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Novel neural algorithms based on fuzzy δ rules for solving fuzzy relation equations: Part III

✍ Scribed by Xiaozhong Li; Da Ruan


Publisher
Elsevier Science
Year
2000
Tongue
English
Weight
112 KB
Volume
109
Category
Article
ISSN
0165-0114

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✦ Synopsis


In our previous work (Li and Ruan, 1997) we proposed a max-min operator network and a series of training algorithms, called fuzzy rules, which could be used to solve fuzzy relation equations. The most basic and important result is the convergence theorem of fuzzy perceptron based on max-min operators. This convergence theorem has been extended to the max-times operator network in (Li and Ruan 1997). In this paper, we will further extend the fuzzy rule and its convergence theorem to the case of max-* operator network in which * is a t-norm. An equivalence theorem points out that the neural algorithm in solving this kind of fuzzy relation equations is equivalent to the fuzzy solving method (non-neural) in Di Nola et al. (1984) and. The proof and simulation will be given.


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Novel neural algorithms based on fuzzy δ
✍ Xiaozhong Li; Da Ruan 📂 Article 📅 1999 🏛 Elsevier Science 🌐 English ⚖ 709 KB

In this paper, we first design a fuzzy neuron which possesses some generality. This fuzzy neuron is founded by replacing the operators of the traditional neuron with a pair of abstract fuzzy operators as (~, ~ ) which we call fuzzy neuron operators. For example, it may be (+, o), (A, "), (V, o), or