Standard representation and stability analysis of dynamic artificial neural networks: A unified approach

초록

A framework and stability conditions are presented for the analysis of stability of three different classes of dynamic artificial neural networks: (1) neural state space models, (2) global input-output models, and (3) dynamic recurrent neural networks. The models are transformed into a standard nonlinear operator form for which linear matrix inequality-based stability analysis is applied. Theory and numerical examples are used to draw connections and make comparisons to stability conditions reported in the literature for dynamic artificial neural networks.

제목
Standard representation and stability analysis of dynamic artificial neural networks: A unified approach
저자
KWANGKI KIM
학회명
Computer-Aided Control System Design (CACSD), 2011 IEEE International Symposium on