Time-Varying Pseudoinversion Based on Full-Rank Decomposition and Zeroing Neural Networks

Citation:

Alharbi, H., Jerbi, H., Kchaou, M., Abbassi, R., Simos, T. E., Mourtas, S. D., & Katsikis, V. N. (2023). Time-Varying Pseudoinversion Based on Full-Rank Decomposition and Zeroing Neural Networks. Mathematics, 11. Copy at http://www.tinyurl.com/2asetngu

Abstract:

The computation of the time-varying matrix pseudoinverse has become crucial in recent years for solving time-varying problems in engineering and science domains. This paper investigates the issue of calculating the time-varying pseudoinverse based on full-rank decomposition (FRD) using the zeroing neural network (ZNN) method, which is currently considered to be a cutting edge method for calculating the time-varying matrix pseudoinverse. As a consequence, for the first time in the literature, a new ZNN model called ZNNFRDP is introduced for time-varying pseudoinversion and it is based on FRD. FourFive numerical experiments investigate and confirm that the ZNNFRDP model performs as well as, if not better than, other well-performing ZNN models in the calculation of the time-varying pseudoinverse. Additionally, theoretical analysis and numerical findings have both supported the effectiveness of the proposed model.

Website