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首页> 外文期刊>IEEE Transactions on Industrial Electronics >Three-Stage Hybrid Fault Diagnosis for Rolling Bearings With Compressively Sampled Data and Subspace Learning Techniques
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Three-Stage Hybrid Fault Diagnosis for Rolling Bearings With Compressively Sampled Data and Subspace Learning Techniques

机译:基于压缩采样数据和子空间学习技术的滚动轴承三阶段混合故障诊断

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摘要

To avoid the burden of much storage requirements and processing time, this paper proposes a three-stage hybrid method, compressive sampling with correlated principal and discriminant components (CS-CPDC), for bearing faults diagnosis based on compressed measurements. In the first stage, CS is utilized to obtain compressively sampled signals from raw vibration data. In the second stage, an effective multistep feature learning algorithm obtains fewer features from correlated principal and discriminant attributes from the compressively sampled signals, which are then concatenated to increase the performance. In the third stage, with these concatenated features, multiclass support vector machine is used to train, validate, and classify bearing faults. Results show that the proposed method, CS-CPDC, offers high classification accuracies, reduced computation time, and storage requirement, with fewer measurements.
机译:为了避免大量存储需求和处理时间的负担,本文提出了一种三阶段混合方法,即具有相关主成分和判别成分的压缩采样(CS-CPDC),用于基于压缩测量的轴承故障诊断。在第一阶段,CS用于从原始振动数据中获取压缩采样信号。在第二阶段中,有效的多步特征学习算法从压缩采样信号的相关本征和判别属性中获取较少的特征,然后将其连接起来以提高性能。在第三阶段,利用这些级联特征,使用多类支持向量机来训练,验证和分类轴承故障。结果表明,所提出的方法CS-CPDC具有较高的分类精度,减少了计算时间,并减少了测量所需的存储量。

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