Article ID Journal Published Year Pages File Type
560639 Mechanical Systems and Signal Processing 2013 15 Pages PDF
Abstract

The performance degradation assessment based on the support vector data description (SVDD) has been receiving more attention recently. However, there are three main drawbacks to this approach. First, the SVDD is sensitive to outliers and may result in an over-fitting problem. Second, the initial status model, which is not changed as time goes on, does not effectively reflect the latest status of the bearing. Third, the previous assessment indicator only contains distance information without spatial position information. To address these critical issues, a novel one-class classifier called the rough support vector data description (RSVDD) is proposed based on the rough set notion. Then, the incremental rough support vector data description (IRSVDD) is designed based on the RSVDD. Finally, the new assessment indicator and assessment process are proposed. The effectiveness of the proposed methods is validated through experiments.

► The rough support vector data description is proposed based on the rough set. ► The incremental rough support vector data description is designed. ► The assessment indicator can effectively reflect performance degradation process.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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