A novel extended Li zeroing neural network for matrix inversion

Citation:

Gerontitis, D., Mo, C., Stanimirović, P. S., Tzekis, P., & Katsikis, V. N. (2023). A novel extended Li zeroing neural network for matrix inversion. Neural Computing and Applications. presented at the 2023. Copy at http://www.tinyurl.com/2rxxsvtf

Abstract:

An improved activation function, termed extended sign-bi-power (Esbp), is proposed. An extension of the Li zeroing neural network (ELi-ZNN) based on the Esbp activation is derived to obtain the online solution of the time-varying inversion problem. A detailed theoretical analysis confirms that the new activation function accomplishes fast convergence in calculating the time-varying matrix inversion. At the same time, illustrative numerical experiments substantiate the excellent performance of the proposed activation function over the Li and tunable activation functions. Convergence properties and numerical behaviors of the proposed ELi-ZNN model are examined.

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