999精品在线视频,手机成人午夜在线视频,久久不卡国产精品无码,中日无码在线观看,成人av手机在线观看,日韩精品亚洲一区中文字幕,亚洲av无码人妻,四虎国产在线观看 ?

Robust Stability of a Class of Fractional Order Hopfield Neural Networks

2015-11-18 10:11:44XiaoLeiLiuMingJiuGaiCuiLingMaandXiaoYanLiu

Xiao-Lei Liu, Ming-Jiu Gai, Cui-Ling Ma, and Xiao-Yan Liu

Robust Stability of a Class of Fractional Order Hopfield Neural Networks

Xiao-Lei Liu, Ming-Jiu Gai, Cui-Ling Ma, and Xiao-Yan Liu

—As the theory of the fractional order differential equation becomes mature gradually, the fractional order neural networks become a new hotspot. The robust stability of a class of fractional order Hopfield neural network with the Caputo derivative is investigated in this paper. The sufficient conditions to guarantee the robust stability of the fractional order Hopfield neural networks are derived by making use of the property of the Mittag-Leffler function, comparison theorem for the fractional order system, and method of the Laplace integral transform. Furthermore, a numerical simulation example is given to illustrate the correctness and effectiveness of our results.

Index Terms—Fractional order neural networks,Mittag-Leffler function, robust stability.

1. Introduction

In 1982, J. Hopfield presented the Hopfield neural networks:

whereiR,iC, and,ijT denote the resistance, capacitance, and conductance, respectively;denotes the activation function which is yielded by the amplifier;iI denotes the external inputs. Henceforth, the Hopfield neural network has been increasingly investigated, and extended to the delayed Hopfield neural networks[1], the Hopfield neural networks with a discontinuous activation function[2]-[3], and so on. In recent years, the fractional order neural networks become a hotspot, as the theory of the fractional order differential equation gradually maturing[4]-[5].

In 2009, by changing the capacitor into a kind of generalized capacitor, Arefeh Boroomand and Mohammad B. Menhaj[6]presented the fractional order Hopfield neural networks, as follows:

The rest of this paper is organized as follows. In Section 2, some necessary definitions and lemmas are presented. In Section 3, we study the robust stability for a class of fractional order Hopfield neural networks and give some sufficient conditions. One example and corresponding numerical simulation are used to illustrate the validity and feasibility of the results in Section 4. And conclusions are drawn in Section 5.

2. Preliminaries

There are several definitions of the fractional derivative of order α, which is the extended concept of integer order derivative. The commonly used definitions are Grunwald-Letnikov, Riemann-Liouville, and Caputo definitions. In this section, we will recall the definition of Caputo fractional derivative and the several important lemmas.

Definition 1. The Caputo fractional derivative of order α+∈? of a function ()x t is defined as

where+? denotes the set of all positive real numbers,is the mth derivative ofin the usual sense and ? is the set of all natural numbers, andis the gamma function, i.e.,

Definition 2. The Mittag-Leffler functionand the two parameter Mittag-Leffler functionare defined as

The Laplace integral transforms of the Caputo fractional derivative of orderand the Mittag-Leffler function are calculated as

Consider the Cauchy problem of the following fractional differential equation:

Definition 3. The constant x*is an equilibrium point of (5), if and only iffor any.

where μ is a positive real number satisfying, and spec()A denotes the eigenvalues of matrix A, arg(?) is the principal argument of a complex number, anddenotes the spectrum norm of the matrix.

Lemma 2[10]. (Gronwall-Bellman inequality) If

where ()x t, ()h t, and ()k t are continuous on0[,)t T,and ()0k t> , then ()x t satisfies

3. Robust Stability of Fractional Order Hopfield Neural Network

Consider the following fractional order Hopfield neural network:

and its disturbing system

denotes the activation function of the jth neuron, wheredenotes the constant connection weight of the jth neuron on the ith neuron;represents the rate with which the ith neuron will reset its potential to the resting state when the ith neuron is disconnected from the network;,iI denotes external inputs andn? is the n-dimensional vector space; ΔC and ΔT denote the disturbing functions which are variable with t in the system (10).

By using (11), the system (10) is translated into

In brief, we neglect the symbol ‘~’, so the system (10)can be expressed as

Obviously, 0=x is the equilibrium point of the system (13). Therefore, to prove the robust stability of the equilibrium point of the system (9), i.e., the asymptotic stability of the equilibrium point of the system (10), is equivalent to prove the asymptotic stability of the zero solution of the system.

Theorem 1.

(H2) If ()G x is Lipschitz-continuous in x, and, where the vector norm is the Euclidean norm which is consistent with the spectrum norm of matrices, then 0=x is a asymptotic stable equilibrium point of the system (13).

Proof: Consider the auxiliary system as follows:

Obviously, 0=x is the equilibrium point of the system (14). We first prove that it is an asymptotic stable equilibrium point.

Taking the Laplace transform on (14), we have

By using (17) and (18), we get

From Lemma 2, we get

Then

It can be written by using matrices as

4. Illustrative Examples

In the system (13), let

Fig. 1. Phase plot of the fractional order Hopfield neural networks:(a)plane, (b)plane, and (c)plane.

Then the system (13) satisfies the condition of Theorem 1, therefore 0=x is an asymptotic stable equilibrium point as shown in Fig. 1. From the figure,we can find that ΔC and ΔT indeed change the solution of the system (13), but when,, and according to (H1) and (H2), the affection of them is finite. And finally 0=x is still asymptotic stable.

5. Conclusions

In this paper, the robust stability of fractional order Hopfield neural networks was studied when 0 < α< 1. Firstly, a fractional order auxiliary systems was constructed, and by using the method of the integral transform, it was translated into an integral equation. And then by making use of the property of the Mittag-Leffler function and Gronwall-Bellman inequality, the integral equation was investigated. Finally,the sufficient conditions of robust stability for the fractional order Hopfield neural networks were gotten by the compare theorem of fractional order systems. At last,the correctness of the conclusion was verified by the emulating example.

[1] H.-G. Zhang, Synthetic Analysis and Research of Dynamical Specificity for the Recursive Delayed Neural Networks,Beijing: Science Publishing Company, 2008.

[2] J.-F. Wang, L.-H. Huang, and Z.-Y. Guo, “Dynamical behavior of delayed Hopfield neural networks with discontinuous activations,” Applied Mathematical Modelling,vol. 33, no. 4, pp. 1793-1802, 2009.

[3] L.-H. Huang, J.-F. Wang, and X.-N. Zhou, “Existence and global asymptotic stability of periodic for Hopfield neural networks with discontinuous activations,” Nonlinear Analysis: Real World Applications, vol. 10, no. 3, pp. 1651-1661, 2009.

[4] L.-P. Chen, Y. Chai, R.-C. Wu, T.-D. Ma, and H.-Z. Zhai,“Dynamic analysis of a class of fractional-order neural networks with delay,” Neurocomputing, vol. 111, pp. 190-194, Jul. 2013.

[5] K. Sayevand A. Golbabaib, and A. Yildirimc, “Analysis of differential equations of fractional order,” Applied Mathematical Modelling, vol. 36, no. 9, pp. 4356-4364,2012.

[6] A. Boroomand and M. B. Menhaj, “Fractional-order Hopfield neural networks,” Lecture Notes in Computer Science, vol. 5506, no. 1, pp. 883-890, 2009.

[7] K. Diethelm and N. J. Ford, “Analysis of fractional differential equations,” Journal of Mathematical Analysis and Applications, vol. 265, no. 2, pp. 229-248, 2002.

[8] S.-Q. Zhang, “The existence of a positive solution for a nonlinear fractional differential equation,” Journal of Mathematical Analysis and Applications, vol. 252, no. 2, pp. 804-812, 2000.

[9] X.-J. Wen, Z.-M. Wu, and J.-G. Lu,. “Stability analysis of a class of nonlinear fractional-order systems,” IEEE Trans. on Circuits and System II, vol. 55, no. 11, pp. 1178-1182, 2008.

[10] C. Corduneanu, Principles of Differential and Integral Equations, Boston: AMS Chelsea Publishing, 1977.

[11] A. A. Kilbas, H .M. Srivastava, and J. J. Trujillo, Theory and Applications of Fractional Differential Equations,Amsterdam: Elsevier, 2006.

[12] H. Delavari, D. Baleanu, and J. Sadati, “Stability analysis of Caputo fractional-order nonlinear systems revisited,”Nonlinear Dynamics, vol. 67, no. 4, pp. 2433-2439, 2011.

Xiao-Lei Liu was born in Shandong Province, China in 1983. He received the B.S. degree in 2005 and the M.S. degree in 2008 from Qingdao University. Currently, he is working as a lecturer with Naval Aeronautical Engineering Institute. His research interests include fractional order dynamic systems and neural networks.

Ming-Jiu Gai was born in Shandong Province,China in 1964. He received his Ph.D. degree in 2001 from Naval Aeronautical Engineering Institute, Yantai, China. Now, he works as a professor with Naval Aeronautical Engineering Institute. Prof. Gai has published 3 books and over 40 journal papers. His current research interests include basic theories of nonlinear systems.

Cui-Ling Ma was born in Shandong Province, China in 1981. She received the B.S. degree in 2004 and the M.S. degree in 2007,both from the Lanzhou University. Currently,she is working as a lecturer with Naval Aeronautical Engineering Institute. Her research interests include fuzzy mathematics and complex networks.

Xiao-Yan Liu was born in Shandong Province, China in 1983. She received the B.S. and M.S. degrees from the University of Electronic Science and Technology of China in 2005 and 2008, respectively. Currently, she is working as a lecturer with Naval Aeronautical Engineering Institute. Her research interests include reliability theory and complex networks.

Manuscript received September 24, 2014; revised January 8, 2015. This work was supported by the Natural Science Foundation of Shandong Province under Grant No. ZR2014AM006.

X.-L. Liu, C.-L. Ma, and X.-Y. Liu are with the Institute of System Science and Mathematics, Naval Aeronautical and Astronautical University, Yantai 264001, China (e-mail: lxlhaitao1000@163.com;malingzwh@126.com; xiaoyanliu83@163.com).

M.-J. Gai is with Institute of System Science and Mathematics, Naval Aeronautical and Astronautical University, Yantai 264001, China(Corresponding author e-mail: gaimingjiu@sina.com)

Digital Object Identifier: 10.3969/j.issn.1674-862X.2015.02.012


登錄APP查看全文

主站蜘蛛池模板: 久久福利网| 国产成人调教在线视频| 午夜限制老子影院888| 免费看一级毛片波多结衣| 四虎在线观看视频高清无码| 曰韩人妻一区二区三区| 国产午夜福利亚洲第一| 2021国产精品自产拍在线观看| 国产对白刺激真实精品91| 国产成人一级| 日本免费一级视频| 亚洲欧美日韩中文字幕在线一区| 欧美一区精品| 真人免费一级毛片一区二区 | 中文纯内无码H| 国产成人艳妇AA视频在线| 国产探花在线视频| 亚洲av日韩综合一区尤物| 午夜精品一区二区蜜桃| 福利国产微拍广场一区视频在线 | 精品丝袜美腿国产一区| 青青青国产精品国产精品美女| 伊人激情综合网| 欧美一区二区人人喊爽| 一本大道东京热无码av| 国产免费黄| 9999在线视频| 在线播放国产99re| 日韩视频福利| P尤物久久99国产综合精品| 五月婷婷丁香色| 国内精自视频品线一二区| 亚洲激情99| 国产最爽的乱婬视频国语对白| 国产精品第一区| 黄色不卡视频| 国产网站免费观看| 19国产精品麻豆免费观看| 四虎综合网| 一区二区影院| 无码精品国产dvd在线观看9久| 强奷白丝美女在线观看| 一本综合久久| 成人久久精品一区二区三区| 国产成人欧美| 久久一级电影| 国产精品3p视频| 妇女自拍偷自拍亚洲精品| 一级毛片在线播放| 日本精品影院| 久久99精品久久久久久不卡| 成色7777精品在线| 久久久久免费精品国产| 国产区免费精品视频| 又爽又大又黄a级毛片在线视频| 成AV人片一区二区三区久久| 亚洲视频一区| 亚洲欧美一区在线| 亚洲中文字幕久久精品无码一区| 亚洲娇小与黑人巨大交| 国产人人乐人人爱| 欧洲精品视频在线观看| 亚洲天堂伊人| 99手机在线视频| 欧美α片免费观看| 国产区免费| 欧美不卡在线视频| 第一页亚洲| 亚洲不卡网| 永久免费无码日韩视频| 日韩精品一区二区深田咏美| 五月激激激综合网色播免费| 国产真实乱人视频| 国产v精品成人免费视频71pao | 亚洲精品成人片在线观看| 中文无码精品A∨在线观看不卡 | 国产激情影院| 1024国产在线| 国产99免费视频| 国产自产视频一区二区三区| 亚洲精品波多野结衣| 五月激情综合网|