† Corresponding author. E-mail:
Project supported by the National Natural Science Foundation of China (Grant No. 61304064), the Scientific Research Fund of Hunan Provincial Education Department, China (Grant Nos. 15B067 and 16C0475), and a Discovering Grant from Australian Research Council.
This paper is concerned with the synchronization of delayed neural networks via sampled-data control. A new technique, namely, the free-matrix-based time-dependent discontinuous Lyapunov functional approach, is adopted in constructing the Lyapunov functional, which takes advantage of the sampling characteristic of sawtooth input delay. Based on this discontinuous Lyapunov functional, some less conservative synchronization criteria are established to ensure that the slave system is synchronous with the master system. The desired sampled-data controller can be obtained through the use of the linear matrix inequality (LMI) technique. Finally, two numerical examples are provided to demonstrate the effectiveness and the improvements of the proposed methods.
Since the master-slave concept was proposed for the synchronization of coupled chaotic systems in Ref. [1], a variety of alternative schemes have been proposed for ensuring the synchronization of such systems.[2–6] Neural networks have received increasing attention as they have been successfully applied in many areas such as signal processing, pattern recognition, associative memories, and fixed-point computations. Various issues about neural networks have been investigated and many important results have been obtained.[7–19] As a special class of complex networks, delayed neural networks (DNNs) have also been found to exhibit complicated dynamics and chaotic behaviors, such as being extremely sensitive to variations of the initial conditions, having bounded trajectories in phase space, and so on. Therefore, many approaches have been developed for the synchronization of chaotic neural networks, such as time-delay feedback control, impulsive control, and sampled-data control (see Refs. [20–24] and the references therein).
In Ref. [25], the problem of synchronization was investigated for stochastic neural networks with time delay. Based on the Lyapunov functional approach, some sufficient conditions were derived to ensure the synchronization of the slaver system with the master system. Since the conditions proposed in Ref. [25] are delay-independent, they are rather conservative. The problem of delay-dependent
Generally, networked control systems (NCSs) can be modeled as sampled-data systems under variable sampling with an additive network-induced delay.[34,35] Thus, sampled-data control in the presence of a constant input delay has been an important research field. However, the input delay approach neglects information concerning the actual sampling pattern, which leads to some conservative results. In Ref. [36], a time-dependent Lyapunov functional approach was proposed to improve the input delay approach. The advantage of the time-dependent Lyapunov functional approach lies in the fact that it considers the sawtooth characteristics of the time-varying delay induced by the sample holder. In Ref. [37], a new two-sided looped-function approach was proposed for stability analysis of sampled-data systems. In Ref. [38], the sampled-data feedback control was investigated for the synchronization of neural networks with discrete and distributed delays under the framework of an input delay approach. However, the signal transmission delay has not been taken into account. Recently, the sampled-data control in the presence of a constant input delay was proposed for the synchronization of neural networks with time-varying delay in Ref. [39], and some sufficient conditions were derived based on a Wirtinger inequality-based discontinuous Lyapunov functional.
In this paper, we revisit the problem of master-slave synchronization of neural networks with time-varying delay. By adopting a free-matrix-based time-dependent discontinuous Lyapunov functional approach,[42–44] less conservative synchronization conditions are derived, which take advantage of the sampling characteristic of sawtooth input delay. Two numerical examples are provided to demonstrate the effectiveness of the proposed results and their improvement over existing ones.
Consider a master system, which is a neural network defined as follows:
By defining an error signal as
Suppose that there is a constant transmission delay, η, when the updating signal transmitted from the sampler to the controller, and the updating instant time of the zero-order-hold (ZOH) is denoted by tk. The sampling intervals are assumed to satisfy
By substituting Eq. (
Our goal is to design a controller in the form of Eq. (
Before presenting our main results, we introduce the following lemmas.
In this section, the problem of synchronization of the master system (
Now, we present the following main results.
Then, the master system (
According to Lemma 3, we get from Eq. (
For
Similarly, it follows from Lemmas 2 and 3, respectively, for
Replacing Eq. (
From the error system (
On the other hand, we get from Eq. (
Similarly, for any diagonal matrix
Thus, it follows from Eqs. (
To show the advantage of discontinuous Lyapunov functional (
In this section, we provide two numerical examples to verify the effectiveness of the proposed results.
It can be verified that the time-varying delay satisfies Eq. (
![]() | Table 1.
Maximum sampling interval |
In case of the constant delay η = 0.01 and the largest sampling interval
When η = 0.04 and
In this paper, the synchronization problem has been investigated for delayed neural networks via sampled-data control. By employing a free-matrix-based time-dependent discontinuous Lyapunov functional, improved synchronization criteria have been derived. Two numerical examples have been provided to show that the proposed results are less conservative than existing ones.
[1] | |
[2] | |
[3] | |
[4] | |
[5] | |
[6] | |
[7] | |
[8] | |
[9] | |
[10] | |
[11] | |
[12] | |
[13] | |
[14] | |
[15] | |
[16] | |
[17] | |
[18] | |
[19] | |
[20] | |
[21] | |
[22] | |
[23] | |
[24] | |
[25] | |
[26] | |
[27] | |
[28] | |
[29] | |
[30] | |
[31] | |
[32] | |
[33] | |
[34] | |
[35] | |
[36] | |
[37] | |
[38] | |
[39] | |
[40] | |
[41] | |
[42] | |
[43] | |
[44] |