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Optimal Fuzzy Reasoning Methods Based on Robust Goals/Constraints

机译:基于鲁棒目标/约束的最优模糊推理方法

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Different from the dominant view of treating fuzzy reasoning as generalization of classical logical inference, fuzzy reasoning may be treated as an optimization problem. Several optimal fuzzy reasoning methods had been presented in previous papers based on different reasoning goals/constraints, which mean the fuzzy relation gained from fuzzy premise and fuzzy consequence should be closest to that from rules. In this paper, reasoning goals/constraints on robustness are introduced into fuzzy reasoning. Simulation results display that the robust fuzzy reasoning methods can be used for modeling and control of complex systems and for decision-making under complex environments.
机译:与将模糊推理视为经典逻辑推理的一般观点不同,模糊推理可被视为优化问题。先前的论文根据不同的推理目标/约束条件提出了几种最优的模糊推理方法,这意味着从模糊前提和模糊结果获得的模糊关系应该与规则最接近。本文将鲁棒性的推理目标/约束引入模糊推理。仿真结果表明,鲁棒的模糊推理方法可用于复杂系统的建模和控制以及复杂环境下的决策。

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