In this paper, we solve the mean-square exponential input-to-state stability problem for a class of stochastic delayed recurrent neural networks with time-varying coefficients. With the aid of stochastic analysis theory and a Lyapunov-Krasovskii functional, we derive a novel criterion that ensures the given system is mean-square exponentially input-to-state stable. Furthermore, the new criterion generalizes and improves some known results. Finally, two examples and their numerical simulations are provided to demonstrate the theoretical results
This paper studies the problem of exponential stability analysis for recurrent neural networks with ...
We present new conditions for asymptotic stability and exponential stability of a class of stochasti...
By using a technique of model transformation of the system, a new type of Lyapunov functional is int...
AbstractThe stability of a class of stochastic Recurrent Neural Networks with time-varying delays is...
Exponential stability in mean square of stochastic delay recurrent neural networks is investigated i...
We are interested in a class of stochastic fuzzy recurrent neural networks with multiproportional de...
This Letter concerns with the mean square exponential stability of uncertain stochastic delayed neur...
This paper is concerned with analyzing mean square exponential stability of stochastic delayed neura...
Abstract In this paper, we first consider the stability problem for a class of stochastic quaternion...
This brief investigates the problem of mean square exponential stability of uncertain stochastic del...
The exponential stability issue for a class of stochastic neural networks (SNNs) with Markovian jump...
Abstract By introducing some parameters perturbed by white noises, we propose a class of stochastic ...
In this paper, the exponential stability analysis problem is considered for a class of recurrent neu...
In this paper, the mean square exponential stabilization problem is in-vestigated for a class of sto...
This paper is concerned with the problem of mean-square exponential stability of uncertain neural ne...
This paper studies the problem of exponential stability analysis for recurrent neural networks with ...
We present new conditions for asymptotic stability and exponential stability of a class of stochasti...
By using a technique of model transformation of the system, a new type of Lyapunov functional is int...
AbstractThe stability of a class of stochastic Recurrent Neural Networks with time-varying delays is...
Exponential stability in mean square of stochastic delay recurrent neural networks is investigated i...
We are interested in a class of stochastic fuzzy recurrent neural networks with multiproportional de...
This Letter concerns with the mean square exponential stability of uncertain stochastic delayed neur...
This paper is concerned with analyzing mean square exponential stability of stochastic delayed neura...
Abstract In this paper, we first consider the stability problem for a class of stochastic quaternion...
This brief investigates the problem of mean square exponential stability of uncertain stochastic del...
The exponential stability issue for a class of stochastic neural networks (SNNs) with Markovian jump...
Abstract By introducing some parameters perturbed by white noises, we propose a class of stochastic ...
In this paper, the exponential stability analysis problem is considered for a class of recurrent neu...
In this paper, the mean square exponential stabilization problem is in-vestigated for a class of sto...
This paper is concerned with the problem of mean-square exponential stability of uncertain neural ne...
This paper studies the problem of exponential stability analysis for recurrent neural networks with ...
We present new conditions for asymptotic stability and exponential stability of a class of stochasti...
By using a technique of model transformation of the system, a new type of Lyapunov functional is int...