Modeling and optimization in complex systems based on computational intelligence
Abstract
Purpose
For many optimization problems such as optimal techniques, compositions, producing process, the optimizing objectives in systems are complex relations with respect to a great deal of parameters. Generally, the objective function is hardly obtained, even the searching objective is unquantifiable. So it is difficult to model and optimize the complex systems to some extent.
Design/methodology/approach
To the above purpose, a novel approach is presented in this paper. It firstly utilizes the excellent fitting performance of neural network (NN) combined with expert knowledge (EK) to obtain the objective function, and secondly searches the optimal influential parameters with genetic algorithm (GA).
Findings
Peaks function inside Matlab and the acural application of comprehensive performance optimization in analog PID control system are studied, respectively. The results of simulation and the actual experiment both show that the modeling and optimizing method presented in the paper are effective.
Research limitations/implications
Expert knowledge is needed for the fuzzy/unquantifiable objective.
Practical implications
The paper presents a useful way to model and optimize complex systems.
Originality/value
The combined approach based on NN, EK and GA is firstly presented and is effectively used in modeling and optimizing complex systems.
Keywords
Citation
Su, Y., Li, T., Wang, D. and Liu, X. (2012), "Modeling and optimization in complex systems based on computational intelligence", Kybernetes, Vol. 41 No. 9, pp. 1235-1243. https://doi.org/10.1108/03684921211275252
Publisher
:Emerald Group Publishing Limited
Copyright © 2012, Emerald Group Publishing Limited