A case study on multisensor data fusion for imbalance diagnosis of rotating machinery
LIU, QING (CHARLIE); WANG, HSU-PIN (BEN); LIU QING (CHARLIE); Florida A&M University—Florida State University; WANG HSU-PIN (BEN); Florida A&M University—Florida State University; Florida A&M University—Florida State University
Журнал:
AI EDAM
Дата:
2001
Аннотация:
Techniques for machine condition monitoring and diagnostics are gaining acceptance in various industrial sectors. They have proved to be effective in predictive or proactive maintenance and quality control. Along with the fast development of computer and sensing technologies, sensors are being increasingly used to monitor machine status. In recent years, the fusion of multisensor data has been applied to diagnose machine faults. In this study, multisensors are used to collect signals of rotating imbalance vibration of a test rig. The characteristic features of each vibration signal are extracted with an auto-regressive (AR) model. Data fusion is then implemented with a Cascade-Correlation (CC) neural network. The results clearly show that multisensor data-fusion-based diagnostics outperforms the single sensor diagnostics with statistical significance.
320.1Кб