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Three-dimensional fuzzy logic system for process modeling and control 被引量:2

Three-dimensional fuzzy logic system for process modeling and control
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摘要 The traditional fuzzy logic system (FLS) can only model and control the process in two-dimensional nature. Many of real-world systems are of multidimensional features, such as, thermal and fluid processes with spatiotemporal dynamics, biological systems, or decision-making processes that contain stochastic and imprecise uncertainties. These types of systems are difficult for the traditional FLS to model and control because they require a third dimension for spatial or probabilistic information. The type-2 fuzzy set provides the possibility to develop a three-dimensional fuzzy logic system for modeling and controlling these processes in three-dimensional nature. The traditional fuzzy logic system (FLS) can only model and control the process in two-dimensional nature. Many of real-world systems are of multidimensional features, such as, thermal and fluid processes with spatiotemporal dynamics, biological systems, or decision-making processes that contain stochastic and imprecise uncertainties. These types of systems are difficult for the traditional FLS to model and control because they require a third dimension for spatial or probabilistic information. The type-2 fuzzy set provides the possibility to develop a three-dimensional fuzzy logic system for modeling and controlling these processes in three-dimensional nature.
出处 《控制理论与应用(英文版)》 EI 2010年第3期280-285,共6页
基金 supported by the National 973 Fundamental Research Program of China (No.2005CB724102,2006CB705404)
关键词 Three-dimensional fuzzy logic system Spatiotemporal system MODELING Three-dimensional fuzzy logic system Spatiotemporal system Modeling
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同被引文献24

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