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Diagnosis of the industrial systems by fuzzy classification

机译:通过模糊分类诊断工业系统

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摘要

The aim of this paper is to present a classifier based on a fuzzy inference system, the final decision being made with the help of a thresholder. For this classifier, a parameterization method which is not necessarily based on an iterative training is presented. This approach can be seen as a pre-parameterization of the classifier which allows the building up of a base set of rules, and initialise the parameters of membership function. A continuous and derivable version of the previous classifier is also presented. For this last classifier an iterative learning algorithm based on a gradient method is suggested. An example using the learning basis IRIS, which is a benchmark for the problem of classification, is presneted. This example allows us to compare the performance of this classifier with the works of other authors. Finally this classifier is applied to the diagnosis of a D.C. motor showing the utility of this method.
机译:本文的目的是提出一种基于模糊推理系统的分类器,其最终决策是在阈值器的帮助下做出的。对于该分类器,提出了一种不一定基于迭代训练的参数化方法。这种方法可以看作是分类器的预参数化,它允许建立基本规则集并初始化隶属函数的参数。还提供了先前分类器的连续且可派生的版本。对于该最后的分类器,提出了一种基于梯度方法的迭代学习算法。预设了一个使用学习基础IRIS的示例,该示例是分类问题的基准。此示例使我们可以将该分类器的性能与其他作者的作品进行比较。最后,将该分类器应用于直流电动机的诊断,表明该方法的实用性。

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