Mathematical Problems in Engineering

Dynamics of Neural Networks and Applications in Optimization


Publishing date
16 May 2014
Status
Published
Submission deadline
27 Dec 2013

Lead Editor

1College of Science, Yanshan University, Qinhuangdao 066004, China

2Department of Mathematics, Harbin Institute of Technology, Harbin 150001, China

3Department of Basic Science, Shijiazhuang Mechanical Engineering College, Shijiazhuang 050003, China

4Ramanujan Centre for Higher Mathematics, Alagappa University, Karaikudi, Tamil Nadu 630 004, India


Dynamics of Neural Networks and Applications in Optimization

Description

In recent years, neural networks have been a subject of intense research activities due to their wide applications in different areas such as image processing, pattern recognition, associative memory, and combinational optimization. In practical engineering applications, it is crucial to be able to completely characterize the dynamical properties of neural networks via mathematical methods. Hence, the mathematics processing for the nonlinear dynamics of neural networks still possesses new challenges for researchers in the area.

The neural network approach has become an important mean to provide real-time solutions to some optimization problems, especially for large-scale problems. Compared with the classical optimization approaches, the prominent advantage of neural computing is that it can converge to the optimal solution rapidly, and this advantage motivates researchers to propose an efficient algorithm, which is based on the neural network approach for nonlinear programming problems.

The purpose of this special issue is to provide an opportunity for scientists, engineers, and practitioners to propose their latest theoretical and technological achievements in the analysis of nonlinear dynamics of neural networks and applications in solving optimization. All the submissions are expected to have original ideas and new approaches. Papers presenting newly emerging fields are especially welcome. Potential topics include, but are not limited to:

  • Equilibrium analysis and state estimation of neural networks
  • Periodic solution, antiperiodic solution, almost periodic solution, and pseudo-almost periodic solution of neutral-type neural networks
  • Impulsive control of stochastic neural networks and fuzzy neural networks
  • Dynamical analysis of high-order neural networks
  • Synchronization, quasisynchronization, and antisynchronization of nonlinear coupled neural networks
  • Solving optimization problems arising in economy, society, and engineering via nonlinear neural networks

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Mathematical Problems in Engineering
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Acceptance rate11%
Submission to final decision118 days
Acceptance to publication28 days
CiteScore2.600
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