4.2 Article

Vibration Sensor Based Intelligent Fault Diagnosis System for Large Machine Unit in Petrochemical Industries

出版社

SAGE PUBLICATIONS INC
DOI: 10.1155/2015/239405

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资金

  1. NSFC [61473094, 61174113, 61401107]
  2. Natural Science Fund of Guangdong Province [S2011020002735]
  3. Core Technology Study of Strategic Emerging Industries of Guangdong Province [2012A090100019]
  4. Special Fund of Safety Production Special Technique of Guangdong Province [2013-64]
  5. Featured Innovation Project of Regular College of Guangdong Province [2014631041]
  6. Guangdong University of Petrochemical Technology's Internal Project [2012RC0106]
  7. Open Fund of Guangdong Provincial Key Laboratory of Petrochemical Equipment Fault Diagnosis [GDUPTKLAB201323]

向作者/读者索取更多资源

Fault diagnosis is an area which is gaining increasing importance in rotating machinery. Along with the continuous advance of science and technology, the structures of rotating machinery become increasingly of larger scale and higher speed and more complicated, which result in higher probability of various failure in practice. In case one of the most critical components of machinery or equipment breaks down, it cannot only cause enormous economic loss, but also easily cause the loss of many people's lives. It is important to enable reliable, safe, and efficient operation of large-scale and critical rotating machinery, which requires us to achieve accurate and fast diagnosis of fault which has occurred. Aiming at dynamic real-time vibration monitoring and vibration signal analysis for large machine unit in petrochemical industry, which cannot realize real-time, online, and fast fault diagnosis, an intelligent fault diagnosis system using artificial immune algorithm and dimensionless parameters is developed in this paper, innovated with a focus on reliability, remote monitoring, and practicality and applied to the third catalytic flue gas turbine in a petrochemical enterprise, with good effects.

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