New Chaotic PSO-Based Neural Network Predictive Control for Nonlinear Process

Abstract

In this letter, a novel nonlinear neural network (NN) predictive control strategy based on the new tent-map chaotic particle swarm optimization (TCPSO) is presented. The TCPSO incorporating tent-map chaos, which can avoid trapping to local minima and improve the searching performance of standard particle swarm optimization (PSO), is applied to perform the nonlinear optimization to enhance the convergence and accuracy. Numerical simulations of two benchmark functions are used to test the performance of TCPSO. Furthermore, simulation on a nonlinear plant is given to illustrate the effectiveness of the proposed control scheme

DOI: 10.1109/TNN.2006.890809

9 Figures and Tables

05101520072008200920102011201220132014201520162017
Citations per Year

81 Citations

Semantic Scholar estimates that this publication has 81 citations based on the available data.

See our FAQ for additional information.

Cite this paper

@article{Song2007NewCP, title={New Chaotic PSO-Based Neural Network Predictive Control for Nonlinear Process}, author={Ying Song and Zengqiang Chen and Zhuzhi Yuan}, journal={IEEE Transactions on Neural Networks}, year={2007}, volume={18}, pages={595-601} }