The Zhang neural network (ZNN) has recently realized remarkable success in solving time-varying problems. Harmonic noise widely exists in industrial applications and can severely affect the solution computed by ZNN models. This work attempts to solve the aforementioned limitations by providing the first ZNN design with an inherent capability to prohibit harmonic noise. Moreover, it opens new opportunities to shift the research on ZNNs in ideal situations to that with theoretical consideration on non-ideal working environments. We establish a modified ZNN design formula in a noisy environment by incorporating the dynamics of harmonic signals. Theoretical analysis shows the convergence of the proposed ZNN design. An application case study for...
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...
This paper introduces a simple solution, based on neural networks, to the problem of the on-line and...
A variant of Hopfield neural network, called the modified Hopfield network, is formulated in this st...
Matrix inversion often arises in the fields of science and engineering. Many models for matrix inver...
Complex-valued time-dependent matrix inversion (TDMI) is extensively exploited in practical industri...
Matrix inversion is commonly encountered in the field of mathematics. Therefore, many methods, inclu...
For quadratic programming (QP), it is usually assumed that the solving process is free of measuremen...
In many applications, very fast methods are required for estimating and measurement of parameters of...
Nonlinear optimization problems with dynamical parameters are widely arising in many practical scien...
In many applications, very fast methods are required for estimating and measurement of parameters of...
Dynamic complex matrix inversion (DCMI) problems frequently arise in the territories of mathematics ...
Hyperpower family of iterative methods of arbitrary convergence order is one of the most frequently ...
The solving of quadratic matrix equations is a fundamental issue which essentially exists in the opt...
Zeroing neural network (ZNN) is a powerful tool to address the mathematical and optimization problem...
As a special kind of recurrent neural networks, Zhang neural network (ZNN) has been successfully app...
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...
This paper introduces a simple solution, based on neural networks, to the problem of the on-line and...
A variant of Hopfield neural network, called the modified Hopfield network, is formulated in this st...
Matrix inversion often arises in the fields of science and engineering. Many models for matrix inver...
Complex-valued time-dependent matrix inversion (TDMI) is extensively exploited in practical industri...
Matrix inversion is commonly encountered in the field of mathematics. Therefore, many methods, inclu...
For quadratic programming (QP), it is usually assumed that the solving process is free of measuremen...
In many applications, very fast methods are required for estimating and measurement of parameters of...
Nonlinear optimization problems with dynamical parameters are widely arising in many practical scien...
In many applications, very fast methods are required for estimating and measurement of parameters of...
Dynamic complex matrix inversion (DCMI) problems frequently arise in the territories of mathematics ...
Hyperpower family of iterative methods of arbitrary convergence order is one of the most frequently ...
The solving of quadratic matrix equations is a fundamental issue which essentially exists in the opt...
Zeroing neural network (ZNN) is a powerful tool to address the mathematical and optimization problem...
As a special kind of recurrent neural networks, Zhang neural network (ZNN) has been successfully app...
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...
This paper introduces a simple solution, based on neural networks, to the problem of the on-line and...
A variant of Hopfield neural network, called the modified Hopfield network, is formulated in this st...