会议专题

PSO and RBF Network-Based Wiener Model and Its Application to System Identification

In this paper, a new kind of Wiener model structure is introduced, which is realized by using the mapping function of neural networks. The model uses the linear dynamic neurons and a RBF network to express one Wiener model’s dynamic linear part and static nonlinear part respectively. The parameter identification for the new Wiener model adopts the unified identification method. The learning of parameters includes two cycles that the inner-cycle is executed by gradient training methods based on the BP thought and the outer-cycle uses the PSO (Particle Swarm Optimization) algorithm. The training method based on unified identification makes the new Wiener model converge to the steady state along the expected direction with a small error in a short time. The Wiener model is applied to the identification of the famous Box and Jenkins gas CO2 density, and the simulation results show that the method proposed in this paper is effective.

Identification Wiener Model Dynamic Neuron RBF Network Particle Swarm Optimization (PSO) Algorithm

Ren Yanyan Wang Dongfeng Liu Changliang Han Pu

Hebei Engineering Research Center of Simulation & Optimized Control for Power Generation(North China Hebei Engineering Research Center of Simulation & Optimized Control for Power Generation (North Chin

国际会议

The 24th Chinese Control and Decision Conference (第24届中国控制与决策学术年会 2012 CCDC)

太原

英文

2075-2080

2012-05-23(万方平台首次上网日期,不代表论文的发表时间)