模糊系统概论

L. Jain, C. L. Karr
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引用次数: 116

摘要

模糊逻辑最初是由Zadeh在20世纪60年代中期提出的,用于表示不确定和不精确的知识。在经典布尔逻辑中,真值由1状态表示,假值由0状态表示。布尔代数没有近似推理的规定。模糊逻辑是布尔逻辑的扩展,它也为处理不确定和不精确的知识提供了一个平台。模糊逻辑使用模糊集合理论,其中一个变量是一个或多个集合的成员,具有指定的隶属度,通常用希腊字母/spl表示。本文介绍了模糊系统。
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Introduction to fuzzy systems
Fuzzy logic was first developed by Zadeh in the mid 1960s for representing uncertain and imprecise knowledge. In the classical Boolean logic truth is represented by the 1 state and falsity is by the 0 state. Boolean algebra has no provision for approximate reasoning. Fuzzy logic is an extension of Boolean logic in the sense that it also provides a platform for handling uncertain and imprecise knowledge. Fuzzy logic uses fuzzy set theory, in which a variable is a member of one or more sets, with a specified degree of membership, usually denoted by the Greek letter /spl mu/. The paper provides an introduction to fuzzy systems.<>
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