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A feature extraction method based on probabilistic Principal components analysis and sampling importance resampling for bearing fault detection

机译:基于概率主成分分析和采样重要性重采样的轴承故障检测特征提取方法

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摘要

The applications of monitoring the equipment online are often limited by the practical signal processing, limited by storage and transferring capacities. The efficiency is a key problem. Thus, a novel highly efficient feature extraction model for evaluating the equipment performance is proposed, which consists of the probabilistic Principal components analysis and the second generation wavelet analysis with the sampling importance resampling method. It starts by transforming raw signals into the wavelet domain by the second generation wavelet packet analysis. Then a sampling-importance resampling procedure is applied to reduce the redundancy and retain the distribution information. The obtained features are then fed into a probabilistic principal components analysis model to reduce the dimensionality. the proposed model is validated in a rolling element bearing test which shows that it is not only effective in diagnosis, but also may save the processing time of feature extraction, the data transfer bandwidth and the storage space.
机译:在线监视设备的应用通常受到实际信号处理的限制,受存储和传输能力的限制。效率是关键问题。因此,提出了一种用于评估设备性能的新型高效特征提取模型,该模型由概率主成分分析和具有采样重要性重采样方法的第二代小波分析组成。首先通过第二代小波包分析将原始信号转换到小波域。然后,应用采样重要性重采样过程以减少冗余并保留分布信息。然后将获得的特征输入到概率主成分分析模型中以减少维数。该模型在滚动轴承测试中得到验证,表明该模型不仅对诊断有效,而且可以节省特征提取的处理时间,数据传输带宽和存储空间。

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