Feature selection and condition monitoring of gearbox using SOM

G. Liao, T. Shi, Jianping Xuan
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引用次数: 1

Abstract

Feature selection is a key issue to pattern recognition and condition monitoring. This paper presents an investigation that uses self-organizing maps network to realize feature selection for gearbox condition monitoring. In order to visualize the trained SOM results more clearly, a novel visualization technique is introduced, which can project the high-dimensional input vectors into a 2-dimensional space and prepare a good basis for further analysis. Then with the use of the responses of every dimensional feature in SOM network neurons weights to the input data evaluated according to the Euclidean distances between them, the feature sets being sensitive to pattern recognition are selected. Gearbox vibration signals measured under different operating conditions are analyzed with the method. The results demonstrate that the method selects sensitive feature sets effectively and has a good potential for gearbox condition monitoring in practice.
基于SOM的齿轮箱特征选择与状态监测
特征选择是模式识别和状态监测的关键问题。提出了一种利用自组织映射网络实现齿轮箱状态监测特征选择的方法。为了使训练后的SOM结果更清晰地可视化,引入了一种新的可视化技术,该技术可以将高维输入向量投影到二维空间中,为进一步分析奠定了良好的基础。然后利用SOM网络神经元对输入数据权值的响应,根据它们之间的欧氏距离评估它们的响应,选择对模式识别敏感的特征集。用该方法对不同工况下实测的齿轮箱振动信号进行了分析。结果表明,该方法能够有效地选择敏感特征集,在实际应用中具有良好的应用潜力。
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