A Design of Genetically Optimized Linguistic Models
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概要
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In this paper, we propose a method for designing genetically optimized Linguistic Models (LM) with the aid of fuzzy granulation. The fundamental idea of LM introduced by Pedrycz is followed and their design framework based on Genetic Algorithm (GA) is enhanced. A LM is designed by the use of information granulation realized via Context-based Fuzzy C-Means (CFCM) clustering. This clustering technique builds information granules represented as a fuzzy set. However, it is difficult to optimize the number of linguistic contexts, the number of clusters generated by each context, and the weighting exponent. Thus, we perform simultaneous optimization of design parameters linking information granules in the input and output spaces based on GA. Experiments on the coagulant dosing process in a water purification plant reveal that the proposed method shows better performance than the previous works and LM itself.
著者
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Kwak Keun-chang
Dept. Of Control Instrumentation And Robot Eng. Chosun University
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KWAK Keun-Chang
Dept. of Control, Instrumentation, and Robotic Eng., Chosun University
関連論文
- Adaptive Neuro-Fuzzy Networks with the Aid of Fuzzy Granulation(Biocybernetics, Neurocomputing)
- A Development of Cascade Granular Neural Networks
- A Design of Genetically Optimized Linguistic Models