Matrix inversion often arises in the fields of science and engineering. Many models for matrix inversion usually assume that the solving process is free of noises or that the denoising has been conducted before the computation. However, time is precious for the real-time-varying matrix inversion in practice, and any preprocessing for noise reduction may consume extra time, possibly violating the requirement of real-time computation. Therefore, a new model for time-varying matrix inversion that is able to handle simultaneously the noises is urgently needed. In this paper, an integration-enhanced Zhang neural network (IEZNN) model is first proposed and investigated for real-time-varying matrix inversion. Then, the conventional ZNN model and t...
10.1109/CDC.2003.1272262Proceedings of the IEEE Conference on Decision and Control66169-6174PCDC
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...
Our goal is to investigate and exploit an analogy between the scaled hyperpower family (SHPI family)...
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...
The Zhang neural network (ZNN) has recently realized remarkable success in solving time-varying prob...
Dynamic complex matrix inversion (DCMI) problems frequently arise in the territories of mathematics ...
Following the idea of using first-order time derivatives, this paper presents a general recurrent n...
For quadratic programming (QP), it is usually assumed that the solving process is free of measuremen...
An improved activation function, termed extended sign-bi-power (Esbp), is proposed. An extension of ...
Hyperpower family of iterative methods of arbitrary convergence order is one of the most frequently ...
Nonlinear optimization problems with dynamical parameters are widely arising in many practical scien...
The solving of quadratic matrix equations is a fundamental issue which essentially exists in the opt...
A novel kind of a hybrid recursive neural implicit dynamics for real-time matrix inversion has been ...
International audienceIn this paper, two simple-structure neural networks based on the error back-pr...
10.1109/CDC.2003.1272262Proceedings of the IEEE Conference on Decision and Control66169-6174PCDC
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...
Our goal is to investigate and exploit an analogy between the scaled hyperpower family (SHPI family)...
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...
The Zhang neural network (ZNN) has recently realized remarkable success in solving time-varying prob...
Dynamic complex matrix inversion (DCMI) problems frequently arise in the territories of mathematics ...
Following the idea of using first-order time derivatives, this paper presents a general recurrent n...
For quadratic programming (QP), it is usually assumed that the solving process is free of measuremen...
An improved activation function, termed extended sign-bi-power (Esbp), is proposed. An extension of ...
Hyperpower family of iterative methods of arbitrary convergence order is one of the most frequently ...
Nonlinear optimization problems with dynamical parameters are widely arising in many practical scien...
The solving of quadratic matrix equations is a fundamental issue which essentially exists in the opt...
A novel kind of a hybrid recursive neural implicit dynamics for real-time matrix inversion has been ...
International audienceIn this paper, two simple-structure neural networks based on the error back-pr...
10.1109/CDC.2003.1272262Proceedings of the IEEE Conference on Decision and Control66169-6174PCDC
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...
Our goal is to investigate and exploit an analogy between the scaled hyperpower family (SHPI family)...