The antecedent and consequent parts of a first-order evolving intelligent system (EIS) determine the validity of the learning results and overall system performance. Nonetheless, the state-of-the-art techniques mostly stress on the novelty from the system identification point of view but pay less attention to the optimality of the learned parameters. Using the recently introduced autonomous learning multiple model (ALMMo) system as the implementation basis, this article introduces a particle swarm-based approach for the EIS optimization. The proposed approach is able to simultaneously optimize the antecedent and consequent parameters of ALMMo and effectively enhance the system performance by iteratively searching for optimal solutions in th...
The social learning mechanism used in the Particle Swarm Optimization algorithm allows this method t...
Improving the approximation accuracy and interpretability of fuzzy systems is an important issue eit...
Purpose of this work is to show that the Particle Swarm Optimization Algorithm may improve the resul...
The antecedent and consequent parts of a first-order evolving intelligent system (EIS) determine the...
In this paper, a detailed mathematical analysis of the optimality of the premise and consequent part...
In this paper, a new variant of particle swarm optimisation (PSO) called PSO with improved learning...
This paper presents a novel fuzzy particle swarm optimization with cross-mutated (FPSOCM) operation,...
Evolving intelligent systems (EISs), particularly, the zero-order ones have demonstrated strong perf...
Evolving intelligent systems (EISs), particularly, the zero-order ones have demonstrated strong perf...
This article is posted here with permission of the IEEE - Copyright @ 2009 IEEETraditional particle ...
A novel autonomous agent response learning (AARL) algorithm is presented in this paper. We proposed ...
Among the existing global optimization algorithms, Particle Swarm Optimization (PSO) is one of the m...
This paper presents a new particle swarm optimization (PSO) algorithm for tuning parameters (weights...
\u3cp\u3eAmong the existing global optimization algorithms, Particle Swarm Optimization (PSO) is one...
Optimization algorithms are necessary to solve many problems such as parameter tuning. Particle Swar...
The social learning mechanism used in the Particle Swarm Optimization algorithm allows this method t...
Improving the approximation accuracy and interpretability of fuzzy systems is an important issue eit...
Purpose of this work is to show that the Particle Swarm Optimization Algorithm may improve the resul...
The antecedent and consequent parts of a first-order evolving intelligent system (EIS) determine the...
In this paper, a detailed mathematical analysis of the optimality of the premise and consequent part...
In this paper, a new variant of particle swarm optimisation (PSO) called PSO with improved learning...
This paper presents a novel fuzzy particle swarm optimization with cross-mutated (FPSOCM) operation,...
Evolving intelligent systems (EISs), particularly, the zero-order ones have demonstrated strong perf...
Evolving intelligent systems (EISs), particularly, the zero-order ones have demonstrated strong perf...
This article is posted here with permission of the IEEE - Copyright @ 2009 IEEETraditional particle ...
A novel autonomous agent response learning (AARL) algorithm is presented in this paper. We proposed ...
Among the existing global optimization algorithms, Particle Swarm Optimization (PSO) is one of the m...
This paper presents a new particle swarm optimization (PSO) algorithm for tuning parameters (weights...
\u3cp\u3eAmong the existing global optimization algorithms, Particle Swarm Optimization (PSO) is one...
Optimization algorithms are necessary to solve many problems such as parameter tuning. Particle Swar...
The social learning mechanism used in the Particle Swarm Optimization algorithm allows this method t...
Improving the approximation accuracy and interpretability of fuzzy systems is an important issue eit...
Purpose of this work is to show that the Particle Swarm Optimization Algorithm may improve the resul...