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Abstract
Some typical structural schemes of Fuzzy control have been surveyed. Besides general structure of fuzzy logic controller (FLC), the structural schemes include PID fuzzy controller, self-organizing fuzzy controller, selftuning fuzzy controller, self-learning fuzzy controller, and expect fuzzy controller, etc. This survey focuses on the control principle, and provides a basis for potential applications. Most of the structures have been used in various control fields, one of application areas is in the metallurgy industry, e.g., the temperature control of the electric furnace, the control of the aluminum smelting process, etc. According to the application requirements, one can choose a structural scheme for special use.
Keywords
fuzzy logic controller (FLC)
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self-organizing
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self-tuning
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self-learning
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expert system
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Zixing Cai.
Typical architectures for fuzzy control.
Journal of Central South University, 1997, 4(2): 132-136 DOI:10.1007/s11771-997-0015-2
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