TY - JOUR
T1 - Dynamical behaviors of a large class of general delayed neural networks
AU - Chen, Tianping
AU - Lu, Wenlian
AU - Chen, Guanrong
PY - 2005/4
Y1 - 2005/4
N2 - Research of delayed neural networks with varying self-inhibitions, inter-connection weights, and inputs is an important issue. In the real world, self-inhibitions, interconnection weights, and inputs should vary as time varies. In this letter, we discuss a large class of delayed neural networks with periodic inhibitions, interconnection weights, and inputs. We prove that if the activation functions are of Lipschitz type and some set of inequalities, for example, the set of inequalities 3.1 in theorem 1, is satisfied, the delayed system has a unique periodic solution, and any solution will converge to this periodic solution. We also prove that if either set of inequalities 3.20 in theorem 2 or 3.23 in theorem 3 is satisfied, then the system is exponentially stable globally. This class of delayed dynamical systems provides a general framework for many delayed dynamical systems. As special cases, it includes delayed Hopfield neural networks and cellular neural networks as well as distributed delayed neural networks with periodic self-inhibitions, interconnection weights, and inputs. Moreover, the entire discussion applies to delayed systems with constant self-inhibitions, interconnection weights, and inputs. © 2005 Massachusetts Institute of Technology.
AB - Research of delayed neural networks with varying self-inhibitions, inter-connection weights, and inputs is an important issue. In the real world, self-inhibitions, interconnection weights, and inputs should vary as time varies. In this letter, we discuss a large class of delayed neural networks with periodic inhibitions, interconnection weights, and inputs. We prove that if the activation functions are of Lipschitz type and some set of inequalities, for example, the set of inequalities 3.1 in theorem 1, is satisfied, the delayed system has a unique periodic solution, and any solution will converge to this periodic solution. We also prove that if either set of inequalities 3.20 in theorem 2 or 3.23 in theorem 3 is satisfied, then the system is exponentially stable globally. This class of delayed dynamical systems provides a general framework for many delayed dynamical systems. As special cases, it includes delayed Hopfield neural networks and cellular neural networks as well as distributed delayed neural networks with periodic self-inhibitions, interconnection weights, and inputs. Moreover, the entire discussion applies to delayed systems with constant self-inhibitions, interconnection weights, and inputs. © 2005 Massachusetts Institute of Technology.
UR - http://www.scopus.com/inward/record.url?scp=17044430183&partnerID=8YFLogxK
UR - https://www.scopus.com/record/pubmetrics.uri?eid=2-s2.0-17044430183&origin=recordpage
U2 - 10.1162/0899766053429417
DO - 10.1162/0899766053429417
M3 - RGC 21 - Publication in refereed journal
SN - 0899-7667
VL - 17
SP - 949
EP - 968
JO - Neural Computation
JF - Neural Computation
IS - 4
ER -