• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    Dynamic Analysis of Some Impulsive Fractional-Order Neural Network with Mixed Delay

    2015-01-12 08:32:56LIUXianghu劉向虎LIUYanmin劉衍民LIYanfang李艷芳

    LIU Xiang-hu (劉向虎), LIU Yan-min (劉衍民), LI Yan-fang (李艷芳)

    School of Mathematics and Computer Science, Zunyi Normal College, Zunyi 563002, China

    Dynamic Analysis of Some Impulsive Fractional-Order Neural Network with Mixed Delay

    LIU Xiang-hu (劉向虎)*, LIU Yan-min (劉衍民), LI Yan-fang (李艷芳)

    SchoolofMathematicsandComputerScience,ZunyiNormalCollege,Zunyi563002,China

    In this paper, the authors study some impulsive fractional-order neural network with mixed delay. By the fractional integral and the definition of stability, the existence of solutions of the network is proved, and the sufficient conditions for stability of the system are presented. Some examples are given to illustrate the main results.

    fractional-orderneuralnetwork;mixeddelay;fixedpointtheorem

    Introduction

    In this paper, we study the impulsive fractional-order neural network with mixed delay

    Itiswellknownthatthedelayedandimpulsiveneuralnetworksexhibitingtherichandcolorfuldynamicalbehaviorsareimportantpartofthedelayedneuralsystems.Thedelayedandimpulsiveneuralnetworkscanexhibitsomecomplicateddynamicsandevenchaoticbehaviors.Duetotheirimportantandpotentialapplicationsinsignalprocessing,imageprocessing,artificialintelligenceaswellasoptimizingproblemsandsoon,thedynamicalissuesofdelayedandimpulsiveneuralnetworkshaveattractedworldwideattention,andmanyinterestingstabilitycriteriafortheequilibriumsandperiodicsolutionsofdelayedorimpulsiveneuralnetworkshavebeenderivedviaLyapunov-typefunctionorfunctionalapproaches.Forexample,Wanget al.[1]investigatedtheglobalasymptoticstabilityoftheequilibriumpointofaclassofmixedrecurrentneuralnetworkswithtimedelayintheleakagebyusingtheLyapunovfunctionalmethod,linearmatrixinequalityapproachandgeneralconvexcombinationtechniquetermunderimpulsiveperturbations.SebdaniandFarjami[2]consideredbifurcationsandchaosinadiscrete-time-delayedHopfieldneuralnetworkwithringstructuresanddifferentinternaldecays.AkhmetandYlmaz[3]gotacriteriafortheglobalasymptoticstabilityoftheimpulsiveHopfield-typeneuralnetworkswithpiecewiseconstantargumentsofgeneralizedtypebyusinglinearization.

    Forthelastdecades,fractionaldifferentialequations[4-11]havereceivedintensiveattentionbecausetheyprovideanexcellenttoolforthedescriptionofmemoryandhereditarypropertiesofvariousmaterialsandprocesses,suchasphysics,mechanics,chemistry,engineering, etc.Therefore,itmaybemoremeaningfultomodelbyfractional-orderderivativesthaninteger-orderones.Recently,fractionalcalculusisintroducedintoartificialneuralnetwork.Forexample,BoroomandandMenhaj[12]investigatedstabilityoffractional-orderHopfield-typeneuralnetworksthroughenergy-likefunctionanalysis,Chenet al.[13]studieduniformstabilityandtheexistence,uniquenessandstabilityofitsequilibriumpointofaclassoffractional-orderneuralnetworkswithconstantdelay.Theauthors[14-17]analyzedthestabilityofsomeotherneuralnetworkswithdelay.Weallknowthatthedelayisnotalwaysaconstant,itmaybechangedinthenetwork.Time-varyingdelaysanddistributeddelaysmayoccurinneuralprocessingandsignaltransmission,whichcancauseinstability,oscillations,therearefewpapersthatconsidertheproblemsforfractional-orderneuralnetworkwithmixeddelayandimpulse.Thus,itisworthinvestigatingsomeimpulsivefractional-orderneuralnetworkwithmixeddelay.

    Tothebestofourknowledge,thesystem(1)isstilluntreatedintheliteratureanditisthemotivationofthepresentwork.Therestofthispaperisorganizedasfollows:Insection1,somenotationsandpreparationsaregiven.Insection2,somemainresultsofsystem(1)areobtained.Atlast,someexamplesaregiventodemonstratethemainresults.

    1 Preliminaries

    In this section, we will give some definitions and preliminaries which will be used in the paper.

    Let’s recall some known definitions of fractional calculus. For more details, one can see Refs.[4-6].

    Definition 1 The integral

    is called Riemann-Liouville fractional integral of orderα, where Γ is the gamma function.

    For a functionf(t) given in the interval [0, ∞), the expression

    wheren=[α]+1, [α] denotes the integer part of numberα, and it is called the Riemann-Liouville fractional derivative of orderα>0.

    Definition 2 Caputo’s derivative for a functionf: [0, ∞)→can be written as

    where [α] denotes the integer part of real numberα.

    Theorem 1 According to Ref.[18] (Lemma 2.6), one can get that ifu(t)∈PC1(J,X), then

    Proof Ift∈[0,t1], then

    Ift∈(tk,tk+1],k≥1, then

    with the help of the substitutions=z(t-τ)+τ,

    The proof is completed.

    Let us recollect the definition of stability which can be found in Ref. [13] and will be used in our main results.

    2 Existence and Uniqueness of Solution

    In this section, we will investigate the existence and uniqueness of solution for impulsive fractional-order neural network with mixed delay. Without loss of generality, lett∈(tk,tk+1], 1≤k≤m-1.

    For the sake of convenience, the authors adopt the following notations and assumptions.

    H(1): forj=1, 2, …,n, the functionsfj,gj,hj,Ik:X→Xsatisfy as follows: there exist Lipschitz constantsLfj>0,Lgj>0,Lhj>0, andLjk>0 such that

    H(2): the delay kernel functionK(·)=diag(k1(·),k2(·), …,kn(·)) satisfies

    H(3):cj,aij,bi j,di jandLfj,Lgj,Lhj,Ljksatisfy the following conditions:

    (ii)Cmax=max{cj},Cmin=min{cj};

    Proof Consider the system (1), we will study the solvability and stability of it.

    (1) Solvability

    By Theorem 1, it is shown that the system (1) is equivalent to the following integral equation

    (2)

    wecancalculatethat

    (2)Stability

    Assumethatx(t)=(x1(t),x2(t), …,xn(t))Tandy(t)=(y1(t),y2(t), …,yn(t))Tare the two solutions of system (1) with the different initial conditionxi(η)=φi(η)∈C((-∞, 0],),φi(0)=0,yi(η)=φi(η)∈C((-∞, 0],),φi(0)=0,i∈N. We have

    According to Definition 2 and the initial functionφi(0)=0 ifn=1, 0

    Then

    (0≤η1≤t)

    (-∞<η≤0)

    (3)

    From Formula (3), one can get

    which implies that

    3 Some Examples

    In this section, according to the impulsive fractional-order neural network (1), some examples are given to illustrate the main results.

    Fig.1 The image of function in t=100

    Fig.2 The image of function in t=1000

    Fig.3 The image of function in t=40

    Fig.4 The image of function in t=4000

    4 Conclusions

    In this paper, by the fractional integral, the authors changed the derivative equation to integral one, for the convergence of sequences and the definition of stability, the existence of solutions of the network has been proved, the sufficient conditions for stability of the system have been presented. The authors also gave two examples and designed the relevant experimental procedures, after some experiments, the results have been illustrated. The design of impulsive item is difficult. The finite item is proved to be feasible, but how the infinite one or the variable one, which can be our future work.

    [1] Wang Y, Zheng C D, Feng E M. Stability Analysis of Mixed Recurrent Neural Networks with Time Delay in the Leakage Term under Impulsive Perturbations [J].Neurocomputing, 2013, 119(1): 454-461.

    [2] Sebdani R M, Farjami S. Bifurcations and Chaos in a Discrete-Time-Delayed Hopfield Neural Network with Ring Structures and Different Internal Decays [J].Neurocomputing, 2013, 99(1): 154-162.

    [3] Akhmet M U, Ylmaz E. Impulsive Hopfield-Type Neural Network System with Piecewise Constant Argument [J].NonlinearAnalysis-RealWorldApplications, 2010, 11(4): 2584-2593.

    [4] Miller K S, Ross B. An Introduction to the Fractional Calculus and Differential Equations[M]. New York: John Wiley, 1993.

    [5] Podlubny I. Fractional Differential Equations[M]. San Diego: Academic Press, 1999.

    [6] Kilbas A A. Srivastava H M, Trujillo J J. Theory and Applications of Fractional Differential Equations[M]. Amsterdam, North-Holland Mathematics Studies, Elsevier Science B V, 2006.

    [7] Wang J R, Fekan M, Zhou Y. Relaxed Controls for Nonlinear Fractional Impulsive Evolution Equations [J].JournalofOptimizationTheoryandApplications, 2013, 156(1): 13-32.

    [8] Wang J R, Zhou Y, Medved M. On the Solvability and Optimal Controls of Fractional Integrodifferential Evolution Systems with Infinite Delay [J].JournalofOptimizationTheoryandApplications, 2012, 152(1): 31-50.

    [9] Yang X J. Wavelets Method for Solving Systems of Nonlinear Singular Fractional Volterra Integro-Differential Equations [J].CommunicationsinNonlinearScienceandNumericalSimulation, 2014, 19(1): 37-48.

    [10] Yang X J. Advanced Local Fractional Calculus and Its Applications[M]. New York: World Science, 2012.

    [11] Yang X J, Baleanu D. Fractal Heat Conduction Problem Solved by Local Fractional Variation Iteration Method [J].ThermalScience, 2013, 17(2): 625-628.

    [12] Boroomand A, Menhaj M. Fractional-Order Hopfield Neural Networks [J].LectureNotesinComputerScience, 2009, 5506(1): 883-890.

    [13] Chen L P, Chai Y, Wu R C,etal. Dynamic Analysis of a Class of Fractional-Order Neural Networks with Delay [J].Neurocomputing, 2013, 111(2): 190-194.

    [14] Li X D, Rakkiyappan R. Impulsive Controller Design for Exponential Synchronization of Chaotic Neural Networks with Mixed Delays [J].CommunicationsinNonlinearScienceandNumericalSimulation, 2013, 18(6): 1515-1523.

    [15] Delavari H, Baleanu D, Sadati J. Stability Analysis of Caputo Fractional-Order Nonlinear Systems Revisited [J].NonlinearDynamics, 2012, 67(4): 2433-2439.

    [16] Lakshmanan S, Park J H, Lee T,etal. Stability Criteria for BAM Neural Networks with Leakage Delays and Probabilistic Time-Varying Delays [J].AppliedMathematicsandComputation, 2013, 219(17): 9408-9423.

    [17] Chen H B. New Delay-Dependent Stability Criteria of Runcertain Stochastic Neural Networks with Discrete Interval and Distributed Delays [J].Neurocomputing, 2013, 101(1): 1-9.

    [18] Liu Z H, Li X W. Existence and Uniqueness of Solutions for the Nonlinear Impulsive Fractional Differential Equations [J].CommunicationsinNonlinearScienceandNumericalSimulation, 2012, 18(6): 1362-1373.

    Foundation items: National Natural Science Foundation of China (No.71461027); Research Fund for the Doctoral Program of Zunyi Normal College, China (No.201419); Guizhou Science and Technology Mutual Fund, China (No. [2015]7002)

    O175.13 Document code: A

    1672-5220(2015)01-0086-05

    Received date: 2013-11-14

    * Correspondence should be addressed to LIU Xiang-hu, E-mail: liouxianghu04@126.com

    福清市| 平原县| 沅陵县| 东兰县| 龙州县| 鹰潭市| 宁波市| 琼海市| 九台市| 驻马店市| 射阳县| 南投市| 襄樊市| 伊宁市| 台中县| 内江市| 苏尼特右旗| 陈巴尔虎旗| 青浦区| 石城县| 象山县| 石阡县| 和静县| 饶平县| 礼泉县| 虎林市| 汨罗市| 高州市| 鄂托克旗| 扶余县| 宾川县| 泰兴市| 竹溪县| 南开区| 广东省| 鹤岗市| 古浪县| 南投县| 如东县| 景洪市| 准格尔旗|