1. 复旦大学计算机科学系
2. 宝山钢铁公司博士后工作站
3. 复旦大学计算机科学系宝山钢铁公司博士后工作站
纸质出版:1996
移动端阅览
[1]陈亮,晏建军,何永保.神经网络自动生成模糊系统[J].电子学报,1996(11):25-29.
Chen Liang. Automatic Generating of Fuzzy System by Neural Networks[J]. Acta Electronica Sinica, 1996, (11).
在模糊系统的生成过程中,最主要的任务是隶属函数和模糊规则的提取和调整,但用传统方法,其工作量往往随变量数的增长而爆炸性地增加.为了解决这一问题,本文提出了一种新颖的方法,利用神经网络来自动地提取模糊系统的隶属函数和规则.该方法首先将复杂的输入、输出关系分解成简单的输入、输出关系的叠加,然后对每个单独的变参产生一组适合于所有的简单的输入、输出关系的隶属函数,最后在这些变参的隶属函数的基础上求得整个系统的模糊规则。在本文的最后,我们给出了一个典型的实例以说明本方法的有效性。
In the generation of fuzzy systems
the primary work is to extract and modulate membership functions and fuzzy rules
but
using traditional methods
the amount of this work expands startlingly with the increasing of the number of variables.This paper presents a neural network based algorithm to automatically extract membership functions and rules of fuzzy systems.The complicated input-output relationship is firstly decomposed into the accumulation of simple input-output relationships.For each individual variable
the algorithm will generate a set of membership functions that are appropriate for all simple input-output relationships.The fuzzy rules of the whole system are then generated based on these membership functions.At last
an example is given to show the potential of the method.
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