Gaussian Mixture Model Based Classification Revisited: Application to the Bearing Fault Classification

Branislav Panić, J. Klemenc, M. Nagode
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引用次数: 16

Abstract

Condition monitoring and fault detection are nowadays popular topic. Different loads, enviroments etc. affect the components and systems differently and can induce the fault and faulty behaviour. Most of the approaches for the fault detection rely on the use of the good classification method. Gaussian mixture model based classification are stable and versatile methods which can be applied to a wide range of classification tasks. The main task is the estimation of the parameters in the Gaussian mixture model. Those can be estimated with various techniques. Therefore, the Gaussian mixture model based classification have different variants which can vary in performance. To test the performance of the Gaussian mixture model based classification variants and general usefulness of the Gaussian mixture model based classification for the fault detection, we have opted to use the bearing fault classification problem. Additionally, comparisons with other widely used non-parametric classification methods are made, such as support vector machines and neural networks. The performance of each classification method is evaluated by multiple repeated k-fold cross validation. From the results obtained, Gaussian mixture model based classification methods are shown to be competitive and efficient methods and usable in the field of fault detection and condition monitoring.
基于高斯混合模型的分类重述:在轴承故障分类中的应用
状态监测和故障检测是当今的热门话题。不同的负载、环境等对部件和系统的影响不同,并可能诱发故障和故障行为。大多数故障检测方法都依赖于使用良好的分类方法。基于高斯混合模型的分类方法是一种稳定、通用的分类方法,可以应用于广泛的分类任务。主要任务是高斯混合模型的参数估计。这些可以用不同的技术来估算。因此,基于高斯混合模型的分类有不同的变体,其性能会有所不同。为了测试基于高斯混合模型的分类变量的性能和基于高斯混合模型的分类在故障检测中的通用性,我们选择使用轴承故障分类问题。此外,还与其他广泛使用的非参数分类方法进行了比较,如支持向量机和神经网络。通过多次重复k-fold交叉验证来评估每种分类方法的性能。结果表明,基于高斯混合模型的分类方法在故障检测和状态监测领域具有竞争力和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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