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. Five numerical experiments investigate and confirm that the ZNNFRDP model performs as well as, if not better than, other well-performing ZNN models in ...
Matrix inversion often arises in the fields of science and engineering. Many models for matrix inver...
Sylvester equation is often applied to various fields, such as mathematics and control systems due t...
A theoretical formulation of a fast learning method based on a pseudoinverse technique is presented....
A correlation between fuzzy logic systems (FLS) and zeroing neural networks (ZNN) design is investig...
Time-varying linear matrix equations and inequations have been widely studied in recent years. Time-...
This research introduces three novel zeroing neural network (ZNN) models for addressing the time-var...
The improvement of recurrent neural network (RNN) algorithms is one of target of many researchers, a...
Defining efficient families of recurrent neural networks (RNN) models for solving time-varying nonli...
In this paper, by employing the Zhang neural network (ZNN) method, an effective continuous-time LU d...
Hyperpower family of iterative methods of arbitrary convergence order is one of the most frequently ...
The last decade has seen the parallel emergence in computational neuroscience and machine learning o...
Matrix inversion is commonly encountered in the field of mathematics. Therefore, many methods, inclu...
To obtain the superiority property of solving time-varying linear matrix inequalities (LMIs), three ...
The solving of quadratic matrix equations is a fundamental issue which essentially exists in the opt...
An improved activation function, termed extended sign-bi-power (Esbp), is proposed. An extension of ...
Matrix inversion often arises in the fields of science and engineering. Many models for matrix inver...
Sylvester equation is often applied to various fields, such as mathematics and control systems due t...
A theoretical formulation of a fast learning method based on a pseudoinverse technique is presented....
A correlation between fuzzy logic systems (FLS) and zeroing neural networks (ZNN) design is investig...
Time-varying linear matrix equations and inequations have been widely studied in recent years. Time-...
This research introduces three novel zeroing neural network (ZNN) models for addressing the time-var...
The improvement of recurrent neural network (RNN) algorithms is one of target of many researchers, a...
Defining efficient families of recurrent neural networks (RNN) models for solving time-varying nonli...
In this paper, by employing the Zhang neural network (ZNN) method, an effective continuous-time LU d...
Hyperpower family of iterative methods of arbitrary convergence order is one of the most frequently ...
The last decade has seen the parallel emergence in computational neuroscience and machine learning o...
Matrix inversion is commonly encountered in the field of mathematics. Therefore, many methods, inclu...
To obtain the superiority property of solving time-varying linear matrix inequalities (LMIs), three ...
The solving of quadratic matrix equations is a fundamental issue which essentially exists in the opt...
An improved activation function, termed extended sign-bi-power (Esbp), is proposed. An extension of ...
Matrix inversion often arises in the fields of science and engineering. Many models for matrix inver...
Sylvester equation is often applied to various fields, such as mathematics and control systems due t...
A theoretical formulation of a fast learning method based on a pseudoinverse technique is presented....