TY - JOUR
T1 - Dynamic output feedback stabilization for nonlinear systems based on standard neural network models
AU - Liu, Meiqin
PY - 2006/8
Y1 - 2006/8
N2 - A neural-model-based control design for some nonlinear systems is addressed. The design approach is to approximate the nonlinear systems with neural networks of which the activation functions satisfy the sector conditions. A novel neural network model termed standard neural network model (SNNM) is advanced for describing this class of approximating neural networks. Full-order dynamic output feedback control laws are then designed for the SNNMs with inputs and outputs to stabilize the closed-loop systems. The control design equations are shown to be a set of linear matrix inequalities (LMIs) which can be easily solved by various convex optimization algorithms to determine the control signals. It is shown that most neural-network-based nonlinear systems can be transformed into input-output SNNMs to be stabilization synthesized in a unified way. Finally, some application examples are presented to illustrate the control design procedures.
AB - A neural-model-based control design for some nonlinear systems is addressed. The design approach is to approximate the nonlinear systems with neural networks of which the activation functions satisfy the sector conditions. A novel neural network model termed standard neural network model (SNNM) is advanced for describing this class of approximating neural networks. Full-order dynamic output feedback control laws are then designed for the SNNMs with inputs and outputs to stabilize the closed-loop systems. The control design equations are shown to be a set of linear matrix inequalities (LMIs) which can be easily solved by various convex optimization algorithms to determine the control signals. It is shown that most neural-network-based nonlinear systems can be transformed into input-output SNNMs to be stabilization synthesized in a unified way. Finally, some application examples are presented to illustrate the control design procedures.
KW - Asymptotic stability
KW - Linear matrix inequality (LMI)
KW - Nonlinear system
KW - Output feedback
KW - Reconstruction error
KW - Standard neural network model (SNNM)
UR - https://www.scopus.com/pages/publications/33748656081
U2 - 10.1142/S0129065706000706
DO - 10.1142/S0129065706000706
M3 - 文章
C2 - 16972318
AN - SCOPUS:33748656081
SN - 0129-0657
VL - 16
SP - 305
EP - 317
JO - International Journal of Neural Systems
JF - International Journal of Neural Systems
IS - 4
ER -