doi:

DOI: 10.3724/SP.J.1004.2009.00739

Acta Automatica Sinica (自动化学报) 2009/35:6 PP.739-747

Data Driven Fault Diagnosis and Fault Tolerant Control: Some Advances and Possible New Directions


Abstract:
This paper presents a selected survey covering the advances of fault diagnosis and fault tolerant control using data driven techniques. A brief summary of the general developments in fault detection and diagnosis for industrial processes is given,which is then followed by discussions on the widely used data driven and knowledge-based techniques. A successful application example is also given, which deals with faults caused by the misplacement of control loop set points and several areas of potential future directions are included in the paper.

Key words:Fault detection, fault diagnosis, fault tolerant control,data driven techniques

ReleaseDate:2014-07-21 14:42:08

Funds:Supported by National Basic Research Program of China (973 Program)(2009CB320600), National Natural Science Foundation of China(60828007, 60534010, 60821063), the Leverhulme Trust (F/00 120/BC)in the United Kingdom, and the 111 Project (B08015)



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