隐含模糊模型的单调性

M. Štěpnička, B. Baets
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引用次数: 21

摘要

决策和自动控制中频繁出现的实际问题导致了直观上单调的模糊规则库。让我们假设定义了一个适当的模糊集排序。单调模糊规则库是指由表达后置模糊集对前置模糊集单调依赖性的模糊规则所组成的规则库。换句话说,“较大”的先行模糊存在于模糊规则中,“较大”的后向模糊集出现在同一模糊规则的右侧。现实世界的应用程序经常需要在推理过程结束时使用一些去模糊化。问题是,在去模糊化之后,我们得到一个清晰的输入输出函数,它不再是单调的。显然,这种行为不仅违反直觉,而且很危险。大多数的注意力都集中在Mamdani-Assilian合取模糊规则库模型上,该模型是借助特定的t-norm建立的。本文研究了任意残差蕴涵的隐含方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monotonicity of implicative fuzzy models
Frequent practical problems from decision-making as well as automatic control lead to intuitively monotone fuzzy rule bases. let us assume an appropriate ordering of fuzzy sets is defined. Then by the monotone fuzzy rule base we mean a rule base consisting of such fuzzy rules expressing the monotone dependence of consequent fuzzy sets on antecedent fuzzy sets. In other words the “bigger” antecedent fuzzy is present in a fuzzy rule the “bigger” consequent fuzzy set appears on the right hand side of the same fuzzy rule. Very often real-world applications require some defuzzification to be employed at the end of the inference process. The problem is that after the defuzzification we obtain a crisp input-output function which is not necessarily monotone anymore. Obviously, such behavior is not only counterintuitive but also dangerous. Most of the attention has been paid to the Mamdani-Assilian conjunctive kind of models of fuzzy rule bases built with help of particular t-norms. This paper focuses on the implicative approach for arbitrary residual implication.
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