International Journal of Modern Nonlinear Theory and Application
Vol.06 No.01(2017), Article ID:73372,10 pages
10.4236/ijmnta.2017.61001
Feedback Chaotic Synchronization with Disturbances
Mingjun Wang, Wanbo Yu, Jing Zhao
School of Information Engineering, Dalian University, Dalian, China

Copyright © 2017 by authors and Scientific Research Publishing Inc.
This work is licensed under the Creative Commons Attribution International License (CC BY 4.0).
http://creativecommons.org/licenses/by/4.0/



Received: September 20, 2016; Accepted: January 8, 2017; Published: January 11, 2017
ABSTRACT
Based on Lyapunov stability theorem, a method is proposed for feedback syn- chronization with parameters perturbation and external disturbances. It is proved theoretically that if the perturbation and disturbances are bounded, the synchronization error can be ensured to approach to and stay within the pre-specified bound which can be arbitrarily small. Some typical chaotic systems with different types of nonlinearity, such as Lorenz system and the original Chua’s circuit, are used for detailed description. The simulation results show the feasibility of the method.
Keywords:
Lyapunov Stability Theorem, Feedback Synchronization, Parameters Perturbation, External Disturbances, Robustness

1. Introduction
In 1990, Pecora and Carroll presented the conception of “chaotic synchronization” and introduced a method to synchronize two identical chaotic systems with different initial conditions [1] [2] . Since chaos control and synchronization have great potential applications in many areas such as information science, medicine, biology and engineering, they have received a great deal of attention. Numerous researches have been done theoretically and experimentally [3] [4] [5] . Muradi and Kapitaniak expanded Corroll and Pecora’s work, presented a single unidirectional coupled synchronization scheme [6] [7] . Celka achieved chaos synchronization by using the time-delay feedback method [8] . Agiza et al. synchronized Rössler and Chen systems via active control method [9] and Impulsive control [10] . Guo et al. proposed a simple adaptive-feedback controller for chaos synchronization [11] . Agrawal et al. realized the synchronization of fractional order chaotic systems using active control method [12] . Norelys et al. presented the adaptive synchronization of fractional Lorenz systems using a reduced number of control signals and parameters [13] . Kajbaf et al. used sliding mode controller to obtain chaotic systems [14] . Wang et al. proposed a new feedback synchronization criterion based on the largest Lyapunov exponent [15] . However, most synchronization criterions were obtained under ideal circumstances. If parameters perturbation and external disturbance exist, this kind of criterions will take no effect. According to this practical problem, some solutions have been presented. For examples, Jiang et al. proposed a LMI criterion [16] for chaotic feedback synchronization. Although the simulations showed that it is robust to a random noise with zero mean, but no rigorous mathematical proof was provided and we can’t determine if their method is effective for other kinds of noise. In Ref. [17] , parameters perturbation was involved in their scheme. The theoretical proof and numerical simulations were given in their work, but external disturbance didn’t receive attention, which made their method unila- teral.
Above all, these methods are effective, but still lack generality or robustness. In this paper, we propose a practical synchronization scheme for chaotic synchronization with parameters perturbation and external disturbance. Rigorous mathematical proof is provided, and simulation results show the feasibility and robustness of our scheme.
2. Theory and Method
In the following scheme, a universal robust synchronization method is proposed. In the method, synchronization will be achieved with bounded parameter disturbances and noise.
Suppose a class of ideal chaotic systems as

where
is the linear part,
is the nonlinear part, then the system can be described as
(1)
where
and
are the parameters perturbation,
is the external disturbance. Choose system (1) as the drive system, the relevant response system can be described as
(2)
where
,
and
are the relevant disturbances in the response system. We choose
(n is the dimension of the chaotic system). Let the error vector
, then the error is
(3)
Set a pre-defined bound
for the synchronization error, suppose
, choose suitable
to ensure



Choose the following Lyapunov function

According to Equation (3), the derivative of 










If

we can obtain

That is to say, when the error is not within the bound

3. Numerical Simulations
Lorenz system and the original Chua’s circuit have different types of nonlinearity. Next we will adopt the two systems for detailed description.
3.1. Taking Lorenz System as Example
Lorenz system [18] is described as

In the paper choose



Choose the following Lorenz system with parameters perturbation and external disturbances

as drive system, then the relevant response system is

In system (10) and system (11), 





Then



Hence

Figure 1. The projections of Lorenz system’s attractor.
where

Choose Lyapunov function

We have

Substitute Equation (14) into Equation (17), obtain
If

is satisfied, we will obtain


When the parameters perturbation and external disturbances are small, we can consider the variables of system (10) and system (11) are bounded as shown in Figure 1. Suppose the upper bounds of these disturbances and perturbation are 0.5, choose

is satisfied, Equation (18) will be always true.
In the simulation, suppose















3.2. Taking the Original Chua’s Circuit as Example
The original Chua’s circuit [19] is described as

where





Choose the following Chua’s circuit with parameters perturbation and external disturbances

Figure 2. The history of the error (within 0.1 sec.).
Figure 3. The projections of the original Chua’s circuit’s attractor.
As drive system, where 

where






Then



when the parameters perturbation and external disturbances are small, we can consider the variables of system (21) and system (22) are bounded as shown in Figure 4. Next we will substitute 


Because
we have

Hence

where
Figure 4. The history of the error (within 0.5 sec.).

and
Choose Lyapunov function

We have

Substitute Equation (28) into Equation (31), obtain
If

is satisfied, we will obtain

Suppose the upper bounds of these disturbances and perturbation are 0.2, choose

is satisfied, Equation (32) will be always true.
In the above simulation, let

















4. Conclusion
In this paper, a practical scheme is proposed for feedback synchronization with parameters perturbation and external disturbances. Lorenz system and the original Chua’s circuit are used for detailed description. The simulation results show the feasibility of the method. According to Ref. [15] , if all the feedback coefficients are larger than the largest Lyapunov exponent, two identical systems will be synchronized under ideal circumstance. In the paper, our scheme proved that high feedback coefficients will ensure more robust synchronization theoretically. The practical feedback should be bounded in a proper limit, so we have to control the error within a proper bound to obtain suitable feedback. The feedback will be smaller when the error is smaller. It’s not hard for us to find a chance when the error between the drive system and the response system is small enough.
Acknowledgements
The work was supported by Natural Science Foundation of Liaoning Province (No. 201602034).
Cite this paper
Wang, M.J., Yu, W.B. and Zhao, J. (2017) Feedback Chaotic Synchronization with Disturbances. International Journal of Modern Nonlinear Theo- ry and Application, 6, 1-10. http://dx.doi.org/10.4236/ijmnta.2017.61001
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