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Bearing faults diagnosis using fuzzy expert system relying on an Improved Range Overlaps and Similarity method

机译:基于改进范围重叠法和相似度法的模糊专家系统轴承故障诊断

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摘要

Bearing fault diagnosis represents the core of induction machines condition monitoring. This paper presents an application of fuzzy expert system (FES) to bearing faults diagnosis. Here, fuzzy rules are automatically induced from numerical data using the Similarity partition method. Data of faulty bearings presents high noise level. Thus, an Improved Range Overlaps method (IRO) is proposed to select input feature vectors by giving them validity degrees. The Similarity method partition was found confused with features presenting range overlap. Consequently, the new proposed Improved Range Overlaps method is found quite suitable for improving the classifier accuracy. The model validity and efficiency were proved using experimental bearing faults data from Case Western Reserve University database and the NSF I/UCR Center on Intelligent Maintenance Systems (IMS) database. (C) 2018 Elsevier Ltd. All rights reserved.
机译:轴承故障诊断是感应电机状态监测的核心。本文提出了模糊专家系统(FES)在轴承故障诊断中的应用。在此,使用相似度划分方法从数值数据中自动得出模糊规则。轴承故障的数据表明噪声水平很高。因此,提出了一种改进的范围重叠法(IRO),通过赋予输入特征向量有效度来选择输入特征向量。发现相似度方法分区与呈现范围重叠的特征混淆。因此,发现新提出的改进范围重叠法非常适合于提高分类器精度。使用来自Case Western Reserve University数据库和NSF I / UCR智能维护系统(IMS)数据库的实验轴承故障数据证明了模型的有效性和有效性。 (C)2018 Elsevier Ltd.保留所有权利。

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