Nonlinear H-infinity Control of Delayed Recurrent Neural Networks Influenced by Uncertain Noise
DOI: 449 Downloads 7963 Views
Author(s)
Abstract
This paper presents a theoretical design of how a nonlinear H-infinity optimal control is achieved for delayed recurrent neural networks with noise uncertainty. Our objective is to build globally stabilizing control laws to accomplish the input-to-state stability together with the optimality for delayed recurrent neural networks, and to attenuate noises to a predefined level with stability margins. The formulation of H-infinity control is developed by using Lyapunov technique and solving a Hamilton-Jacobi-Isaacs (HJI) equation indirectly. To illustrate the analytical results, three numerical examples are given to demonstrate the effectiveness of the proposed approach.
Keywords
Delayed recurrent neural networks, nonlinear H-infinity optimal control, noise attenuation, input-to-state stability, Lyapunov technique, Hamilton-Jacobi-Isaacs (HJI) equation.
Cite this paper
Ziqian Liu,
Nonlinear H-infinity Control of Delayed Recurrent Neural Networks Influenced by Uncertain Noise
, SCIREA Journal of Information Science and Systems Science.
Volume 1, Issue 1, October 2016 | PP. 1-24.
References
[ 1 ] | Z. Tu, J. Jian, K. Wang, Global exponential stability in Lagrange sense for recurrent neural networks with both time-varying delays and general activation functions via LMI approach, Nonlinear Analysis: Real World Applications. 12 (2011) 2174–2182. |
[ 2 ] | X. Li, X. Fu, P. Balasubramaniam, R. Rakkiyappan, Existence, uniqueness and stability analysis of recurrent neural networks with time delay in the leakage term under impulsive perturbations, Nonlinear Analysis: Real World Applications. 11 (2010) 4092–4108. |
[ 3 ] | J. Yu, K. Zhang, S. Fei, Exponential stability criteria for discrete-time recurrent neural networks with time-varying delay, Nonlinear Analysis: Real World Applications. 11 (2010) 207–216. |
[ 4 ] | T. Li, Q. Luo, C. Sun, B. Zhang, Exponential stability of recurrent neural networks with time-varying discrete and distributed delays, Nonlinear Analysis: Real World Applications. 10 (2009) 2581–2589. |
[ 5 ] | Y. Guo, New results on input-to-state convergence for recurrent neural networks with variable inputs, Nonlinear Analysis: Real World Applications. 9 (2008) 1558–1566. |
[ 6 ] | B. Liu, L. Huang, Positive almost periodic solutions for recurrent neural networks, Nonlinear Analysis: Real World Applications. 9 (2008) 830–841. |
[ 7 ] | X. Liao, Q. Luo, Z. Zeng, Y. Guo, Global exponential stability in Lagrange sense for recurrent neural networks with time delays, Nonlinear Analysis: Real World Applications. 9 (2008) 1535–1557. |
[ 8 ] | J. Liang, J. Cao, Global output convergence of recurrent neural networks with distributed delays, Nonlinear Analysis: Real World Applications. 8 (2007) 187–197. |
[ 9 ] | Q. Song, J. Cao, Z. Zhao, Periodic solutions and its exponential stability of reaction–diffusion recurrent neural networks with continuously distributed delays, Nonlinear Analysis: Real World Applications. 7 (2006) 65–80. |
[ 10 ] | M. S. Mahmoud, Y. Xia, Improved exponential stability analysis for delayed recurrent neural networks, Journal of the Franklin Institute. 348 (2011) 201–211. |
[ 11 ] | M. U. Akhmet, D. Arugaslan, E. Yilmaz, Stability analysis of recurrent neural networks with piecewise constant argument of generalized type, Neural Networks. 23 (2010) 805–811. |
[ 12 ] | L. Wang, R. Zhang, Z. Xu, J. Peng, Some characterizations of global exponential stability of a generic class of continuous-time recurrent neural networks, IEEE Transactions on Systems, Man, and Cybernetics – Part B: Cybernetics. 39 (2009) 763–772. |
[ 13 ] | H. Shao, Delay-dependent approaches to globally exponential stability for recurrent neural networks, IEEE Transactions on Circuits and Systems II: Express Briefs. 55 (2008) 591–595. |
[ 14 ] | H. Zhang, Z. Wang, D. Liu, Robust exponential stability of recurrent neural networks with multiple time-varying delays, IEEE Transactions on Circuits and Systems II: Express Briefs. 54 (2007) 730–734. |
[ 15 ] | S. Arik, Global asymptotic stability analysis of bidirectional associative memory neural networks with time delays, IEEE Transactions on Neural Networks. 16 (2005) 580–586. |
[ 16 ] | Z. Wang, Y. Liu, L. Yu, X. Liu, Exponential stability of delayed recurrent neural networks with Markovian jumping parameters, Physics Letters A. 356 (2006) 346–352. |
[ 17 ] | J. Cao, D. Huang, Y. Qu, Global robust stability of delayed recurrent neural networks, Chaos, Solitons and Fractals. 23 (2005) 221–229. |
[ 18 ] | V. Singh, A generalized LMI-based approach to the global asymptotic stability of delayed cellular neural networks, IEEE Transactions on Neural Networks. 15 (2004) 223–225. |
[ 19 ] | J. Lian, Z. Feng, P. Shi, Observer design for switched recurrent neural networks: an average dwell time approach, IEEE Transactions on Neural Networks. 22 (2011) 1547–1556. |
[ 20 ] | J. Lian, K. Zhang, Exponential stability analysis for switched Cohen-Grossberg neural networks with average dwell time, Nonlinear Dynamics. 63 (2011) 331–343. |
[ 21 ] | X Su, Z Li, Y Feng, L Wu, New global exponential stability criteria for interval delayed neural networks, Proceedings of the Institution of Mechanical Engineers - Part I: Journal of Systems and Control Engineering. 225 (2011) 125–136. |
[ 22 ] | X. Dong, Y. Zhao, Y. Xu, Z. Zhang, P. Shi, Design of PSO fuzzy neural network control for ball and plate system, International Journal of Innovative Computing, Information and Control. 7 (2011) 7091–7103. |
[ 23 ] | C. K. Ahn, M. K. Song, Filtering for time-delayed switched Hopfield neural networks, International Journal of Innovative Computing, Information and Control. 7 (2011) 1831–1843. |
[ 24 ] | I. Ahmad, A. Abdullah, A. Alghamdi, Investigating supervised neural networks to intrusion detection, ICIC Express Letters. 4 (2010) 2133–2138. |
[ 25 ] | Y. E. Shao, An integrated neural networks and SPC approach to identify the starting time of a process disturbance, ICIC Express Letters. 3 (2009) 319–324. |
[ 26 ] | R. Yang, Z. Zhang, P. Shi, Exponential stability on stochastic neural networks with discrete interval and distributed delays, IEEE Transactions on Neural Networks. 21 (2010) 169–175. |
[ 27 ] | L. Wan, Q. Zhou, Attractor and ultimate boundedness for stochastic cellular neural networks with delays, Nonlinear Analysis: Real World Applications. 12 (2011) 2561–2566. |
[ 28 ] | R. Sakthivel, R. Samidurai, S. M. Anthoni, Asymptotic stability of stochastic delayed recurrent neural networks with impulsive effects, Journal of Optimization Theory and Applications. 147 (2010) 583–596. |
[ 29 ] | Y. Lv, W. Lv, J. Sun, Convergence dynamics of stochastic reaction–diffusion recurrent neural networks with continuously distributed delays, Nonlinear Analysis: Real World Applications. 9 (2008) 1590–1606. |
[ 30 ] | Z. Liu, H. Schurz, N. Ansari, and Q. Wang, Theoretic design of differential minimax controllers for stochastic cellular neural networks, Neural Networks, 26 (2012) 110–117. |
[ 31 ] | S. K. Nguang, P. Shi, Fuzzy output feedback control design for nonlinear systems: an LMI approach, IEEE Transactions on Fuzzy Systems. 11 (2003) 331–340. |
[ 32 ] | S. K. Nguang, P. Shi, Nonlinear filtering of sampled data systems, Automatica. 36 (2000) 303–310. |
[ 33 ] | L. Wu, X. Su, P. Shi, Mixed approach to fault detection of discrete linear repetitive processes, Journal of the Franklin Institute. 348 (2011) 393–414. |
[ 34 ] | K. Ezal, Z. Pan, P. V. Kokotovic, Locally optimal and robust backstepping design, IEEE Transactions on Automatic Control. 45 (2000) 260–271. |
[ 35 ] | T. Basar, P. Bernhard, -Optimal Control and Related Minimax Design Problems: A Dynamic Game Approach, 2nd Edition, Birkhauser, Boston, MA, 1995. |
[ 36 ] | C. Lu, W. Shyr, K. Yao, C. Liao, C. Huang, Delay-dependent control for discrete-time uncertain recurrent neural networks with interval time-varying delay, International Journal of Innovative Computing, Information and Control. 5 (2009) 3483–3493. |
[ 37 ] | W. Yu, J. Cao, Robust control of uncertain stochastic recurrent neural networks with time-varying delay, Neural Processing Letters. 26 (2007) 101–119. |
[ 38 ] | S. Das, O. Olurotimi, Noisy recurrent neural networks: the continuous-time case, IEEE Transactions on Neural Networks. 9 (1998) 913–936. |
[ 39 ] | J. Cao, J. Wang, Global asymptotic stability of a general class of recurrent neural networks with time-varying delays, IEEE Transactions on Circuits and Systems I: Fundamental Theory and Applications. 50 (2003) 34–44. |
[ 40 ] | M. Krstic, H. Deng, Stabilization of Nonlinear Uncertain Systems, Springer-Verlag, New York, 1998. |
[ 41 ] | J. Primbs, V. Nevistic, J. Doyle, Nonlinear optimal control: a control Lyapunov function and receding horizon perspective, Asian Journal of Control. 1 (1999) 14–24. |
[ 42 ] | A. Teel, Asymptotic convergence from Stability, IEEE Transactions on Automatic Control. 44 (1999) 2169–2170. |
[ 43 ] | R. Freeman, P. Kokotovic, Robust Control of Nonlinear Systems, Birkhauser, Boston, MA, 1996. |
[ 44 ] | E. Todorov, Optimal control theory, in: K. Doya et al (Eds), Bayesian Brain: Probabilistic Approaches to Neural Coding, MIT Press, Massachusetts, 2006, pp. 269–298. |
[ 45 ] | G. Rovitahkis and M. Christodoulou, Adaptive Control with Recurrent High-order Neural Networks, Springer-Verlag, New York, 2000. |