Study of Cascaded Fuzzy Nerual Network

碩士 === 國立臺南大學 === 資訊教育研究所碩士班 === 93 === In recent years, there has been an increasing interest in the fusion of neural networks and fuzzy logic. Most of the existing fuzzy neural networks (FNN) models have been proposed to implement different types of single-stage fuzzy reasoning mechanisms. Single-...

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Main Authors: Hung-Liang Chen, 陳弘良
Other Authors: Koun-Tem Sun
Format: Others
Language:zh-TW
Published: 2005
Online Access:http://ndltd.ncl.edu.tw/handle/05611232435732195043
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spelling ndltd-TW-093NTNT53950412017-06-17T04:31:25Z http://ndltd.ncl.edu.tw/handle/05611232435732195043 Study of Cascaded Fuzzy Nerual Network 串接式模糊類神經網路之研究 Hung-Liang Chen 陳弘良 碩士 國立臺南大學 資訊教育研究所碩士班 93 In recent years, there has been an increasing interest in the fusion of neural networks and fuzzy logic. Most of the existing fuzzy neural networks (FNN) models have been proposed to implement different types of single-stage fuzzy reasoning mechanisms. Single-stage fuzzy reasoning, however, is only the most basic among a human being’s various types of reasoning mechanisms. Syllogistic fuzzy reasoning is essential to effectively build up a large scale system that is more complicated and relatively closed to human being’s reasoning mechanisms. The cascaded fuzzy neural network (CFNN) model combined with syllogistic fuzzy reasoning and neural networks successfully. This model can learn something efficiently. However, the rule selection is not regular and do not have a specified rule yet. They used genetic algorithms to establish the rules. So, in this paper we proposed a new method that is applied the back-propagation method to update weights and selects the rule with the maximum absolute weight. We also called this method as “select the maximum effect factor method”. Based on research results, our methods are more efficient and accurate than other methods. Keywords:Cascaded fuzzy neural network (CFNN)、Syllogistic fuzzy reasoning、select the maximum effect factor method Koun-Tem Sun 孫光天 2005 學位論文 ; thesis 81 zh-TW
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description 碩士 === 國立臺南大學 === 資訊教育研究所碩士班 === 93 === In recent years, there has been an increasing interest in the fusion of neural networks and fuzzy logic. Most of the existing fuzzy neural networks (FNN) models have been proposed to implement different types of single-stage fuzzy reasoning mechanisms. Single-stage fuzzy reasoning, however, is only the most basic among a human being’s various types of reasoning mechanisms. Syllogistic fuzzy reasoning is essential to effectively build up a large scale system that is more complicated and relatively closed to human being’s reasoning mechanisms. The cascaded fuzzy neural network (CFNN) model combined with syllogistic fuzzy reasoning and neural networks successfully. This model can learn something efficiently. However, the rule selection is not regular and do not have a specified rule yet. They used genetic algorithms to establish the rules. So, in this paper we proposed a new method that is applied the back-propagation method to update weights and selects the rule with the maximum absolute weight. We also called this method as “select the maximum effect factor method”. Based on research results, our methods are more efficient and accurate than other methods. Keywords:Cascaded fuzzy neural network (CFNN)、Syllogistic fuzzy reasoning、select the maximum effect factor method
author2 Koun-Tem Sun
author_facet Koun-Tem Sun
Hung-Liang Chen
陳弘良
author Hung-Liang Chen
陳弘良
spellingShingle Hung-Liang Chen
陳弘良
Study of Cascaded Fuzzy Nerual Network
author_sort Hung-Liang Chen
title Study of Cascaded Fuzzy Nerual Network
title_short Study of Cascaded Fuzzy Nerual Network
title_full Study of Cascaded Fuzzy Nerual Network
title_fullStr Study of Cascaded Fuzzy Nerual Network
title_full_unstemmed Study of Cascaded Fuzzy Nerual Network
title_sort study of cascaded fuzzy nerual network
publishDate 2005
url http://ndltd.ncl.edu.tw/handle/05611232435732195043
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