首页> 外文期刊>Measurement >A critical study of different dimensionality reduction methods for gear crack degradation assessment under different operating conditions
【24h】

A critical study of different dimensionality reduction methods for gear crack degradation assessment under different operating conditions

机译:在不同工况下评估齿轮裂纹退化的不同降维方法的批判性研究

获取原文
获取原文并翻译 | 示例
           

摘要

Gear cracks are some of the most common faults found in industrial machinery. Identification of different gear crack levels is beneficial to assessing gear crack degradation and preventing any unexpected machine breakdowns. In this paper, redundant statistical features are extracted from binary wavelet packet transform at different decomposition levels to describe different gear crack levels. Because the dimensionality of the extracted redundant statistical parameters is high to 620, it is necessary to reduce their dimensionality prior to the use of any statistical model for intelligently identifying different gear crack levels. The major idea of dimensionality reduction is that the extracted redundant statistical features in a high-dimensional space are mapped to a few significant features in a low-dimensional space, where these significant features are used to represent different gear crack levels. As of today, there are many popular linear and non-linear dimensionality reduction methods including principal component analysis, kernel principal components analysis, Isomap, Laplacian Eigenmaps and local linear embedding. Different dimensionality reduction methods have different performances in dimensionality reduction, which can be measured by prediction accuracies of some common statistical models, such as Naive Bayes classifier, linear discriminant analysis, quadratic discriminant analysis, and classification and regression tree. Gear crack level degradation data collected from a machine in a laboratory under different operating conditions including four different motor speeds and three different loads are used to investigate performances of the linear and non-linear dimensionality reduction methods. In our case study, the results show that principal component analysis has the best performance in dimensionality reduction and it results in the highest prediction accuracies in all of the aforementioned statistical models. In other words, the linear dimensionality reduction method is better than all of the non-linear dimensionality reduction methods investigated in this paper. (C) 2015 Elsevier Ltd. All rights reserved.
机译:齿轮裂纹是工业机械中最常见的故障。识别不同的齿轮裂纹等级有利于评估齿轮裂纹的退化并防止任何意外的机器故障。本文从二进制小波包变换中提取了不同分解等级的冗余统计特征,以描述不同的齿轮裂纹等级。由于提取的冗余统计参数的维数很高,为620,因此有必要在使用任何统计模型来智能识别不同齿轮裂纹级别之前减小其维数。降维的主要思想是将提取的高维空间中的冗余统计特征映射到低维空间中的一些重要特征,这些重要特征用于表示不同的齿轮裂纹级别。到目前为止,有许多流行的线性和非线性降维方法,包括主成分分析,核主成分分析,Isomap,Laplacian特征图和局部线性嵌入。不同的降维方法在降维方面有不同的表现,这可以通过一些常见的统计模型(如朴素贝叶斯分类器,线性判别分析,二次判别分析以及分类和回归树)的预测精度来衡量。从实验室中的机器在不同的操作条件(包括四种不同的电动机速度和三种不同的负载)下收集的齿轮裂纹等级降低数据用于研究线性和非线性降维方法的性能。在我们的案例研究中,结果表明,在所有上述统计模型中,主成分分析在降维方面具有最佳性能,并且其预测精度最高。换句话说,线性降维方法优于本文研究的所有非线性降维方法。 (C)2015 Elsevier Ltd.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号