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Published in: Neural Computing and Applications 1/2019

04-05-2017 | Original Article

Robust state estimation for stochastic complex-valued neural networks with sampled-data

Authors: Weiqiang Gong, Jinling Liang, Xiu Kan, Lan Wang, Abdullah M. Dobaie

Published in: Neural Computing and Applications | Special Issue 1/2019

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Abstract

In this paper, the robust state estimation problem is investigated for the complex-valued neural networks involving parameter uncertainties, mixed time delays, as well as stochastic disturbances by resorting to the sampled-data information from the available output measurements. The parameter uncertainties are assumed to be norm-bounded and the stochastic disturbances are assumed to be Brownian motions, which could reflect much more realistic dynamical behaviors of the complex-valued network under a noisy environment. The purpose of the addressed problem is to design an estimator for the complex-valued network such that, for all admissible parameter uncertainties and sampled output measurements, the dynamics of the state estimation error system is assured to be globally asymptotically stable in the mean square. Matrix inequality approach, robust analysis tool, as well as stochastic analysis techniques are utilized together to derive several delay-dependent sufficient criteria guaranteeing the existence of the desired state estimator. Finally, simulation examples are illustrated to demonstrate the feasibility of the proposed estimation design schemes.

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Literature
1.
go back to reference Tanaka G, Aihara K (2009) Complex-valued multistate associative memory with nonlinear multilevel functions for gray-level image reconstruction. IEEE Trans Neural Netw 20(9):1463–1473CrossRef Tanaka G, Aihara K (2009) Complex-valued multistate associative memory with nonlinear multilevel functions for gray-level image reconstruction. IEEE Trans Neural Netw 20(9):1463–1473CrossRef
2.
go back to reference Jankowski S, Lozowski A, Zurada J (1996) Complex-valued multistate neural associative memory. IEEE Trans Neural Netw 7(6):1491–1496CrossRef Jankowski S, Lozowski A, Zurada J (1996) Complex-valued multistate neural associative memory. IEEE Trans Neural Netw 7(6):1491–1496CrossRef
4.
go back to reference Li C, Liao X, Yu J (2002) Complex-valued recurrent neural network with IIR neural model: traning and applications. Circ Syst Signal Process 21(5):461–471CrossRefMATH Li C, Liao X, Yu J (2002) Complex-valued recurrent neural network with IIR neural model: traning and applications. Circ Syst Signal Process 21(5):461–471CrossRefMATH
5.
go back to reference Nitta T (2004) Orthogonality of decision boundaries in complex-valued neural networks. Neural Comput 16 (1):73–97CrossRefMATH Nitta T (2004) Orthogonality of decision boundaries in complex-valued neural networks. Neural Comput 16 (1):73–97CrossRefMATH
6.
go back to reference Amin MF, Murase K (2009) Single-layered complex-valued neural network for real-valued classification problems. Neurocomputing 72(4-6):945–955CrossRef Amin MF, Murase K (2009) Single-layered complex-valued neural network for real-valued classification problems. Neurocomputing 72(4-6):945–955CrossRef
7.
go back to reference Hirose A, Yoshida S (2013) Relationship between phase and amplitude generalization errors in complex- and real-valuedfeedforward neural networks. Neural Comput Appl 22(7-8):1357–1366CrossRef Hirose A, Yoshida S (2013) Relationship between phase and amplitude generalization errors in complex- and real-valuedfeedforward neural networks. Neural Comput Appl 22(7-8):1357–1366CrossRef
8.
go back to reference Zhou W, Zurada JM (2009) Discrete-time recurrent neural networks with complex-valued linear threshold neurons. IEEE Trans Circ Syst II Exp Briefs 56(8):669–673 Zhou W, Zurada JM (2009) Discrete-time recurrent neural networks with complex-valued linear threshold neurons. IEEE Trans Circ Syst II Exp Briefs 56(8):669–673
9.
go back to reference Xu X, Zhang J, Shi J (2014) Exponential stability of complex-valued neural networks with mixed delays. Neurocomputing 128:483–490CrossRef Xu X, Zhang J, Shi J (2014) Exponential stability of complex-valued neural networks with mixed delays. Neurocomputing 128:483–490CrossRef
10.
go back to reference Lee DL (2001) Relaxation of the stability condition of the complex-valued neural networks. IEEE Trans Neural Netw 12(5):1260–1262CrossRef Lee DL (2001) Relaxation of the stability condition of the complex-valued neural networks. IEEE Trans Neural Netw 12(5):1260–1262CrossRef
11.
go back to reference Huang Y, Zhang H, Wang Z (2014) Multistability of complex-valued recurrent neural networks with real-imaginary-type activation functions. Appl Math Comput 229:187–200MathSciNetCrossRefMATH Huang Y, Zhang H, Wang Z (2014) Multistability of complex-valued recurrent neural networks with real-imaginary-type activation functions. Appl Math Comput 229:187–200MathSciNetCrossRefMATH
12.
go back to reference Zhang Z, Yu S (2016) Global asymptotic stability for a class of complex-valued Cohen-Grossberg neural networks with time delays. Neurocomputing 171:1158–1166CrossRef Zhang Z, Yu S (2016) Global asymptotic stability for a class of complex-valued Cohen-Grossberg neural networks with time delays. Neurocomputing 171:1158–1166CrossRef
13.
go back to reference Khajanchi S, Banerjee S (2014) Stability an bifurcation analysis of delay induced tumor immune interaction model. Appl Math Comput 248:652–671MathSciNetMATH Khajanchi S, Banerjee S (2014) Stability an bifurcation analysis of delay induced tumor immune interaction model. Appl Math Comput 248:652–671MathSciNetMATH
14.
go back to reference Xu W, Cao J, Xiao M (2015) A new framework for analysis on stability and bifurcation in a class of neural networks with discrete and distributed delays. IEEE Trans Cybern 45(10):2224–2236CrossRef Xu W, Cao J, Xiao M (2015) A new framework for analysis on stability and bifurcation in a class of neural networks with discrete and distributed delays. IEEE Trans Cybern 45(10):2224–2236CrossRef
15.
go back to reference Zhou B, Song Q (2013) Boundedness and complete stability of complex-valued neural networks with time delay. IEEE Trans Neural Netw Learn Syst 24(8):1227–1238CrossRef Zhou B, Song Q (2013) Boundedness and complete stability of complex-valued neural networks with time delay. IEEE Trans Neural Netw Learn Syst 24(8):1227–1238CrossRef
16.
go back to reference Li X, Rakkiyappan R, Velmurugan G (2015) Dissipativity analysis of memristor-based complex-valued neural networks with time-varying delays. Inform Sci 294:645–665MathSciNetCrossRefMATH Li X, Rakkiyappan R, Velmurugan G (2015) Dissipativity analysis of memristor-based complex-valued neural networks with time-varying delays. Inform Sci 294:645–665MathSciNetCrossRefMATH
17.
go back to reference Song Q, Zhao Z, Liu Y (2015) Stability analysis of complex-valued neural networks with probabilistic time-varying delays. Neurocomputing 159:96–104CrossRef Song Q, Zhao Z, Liu Y (2015) Stability analysis of complex-valued neural networks with probabilistic time-varying delays. Neurocomputing 159:96–104CrossRef
18.
go back to reference Zhang Z, Lin C, Chen B (2014) Global stability criterion for delayed complex-valued recurrent neural networks. IEEE Trans Neural Netw Learn Syst 25(9):1704–1708CrossRef Zhang Z, Lin C, Chen B (2014) Global stability criterion for delayed complex-valued recurrent neural networks. IEEE Trans Neural Netw Learn Syst 25(9):1704–1708CrossRef
19.
go back to reference Fang T, Sun J (2014) Further investigate the stability of complex-valued recurrent neural networks with time-delays. IEEE Trans Neural Netw Learn Syst 25(9):1709–1713CrossRef Fang T, Sun J (2014) Further investigate the stability of complex-valued recurrent neural networks with time-delays. IEEE Trans Neural Netw Learn Syst 25(9):1709–1713CrossRef
20.
go back to reference Rakkiyappan R, Velmurugan G, Li X, O’Regan D (2016) Global dissipativity of memristor-based complex-valued neural networks with time-varying delays. Neural Comput Appl 27(3):629–649CrossRef Rakkiyappan R, Velmurugan G, Li X, O’Regan D (2016) Global dissipativity of memristor-based complex-valued neural networks with time-varying delays. Neural Comput Appl 27(3):629–649CrossRef
21.
go back to reference Hu J, Li N, Liu X, Zhang G (2013) Sampled-data state estimation for delayed neural networks with Markovian jumping parameters. Nonlinear Dyn 73(1-2):275–284MathSciNetCrossRefMATH Hu J, Li N, Liu X, Zhang G (2013) Sampled-data state estimation for delayed neural networks with Markovian jumping parameters. Nonlinear Dyn 73(1-2):275–284MathSciNetCrossRefMATH
22.
go back to reference Lee TH, Park JH, Kwon OM, Lee SM (2013) Stochastic sampled-data control for state estimation of time-varying delayed neural networks. Neural Netw 46:99–108CrossRefMATH Lee TH, Park JH, Kwon OM, Lee SM (2013) Stochastic sampled-data control for state estimation of time-varying delayed neural networks. Neural Netw 46:99–108CrossRefMATH
23.
go back to reference Shu H, Zhang S, Shen B, Liu Y (2016) Unknown input and state estimation for linear discrete-time systems with missing measurements and correlated noises. Int J Gen Syst 45(5): 648–661MathSciNetCrossRefMATH Shu H, Zhang S, Shen B, Liu Y (2016) Unknown input and state estimation for linear discrete-time systems with missing measurements and correlated noises. Int J Gen Syst 45(5): 648–661MathSciNetCrossRefMATH
24.
go back to reference He Y, Wang Q-G, Wu M, Lin C (2006) Delay-dependent state estimation for delayed neural networks. IEEE Trans Neural Netw 17(4):1077–1081CrossRef He Y, Wang Q-G, Wu M, Lin C (2006) Delay-dependent state estimation for delayed neural networks. IEEE Trans Neural Netw 17(4):1077–1081CrossRef
25.
go back to reference Li Q, Shen B, Liu Y, Alsaadi FE (2016) Event-triggered \(H_{\infty }\) state estimation for discrete-time stochastic genetic regulatory networks with Markovian jumping parameters and time-varying delays. Neurocomputing 174:912–920CrossRef Li Q, Shen B, Liu Y, Alsaadi FE (2016) Event-triggered \(H_{\infty }\) state estimation for discrete-time stochastic genetic regulatory networks with Markovian jumping parameters and time-varying delays. Neurocomputing 174:912–920CrossRef
26.
go back to reference Zou L, Wang Z, Gao H, Liu X (2015) Event-triggered state estimation for complex networks with mixed time delays via sampled data information: The continuous-time case. IEEE Trans Cybern 45(12):2804–2815CrossRef Zou L, Wang Z, Gao H, Liu X (2015) Event-triggered state estimation for complex networks with mixed time delays via sampled data information: The continuous-time case. IEEE Trans Cybern 45(12):2804–2815CrossRef
27.
go back to reference Ding D, Wang Z, Shen B, Dong H (2015) Event-triggered distributed \(H_{\infty }\) state estimation with packet dropouts through sensor networks. IET Control Theory Appl 9(13):1948–1955MathSciNetCrossRef Ding D, Wang Z, Shen B, Dong H (2015) Event-triggered distributed \(H_{\infty }\) state estimation with packet dropouts through sensor networks. IET Control Theory Appl 9(13):1948–1955MathSciNetCrossRef
28.
29.
go back to reference Liang J, Lam J, Wang Z (2009) State estimation for Markov-type genetic regulatory networks with delays and uncertain mode transition rates. Phys Lett A 373(47):4328–4337MathSciNetCrossRefMATH Liang J, Lam J, Wang Z (2009) State estimation for Markov-type genetic regulatory networks with delays and uncertain mode transition rates. Phys Lett A 373(47):4328–4337MathSciNetCrossRefMATH
30.
go back to reference Li N, Hu J, Hu J, Li L (2012) Exponential state estimation for delayed recurrent neural networks with sampled-data. Nonlinear Dyn 69:555–564MathSciNetCrossRefMATH Li N, Hu J, Hu J, Li L (2012) Exponential state estimation for delayed recurrent neural networks with sampled-data. Nonlinear Dyn 69:555–564MathSciNetCrossRefMATH
31.
go back to reference Anbuvithya R, Mathiyalagan K, Sakthivel R, Prakash P (2015) Sampled-data state estimation for genetic regulatory networks with time-varying delays. Neurocomputing 151:737–744CrossRef Anbuvithya R, Mathiyalagan K, Sakthivel R, Prakash P (2015) Sampled-data state estimation for genetic regulatory networks with time-varying delays. Neurocomputing 151:737–744CrossRef
32.
go back to reference Qiu B, Liao X, Zhou B (2015) State estimation for complex-valued neural networks with time-varying delays. In: Proceedings of Sixth International Conference on Intelligent Control and Information Processing, Wuhan, pp. 531–536 Qiu B, Liao X, Zhou B (2015) State estimation for complex-valued neural networks with time-varying delays. In: Proceedings of Sixth International Conference on Intelligent Control and Information Processing, Wuhan, pp. 531–536
33.
go back to reference Yang S, Guo Z, Wang J (2015) Robust synchronization of multiple memristive neural networks with uncertain parameters via nonlinear coupling. IEEE Trans Syst Man Cybern Syst 45(7):1077–1086CrossRef Yang S, Guo Z, Wang J (2015) Robust synchronization of multiple memristive neural networks with uncertain parameters via nonlinear coupling. IEEE Trans Syst Man Cybern Syst 45(7):1077–1086CrossRef
34.
go back to reference Yao D, Lu Q, Wu C, Chen Z (2015) Robust finite-time state estimation of uncertain neural networks with Markovian jump parameters. Neurocomputing 159:257–262CrossRef Yao D, Lu Q, Wu C, Chen Z (2015) Robust finite-time state estimation of uncertain neural networks with Markovian jump parameters. Neurocomputing 159:257–262CrossRef
35.
go back to reference Huang H, Feng G, Cao J (2008) Robust state estimation for uncertain neural networks with time-varying delay. IEEE Trans Neural Netw 19(8):1329–1339CrossRef Huang H, Feng G, Cao J (2008) Robust state estimation for uncertain neural networks with time-varying delay. IEEE Trans Neural Netw 19(8):1329–1339CrossRef
36.
go back to reference Yang D, Liu X, Xu Y, Wang Y, Liu Z (2013) State estimation of recurrent neural networks with interval time-varying delay: an improved delay-dependent approach. Neural Comput Appl 23(3-4):1149–1158CrossRef Yang D, Liu X, Xu Y, Wang Y, Liu Z (2013) State estimation of recurrent neural networks with interval time-varying delay: an improved delay-dependent approach. Neural Comput Appl 23(3-4):1149–1158CrossRef
37.
go back to reference Liang J, Wang Z, Liu X (2014) Robust state estimation for two-dimensional stochastic time-delay systems with missing measurements and sensor saturation. Multidim Syst Signal Process 25(1):157–177CrossRefMATH Liang J, Wang Z, Liu X (2014) Robust state estimation for two-dimensional stochastic time-delay systems with missing measurements and sensor saturation. Multidim Syst Signal Process 25(1):157–177CrossRefMATH
38.
39.
go back to reference Boyd S, El Ghaoui L, Feyon E, Balakrishnan V (1994) Linear matrix inequalities in system and control theory. SIAM , PhiladelphiaCrossRef Boyd S, El Ghaoui L, Feyon E, Balakrishnan V (1994) Linear matrix inequalities in system and control theory. SIAM , PhiladelphiaCrossRef
41.
go back to reference Friedman A (1976) Stochastic differential equations and their applications. Academic Press, New YorkMATH Friedman A (1976) Stochastic differential equations and their applications. Academic Press, New YorkMATH
42.
go back to reference Schuss Z (1980) Theory and applications of stochastic differential equations. Wiley, New YorkMATH Schuss Z (1980) Theory and applications of stochastic differential equations. Wiley, New YorkMATH
44.
go back to reference Chen H, Liang J, Wang Z (2016) Pinning controllability of autonomous Boolean control networks. Sci China-Inf Sci 59(7):070107CrossRef Chen H, Liang J, Wang Z (2016) Pinning controllability of autonomous Boolean control networks. Sci China-Inf Sci 59(7):070107CrossRef
Metadata
Title
Robust state estimation for stochastic complex-valued neural networks with sampled-data
Authors
Weiqiang Gong
Jinling Liang
Xiu Kan
Lan Wang
Abdullah M. Dobaie
Publication date
04-05-2017
Publisher
Springer London
Published in
Neural Computing and Applications / Issue Special Issue 1/2019
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-017-3030-8

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