Journal of Hebei University of Science and Technology (Dec 2017)

Application of improved PSO-RBF neural network in the synthetic ammonia decarbonization

  • Yongwei LI,
  • Yuman LI,
  • Hongfei WANG,
  • Liming LI

DOI
https://doi.org/10.7535/hbkd.2017yx06011
Journal volume & issue
Vol. 38, no. 6
pp. 578 – 584

Abstract

Read online

The synthetic ammonia decarbonization is a typical complex industrial process, which has the characteristics of time variation, nonlinearity and uncertainty, and the on-line control model is difficult to be established. An improved PSO-RBF neural network control algorithm is proposed to solve the problems of low precision and poor robustness in the complex process of the synthetic ammonia decarbonization. The particle swarm optimization algorithm and RBF neural network are combined. The improved particle swarm algorithm is used to optimize the RBF neural network's hidden layer primary function center, width and the output layer's connection value to construct the RBF neural network model optimized by the improved PSO algorithm. The improved PSO-RBF neural network control model is applied to the key carbonization process and compared with the traditional fuzzy neural network. The simulation results show that the improved PSO-RBF neural network control method used in the synthetic ammonia decarbonization process has higher control accuracy and system robustness, which provides an effective way to solve the modeling and optimization control of a complex industrial process.

Keywords