Research of remote condition monitoring system for turbo-generator unit based on B/S model

@article{Peng2008ResearchOR,
  title={Research of remote condition monitoring system for turbo-generator unit based on B/S model},
  author={Daogang Peng and Hao Zhang and Li Yang and Hui Li},
  journal={2008 International Conference on Condition Monitoring and Diagnosis},
  year={2008},
  pages={175-179}
}
The turbo-generator unit is very important equipments for electric power production, which has a high rate of fault and causes a lot of harm because of the structural complexity and the special circumstance. With the increasing of the capacity of the unit, the condition monitoring and fault diagnosis plays an important role to ensure safe operation and guarantee the efficiency. Therefore, the real-time monitoring to turbo-generator unit, and diagnosing accurately of the abnormal condition, or… CONTINUE READING

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