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Research ArticleOn Designing Feedback Controllers for Master-SlaveSynchronization of Memristor-Based Chua’s Circuits
Ke Ding 1,2
1School of Information Technology, Jiangxi University of Finance and Economics, Nanchang 330013, China2Jiangxi E-commerce High Level Engineering Technology Research Centre, Jiangxi University of Finance and Economics,Nanchang 330013, China
Correspondence should be addressed to Ke Ding; keding@jxufe.edu.cn
Received 26 April 2018; Accepted 22 July 2018; Published 16 October 2018
Academic Editor: Viet-Thanh Pham
Copyright © 2018 Ke Ding. This is an open access article distributed under the Creative Commons Attribution License, whichpermits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
This paper is concerned with designing feedback controllers for master-slave synchronization of two chaotic memristor-basedChua’s circuits. The memductance function of memristor-based Chua’s circuits is a bounded function with a bounded derivativewhich is more generalized than those piecewise constant-valued functions or quadratic functions in some existing papers. Themain contributions are that one master-slave synchronization criterion is established for two chaotic memristor-based Chua’scircuits, and the feedback controller gain is easily obtained by solving a set of linear matrix inequalities. One numerical exampleis given to illustrate the effectiveness of the design method.
1. Introduction
Since the memristor, a missing circuit element, was firstintroduced by Chua in 1971 [1] and was realized in 2008[2], memristor-based Chua’s circuits have received someattention, see, for example, [3–5].
When some equipment of circuits in oscillators werereplaced by memristors, complex and dynamical propertieswere revealed in the circuits. Chaotic attractors have beenstudied in memristor-based Chua’s circuits in which thememductance functions of memristors were characterizedby a piecewise constant-valued function [3, 6, 7] or a qua-dratic function [4, 5, 8, 9]. It should be pointed out thatthe memductance function of memristor can be representedby a bounded function with a bounded derivative [2],which is more generalized than those piecewise constant-valued functions or quadratic functions in some existingpapers [3, 4]. However, to the best of author’s knowledge,there is no result available in the existing published literatureto study memristor-based Chua’s circuits with abovemen-tioned memductance function, which is the first motivationof this paper.
Chaotic synchronization and chaos control have receivedmuch attention due to its theoretical importance and practi-cal applications [10–33]. Due to the existence of memristors,the product of the memductance function and voltage cangive rise to chaotical behaviors in circuits. Most researchefforts [3–5, 7–9, 17–19] were made to chaotic behaviorsof memristor-based circuits, rather than master-slave syn-chronization and chaos control for two memristor-basedcircuits. Zhang et al. [6] conducted stability analysis for asingle circuit with a piecewise constant-valued memduc-tance function, but they did not consider the synchroniza-tion problem of two circuits. In [15, 16], synchronizationof memristor-based Chua’s circuits has been investigated,in which the memductance elements were piecewise linearfunctions. In addition, the memristor with a passive nonline-arity and a piecewise constant-valued memductance functionis essential to generate the high signal-to-noise ratio which isnot suitable for achieving the secure communication [5].Therefore, the memristor with nonlinear memductancefunction which is suitable for secure communication shouldbe worth studying. The memristor in which the memduc-tance function is a bounded function with a bounded
HindawiComplexityVolume 2018, Article ID 5431619, 8 pageshttps://doi.org/10.1155/2018/5431619
derivative can satisfy this criterion, but the mathematicalmodel of corresponding circuit is a set of nonlinear differen-tial equations as well as the corresponding error systemsderived by the master-slave scheme. Thus, how to derivemaster-slave synchronization criteria for two memristor-based Chua’s circuits in which the memductance functionis a bounded function with a bounded derivative and howto design a feedback controller matrix gain to achieve syn-chronization is the second motivation of this paper.
In this paper, we will deal with the problem of the con-troller design for master-slave synchronization of chaoticmemristor-based Chua’s circuits. The master-slave schemewill be constructed by using an error state feedback control.We will derive one synchronization criterion. Based on theobtained synchronization criterion, we will give the sufficientconditions on the existence of an error state feedback con-troller. Moreover, we will obtain the controller gain. We willalso use one numerical example to illustrate the effectivenessof the synchronization criterion and the design method.
Notation 1. ℝn denotes the n-dimensional Euclidean space.ℝm×n is the set of all m × n real matrices. For symmetricmatrices P and Q, the notation P >Q (respectively, P ≥Q)means that matrix P −Q is positive definite (respectively,positive semidefinite). λmax P and λmin P are the maxi-mum andminimum eigenvalues of the matrix P, respectively.
2. Memristor-Based Chua’s Circuits
The memristor in Chua’s circuits is a two-terminal element.The magnetic flux of memristor between the terminals is afunction of the electric charge which passes through thedevice [1]. A flux-controlled memristor can be characterizedby the incremental menductance function ω ϕ describingthe flux-dependent rate of change of charge [2], i.e., ω ϕ =dq ϕ /dϕ. Therefore, the voltage v t across and the cur-rent i t through the memristor can be described as i t =ω ϕ v t [3].
Figure 1 shows a smooth flux-controlled memristor-based Chua’s circuit, where v1 and v2 are the voltages acrosscapacitors C1 and C2, respectively; iL is the current throughthe inductances L; R is a linear resistor; the Chua’s diode isreplaced by a memristor. The mathematical model of the
Chua’s circuit with the memristor can be described as
dv1 tdt
=1C1
v2 t − v1 tR
−w ϕ t v1 t ,
dv2 tdt
=1C2
v1 t − v2 tR
− iL t ,
diL tdt
=1Lv2 t ,
dϕ tdt
= v1 t ,
1
with the initial condition v1 0 = v10 , v2 0 = v20 , iL 0 = iL0 ,ϕ 0 = ϕ0.
Let f · and g · : ℝ→ℝ be two differentiable functions.In this paper, we mainly focus on the following nonlinearity,i.e., q ϕ t = aϕ t + bg ϕ t , ω ϕ t = a + bf ϕ t , dgϕ /dϕ = f ϕ , and i t = a + bf ϕ t v t , where a and bare the parameters of electronic equipment. Besides f ϕ isdifferentiable, we assume that f ϕ is a bounded functionand df ϕ /dϕ is a bounded function where, i.e., there existtwo scales μf > 0 and μf ′ > 0 such that
f ϕ ≤ μf ,df ϕ
dϕ≤ μf ′, ∀ϕ ∈ℝ 2
Rescaling the parameters of the circuit as x1 t = v1 t ,x2 t = v2 t , x3 t = iL t , x4 t = ϕ t , τ = t/RC2, α = C2/C1, β = C2R/L, γ = C2R, ν1 = aR, and ν2 = bR, we obtainthe following dimensionless form for system (1):
dx1 τ
dτ= α x2 τ − 1 + v1 x1 τ − v2x1 τ f x4 τ ,
dx2 τ
dτ= x1 τ − x2 τ − Rx3 τ ,
dx3 τ
dτ= βx2 τ ,
dx4 τ
dτ= γx1 τ ,
3
where the initial condition is x1 0 = v10 , x2 0 = v20 , x30 = iL0 , and x4 0 = ϕ0. Let x τ = x1 τ , x2 τ , x3 τ ,x4 τ T ∈ℝ4, and
A =
−α 1 + v1 α 0 0
1 −1 −R 0
0 β 0 0
γ 0 0 0
4
L
i
Li
2V 2C 1C
Flux-controlledmemristor
1V V
R
Figure 1: The memristor-based chaotic Chua’s circuit.
2 Complexity
Then, system (3) can be rewritten as
dx τ
dτ= Ax τ + φ x τ , 5
where φ x τ = ν3x1 τ f x4 τ and ν3 = −αν2.
Remark 1. In [3–5, 7–9, 17–19], dynamical behaviors of thesingle memristor-based Chua’s circuit have been studied. Inthis paper, the synchronization of two memristor-basedChua’s circuits is investigated.
Remark 2. In [6, 15, 16], the memductance elements ofmemristor-based Chua’s circuits were either piecewise lin-ear functions or piecewise constant-valued memductancefunctions. It is well known that the memristor with a passivenonlinearity or a piecewise constant-valued memductancefunction is easy to generate the high signal-to-noise ratiowhich is not suitable for achieving the secure communica-tion [5]. Thus, the memristor with nonlinear memductancefunction should be investigated. The memristor withbounded memductance functions and bounded derivativeswhich is suitable for secure communication can satisfy thiscriterion. Moreover, the mathematical model of corre-sponding circuit is easily to set up. Thus, it is worth study-ing master-slave synchronization for two memristor-basedChua’s circuits in which the memductance function is abounded function with a bounded derivative. It is alsoworth designing a feedback controller matrix gain toachieve synchronization.
3. Master-Slave Synchronization
Let z τ = z1 τ z2 τ z3 τ z4 τ T ∈ℝ4. We construct amaster-slave synchronization scheme for system (5).
ℳdx τ
dτ= Ax τ + φ x τ , 6
Sdy τ
dτ= Ay τ + φ y τ + u τ , 7
C u τ = K x τ − y τ , 8
with master system ℳ , slave system S , and controller C .Defining a signal e t = x t − y t = e1 τ e2 τ e3 τ e4
τ T ∈ℝ4 with ei t = xi t − yi t , i = 1, 2, 3, 4, we have theerror system
de τ
dτ= A − K e τ + φ e τ , 9
where
φ e τ = φ x τ − φ y τ 10
The initial values of (6) and (7) are x 0 = x1 0 , x20 , x3 0 , x4 0 T and y 0 = y1 0 , y2 0 , y3 0 , y4 0 T,respectively. Thus,
e 0 = e1 0 , e2 0 , e3 0 , e4 0 T, 11
with ei 0 = xi 0 − yi 0 , i = 1, 2, 3, 4It follows from (10) and the differential mean value theo-
rem that
φ e τ = φ x τ − φ y τ
= v3 x1 τ f x4 τ − y1 τ f y4 τ12
where ξ ∈ min x4 τ , y4 τ , max x4 τ , y4 τ . Noticethat the error system (9) can be rewritten as
de τ
dτ= A + B τ − K e τ , 13
where
B τ =
b11 τ 0 0 b14 τ
0 0 0 0
0 0 0 0
0 0 0 0
, 14
with
b11 τ = v3 f y4 τ , b14 τ
= v3x1 τdf ς
dς s=ξ,ς
∈ min x4 τ , y4 τ , max x4 τ , y4 τ
15
Choosing the proper parameters of system (3), there existsome chaotic attractors which indicate that for any initialcondition x0 within the domain of system (3), there arebounds μi x0 > 0, i = 1, 2, 3, 4, such that
xi t, x0 ≤ μi x0 , ∀t > 0, i = 1, 2, 3, 4 16
From inequalities (2) and (16), we know that
b11 τ ≤ ν3 μf , b14 τ ≤ ν3 μ1 x0 μf ′ 17
Therefore, the error system (13) can be modeled as apolytopic system.
3Complexity
Let
B1 =
v3 μf 0 0 v3 μ1 x0 μf ′
0 0 0 0
0 0 0 0
0 0 0 0
,
B2 =
− v3 μf 0 0 v3 μ1 x0 μf ′
0 0 0 0
0 0 0 0
0 0 0 0
,
B3 =
v3 μf 0 0 − v3 μ1 x0 μf ′
0 0 0 0
0 0 0 0
0 0 0 0
,
B4 =
− v3 μf 0 0 − v3 μ1 x0 μf ′
0 0 0 0
0 0 0 0
0 0 0 0
18
It is clear that Bi i = 1, 2, 3, 4 are the vertices of B τ .This paper intends to derive synchronization criteria for
two memristor-based Chua’s circuits and to design the con-troller (8), i.e., to find the controller gain K , such that the sys-tem described by (13) is asymptotically stable, which meansthat the system described by (6), (7), and (8) synchronizes.
4. Controller Design
4.1. A Synchronization Criterion. This subsection aims toderive a synchronization criterion for two memristor-basedChua’s circuits. Choose the quadratic Lyapunov function.
V τ, e τ = eT τ Pe τ , 19
where P ∈ℝ4 × 4, P = PT > 0.Applying Lyapunov’s direct method, we obtain the fol-
lowing result.
Proposition 1. The error system described by (11) and (13)is asymptotically stable if there exists a matrix P = PT > 0such that
P A + Bi − K + A + Bi − K TP < 0, i = 1, 2, 3, 4 20
Proof 1. Taking the derivative of V τ, e τ with respect toτ along the trajectory of (13) yields
dV τ, e τ
dτ= eT τ P A + B τ − K e τ
+ eT τ A + B τ − K TPe τ
21
A sufficient condition for the asymptotic stability of sys-tem (13) is that there exists a matrix P = PT > 0 such that
P A + B τ − K + A + B τ − K TP < 0 22
It is easy to see that LMI (22) can be ensured by LMIs(20). This ends the proof.
If the menductance function is a linear piecewiseconstant-valued function, i.e.,
w ϕ t = κ1, forϕ t ≥ 1,
w ϕ t = κ2, forϕ t ≥ 1,23
we obtain the following dimensionless form for system (1):
dx τ
dτ= Aix τ , i = 1, 2, 24
by rescaling the parameters of the circuit as (3), where
A1 =
θ1 α 0 0
1 −1 R 0
0 β 0 0
γ 0 0 0
,
A2 =
θ2 α 0 0
1 −1 R 0
0 β 0 0
γ 0 0 0
,
25
θ1 = −α 1 + κ1R , θ2 = −α 1 + κ2R , and the initial condi-tion is x1 0 = v10 , x2 0 = v20 , x3 0 = iL0 , and x4 0 = ϕ0.
The switched rule is if x4 ≥ 1, then dx τ /dτ = A1x τ ; ifx4 < 1, then dx τ /dτ = A2x τ . The chaotical behaviors ofmodel (24) have been studied in [3, 6, 7].
We construct a master-slave synchronization scheme forsystem (24).
ℳdx τ
dτ= Aix τ , i = 1, 2,
Sdy τ
dτ= Aiy τ + ui t , i = 1, 2,
C ui τ = Ki x τ − y τ , i = 1, 2,
26
with master system ℳ , slave system S , and controller C .Defining an error signal e τ = x τ − y τ , we obtain theerror system.
de τ
dτ= Bie τ , i = 1, 2, 3, 4, 27
where B1 = B2 = 0, B3 = A1 − A2, B4 = −B3, C1 = C4 = −A1 +K1, and C2 = C3 = −A2 + K2. The initial value is the same as
4 Complexity
that defined in (11). The switched rule is if x4 ≥ 1, y4 ≥ 1, thende τ /dτ = B1x τ − C1e τ ; if x4 < 1, y4 < 1, then de τ /dτ = B2x τ − C2e τ ; if x4 ≥ 1, y4 < 1, then de τ /dτ = B3xτ − C3e τ ; if x4 < 1, y4 ≥ 1, then de τ /dτ = B4x τ − C4e τ .
We choose the quadratic Lyapunov function.
V τ, e τ = eT τ e τ 28
Taking the derivative of (28) with respect to τ alongthe trajectory of (27), we can derive the following stateestate which can be stated as the error system describedby (27) and (11) converges exponentially to the followingball M with a convergence rate r/2, where M = e ∈ℝ4 ∣e 2 ≤ q/r with q =max q1, q2, q3, q4 , qi = λmax ρTBT
i Bi
ρ , ρT = μ1 x0 , μ2 x0 , μ3 x0 , μ4 x0 , r =min r1, r2, r3,r4 , and ri = λmin CT
i + Ci − I4 , i = 1, 2, 3, 4.
4.2. The Controller Design. In this subsection, we will designthe controller (8) based on the synchronization criterionderived in Section 4.1.
Applying Proposition 1, we establish the following result.
Proposition 2. The error system described by (11) and (13) is
asymptotically stable if there exists a matrix P = PT > 0 and a
matrix Y of appropriate dimensions such that
A + Bi P + P A + BiT − Y − YT < 0, i = 1, 2, 3, 4 29
Moreover, the feedback controller gain matrix is given by
K = YP−1.
Proof 2. Pre- and postmultiplying both sides of (20) withP−1 gives
A + Bi P−1 + P−1 A + Bi
T − KP−1 − P−1K < 0, i = 1, 2, 3, 430
Setting P = P−1 and Y = KP−1 yields (29).
5. Simulation Results
In this section, in order to illustrate the effectiveness of thederived results, we consider a memristor-based Chua’s cir-cuit (1) in which the parameters are chosen as R = 2 × 103Ω, C1 = 6 8 × 10−9nF, C2 = 6 8 × 10−8nF, and L = 1 8 × 10−2mH. Thus, we have α = 10, β = 7 5 × 10−3, γ = 1 36 × 10−4.
For the initial value (0.11, 0.11, 0, 0) of (6), we giveFigures 2 and 3 for system (3) with f x4 τ = arctan x4 τand f x4 τ = sin2x4 τ to illustrate the chaotic attractorsin the x4 − x1 plate. We can also obtain the values for μ1x0 , μf , μf ′, b11, and b14, respectively. If f x4 τ = arctanx4 τ , then a = −1 3550 × 10−4, b = 6 0930 × 10−4, μf = 1,μf ′ = π/2 μ1 x0 = 400, b11 = nu3 arctan y4 t , and b14 = v3x1 τ /1 + ξ2. If f x4 τ = sin2x4 τ , then a = −5 9900 ×
−90 −80 −70 −60 −50 −40 −30 −20 −10 0 10−400
−300
−200
−100
0
100
200
300
400
Stat
e var
iabl
e x1(�휏
)
State variable x4(�휏)
Plot of x4(�휏) vs. x1(�휏)
Figure 2: The chaotic attractors of system (3) with f x4 τ =arctan x4 τ .
−1.5 −1 −0.5 0 0.5 1−6
−4
−2
0
2
4
6St
ate v
aria
ble x
1(�휏
)
State variable x4(�휏)
Plot of x4(�휏) vs. x1(�휏)
Figure 3: The chaotic attractors of system (3) with f x4 τ = sin2x4 τ .
Table 1: The feedback gain matrix derived by Proposition 2.
f x4 τ K
arctan x4 τ
−10 10 0 691750
10 0 −1000 0
0 −1000 0 0
−40 0 0 9360
sin2x4 τ
0 0 0 6959000
0 0 −1000 0
0 −1000 0 0
−1620 0 0 200
5Complexity
10−4, b = 6 0930 × 10−4, μf = 1, μf ′ = 1μ1 x0 = 6, b11 = ν3sin2y4 τ , and b14 = ν3x1 τ sin 2ξ .
We choose the initial condition of master system (6) asx10 , x20 , x30 , x40 = 0 11, 0 11, 0, 0 and the initial conditionof slave system (7) as y10 , y20 , y30 , y40 = 0 12, 0 12, 0 01,0 01 . From Proposition 2, we obtain the feedback gainmatrix K for f x4 τ = arctan x4 τ and f x4 τ = sin2x4τ , respectively, which are listed in Table 1.
The simulation results for master, slave, and error sys-tems for f x4 τ = arctan x4 τ and f x4 τ = sin2x4 τand the feedback controller gain derived by Proposition 2are illustrated in Figures 4 and 5, from which one can clearlysee that the master and slave systems are synchronized,which means that the design method is effective.
6. Conclusions and Future Works
We have addressed the problem of the controller design formaster-slave synchronization of memristor-based Chua’scircuits and constructed a master-slave scheme by using
an error state feedback control. We have derived a master-slave synchronization criterion and provided the sufficientconditions on the existence of an error feedback controller.Moreover, we have obtained the error state feedback control-ler gain by solving a set of LMIs. The effectiveness of the syn-chronization criterion and the design method has beenillustrated through one numerical example. It should bepointed out that we only consider the state feedback controlfor synchronization of memristor-based Chua’s circuits inthis paper. To design the time-delayed controller is our futureresearch focus.
Data Availability
The data used to support the findings of this study areincluded within the article.
Conflicts of Interest
The author declares that there is no conflict of interestregarding the publication of this paper.
−400−200
0200
400
State variable x1(�휏)
−100
−50
0
50
100
150
Stat
e var
iabl
e x2(�휏
)
−100−50
050
State variable x4(�휏)
(a)
−100−50
050
−500
0
500−100
−50
0
50
100
150
State variable y1(�휏)
Stat
e var
iabl
e y2(�휏
)
State variable y4(�휏)
(b)
Figure 4: (a) Simulation result for master system with f x4 τ = arctan x4 τ and K derived by Proposition 2. (b) Simulation result for slavesystem with f x4 τ = arctan x4 τ and K derived by Proposition 2.
−1.5 −1−0.5
0 0.51
−10−5
05
10−2
−1
0
1
2
State variable x1(�휏)
Stat
e var
iabl
e x2(�휏
)
State variable x4(�휏)
(a)
−1.5 −1−0.5
0 0.51
−10−5
05
10−2
−1
0
1
2
State variable y1(�휏)
Stat
e var
iabl
e y2(�휏
)
State variable y4(�휏)
(b)
Figure 5: (a) Simulation result for master system with f x4 τ = sin2x4 τ and K derived by Proposition 2. (b) Simulation result for slavesystem with f x4 τ = sin2x4 τ and K derived by Proposition 2.
6 Complexity
Acknowledgments
This work is partially supported by the National NaturalScience Foundation of China under Grant 61561023, thekey project of Youth Science Fund of Jiangxi Chinaunder Grant 20133ACB21009, the project of Scienceand Technology Fund of Jiangxi Education Departmentof China under Grant GJJ160429, and the project ofJiangxi E-Commerce High Level Engineering TechnologyResearch Centre.
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8 Complexity
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