Self-organizing RBF neural network based on IPSO and neural strength1

Author:

Zhang Wei12,Zheng Hongxuan1,Zhang Runyu1

Affiliation:

1. School of Electrical Engineering and Automation, Henan Polytechnic University, Jiaozuo, China

2. Henan Key Laboratory of Intelligent Detection and Control of Coal Mine Equipment, Jiaozuo, China

Abstract

In this paper, a self-organizing RBF (SORBF) neural network with an adaptive threshold is proposed based on improved particle swarm optimization (IPSO) and neural strength (NS). The parameters and structure of SORBF can be optimized simultaneously and dynamically. Moreover, the tiresome problem of threshold setting is solved. Firstly, the network size and parameters of SORBF are mapped into the particle information of PSO. Secondly, an IPSO algorithm, based on diversity inertia weight and elite knowledge guiding, is proposed to reduce the probability of the population falling into the local optimum. Then, IPSO is used for optimizing the parameters of SORBF. Based on neuron growth intensity and competition intensity, SORBF can realize the hidden neuron addition and deletion adaptively. Moreover, the thresholds during the structure adjustment can be provided adaptively based on the network scale and neuron strength, which avoids the subjectivity setting and can improve the adaptive ability. Finally, the convergence analysis of IPSO is provided to ensure the performance of SORBF. Experiment results show that the proposed SORBF has good self-organizing ability and compact network structure compared with other methods.

Publisher

IOS Press

Reference29 articles.

1. Gaussian RBF centered kernel alignment (CKA) in the large-bandwidth limit;Alvarez;IEEE Transactionson Pattern Analysis and Machine Intelligence,2023

2. Self-adaptive teaching-learning-based optimizer with improved RBFand sparse autoencoder for high-dimensional problems;Bi;Information Sciences,2023

3. Adaptive RBF neural network-computed torque control for apediatric gait exoskeleton system: An experimental study;Narayan;Intelligent Service Robotics,2023

4. Stability analysis and RBF neural network control of second-order nonlinearsatellite system;Su;IEEE Transactions on Aerospace and Electronic Systems,2023

5. On-line prediction of ferrous ion concentration in goethite processbased on selfadjusting structure RBF neural network;Xie;Neural Networks,2019

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