Building fuzzy inference systems with similarity reasoning: NSGAII-based fuzzy rule selection and evidential functions

FUZZ-IEEE(2014)

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摘要
In our previous investigations, two Similarity Reasoning (SR)-based frameworks for tackling real-world problems have been proposed. In both frameworks, SR is used to deduce unknown fuzzy rules based on similarity of the given and unknown fuzzy rules for building a Fuzzy Inference System (FIS). In this paper, we further extend our previous findings by developing (1) a multi-objective evolutionary model for fuzzy rule selection; and (2) an evidential function to facilitate the use of both frameworks. The Non-Dominated Sorting Genetic Algorithms-II (NSGA-II) is adopted for fuzzy rule selection, in accordance with the Pareto optimal criterion. Besides that, two new evidential functions are developed, whereby given fuzzy rules are considered as evidence. Simulated and benchmark examples are included to demonstrate the applicability of these suggestions. Positive results were obtained.
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关键词
fuzzy set theory,fuzzy reasoning,case-based reasoning,fuzzy inference system,similarity reasoning,multiobjective evolutionary model,pareto optimisation,fuzzy rule selection,evidential functions,genetic algorithms,non-dominated sorting genetic algorithms-ii,pareto optimal criterion,nondominated sorting genetic algorithm-ii,evidential function,nsga ii-based fuzzy rule selection,fuzzy sets,sorting,case based reasoning,cognition,pareto optimization,benchmark testing,fuzzy logic
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