access icon openaccess Review on online inductive wear debris monitoring technology

Online oil monitoring technique is now an important development means to monitor wear condition and diagnose wear fault real time. Inductive wear debris monitoring is the research hotspot in the current online oil monitoring for its unique characteristics. Based on the current domestic and international online inductive wear debris monitoring, the relevant comments to the online inductive wear debris monitoring technology were given. Then, the positive and inverse problems of numerical analysis of inductive wear debris monitoring are analysed. Based on the above, the difficulties and shortages of online inductive wear debris monitoring are studied and the development trend and research focus of online inductive wear debris monitoring are discussion to provide for the oil online technology research.

Inspec keywords: wear; mechanical engineering computing; condition monitoring; fault diagnosis; lubricating oils; oils

Other keywords: online inductive wear debris monitoring technology; wear condition; international online inductive wear debris monitoring; diagnose wear fault real time; current domestic wear debris monitoring; current online oil monitoring; online oil monitoring technique

Subjects: Civil and mechanical engineering computing; Maintenance and reliability; Tribology (mechanical engineering); Mechanical engineering applications of IT; Instrumentation; Inspection and quality control

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