Authors
Yang Liu, Yanling Zheng, Jianquan Lu, Jinde Cao, Leszek Rutkowski
Publication date
2019/6/20
Journal
IEEE transactions on neural networks and learning systems
Volume
31
Issue
3
Pages
1022-1035
Publisher
IEEE
Description
This paper proposes a quaternion-valued one-layer recurrent neural network approach to resolve constrained convex function optimization problems with quaternion variables. Leveraging the novel generalized Hamilton-real (GHR) calculus, the quaternion gradient-based optimization techniques are proposed to derive the optimization algorithms in the quaternion field directly rather than the methods of decomposing the optimization problems into the complex domain or the real domain. Via chain rules and Lyapunov theorem, the rigorous analysis shows that the deliberately designed quaternion-valued one-layer recurrent neural network stabilizes the system dynamics while the states reach the feasible region in finite time and converges to the optimal solution of the considered constrained convex optimization problems finally. Numerical simulations verify the theoretical results.
Total citations
20192020202120222023202432625172210
Scholar articles
Y Liu, Y Zheng, J Lu, J Cao, L Rutkowski - IEEE transactions on neural networks and learning …, 2019