Abstract:
The authors investigate the absolute exponential stability (AEST) of neural networks with a general class of partially Lipschitz continuous (defined in Section II) and mo...Show MoreMetadata
Abstract:
The authors investigate the absolute exponential stability (AEST) of neural networks with a general class of partially Lipschitz continuous (defined in Section II) and monotone increasing activation functions. The main obtained result is that if the interconnection matrix T of the network system satisfies that -T is an H-matrix with nonnegative diagonal elements, then the neural network system is absolutely exponentially stable (AEST); i.e., that the network system is globally exponentially stable (GES) for any activation functions in the above class, any constant input vectors and any other network parameters. The obtained AEST result extends the existing ones of absolute stability (ABST) of neural networks with special classes of activation functions in the literature.
Published in: IEEE Transactions on Circuits and Systems I: Fundamental Theory and Applications ( Volume: 47, Issue: 8, August 2000)
DOI: 10.1109/81.873882
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Activation Function ,
- Stable Network ,
- Exponential Stability ,
- Absolute Stability ,
- Stability Of Neural Networks ,
- Class Of Activation Functions ,
- Network Parameters ,
- Network System ,
- Diagonal Elements ,
- Lipschitz Continuous ,
- Non-negative Elements ,
- Artificial Neural Network ,
- Positive Matrix ,
- Ordinary Differential Equations ,
- Equilibrium Point ,
- Positive Definite Matrix ,
- Definite Matrix ,
- Vector Function ,
- Positive Diagonal Matrix ,
- Existence Of Equilibrium ,
- Equilibrium Of System ,
- Global Stability ,
- Degree Theory ,
- Unique Equilibrium ,
- Comparison Matrix ,
- Real Matrices ,
- Comparison Principle ,
- Sigmoid Activation Function
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Activation Function ,
- Stable Network ,
- Exponential Stability ,
- Absolute Stability ,
- Stability Of Neural Networks ,
- Class Of Activation Functions ,
- Network Parameters ,
- Network System ,
- Diagonal Elements ,
- Lipschitz Continuous ,
- Non-negative Elements ,
- Artificial Neural Network ,
- Positive Matrix ,
- Ordinary Differential Equations ,
- Equilibrium Point ,
- Positive Definite Matrix ,
- Definite Matrix ,
- Vector Function ,
- Positive Diagonal Matrix ,
- Existence Of Equilibrium ,
- Equilibrium Of System ,
- Global Stability ,
- Degree Theory ,
- Unique Equilibrium ,
- Comparison Matrix ,
- Real Matrices ,
- Comparison Principle ,
- Sigmoid Activation Function