Literature DB >> 35630193

Asymptotic Synchronization of Memristive Cohen-Grossberg Neural Networks with Time-Varying Delays via Event-Triggered Control Scheme.

Wei Yao1, Fei Yu1, Jin Zhang1,2, Ling Zhou3.   

Abstract

This paper investigates the asymptotic synchronization of memristive Cohen-Grossberg neural networks (MCGNNs) with time-varying delays under event-triggered control (ETC). First, based on the designed feedback controller, some ETC conditions are provided. It is demonstrated that ETC can significantly reduce the update times of the controller and decrease the computing cost. Next, some sufficient conditions are derived to ensure the asymptotic synchronization of MCGNNs with time-varying delays under the ETC method. Finally, a numerical example is provided to verify the correctness and effectiveness of the obtained results.

Entities:  

Keywords:  asymptotic synchronization; event-triggered control; memristive Cohen-Grossberg neural network; time-varying delays

Year:  2022        PMID: 35630193      PMCID: PMC9147740          DOI: 10.3390/mi13050726

Source DB:  PubMed          Journal:  Micromachines (Basel)        ISSN: 2072-666X            Impact factor:   3.523


1. Introduction

In the past few decades, complex systems including neural networks (NNs) have been extensively studied due to their wide applications [1,2,3,4,5]. Based on the excellent characteristics of memristor [6,7,8], a variety of chaotic circuits and systems based on memristor are proposed. Memristive neural network (MNN), which simulates synaptic connection with memristor, has attracted much attention owing to its application in logic operation and image processing [9,10,11,12,13,14,15,16]. The Cohen-Grossberg neural network is a generalized neural network model, which can take famous neural networks and systems such as the Hopfield neural network and Lotka–Volterra system as its special cases [17,18,19]. In recent years, memristive Cohen-Grossberg neural network (MCGNN) and its dynamical characteristics have attracted increasing attention [20,21,22,23]. In [21], there exist exponentially stable equilibrium points in n-dimensional MCGNNs with piecewise linear activation functions via the fixed point theorem. Global exponential stability of delayed and perturbed MCGNNs was investigated in [22]. Paper [23] studied multistability of MCGNNs with mixed delays and acquired multiple almost periodic solutions. Synchronization as one of the most important dynamical characteristics has been researched extensively and many papers on synchronization of MCGNNs have been published [24,25,26,27,28]. In [24], Yang et al. investigated global exponential synchronization of MCGNNs with time-varying discrete delays and unbounded distributed delays. Wei et al. studied fixed-time synchronization of MCGNNs with impulsive effects [25]. Ren et al. investigated finite-time synchronization and quasi fixed-time synchronization of MCGNNs with reaction-diffusion term in [27,28], respectively. Achieving the synchronization of MCGNNs means that synchronization of multiple classes of neural networks can be acquired, thus being highly important for achieving the synchronization of MCGNNs. At present, network control schemes include the state-feedback control method and nonlinear control method, which have been widely used in many fields due to their advantages of reliability and high efficiency [29,30,31,32]. However, these network control schemes for MNN synchronization are based on continuous-time feedback controllers [29,30,31,32], thus they require high computing power. As an important sampling control scheme, event-triggered control (ETC) [33,34,35,36,37,38,39,40,41] can effectively reduce computing costs and communication resources on the basis of ensuring system performance by reducing controller update times. Therefore, ETC schemes for MNN synchronization have been extensively studied [33,34,35,36,37,38,39,40,41]. In [36], the stability of MNNs with communication delays was addressed via the event-triggered sampling control method. Using event-triggered impulsive control, quasi-synchronization of delayed MNNs was investigated [37]. In [38], static or dynamic ETC methods were designed to achieve synchronization of delayed MNNs. Some different static or dynamic ETC methods were provided to further realize the synchronization of inertial MNNs [39]. In [40], exponential mean-square stability of delayed discrete-time stochastic MNNs was achieved by an event-triggered H∞ state estimation. However, these ETC schemes were considered in the traditional MNN system [33,34,35,36,37,38,39,40,41]. In other words, the existing ETC methods cannot be directly used in the synchronization of MCGNNs which increases the difficulty of control and analysis on account of the amplification function of MCGNNs. To the best our knowledge, there is scarce literature regarding synchronization of MCGNN via ETC scheme. Inspired by the discussion above, this paper investigates the synchronization of MCGNNs with time-varying delays via ETC scheme for the first time. We summarize the main contributions as follows. This paper designs a state-feedback controller, and some ETC conditions were provided based on the state-feedback controller. Some sufficient conditions are presented to guarantee asymptotic synchronization of MCGNNs with time-varying delays under ETC condition. Furthermore, the MCGNNs under ETC schemes can effectively reduce the update times of controllers and decrease computing cost. The rest of the paper is organized as follows. In Section 2, MCGNNs with time-varying delays are introduced. Some sufficient conditions are obtained to achieve asymptotic synchronization of MCGNNs in Section 3. Section 4 presents a numerical simulation to verify the effectiveness of the obtained results. Finally, conclusions are provided in Section 5.

2. Preliminaries

Notations: For a given vector , . For a given matrix , . We consider memristive Cohen-Grossberg neural networks (MCGNNs) with time-varying delays as follows. where represents the state of the mth neuron; and are the amplification function and behaved function, respectively; is the activation function; denotes time-varying delay and satisfies , where is a positive constant; is external input; and denote memristive connection weights satisfying the following conditions where , , and are constants, is the switching jump. Set , , , , , , and . The following assumptions will be used in this paper. Amplification function Time-varying delay where θ is a positive constant. Activation function From Assumption 1, there exists the antiderivative of . Choose such an antiderivative which satisfies . Then . Using the derivative theorem for inverse function, the inverse function of is differentiable and , where . Set , then we can get , where . Substituting these equalities into system (1), we can obtain the MCGNN with time-varying delays as follows. For a given set , represents the closure of the convex hull for set . According to the theory of differential inclusion [42], it can be gained from (5) that or equivalently, by the measurable selection theorem in [42], there exist measurable functions , , such that Let system (1) as the drive MCGNNs, then the response system can be described as where is the controller. Furthermore, similar to the analysis of (5)–(7), we can obtain from (8) that where , , . Consider the initial conditions of systems (1) and (8) as and , respectively, where . Then, the initial conditions of systems (7) and (9) are and , respectively, where . Set errors , . It can be obtained from (7) and (9) that where , and . Moreover, the vector form of system (10) can be written as where , , , , , , , , , , . Set measured errors between system (1) and system (8) as , , . In the ETC strategy, the state-dependent threshold needs to be set. When the measured errors exceed the threshold, the control will be updated under a new triggering event. It is worth noting that , . Therefore, are discontinuous at . The schematic of ETC is shown in Figure 1.
Figure 1

The block diagram of ETC scheme.

Next, the definition of asymptotic synchronization of MCGNNs with time-varying delays is presented as follows. If then MCGNN systems (8) and (1) can achieve asymptotic synchronization, where

3. Synchronization of Memristive Cohen-Grossberg Neural Networks

In this section, we will discuss the asymptotic synchronization problem of the MCGNN systems. We consider the state-feedback controller as follows. where , ; is positive definite matrix; ; represents sign function; and is a release instant. Then, Then, the following Theorem 1 and corollaries 1–2 can be obtained on the basis of the state-feedback controller (13). MCGNNs systems (8) and (1) can be synchronized asymptotically under Assumptions 1–3 with the state-feedback controller (13) and the following ETC condition for and hold. Consider a Lyapunov functional as For , we can attain the upper right Dini-derivative of as Since and are monotonically increasing, that is to say and . Thus, it can be gained that and Thus, it can be obtained that and Then, we can get that It can be obtained that according to (22). Then, we have , that is to say , where , . Thus, the system (8) and system (1) can achieve asymptotic synchronization with the state-feedback controller (13) under the ETC condition (15) on the basis of Definition 1. The proof is finished. □ At present, the ETC scheme for synchronization of MNNs continues to be widely studied [ MCGNNs systems (8) and (1) can be synchronized asymptotically under Assumptions 1–3 with the state feedback controller (13) and the following ETC condition. for Consider a Lyapunov functional shown in (22). Furthermore, for , we can get the upper right Dini-derivative of as MCGNNs systems (8) and (1) can be synchronized asymptotically under Assumptions 1–3 with the state-feedback controller (13) and the following ETC condition for Consider a Lyapunov functional shown in (22). Furthermore, for , we can obtain the upper right Dini-derivative of as In recent years, many papers on synchronization of MCGNNs have emerged [

4. Numerical Simulations

In this section, we provide an example to verify the validity of the obtained results. Consider a drive MCGNN system as where , , ; memristive connection weights: Furthermore, the response system can be described as Then , for .; and for . Thus, we can set , , , , ; ; . Moreover, we can get   and , . Further, we can gain . Moreover, we choose , such that . Combining with and We can choose , , . Furthermore, the following relations can be obtained. and Thus, we can have the following ETC condition for , . From the conditions of Theorem 1, we can identify that the drive MCGNN system (33) and the response system (34) can achieve asymptotic synchronization under the ETC condition (39). Consider the initial conditions of systems (33) and (34) as and , respectively, , then the simulation results are shown in Figure 2, Figure 3, Figure 4, Figure 5, Figure 6, Figure 7, Figure 8 and Figure 9. As shown in Figure 2, Figure 3, Figure 8 and Figure 9, MCGNNs systems (33) and (34) can be synchronized asymptotically under the ETC condition (39). Sample error and measured error are shown in Figure 4 and Figure 5, respectively. When the measured error breaches the ETC condition, that is 1-Norm exceeds the threshold under the ETC condition (39), the event is triggered, as shown in Figure 6. From Figure 7, it can be found that the ETC scheme can effectively reduce the update times of the controller.
Figure 2

State trajectories of and with controller and ETC.

Figure 3

State trajectories of and with controller and ETC.

Figure 4

Sample errors and between systems (33) and (34) under ETC condition (39) with .

Figure 5

Measured errors and between systems (33) and (34) under ETC condition (39) with .

Figure 6

The relationship between 1 and Norm and the threshold under ETC condition (39) with .

Figure 7

Event-triggered instants under ETC condition (39) with .

Figure 8

Synchronization errors and between systems (33) and (34) under ETC condition (39) with .

Figure 9

Synchronization errors between systems (33) and (34) under ETC condition (39) with .

5. Conclusions

In this paper, a type of state-feedback controller and several ETC conditions are designed. Under ETC conditions and the state controller, we obtain some sufficient conditions to achieve the asymptotic synchronization of MCGNNs. The results show that MCGNNs under the ETC scheme can effectively reduce the update times of controllers and computing costs. Although there exist many papers on synchronization of MCGNNs [24,25,26,27,28] and network control schemes including ETC [43,44,45,46,47,48], there is no work yet that has employed the ETC scheme to achieve synchronization of MCGNNs, as far as we know. In this paper, asymptotic synchronization of MCGNNs is realized via ETC for the first time. Therefore, the obtained result can extend upon the existing results [24,25,26,27,28,43,44,45,46,47,48]. In future research, other types of MNN synchronization [49,50] via the ETC scheme will be considered to investigate.
  18 in total

1.  Multistability of memristive Cohen-Grossberg neural networks with non-monotonic piecewise linear activation functions and time-varying delays.

Authors:  Xiaobing Nie; Wei Xing Zheng; Jinde Cao
Journal:  Neural Netw       Date:  2015-07-28

2.  Multistability of Almost Periodic Solution for Memristive Cohen-Grossberg Neural Networks With Mixed Delays.

Authors:  Sitian Qin; Qiang Ma; Jiqiang Feng; Chen Xu
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2019-08-05       Impact factor: 10.451

3.  H synchronization of delayed neural networks via event-triggered dynamic output control.

Authors:  Yachun Yang; Zhengwen Tu; Liangwei Wang; Jinde Cao; Lei Shi; Wenhua Qian
Journal:  Neural Netw       Date:  2021-05-11

4.  Event-triggered impulsive control on quasi-synchronization of memristive neural networks with time-varying delays.

Authors:  Yufeng Zhou; Zhigang Zeng
Journal:  Neural Netw       Date:  2018-10-15

5.  Dynamical and Static Multisynchronization of Coupled Multistable Neural Networks via Impulsive Control.

Authors:  XiaoXiao Lv; Xiaodi Li; Jinde Cao; Matjaz Perc
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2018-04-19       Impact factor: 10.451

6.  Global exponential synchronization of multiple coupled inertial memristive neural networks with time-varying delay via nonlinear coupling.

Authors:  Zhenyuan Guo; Shuqing Gong; Shaofu Yang; Tingwen Huang
Journal:  Neural Netw       Date:  2018-09-05

7.  Synchronization of Switched Neural Networks With Communication Delays via the Event-Triggered Control.

Authors:  Shiping Wen; Zhigang Zeng; Michael Z Q Chen; Tingwen Huang
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2016-07-14       Impact factor: 10.451

8.  Event-Triggered State Estimation for Delayed Stochastic Memristive Neural Networks With Missing Measurements: The Discrete Time Case.

Authors:  Hongjian Liu; Zidong Wang; Bo Shen; Xiaohui Liu
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2017-09-01       Impact factor: 10.451

9.  Global exponential synchronization of inertial memristive neural networks with time-varying delay via nonlinear controller.

Authors:  Shuqing Gong; Shaofu Yang; Zhenyuan Guo; Tingwen Huang
Journal:  Neural Netw       Date:  2018-03-10

10.  Memristor-based cellular nonlinear/neural network: design, analysis, and applications.

Authors:  Shukai Duan; Xiaofang Hu; Zhekang Dong; Lidan Wang; Pinaki Mazumder
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2014-07-21       Impact factor: 10.451

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