International Journal of Computational Intelligence Systems (Jun 2020)

A Neural Network for Moore–Penrose Inverse of Time-Varying Complex-Valued Matrices

  • Yiyuan Chai,
  • Haojin Li,
  • Defeng Qiao,
  • Sitian Qin,
  • Jiqiang Feng

DOI
https://doi.org/10.2991/ijcis.d.200527.001
Journal volume & issue
Vol. 13, no. 1

Abstract

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The Moore–Penrose inverse of a matrix plays a very important role in practical applications. In general, it is not easy to immediately solve the Moore–Penrose inverse of a matrix, especially for solving the Moore–Penrose inverse of a complex-valued matrix in time-varying situations. To solve this problem conveniently, in this paper, a novel Zhang neural network (ZNN) with time-varying parameter that accelerates convergence is proposed, which can solve Moore–Penrose inverse of a matrix over complex field in real time. Analysis results show that the state solutions of the proposed model can achieve super convergence in finite time with weighted sign-bi-power activation function (WSBP) and the upper bound of the convergence time is calculated. A related noise-tolerance model which possesses finite-time convergence property is proved to be more efficient in noise suppression. At last, numerical simulation illustrates the performance of the proposed model as well.

Keywords