Improving Speed Independent Performance of Fault Diagnosis Systems through Feature Mapping and Normalization

A. Raghunath, K. T. Sreekumar, C. S. Kumar, K. I. Ramachandran
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引用次数: 7

Abstract

High accuracy fault diagnosis systems are extremely important for effective condition based maintenance (CBM) of rotating machines. In this work, we develop a fault diagnosis system using time and frequency domain statistical features as input to a backend support vector machine (SVM) classifier. We evaluate the performance of the baseline system for speed dependent and speed independent performance. We show how feature mapping and feature normalization can help in enhancing the speed independent performance of machine fault diagnosis systems. We first perform feature mapping using locality constrained linear coding (LLC) which maps the input features to a higher dimensional feature space to be used as input to an SVM classifier (LLC-SVM). It is seen that there is a significant improvement in the speed independent performance of the fault identification system. We obtain an improvement of 11.81% absolute and 10.53% absolute respectively for time and frequency domain LLC-SVM systems compared to the respective baseline systems. We then explore variance normalization considering the speed specific variations as noise to further improve the performance of the fault diagnosis system. We obtain a performance improvement of 8.20% absolute and 6.71% absolute respectively over the time and frequency domain LLC-SVM systems. It may be noted that that the variance normalized LLC-SVM system outperforms.
通过特征映射和归一化提高故障诊断系统的速度无关性
高精度的故障诊断系统对于有效的旋转机械状态维修至关重要。在这项工作中,我们开发了一个故障诊断系统,使用时域和频域统计特征作为后端支持向量机(SVM)分类器的输入。我们对基线系统的性能进行了速度依赖和速度独立性能的评估。我们展示了特征映射和特征归一化如何有助于提高机器故障诊断系统的速度无关性能。我们首先使用局域约束线性编码(LLC)进行特征映射,该编码将输入特征映射到高维特征空间,作为支持向量机分类器(LLC-SVM)的输入。可以看出,故障识别系统的速度无关性有了明显的提高。与各自的基线系统相比,我们获得了时域和频域LLC-SVM系统分别提高了11.81%和10.53%的绝对精度。在此基础上,我们进一步探讨了将速度特定变化作为噪声的方差归一化,以进一步提高故障诊断系统的性能。与时域和频域LLC-SVM系统相比,我们获得了8.20%和6.71%的绝对性能提升。值得注意的是,方差归一化的LLC-SVM系统优于方差归一化的LLC-SVM系统。
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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