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基于模糊神经网络的太湖富营养化评价应用
引用本文:杨华芬,魏延. 基于模糊神经网络的太湖富营养化评价应用[J]. 曲靖师范学院学报, 2007, 26(3): 56-59
作者姓名:杨华芬  魏延
作者单位:1. 曲靖师范学院,信息与计算机科学系,云南,曲靖,655011;重庆师范大学,数学与计算机科学学院,重庆,400047
2. 重庆师范大学,数学与计算机科学学院,重庆,400047
摘    要:根据湖泊营养化程度影响因素多,评价因素与富营养化等级间的关系复杂且是非线性的.而神经网络和模糊系统各有优点,研究者将二者结合建立模糊神经网络模型用于太湖营养化评价,当固定学习速率η大于0—1内某一值,将导致网络算法不收敛,因此文中采用自适应调整学习速率,实验表明,该模型具有较快的训练速度和较高的精度.

关 键 词:模糊神经网络  营养化评价  模糊规则
文章编号:1009-8879(2007)03-0056-04
修稿时间:2006-12-08

Assessment of Taihu Lake Eutrophication Based on Fuzzy Neural Network
Yang Huafen,Wei Yan. Assessment of Taihu Lake Eutrophication Based on Fuzzy Neural Network[J]. Journal of Qujing Normal College, 2007, 26(3): 56-59
Authors:Yang Huafen  Wei Yan
Affiliation:1. Information and Computer Science Department, Qujing Normal University, Qujing Yunnan 655011; 2.College of Mathetics and Computer Science ,Chongqing Normal University, Chongqing 400047,China
Abstract:The degree of lake eutrophication is affected by many factors and the complicated nonlinear characteristic of the relationship between the eutrophication degree and some related factors.Because neural network and fuzzy system have their superiority,in this article they are fusing.We find that BP algorithm does not convage when learning rate is bigger than a number between 0 and 1,so we make the network adjust learning rate.The simulation results showed the validity of this method.
Keywords:fuzzy neural network  assessment of eutrophication  fuzzy rule
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