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Fault Classification of Ball Bearing by Rotation Forest Technique

机译:旋转林技术滚珠轴承故障分类

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Bearing failure is one of the most common causes of breakdown in rotating machines. The machine learning techniques such as Support vector machines (SVM), Artificial neural network (ANN) are widely used for fault classification. These methods are slow and sometime give inaccurate results. Therefore, the search for new classifier techniques is a necessity to increase the classification efficiency with less computation time. In this study, a classifier ensemble is used for fault classification called Rotation forest. Data obtained from Case Western Reserve University have been used to extract time-based statistical features. In all k subsets are formed by randomly bifurcating the feature set. Principal Component Analysis (PCA) is used on each subset. All principal components are saved to preserve the transformation in the data. The novel features are calculated using k axis rotations. This results in improved efficiency of fault classification.
机译:轴承失效是旋转机器中最常见的原因之一。诸如支持向量机(SVM)的机器学习技术,人工神经网络(ANN)广泛用于故障分类。这些方法很慢,有时会给效果不准确。因此,搜索新的分类器技术是增加具有较少计算时间的分类效率的必要性。在本研究中,分类器集合用于称为旋转林的故障分类。从案例西方储备大学获得的数据已被用于提取基于时间的统计功能。在所有K子集中通过随机分叉特征集来形成。每个子集使用主成分分析(PCA)。保存所有主组件以保留数据中的转换。使用k轴旋转计算新颖特征。这导致故障分类效率提高。

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