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Improved zeroing neural networks for finite time solving nonlinear equations

  • Emerging Trends of Applied Neural Computation - E_TRAINCO
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Abstract

Nonlinear equation is an important cornerstone of nonlinear science, and many practical problems in scientific and engineering fields can be described by nonlinear equation in mathematics. In this paper, improved zeroing neural network (IZNN) models are presented and investigated for finding the solutions of the time-invariant nonlinear equation (TINE) and time-varying nonlinear equation (TVNE) in predictable and finite time. Compared with the exponential convergence zeroing neural network (ZNN), the convergence time of the IZNN models is finite and able to be estimated; in addition, the IZNN model is more stable and reliable for solving high-order TVNE. Both of the theoretical and numerical simulation results of the ZNN and IZNN for finding the solutions of the TINE and TVNE are presented to demonstrate the superiority and effectiveness of the IZNN model.

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References

  1. Xiao L, Zhang Y (2014) Solving time-varying inverse kinematics problem of wheeled mobile manipulators using Zhang neural network with exponential convergence. Nonlinear Dyn 76(2):1543–1559

    Google Scholar 

  2. Tlelo-Cuautle E, Carbajal-Gomez VH, Obeso-Rodelo PJ et al (2015) FPGA realization of a chaotic communication system applied to image processing. Nonlinear Dynmics 82(4):1879–1892

    MathSciNet  MATH  Google Scholar 

  3. Li S, Zhang Y, Jin L (2017) Kinematic control of redundant manipulators using neural networks. IEEE Trans Neural Netw Learn Syst 28(10):2243–2254

    MathSciNet  Google Scholar 

  4. Ngoc PHA, Anh TT (2019) Stability of nonlinear Volterra equations and applications. Appl Math Comput 341:1–14

    MathSciNet  MATH  Google Scholar 

  5. Peng J, Wang J, Wang Y (2011) Neural network based robust hybrid control for robotic system: an H∞ approach. Nonlinear Dyn 65(4):421–431

    MathSciNet  MATH  Google Scholar 

  6. Jin L, Zhang Y (2015) Discrete-time zhang neural network for online time-varying nonlinear optimization with application to manipulator motion generation. IEEE Trans Neural Netw Learn Syst 26(7):1525–1531

    MathSciNet  Google Scholar 

  7. Chun C (2006) Construction of Newton-like iteration methods for solving nonlinear equations. Numer Math 104(3):297–315

    MathSciNet  MATH  Google Scholar 

  8. Abbasbandy S (2003) Improving Newton–Raphson method for nonlinear equations by modified Adomian decomposition method. Appl Math Comput 145(2–3):887–893

    MathSciNet  MATH  Google Scholar 

  9. Sharma JR (2005) A composite third order Newton–Steffensen method for solving nonlinear equations. Appl Math Comput 169(1):242–246

    MathSciNet  MATH  Google Scholar 

  10. Ujevic, N.A method for solving nonlinear equations. Applied Mathematics and Computation, 174(2):1416-1426, 2006

  11. Wang J, Chen L, Guo Q (2017) Iterative solution of the dynamic responses of locally nonlinear structures with drift. Nonlinear Dyn 88(3):1551–1564

    Google Scholar 

  12. Amiri A, Cordero A, Darvishi MT et al (2019) A fast algorithm to solve systems of nonlinear equations. J Comput Appl Math 354:242–258

    MathSciNet  MATH  Google Scholar 

  13. Dai P, Wu Q, Wu Y, Liu W (2018) Modified Newton-PSS method to solve nonlinear equations. Appl Math Lett 86:305–312

    MathSciNet  MATH  Google Scholar 

  14. Birgin EG, Martínez JM (2019) A Newton-like method with mixed factorizations and cubic regularization for unconstrained minimization. Comput Optim Appl 73(3):707–753

    MathSciNet  MATH  Google Scholar 

  15. Saheya B, Chen GQ, Sui YK et al (2016) A new Newton-like method for solving nonlinear equations. SpringerPlus 5(1):1269

    Google Scholar 

  16. Sharma JR, Arora H (2016) Improved Newton-like methods for solving systems of nonlinear equations. Sema J 74(2):1–17

    MathSciNet  Google Scholar 

  17. Madhu K, Jayaraman J (2016) Some higher order Newton-like methods for solving system of nonlinear equations and its applications. Int J Appl Comput Math 2016:1–18

    Google Scholar 

  18. Zhang Y, Xu P, Tan N (2009) Solution of nonlinear equations by continuous- and discrete-time Zhang dynamics and more importantly their links to Newton iteration, information, communications and signal processing. In: ICICS 2009, 7th international conference on IEEE

  19. Xiao L, Zhang Y (2011) Zhang neural network versus gradient neural network for solving time-varying linear inequalities. IEEE Trans Neural Netw 22(10):1676–1684

    Google Scholar 

  20. Zhang Y, Yi C, Guo D et al (2011) Comparison on Zhang neural dynamics and gradient-based neural dynamics for online solution of nonlinear time-varying equation. Neural Comput Appl 20(1):1–7

    Google Scholar 

  21. Zhang Y, Chen D, Guo D, Liao B, Wang Y (2015) On exponential convergence of nonlinear gradient dynamics system with application to square root finding. Nonlinear Dyn 79(2):983–1003

    MathSciNet  MATH  Google Scholar 

  22. Jin L, Li SI, La HM, Luo X (2017) Manipulability optimization of redundant manipulators using dynamic neural networks. IEEE Trans Ind Electron 64(6):4710–4720

    Google Scholar 

  23. Zhang Y, Chen S, Li S, Zhang Z (2018) Adaptive projection neural network for kinematic control of redundant manipulators with unknown physical parameters. IEEE Trans Ind Electron 65(6):4909–4920

    Google Scholar 

  24. Jin L, Li S, Luo X, Li Y, Qin B (2018) Neural dynamics for cooperative control of redundant robot manipulators. IEEE Trans Ind Inf 14(9):3812–3821

    Google Scholar 

  25. Zhang Y, Xiao Z, Guo D, Mao M, Yin Y (2015) Singularity-conquering tracking control of a class of chaotic systems using Zhang-gradient dynamics. IET Control Theory Appl 9(6):871–881

    Google Scholar 

  26. Jin L, Zhang Y, Qiao T, Tan M, Zhang Y (2016) Tracking control of modified lorenz nonlinear system using ZG neural dynamics with additive input or mixed inputs. Neurocomputing 196:82–94

    Google Scholar 

  27. Benchabane A, Bennia A, Charif F, Taleb-Ahmed A (2013) Multi-dimensional Capon spectral estimation using discrete Zhang neural networks. Multidimens Syst Signal Process 24(3):583–598

    MathSciNet  MATH  Google Scholar 

  28. Li J, Mao M, Zhang Y, Chen D, Yin Y (2017) Zd, ZG and IOL controllers and comparisons for nonlinear system output tracking with DBZ problem conquered in different relative-degree cases. Asian J Control 19(4):1–14

    MathSciNet  MATH  Google Scholar 

  29. Xiao L (2017) Accelerating a recurrent neural network to finite-time convergence using a new design formula and its application to time-varying matrix square root. J Frankl Inst 354:5667–5677

    MathSciNet  MATH  Google Scholar 

  30. Fei Yu, Liu L, Xiao L, Li K, Cai S (2019) A robust and fixed-time zeroing neural dynamics for computing time-variant nonlinear equation using a novel nonlinear activation function. Neurocomputing 350(20):108–116

    Google Scholar 

  31. Xiao L, Liao B, Jin J, Lu R, Yang X, Ding L (2017) A finite-time convergent dynamic system for solving online simultaneous linear equations. Int J Comput Math 94(9):1778–1786

    MathSciNet  MATH  Google Scholar 

  32. Jin L, Li S, Liao B, Zhang Z (2017) Zeroing neural networks: a survey. Neurocomputing 267:597–604

    Google Scholar 

  33. Li S, Chen S, Liu B (2013) Accelerating a recurrent neural network finite time convergence for solving time-varying Sylvester equation by using signbi-power activation function. Neural Process Lett 37:189–205

    Google Scholar 

  34. Xiao L, Liao B (2016) A convergence-accelerated Zhang neural network and its solution application to Lyapunov equation. Neurocomputing 193:213–218

    Google Scholar 

  35. Xiao L, Zhang Y (2013) Different Zhang functions resulting in different ZNN models demonstrated via time-varying linear matrix-vector inequalities solving. Neurocomputing 121:140–149

    Google Scholar 

  36. Xiao L, Zhang Y (2012) Two new types of zhang neural networks solving systems of time-varying nonlinear inequalities. IEEE Trans Circuits Syst I Regul Pap 59(10):2363–2373

    MathSciNet  Google Scholar 

  37. Yan X, Liu M, Jin L, Li S, Hu B, Zhang X, Huang Z (2019) New zeroing neural network models for solving nonstationary Sylvester equation with verifications on mobile manipulators. IEEE Trans Ind Inf 15(9):5011–5022

    Google Scholar 

  38. Xiao L (2017) A finite-time recurrent neural network for solving online time-varying Sylvester matrix equation based on a new evolution formula. Nonlinear Dyn 90(3):1581–1591

    MathSciNet  MATH  Google Scholar 

  39. Xiao L, Li S, Yang J, Zhang Z (2018) A new recurrent neural network with noise-tolerance and finite-time convergence for dynamic quadratic minimization. Neurocomputing 285:125–132

    Google Scholar 

  40. Jin J, Xiao L, Lu M, Li J (2019) Design and analysis of two FTRNN models with application to time-varying Sylvester equation. IEEE Access 7:58945–58950

    Google Scholar 

Download references

Acknowledgments

The authors would like to thank the editors and the anonymous reviewers for providing valuable comments which helped in improving this manuscript. This work was supported by the National Natural Science Foundation of China [No.61561022,61404049 and U1501253]; Scientific Research Fund of Education Department of Hunan Province [No.17B094].

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Correspondence to Jie Jin.

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Jin, J., Zhao, L., Li, M. et al. Improved zeroing neural networks for finite time solving nonlinear equations. Neural Comput & Applic 32, 4151–4160 (2020). https://doi.org/10.1007/s00521-019-04622-x

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  • DOI: https://doi.org/10.1007/s00521-019-04622-x

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