proposed an algorithm to calculate the LCIS contained in any given subset with the necessary and sufficient condition for asymptotical set stabilizability in terms of obtaining the reachability matrix. In addition, we propose a method to design stabilizing feedback based on a state-space partition. Finally, the results were applied to solve asymptotical feedback output tracking and asymptotical feedback synchronization of PBCNs. Examples were detailed to demonstrate the feasibility of the proposed method and results. [ABSTRACT FROM AUTHOR]