Fault Diagnosis Techniques for Dynamic Systems: Fault Diagnosis Techniques for Dynamic Systems

A novel classiflcation framework is proposed, which divides fault diagnosis approaches into two classes: qual- itative analysis approaches and quantitative analysis approaches. The basic idea, main research progresses, and typical applications of each method are discussed in detail, with emphasis on the data-driven approaches. The state-of-the-art of fault prediction is also outlined. Finally, some problems and development trends of the research on fault diagnosis are pointed out.

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