Title :
Rule-Based Cooperative Continuous Ant Colony Optimization to Improve the Accuracy of Fuzzy System Design
Author :
Chia-Feng Juang ; Chi-Wei Hung ; Chia-Hung Hsu
Author_Institution :
Dept. of Electr. Eng., Nat. Chung-Hsing Univ., Taichung, Taiwan
Abstract :
This paper proposes a cooperative continuous ant colony optimization (CCACO) algorithm and applies it to address the accuracy-oriented fuzzy systems (FSs) design problems. All of the free parameters in a zero- or first-order Takagi-Sugeno-Kang (TSK) FS are optimized through CCACO. The CCACO algorithm performs optimization through multiple ant colonies, where each ant colony is only responsible for optimizing the free parameters in a single fuzzy rule. The ant colonies cooperate to design a complete FS, with a complete parameter solution vector (encoding a complete FS) that is formed by selecting a subsolution component (encoding a single fuzzy rule) from each colony. Subsolutions in each ant colony are evolved independently using a new continuous ant colony optimization algorithm. In the CCACO, solutions are updated via the techniques of pheromone-based tournament ant path selection, ant wandering operation, and best-ant-attraction refinement. The performance of the CCACO is verified through applications to fuzzy controller and predictor design problems. Comparisons with other population-based optimization algorithms verify the superiority of the CCACO.
Keywords :
ant colony optimisation; control system synthesis; fuzzy control; fuzzy systems; vectors; CCACO algorithm; FSs; TSK FS; Takagi-Sugeno-Kang fuzzy systems; accuracy-oriented fuzzy system design problems; ant wandering operation; best-ant-attraction refinement; fuzzy controller; parameter solution vector; pheromone-based tournament ant path selection; predictor design problems; rule-based cooperative continuous ant colony optimization; subsolution component; Algorithm design and analysis; Ant colony optimization; Frequency selective surfaces; Fuzzy systems; Optimization; Probability density function; Vectors; Ant colony optimization; cooperative evolution; evolutionary fuzzy systems; swarm intelligence (SI);
Journal_Title :
Fuzzy Systems, IEEE Transactions on
DOI :
10.1109/TFUZZ.2013.2272480